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dream
dream-main/data/compile_scene_elaboration_dataset.py
#!/usr/bin/env python # coding: utf-8 # In[1]: import json import csv import os import random # In[2]: def make_sure_dir_exists(dir_to_check): if not os.path.exists(dir_to_check): os.makedirs(dir_to_check) # In[3]: # !rm -r external_data/ # !rm -r external_data_tidied/ # !rm -r external_data_tidied_combined_used_to_train_DREAM/ # In[4]: # We will store the orginal external datasets in a folder named "external_data" make_sure_dir_exists("external_data/") # We will store the extracted information from external datasets that we use # to build our Scene Elaboration (SE) dataset in a folder named "external_data_tidied" make_sure_dir_exists("external_data_tidied/") # ## External dataset: Social Chemistry # To get rule of thumbs (ROT component of SE) in external_data_tidied/ # # Download the source dataset : # 1. Visit the website for the Social Chemistry project https://maxwellforbes.com/social-chemistry/ # 2. Scroll down to the "QUICK INFO" part, find the third column "DATA", "Social-Chem-101 Dataset 4.5M+ annotations 28 MB .zip" to "DOWNLOAD" the source data # 3. Unzip the downloaded file and place it in "external_data" folder we created # # # In[7]: def organize_data_sc_as_rot(): dataset = "social_chemistry" out_dir = "external_data_tidied" scene_part = "rot" # what might other people say out_paths = [] for train_dev_test in ["training", "dev", "test"]: out_path = "/".join([out_dir, scene_part , train_dev_test]) + ".json" out_paths.append(out_path) make_sure_dir_exists("/".join([out_dir, scene_part])) infile = "external_data/social-chem-101/social-chem-101.v1.0.tsv" judgment_types = [] with open(infile, "r") as datafile, open(out_paths[0], "w") as json_train, open(out_paths[1], "w") as json_dev, open(out_paths[2], "w") as json_test : data = csv.reader(datafile, delimiter = "\t") data_split_idx = -1 situation_idx = -1 rot_idx = -1 short_judgement_idx = -1 id_cnt = 1 train_cnt = 0 dev_cnt = 0 test_cnt = 0 for i, annotation in enumerate(data): if i == 0: data_split_idx = annotation.index("split") situation_idx = annotation.index("situation") rot_idx = annotation.index("rot") short_judgement_idx = annotation.index("rot-judgment") else: target_out = "" data_split = annotation[data_split_idx] situation = annotation[situation_idx] rot = annotation[rot_idx] short_judgement = annotation[short_judgement_idx].lower() if short_judgement not in judgment_types: judgment_types.append(short_judgement) train_dev_test = data_split if data_split == "train": json_file = json_train train_dev_test = "training" train_cnt += 1 elif data_split == "dev": json_file = json_dev dev_cnt +=1 else: json_file = json_test test_cnt +=1 if not situation.endswith("."): situation += "." if rot != "" and not rot.endswith("."): rot += "." json_file.write(json.dumps({"dataset": dataset , "id": dataset + "_" + train_dev_test + "_" + str(id_cnt), "question": "[SITUATION] " + situation + " [QUERY] " + scene_part, "answer": rot})) json_file.write("\n") json_file.flush() id_cnt += 1 print("=" * 10, scene_part, "=" * 10) print("Total :", id_cnt - 1) print("train :", train_cnt) print("dev :", dev_cnt) print("test :", test_cnt) #print("judgement_types:", judgment_types) # In[8]: ''' You'd expect the following output from running the next line: ========== rot ========== Total : 355922 train : 233501 dev : 29234 test : 93187 ''' organize_data_sc_as_rot() # ## External dataset: Story Commonsense # To get Motivation, Emotion in external_data_tidied/ # # # Download the source dataset : # 1. Visit the website for the Story Commonsense project https://uwnlp.github.io/storycommonsense/ # 2. At the top of the page, where the "Quick links" are, click "[download the data]" # 3. Unzip the downloaded file and place it in "external_data" folder we created # # # In[11]: # map Objective Pronouns & Possessive Pronouns to Nominatve # ["i", "you" , "he", "she", "we", "they"] def get_nominative_pronoun(pron): i_list = ["me", "my", "mine"] you_list = ["your", "yours"] he_list = ["him", "his"] she_list = ["her", "hers" ] we_list = ["us", "our", "ours"] they_list = ["them", "their", "theirs"] to_change = i_list + you_list + he_list + she_list + we_list + they_list if pron.lower() not in to_change: return pron if pron.lower() in i_list: return "I" elif pron.lower() in you_list: return "you" elif pron.lower() in he_list: return "he" elif pron.lower() in she_list: return "she" elif pron.lower() in we_list: return "we" elif pron.lower() in they_list: return "they" # my, our, his, her, their, your def get_possessive_form_from_nom(entity): nom_poss = {"i":"my", "you":"your", "he":"his", "she":"her", "we":"our", "they":"their"} if entity.lower() in nom_poss: return nom_poss[entity.lower()] if entity.endswith("s"): return entity + "'" return entity + "'s" def get_possessive_form(entity): possessive_entity = get_possessive_form_from_nom(get_nominative_pronoun(entity)) return possessive_entity # In[12]: def organize_data_story_commonsense(train_dev_test, scene_part): ''' Input strings: train_dev_test : "training"/ "dev"/ "test" scene_part : "emotion", "motivation" ''' dataset = "story_commonsense" out_dir = "external_data_tidied" out_path = "/".join([out_dir, scene_part,train_dev_test]) + ".json" make_sure_dir_exists("/".join([out_dir, scene_part])) if train_dev_test == "training": infile = "external_data/storycommonsense_data/csv_version/" + train_dev_test + "/allcharlinepairs.csv" else: if scene_part == "emotion": infile = "external_data/storycommonsense_data/csv_version/" + train_dev_test + "/" + scene_part + "/allcharlinepairs.csv" elif scene_part == "motivation": infile = "external_data/storycommonsense_data/csv_version/" + train_dev_test + "/motiv/allcharlinepairs.csv" with open(infile, "r") as datafile, open(out_path, "w") as json_file: data = csv.reader(datafile) sentence_idx = -1 character_idx = -1 target_idx = -1 id_cnt = 1 for i, annotation in enumerate(data): if i == 0: sentence_idx = annotation.index("sentence") character_idx = annotation.index("char") target_idx = annotation.index(scene_part) else: situation = annotation[sentence_idx].strip() if annotation[target_idx] == "[\"none\"]": target_out = "" else: processed_annotation = json.loads(annotation[target_idx]) processed_annotation = ", ".join([x.lower() for x in processed_annotation]) target_out = get_possessive_form(annotation[character_idx]).capitalize() + " " + scene_part + " is " + processed_annotation if target_out != "" and not target_out.endswith("."): target_out += "." #print(situation, target_out) if not situation.endswith("."): situation += "." json_file.write(json.dumps({"dataset": dataset , "id": dataset + "_" + train_dev_test + "_" + str(id_cnt), "question": "[SITUATION] " + situation + " [QUERY] " + scene_part, "answer": target_out})) json_file.write("\n") json_file.flush() id_cnt += 1 print("=" * 10, train_dev_test, "|", scene_part, "=" * 10) print("Total :", id_cnt - 1) # In[13]: ''' You'd expect the following output from running the next few lines: ========== training | emotion ========== Total : 174691 ========== training | motivation ========== Total : 174691 ========== dev | emotion ========== Total : 53234 ========== dev | motivation ========== Total : 47547 ========== test | emotion ========== Total : 51891 ========== test | motivation ========== Total : 39359 ''' for train_dev_test in ["training", "dev", "test"]: for scene_part in ["emotion", "motivation"]: organize_data_story_commonsense(train_dev_test, scene_part) # ## External dataset: Moral Stories # To get moral, immoral_consequences in external_data_tidied/ # Download the source dataset : # 1. The Moral Stories dataset is available at https://tinyurl.com/moral-stories-data # 2. "Download" the compressed file from the link above # 3. Expand the downloaded file and place it in "external_data" folder we created # # In[14]: def organize_data_moral_stories(scene_part, train_dev_test): ''' Input strings: train_dev_test : "training"/ "dev"/ "test" scene_part : "consequence" ''' dataset = "moral_stories" out_dir = "external_data_tidied" out_path = "/".join([out_dir, scene_part , train_dev_test]) + ".json" make_sure_dir_exists("/".join([out_dir, scene_part])) if train_dev_test == "training": infile = "external_data/" + dataset + "_datasets/generation/consequence|action+context/norm_distance/train.jsonl" else: infile = "external_data/" + dataset + "_datasets/generation/consequence|action+context/norm_distance/" + train_dev_test + ".jsonl" with open(infile, "r") as datafile, open(out_path, "w") as json_file : data = datafile.readlines() id_cnt = 1 for i, data_line in enumerate(data): annotation = json.loads(data_line) situation = annotation["situation"] tag = "" if "moral_action" in annotation: action = annotation["moral_action"] consequence = annotation["moral_consequence"] tag = "[moral_consequence]" elif "immoral_action" in annotation: action = annotation["immoral_action"] consequence = annotation["immoral_consequence"] tag = "[immoral_consequence]" json_file.write(json.dumps({"dataset": dataset , "id": dataset + "_" + train_dev_test + "_" + str(id_cnt), "question": "[SITUATION] " + situation + " " + action + " [QUERY] " + scene_part, "answer": tag + " " + consequence})) json_file.write("\n") json_file.flush() id_cnt += 1 print("=" * 10, train_dev_test, "|", scene_part, "=" * 10) print("Total :", id_cnt - 1) # In[15]: ''' You'd expect the following output from running the next few lines: ========== training | consequence ========== Total : 20000 ========== dev | consequence ========== Total : 2000 ========== test | consequence ========== Total : 2000 ''' for train_dev_test in ["training", "dev", "test"]: for scene_part in ["consequence"]: organize_data_moral_stories(scene_part, train_dev_test) # ## Combine data # # Downsample to make the training size from each source data is more blanaced. # # Combine the sampled scene components into one folder (with training/dev/test files). # In[16]: outdir = "external_data_tidied_combined_used_to_train_DREAM/" make_sure_dir_exists(outdir) file_names = ["training.json", "dev.json", "test.json"] global_final_new_data = 0 for file_name in file_names: print(file_name) with open(outdir + file_name, "w") as outfile: for folder in os.listdir("external_data_tidied/"): if os.path.isfile("external_data_tidied/" + folder): continue # we want to copy from data folders, skip README file etc print("=" * 10, "Copying data from", folder, "subfolder...", "=" * 10) with open("external_data_tidied/" + folder + "/" + file_name , 'r') as infile: # read all lines from file infile_lines = infile.readlines() total_num_of_lines = len(infile_lines) print("Original total size", total_num_of_lines) if folder in ["motivation", "emotion"]: ### # For motivation (M) and emotion (E) components, sample 10% ~175k -> ~17.5K # too much blanks, sample to control that 90% is not blank ### non_empty_line_ids = [i for i, line in enumerate(infile_lines) if json.loads(line)["answer"] != ""] empty_line_ids = [i for i, line in enumerate(infile_lines) if json.loads(line)["answer"] == ""] assert len(set(non_empty_line_ids) & set(empty_line_ids)) == 0 assert len(non_empty_line_ids) + len(empty_line_ids) == total_num_of_lines random.seed(12345) sampled_line_nums_non_empty = random.sample(non_empty_line_ids, int((total_num_of_lines * 0.9) // 10)) print("non-empty sampled", len(sampled_line_nums_non_empty)) random.seed(12345) sampled_line_nums_empty = random.sample(empty_line_ids, int((total_num_of_lines * 0.1) // 10)) print("empty sampled", len(sampled_line_nums_empty)) sampled_line_nums = sampled_line_nums_non_empty + sampled_line_nums_empty print("total sampled", len(sampled_line_nums)) if len(sampled_line_nums) - (total_num_of_lines // 10) > 10: print(len(sampled_line_nums), total_num_of_lines) else: ### # For rule of thumb a.k.a social norm (ROT) component, sample 10% ~233k -> ~23K ### random.seed(12345) sampled_line_nums = random.sample(list(range(total_num_of_lines)), total_num_of_lines // 10) written_to_file_cnt = 0 for i, line in enumerate(infile_lines): if folder.endswith("consequence"): ### # For Consequence (Con) component, this dataset is smaller, so no need to sample ### written_to_file_cnt += 1 outfile.write(line) else: if i in sampled_line_nums: written_to_file_cnt += 1 outfile.write(line) if folder.endswith("consequence"): # this dataset is small, copy everything assert written_to_file_cnt == total_num_of_lines else: assert written_to_file_cnt == len(sampled_line_nums) global_final_new_data += written_to_file_cnt print("external_data_tidied/" + folder + "/" + file_name, "copied!", "Copied", written_to_file_cnt, "lines.") print("THIS DATASET HAS A TOTAL OF", global_final_new_data, "LINES!") # In[17]: ''' You'd expect the following output from running the above lines: training.json ========== Copying data from rot subfolder... ========== Original total size 233501 external_data_tidied/rot/training.json copied! Copied 23350 lines. ========== Copying data from consequence subfolder... ========== Original total size 20000 external_data_tidied/consequence/training.json copied! Copied 20000 lines. ========== Copying data from emotion subfolder... ========== Original total size 174691 non-empty sampled 15722 empty sampled 1746 total sampled 17468 external_data_tidied/emotion/training.json copied! Copied 17468 lines. ========== Copying data from motivation subfolder... ========== Original total size 174691 non-empty sampled 15722 empty sampled 1746 total sampled 17468 external_data_tidied/motivation/training.json copied! Copied 17468 lines. dev.json ========== Copying data from rot subfolder... ========== Original total size 29234 external_data_tidied/rot/dev.json copied! Copied 2923 lines. ========== Copying data from consequence subfolder... ========== Original total size 2000 external_data_tidied/consequence/dev.json copied! Copied 2000 lines. ========== Copying data from emotion subfolder... ========== Original total size 53234 non-empty sampled 4791 empty sampled 532 total sampled 5323 external_data_tidied/emotion/dev.json copied! Copied 5323 lines. ========== Copying data from motivation subfolder... ========== Original total size 47547 non-empty sampled 4279 empty sampled 475 total sampled 4754 external_data_tidied/motivation/dev.json copied! Copied 4754 lines. test.json ========== Copying data from rot subfolder... ========== Original total size 93187 external_data_tidied/rot/test.json copied! Copied 9318 lines. ========== Copying data from consequence subfolder... ========== Original total size 2000 external_data_tidied/consequence/test.json copied! Copied 2000 lines. ========== Copying data from emotion subfolder... ========== Original total size 51891 non-empty sampled 4670 empty sampled 518 total sampled 5188 external_data_tidied/emotion/test.json copied! Copied 5188 lines. ========== Copying data from motivation subfolder... ========== Original total size 39359 non-empty sampled 3542 empty sampled 393 total sampled 3935 external_data_tidied/motivation/test.json copied! Copied 3935 lines. THIS DATASET HAS A TOTAL OF 113727 LINES! ''' # ## What's next? # # ### We now use this external data to create our scene generation model DREAM! # In[ ]:
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CLMR-master/main.py
import argparse import pytorch_lightning as pl from pytorch_lightning.callbacks.early_stopping import EarlyStopping from pytorch_lightning import Trainer from pytorch_lightning.loggers import TensorBoardLogger from torch.utils.data import DataLoader # Audio Augmentations from torchaudio_augmentations import ( RandomApply, ComposeMany, RandomResizedCrop, PolarityInversion, Noise, Gain, HighLowPass, Delay, PitchShift, Reverb, ) from clmr.data import ContrastiveDataset from clmr.datasets import get_dataset from clmr.evaluation import evaluate from clmr.models import SampleCNN from clmr.modules import ContrastiveLearning, SupervisedLearning from clmr.utils import yaml_config_hook if __name__ == "__main__": parser = argparse.ArgumentParser(description="CLMR") parser = Trainer.add_argparse_args(parser) config = yaml_config_hook("./config/config.yaml") for k, v in config.items(): parser.add_argument(f"--{k}", default=v, type=type(v)) args = parser.parse_args() pl.seed_everything(args.seed) # ------------ # data augmentations # ------------ if args.supervised: train_transform = [RandomResizedCrop(n_samples=args.audio_length)] num_augmented_samples = 1 else: train_transform = [ RandomResizedCrop(n_samples=args.audio_length), RandomApply([PolarityInversion()], p=args.transforms_polarity), RandomApply([Noise()], p=args.transforms_noise), RandomApply([Gain()], p=args.transforms_gain), RandomApply( [HighLowPass(sample_rate=args.sample_rate)], p=args.transforms_filters ), RandomApply([Delay(sample_rate=args.sample_rate)], p=args.transforms_delay), RandomApply( [ PitchShift( n_samples=args.audio_length, sample_rate=args.sample_rate, ) ], p=args.transforms_pitch, ), RandomApply( [Reverb(sample_rate=args.sample_rate)], p=args.transforms_reverb ), ] num_augmented_samples = 2 # ------------ # dataloaders # ------------ train_dataset = get_dataset(args.dataset, args.dataset_dir, subset="train") valid_dataset = get_dataset(args.dataset, args.dataset_dir, subset="valid") contrastive_train_dataset = ContrastiveDataset( train_dataset, input_shape=(1, args.audio_length), transform=ComposeMany( train_transform, num_augmented_samples=num_augmented_samples ), ) contrastive_valid_dataset = ContrastiveDataset( valid_dataset, input_shape=(1, args.audio_length), transform=ComposeMany( train_transform, num_augmented_samples=num_augmented_samples ), ) train_loader = DataLoader( contrastive_train_dataset, batch_size=args.batch_size, num_workers=args.workers, drop_last=True, shuffle=True, ) valid_loader = DataLoader( contrastive_valid_dataset, batch_size=args.batch_size, num_workers=args.workers, drop_last=True, shuffle=False, ) # ------------ # encoder # ------------ encoder = SampleCNN( strides=[3, 3, 3, 3, 3, 3, 3, 3, 3], supervised=args.supervised, out_dim=train_dataset.n_classes, ) # ------------ # model # ------------ if args.supervised: module = SupervisedLearning(args, encoder, output_dim=train_dataset.n_classes) else: module = ContrastiveLearning(args, encoder) logger = TensorBoardLogger("runs", name="CLMRv2-{}".format(args.dataset)) if args.checkpoint_path: module = module.load_from_checkpoint( args.checkpoint_path, encoder=encoder, output_dim=train_dataset.n_classes ) else: # ------------ # training # ------------ if args.supervised: early_stopping = EarlyStopping(monitor="Valid/loss", patience=20) else: early_stopping = None trainer = Trainer.from_argparse_args( args, logger=logger, sync_batchnorm=True, max_epochs=args.max_epochs, log_every_n_steps=10, check_val_every_n_epoch=1, accelerator=args.accelerator, ) trainer.fit(module, train_loader, valid_loader) if args.supervised: test_dataset = get_dataset(args.dataset, args.dataset_dir, subset="test") contrastive_test_dataset = ContrastiveDataset( test_dataset, input_shape=(1, args.audio_length), transform=None, ) device = "cuda:0" if args.gpus else "cpu" results = evaluate( module.encoder, None, contrastive_test_dataset, args.dataset, args.audio_length, device=device, ) print(results)
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CLMR-master/export.py
""" This script will extract a pre-trained CLMR PyTorch model to an ONNX model. """ import argparse import os import torch from collections import OrderedDict from copy import deepcopy from clmr.models import SampleCNN, Identity from clmr.utils import load_encoder_checkpoint, load_finetuner_checkpoint def convert_encoder_to_onnx( encoder: torch.nn.Module, test_input: torch.Tensor, fp: str ) -> None: input_names = ["audio"] output_names = ["representation"] torch.onnx.export( encoder, test_input, fp, verbose=False, input_names=input_names, output_names=output_names, ) if __name__ == "__main__": parser = argparse.ArgumentParser() parser.add_argument("--checkpoint_path", type=str, required=True) parser.add_argument("--finetuner_checkpoint_path", type=str, required=True) parser.add_argument("--n_classes", type=int, default=50) args = parser.parse_args() if not os.path.exists(args.checkpoint_path): raise FileNotFoundError("That encoder checkpoint does not exist") if not os.path.exists(args.finetuner_checkpoint_path): raise FileNotFoundError("That linear model checkpoint does not exist") # ------------ # encoder # ------------ encoder = SampleCNN( strides=[3, 3, 3, 3, 3, 3, 3, 3, 3], supervised=False, out_dim=args.n_classes, ) n_features = encoder.fc.in_features # get dimensions of last fully-connected layer state_dict = load_encoder_checkpoint(args.checkpoint_path, args.n_classes) encoder.load_state_dict(state_dict) encoder.eval() # ------------ # linear model # ------------ state_dict = load_finetuner_checkpoint(args.finetuner_checkpoint_path) encoder.fc.load_state_dict( OrderedDict({k.replace("0.", ""): v for k, v in state_dict.items()}) ) encoder_export = deepcopy(encoder) # set last fully connected layer to an identity function: encoder_export.fc = Identity() batch_size = 1 channels = 1 audio_length = 59049 test_input = torch.randn(batch_size, 1, audio_length) convert_encoder_to_onnx(encoder, test_input, "clmr_sample-cnn.onnx") convert_encoder_to_onnx( encoder_export, test_input, "clmr_encoder_only_sample-cnn.onnx" )
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CLMR-master/setup.py
#!/usr/bin/env python # -*- coding: utf-8 -*- # Note: To use the 'upload' functionality of this file, you must: # $ pipenv install twine --dev import io import os import sys from shutil import rmtree from setuptools import find_packages, setup, Command # Package meta-data. NAME = "clmr" DESCRIPTION = "Contrastive Learning of Musical Representations" URL = "https://github.com/spijkervet/CLMR" EMAIL = "janne.spijkervet@gmail.com" AUTHOR = "Janne Spijkervet" REQUIRES_PYTHON = ">=3.6.0" VERSION = "0.1.0" # What packages are required for this module to be executed? REQUIRED = [ "torch==1.9.0", "torchaudio", "simclr", "torchaudio-augmentations", "pytorch-lightning", "soundfile", "sklearn", "matplotlib", ] # What packages are optional? EXTRAS = { # 'fancy feature': ['django'], } # The rest you shouldn't have to touch too much :) # ------------------------------------------------ # Except, perhaps the License and Trove Classifiers! # If you do change the License, remember to change the Trove Classifier for that! here = os.path.abspath(os.path.dirname(__file__)) # Import the README and use it as the long-description. # Note: this will only work if 'README.md' is present in your MANIFEST.in file! try: with io.open(os.path.join(here, "README.md"), encoding="utf-8") as f: long_description = "\n" + f.read() except FileNotFoundError: long_description = DESCRIPTION # Load the package's __version__.py module as a dictionary. about = {} if not VERSION: project_slug = NAME.lower().replace("-", "_").replace(" ", "_") with open(os.path.join(here, project_slug, "__version__.py")) as f: exec(f.read(), about) else: about["__version__"] = VERSION class UploadCommand(Command): """Support setup.py upload.""" description = "Build and publish the package." user_options = [] @staticmethod def status(s): """Prints things in bold.""" print("\033[1m{0}\033[0m".format(s)) def initialize_options(self): pass def finalize_options(self): pass def run(self): try: self.status("Removing previous builds…") rmtree(os.path.join(here, "dist")) except OSError: pass self.status("Building Source and Wheel (universal) distribution…") os.system("{0} setup.py sdist bdist_wheel --universal".format(sys.executable)) self.status("Uploading the package to PyPI via Twine…") os.system("twine upload dist/*") self.status("Pushing git tags…") os.system("git tag v{0}".format(about["__version__"])) os.system("git push --tags") sys.exit() # Where the magic happens: setup( name=NAME, version=about["__version__"], description=DESCRIPTION, long_description=long_description, long_description_content_type="text/markdown", author=AUTHOR, author_email=EMAIL, python_requires=REQUIRES_PYTHON, url=URL, packages=find_packages(exclude=["tests", "*.tests", "*.tests.*", "tests.*"]), # If your package is a single module, use this instead of 'packages': # py_modules=['mypackage'], # entry_points={ # 'console_scripts': ['mycli=mymodule:cli'], # }, install_requires=REQUIRED, extras_require=EXTRAS, include_package_data=True, license="MIT", classifiers=[ # Trove classifiers # Full list: https://pypi.python.org/pypi?%3Aaction=list_classifiers "License :: OSI Approved :: MIT License", "Programming Language :: Python", "Programming Language :: Python :: 3", "Programming Language :: Python :: 3.6", "Programming Language :: Python :: Implementation :: CPython", "Programming Language :: Python :: Implementation :: PyPy", ], # $ setup.py publish support. cmdclass={ "upload": UploadCommand, }, )
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CLMR
CLMR-master/linear_evaluation.py
import os import argparse import pytorch_lightning as pl from torch.utils.data import DataLoader from torchaudio_augmentations import Compose, RandomResizedCrop from pytorch_lightning import Trainer from pytorch_lightning.callbacks import EarlyStopping from pytorch_lightning.loggers import TensorBoardLogger from clmr.datasets import get_dataset from clmr.data import ContrastiveDataset from clmr.evaluation import evaluate from clmr.models import SampleCNN from clmr.modules import ContrastiveLearning, LinearEvaluation from clmr.utils import ( yaml_config_hook, load_encoder_checkpoint, load_finetuner_checkpoint, ) if __name__ == "__main__": parser = argparse.ArgumentParser(description="SimCLR") parser = Trainer.add_argparse_args(parser) config = yaml_config_hook("./config/config.yaml") for k, v in config.items(): parser.add_argument(f"--{k}", default=v, type=type(v)) args = parser.parse_args() pl.seed_everything(args.seed) args.accelerator = None if not os.path.exists(args.checkpoint_path): raise FileNotFoundError("That checkpoint does not exist") train_transform = [RandomResizedCrop(n_samples=args.audio_length)] # ------------ # dataloaders # ------------ train_dataset = get_dataset(args.dataset, args.dataset_dir, subset="train") valid_dataset = get_dataset(args.dataset, args.dataset_dir, subset="valid") test_dataset = get_dataset(args.dataset, args.dataset_dir, subset="test") contrastive_train_dataset = ContrastiveDataset( train_dataset, input_shape=(1, args.audio_length), transform=Compose(train_transform), ) contrastive_valid_dataset = ContrastiveDataset( valid_dataset, input_shape=(1, args.audio_length), transform=Compose(train_transform), ) contrastive_test_dataset = ContrastiveDataset( test_dataset, input_shape=(1, args.audio_length), transform=None, ) train_loader = DataLoader( contrastive_train_dataset, batch_size=args.finetuner_batch_size, num_workers=args.workers, shuffle=True, ) valid_loader = DataLoader( contrastive_valid_dataset, batch_size=args.finetuner_batch_size, num_workers=args.workers, shuffle=False, ) test_loader = DataLoader( contrastive_test_dataset, batch_size=args.finetuner_batch_size, num_workers=args.workers, shuffle=False, ) # ------------ # encoder # ------------ encoder = SampleCNN( strides=[3, 3, 3, 3, 3, 3, 3, 3, 3], supervised=args.supervised, out_dim=train_dataset.n_classes, ) n_features = encoder.fc.in_features # get dimensions of last fully-connected layer state_dict = load_encoder_checkpoint(args.checkpoint_path, train_dataset.n_classes) encoder.load_state_dict(state_dict) cl = ContrastiveLearning(args, encoder) cl.eval() cl.freeze() module = LinearEvaluation( args, cl.encoder, hidden_dim=n_features, output_dim=train_dataset.n_classes, ) train_representations_dataset = module.extract_representations(train_loader) train_loader = DataLoader( train_representations_dataset, batch_size=args.batch_size, num_workers=args.workers, shuffle=True, ) valid_representations_dataset = module.extract_representations(valid_loader) valid_loader = DataLoader( valid_representations_dataset, batch_size=args.batch_size, num_workers=args.workers, shuffle=False, ) if args.finetuner_checkpoint_path: state_dict = load_finetuner_checkpoint(args.finetuner_checkpoint_path) module.model.load_state_dict(state_dict) else: early_stop_callback = EarlyStopping( monitor="Valid/loss", patience=10, verbose=False, mode="min" ) trainer = Trainer.from_argparse_args( args, logger=TensorBoardLogger( "runs", name="CLMRv2-eval-{}".format(args.dataset) ), max_epochs=args.finetuner_max_epochs, callbacks=[early_stop_callback], ) trainer.fit(module, train_loader, valid_loader) device = "cuda:0" if args.gpus else "cpu" results = evaluate( module.encoder, module.model, contrastive_test_dataset, args.dataset, args.audio_length, device=device, ) print(results)
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CLMR-master/preprocess.py
import argparse from tqdm import tqdm from clmr.datasets import get_dataset if __name__ == "__main__": parser = argparse.ArgumentParser() parser.add_argument("--dataset", type=str, default="magnatagatune") parser.add_argument("--dataset_dir", type=str, default="./data") parser.add_argument("--sample_rate", type=int, default=22050) args = parser.parse_args() train_dataset = get_dataset(args.dataset, args.dataset_dir, subset="train") valid_dataset = get_dataset(args.dataset, args.dataset_dir, subset="valid") test_dataset = get_dataset(args.dataset, args.dataset_dir, subset="test") for i in tqdm(range(len(train_dataset))): train_dataset.preprocess(i, args.sample_rate) for i in tqdm(range(len(valid_dataset))): valid_dataset.preprocess(i, args.sample_rate) for i in tqdm(range(len(test_dataset))): test_dataset.preprocess(i, args.sample_rate)
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CLMR-master/tests/test_dataset.py
import unittest import pytest from clmr.datasets import ( get_dataset, AUDIO, LIBRISPEECH, GTZAN, MAGNATAGATUNE, MillionSongDataset, ) class TestAudioSet(unittest.TestCase): datasets = { "librispeech": LIBRISPEECH, "gtzan": GTZAN, "magnatagatune": MAGNATAGATUNE, "msd": MillionSongDataset, "audio": AUDIO, } def test_dataset_names(self): for dataset_name, dataset_type in self.datasets.items(): with pytest.raises(RuntimeError): _ = get_dataset( dataset_name, "./data/audio", subset="train", download=False ) def test_custom_audio_dataset(self): audio_dataset = get_dataset( "audio", "./tests/data/audioset", subset="train", download=False ) assert type(audio_dataset) == AUDIO assert len(audio_dataset) == 1
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CLMR-master/tests/test_spectogram.py
import unittest import torchaudio import torch.nn as nn from torchaudio_augmentations import * from clmr.datasets import AUDIO class TestAudioSet(unittest.TestCase): sample_rate = 16000 def get_audio_transforms(self, num_samples): transform = Compose( [ RandomResizedCrop(n_samples=num_samples), RandomApply([PolarityInversion()], p=0.8), RandomApply([Noise(min_snr=0.3, max_snr=0.5)], p=0.3), RandomApply([Gain()], p=0.2), RandomApply([Delay(sample_rate=self.sample_rate)], p=0.5), RandomApply( [PitchShift(n_samples=num_samples, sample_rate=self.sample_rate)], p=0.4, ), RandomApply([Reverb(sample_rate=self.sample_rate)], p=0.3), ] ) return transform def test_audioset(self): audio_dataset = AUDIO("tests/data/audioset") audio, label = audio_dataset[0] sample_rate = 22050 n_fft = 1024 n_mels = 128 stype = "magnitude" # magnitude top_db = None # f_max transform = self.get_audio_transforms(num_samples=sample_rate) spec_transform = nn.Sequential( torchaudio.transforms.MelSpectrogram( sample_rate=sample_rate, n_fft=n_fft, n_mels=n_mels, ), torchaudio.transforms.AmplitudeToDB(stype=stype, top_db=top_db), ) audio = transform(audio) audio = spec_transform(audio) assert audio.shape[1] == 128 assert audio.shape[2] == 44
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CLMR-master/tests/__init__.py
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CLMR-master/tests/test_audioset.py
import unittest import torchaudio from torchaudio_augmentations import ( Compose, RandomApply, RandomResizedCrop, PolarityInversion, Noise, Gain, Delay, PitchShift, Reverb, ) from clmr.datasets import AUDIO class TestAudioSet(unittest.TestCase): sample_rate = 16000 def get_audio_transforms(self, num_samples): transform = Compose( [ RandomResizedCrop(n_samples=num_samples), RandomApply([PolarityInversion()], p=0.8), RandomApply([Noise(min_snr=0.3, max_snr=0.5)], p=0.3), RandomApply([Gain()], p=0.2), RandomApply([Delay(sample_rate=self.sample_rate)], p=0.5), RandomApply( [PitchShift(n_samples=num_samples, sample_rate=self.sample_rate)], p=0.4, ), RandomApply([Reverb(sample_rate=self.sample_rate)], p=0.3), ] ) return transform def test_audioset(self): audio_dataset = AUDIO("./tests/data/audioset") audio, label = audio_dataset[0] assert audio.shape[0] == 1 assert audio.shape[1] == 93680 num_samples = ( self.sample_rate * 5 ) # the test item is approximately 5.8 seconds. transform = self.get_audio_transforms(num_samples=num_samples) audio = transform(audio) torchaudio.save("augmented_sample.wav", audio, sample_rate=self.sample_rate)
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CLMR-master/clmr/data.py
"""Wrapper for Torch Dataset class to enable contrastive training """ import torch from torch import Tensor from torch.utils.data import Dataset from torchaudio_augmentations import Compose from typing import Tuple, List class ContrastiveDataset(Dataset): def __init__(self, dataset: Dataset, input_shape: List[int], transform: Compose): self.dataset = dataset self.transform = transform self.input_shape = input_shape self.ignore_idx = [] def __getitem__(self, idx) -> Tuple[Tensor, Tensor]: if idx in self.ignore_idx: return self[idx + 1] audio, label = self.dataset[idx] if audio.shape[1] < self.input_shape[1]: self.ignore_idx.append(idx) return self[idx + 1] if self.transform: audio = self.transform(audio) return audio, label def __len__(self) -> int: return len(self.dataset) def concat_clip(self, n: int, audio_length: float) -> Tensor: audio, _ = self.dataset[n] batch = torch.split(audio, audio_length, dim=1) batch = torch.cat(batch[:-1]) batch = batch.unsqueeze(dim=1) if self.transform: batch = self.transform(batch) return batch
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CLMR-master/clmr/evaluation.py
import torch import torch.nn as nn import torch.nn.functional as F from torch.utils.data import Dataset from tqdm import tqdm from sklearn import metrics def evaluate( encoder: nn.Module, finetuned_head: nn.Module, test_dataset: Dataset, dataset_name: str, audio_length: int, device, ) -> dict: est_array = [] gt_array = [] encoder = encoder.to(device) encoder.eval() if finetuned_head is not None: finetuned_head = finetuned_head.to(device) finetuned_head.eval() with torch.no_grad(): for idx in tqdm(range(len(test_dataset))): _, label = test_dataset[idx] batch = test_dataset.concat_clip(idx, audio_length) batch = batch.to(device) output = encoder(batch) if finetuned_head: output = finetuned_head(output) # we always return logits, so we need a sigmoid here for multi-label classification if dataset_name in ["magnatagatune", "msd"]: output = torch.sigmoid(output) else: output = F.softmax(output, dim=1) track_prediction = output.mean(dim=0) est_array.append(track_prediction) gt_array.append(label) if dataset_name in ["magnatagatune", "msd"]: est_array = torch.stack(est_array, dim=0).cpu().numpy() gt_array = torch.stack(gt_array, dim=0).cpu().numpy() roc_aucs = metrics.roc_auc_score(gt_array, est_array, average="macro") pr_aucs = metrics.average_precision_score(gt_array, est_array, average="macro") return { "PR-AUC": pr_aucs, "ROC-AUC": roc_aucs, } est_array = torch.stack(est_array, dim=0) _, est_array = torch.max(est_array, 1) # extract the predicted labels here. accuracy = metrics.accuracy_score(gt_array, est_array) return {"Accuracy": accuracy}
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CLMR-master/clmr/modules/callbacks.py
import matplotlib import matplotlib.pyplot as plt matplotlib.use("Agg") from pytorch_lightning.callbacks import Callback class PlotSpectogramCallback(Callback): def on_train_start(self, trainer, pl_module): if not pl_module.hparams.time_domain: x, y = trainer.train_dataloader.dataset[0] fig = plt.figure() x_i = x[0, :] fig.add_subplot(1, 2, 1) plt.imshow(x_i) if x.shape[0] > 1: x_j = x[1, :] fig.add_subplot(1, 2, 2) plt.imshow(x_j) trainer.logger.experiment.add_figure( "Train/spectogram_sample", fig, global_step=0 ) plt.close()
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CLMR-master/clmr/modules/linear_evaluation.py
import torch import torch.nn as nn import torchmetrics from copy import deepcopy from pytorch_lightning import LightningModule from torch import Tensor from torch.utils.data import DataLoader, Dataset, TensorDataset from typing import Tuple from tqdm import tqdm class LinearEvaluation(LightningModule): def __init__(self, args, encoder: nn.Module, hidden_dim: int, output_dim: int): super().__init__() self.save_hyperparameters(args) self.encoder = encoder self.hidden_dim = hidden_dim self.output_dim = output_dim if self.hparams.finetuner_mlp: self.model = nn.Sequential( nn.Linear(self.hidden_dim, self.hidden_dim), nn.ReLU(), nn.Linear(self.hidden_dim, self.output_dim), ) else: self.model = nn.Sequential(nn.Linear(self.hidden_dim, self.output_dim)) self.criterion = self.configure_criterion() self.accuracy = torchmetrics.Accuracy() self.average_precision = torchmetrics.AveragePrecision(pos_label=1) def forward(self, x: Tensor, y: Tensor) -> Tuple[Tensor, Tensor]: preds = self._forward_representations(x, y) loss = self.criterion(preds, y) return loss, preds def _forward_representations(self, x: Tensor, y: Tensor) -> Tensor: """ Perform a forward pass using either the representations, or the input data (that we still) need to extract the represenations from using our encoder. """ if x.shape[-1] == self.hidden_dim: h0 = x else: with torch.no_grad(): h0 = self.encoder(x) return self.model(h0) def training_step(self, batch, _) -> Tensor: x, y = batch loss, preds = self.forward(x, y) self.log("Train/accuracy", self.accuracy(preds, y)) # self.log("Train/pr_auc", self.average_precision(preds, y)) self.log("Train/loss", loss) return loss def validation_step(self, batch, _) -> Tensor: x, y = batch loss, preds = self.forward(x, y) self.log("Valid/accuracy", self.accuracy(preds, y)) # self.log("Valid/pr_auc", self.average_precision(preds, y)) self.log("Valid/loss", loss) return loss def configure_criterion(self) -> nn.Module: if self.hparams.dataset in ["magnatagatune", "msd"]: criterion = nn.BCEWithLogitsLoss() else: criterion = nn.CrossEntropyLoss() return criterion def configure_optimizers(self) -> dict: optimizer = torch.optim.Adam( self.model.parameters(), lr=self.hparams.finetuner_learning_rate, weight_decay=self.hparams.weight_decay, ) scheduler = torch.optim.lr_scheduler.ReduceLROnPlateau( optimizer, mode="min", factor=0.1, patience=5, threshold=0.0001, threshold_mode="rel", cooldown=0, min_lr=0, eps=1e-08, verbose=False, ) if scheduler: return { "optimizer": optimizer, "lr_scheduler": scheduler, "monitor": "Valid/loss", } else: return {"optimizer": optimizer} def extract_representations(self, dataloader: DataLoader) -> Dataset: representations = [] ys = [] for x, y in tqdm(dataloader): with torch.no_grad(): h0 = self.encoder(x) representations.append(h0) ys.append(y) if len(representations) > 1: representations = torch.cat(representations, dim=0) ys = torch.cat(ys, dim=0) else: representations = representations[0] ys = ys[0] tensor_dataset = TensorDataset(representations, ys) return tensor_dataset
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CLMR-master/clmr/modules/supervised_learning.py
import torch import torchmetrics import torch.nn as nn from pytorch_lightning import LightningModule class SupervisedLearning(LightningModule): def __init__(self, args, encoder: nn.Module, output_dim: int): super().__init__() self.save_hyperparameters(args) self.encoder = encoder self.encoder.fc.out_features = output_dim self.output_dim = output_dim self.model = self.encoder self.criterion = self.configure_criterion() self.average_precision = torchmetrics.AveragePrecision(pos_label=1) def forward(self, x, y): x = x[:, 0, :] # we only have 1 sample, no augmentations preds = self.model(x) loss = self.criterion(preds, y) return loss, preds def training_step(self, batch, batch_idx): x, y = batch loss, preds = self.forward(x, y) self.log("Train/pr_auc", self.average_precision(preds, y)) self.log("Train/loss", loss) return loss def validation_step(self, batch, batch_idx): x, y = batch loss, preds = self.forward(x, y) self.log("Valid/pr_auc", self.average_precision(preds, y)) self.log("Valid/loss", loss) return loss def configure_criterion(self): if self.hparams.dataset in ["magnatagatune"]: criterion = nn.BCEWithLogitsLoss() else: criterion = nn.CrossEntropyLoss() return criterion def configure_optimizers(self): optimizer = torch.optim.SGD( self.model.parameters(), lr=self.hparams.learning_rate, momentum=0.9, weight_decay=1e-6, nesterov=True, ) scheduler = torch.optim.lr_scheduler.ReduceLROnPlateau( optimizer, mode="min", factor=0.2, patience=5, verbose=True ) if scheduler: return { "optimizer": optimizer, "lr_scheduler": scheduler, "monitor": "Valid/loss", } else: return {"optimizer": optimizer}
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CLMR-master/clmr/modules/__init__.py
from .callbacks import PlotSpectogramCallback from .contrastive_learning import ContrastiveLearning from .linear_evaluation import LinearEvaluation from .supervised_learning import SupervisedLearning
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CLMR-master/clmr/modules/contrastive_learning.py
import torch import torch.nn as nn from pytorch_lightning import LightningModule from torch import Tensor from simclr import SimCLR from simclr.modules import NT_Xent, LARS class ContrastiveLearning(LightningModule): def __init__(self, args, encoder: nn.Module): super().__init__() self.save_hyperparameters(args) self.encoder = encoder self.n_features = ( self.encoder.fc.in_features ) # get dimensions of last fully-connected layer self.model = SimCLR(self.encoder, self.hparams.projection_dim, self.n_features) self.criterion = self.configure_criterion() def forward(self, x_i: Tensor, x_j: Tensor) -> Tensor: _, _, z_i, z_j = self.model(x_i, x_j) loss = self.criterion(z_i, z_j) return loss def training_step(self, batch, _) -> Tensor: x, _ = batch x_i = x[:, 0, :] x_j = x[:, 1, :] loss = self.forward(x_i, x_j) self.log("Train/loss", loss) return loss def configure_criterion(self) -> nn.Module: # PT lightning aggregates differently in DP mode if self.hparams.accelerator == "dp" and self.hparams.gpus: batch_size = int(self.hparams.batch_size / self.hparams.gpus) else: batch_size = self.hparams.batch_size criterion = NT_Xent(batch_size, self.hparams.temperature, world_size=1) return criterion def configure_optimizers(self) -> dict: scheduler = None if self.hparams.optimizer == "Adam": optimizer = torch.optim.Adam(self.model.parameters(), lr=3e-4) elif self.hparams.optimizer == "LARS": # optimized using LARS with linear learning rate scaling # (i.e. LearningRate = 0.3 × BatchSize/256) and weight decay of 10−6. learning_rate = 0.3 * self.hparams.batch_size / 256 optimizer = LARS( self.model.parameters(), lr=learning_rate, weight_decay=self.hparams.weight_decay, exclude_from_weight_decay=["batch_normalization", "bias"], ) # "decay the learning rate with the cosine decay schedule without restarts" scheduler = torch.optim.lr_scheduler.CosineAnnealingLR( optimizer, self.hparams.max_epochs, eta_min=0, last_epoch=-1 ) else: raise NotImplementedError if scheduler: return {"optimizer": optimizer, "lr_scheduler": scheduler} else: return {"optimizer": optimizer}
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CLMR-master/clmr/models/sample_cnn.py
import torch import torch.nn as nn from .model import Model class SampleCNN(Model): def __init__(self, strides, supervised, out_dim): super(SampleCNN, self).__init__() self.strides = strides self.supervised = supervised self.sequential = [ nn.Sequential( nn.Conv1d(1, 128, kernel_size=3, stride=3, padding=0), nn.BatchNorm1d(128), nn.ReLU(), ) ] self.hidden = [ [128, 128], [128, 128], [128, 256], [256, 256], [256, 256], [256, 256], [256, 256], [256, 256], [256, 512], ] assert len(self.hidden) == len( self.strides ), "Number of hidden layers and strides are not equal" for stride, (h_in, h_out) in zip(self.strides, self.hidden): self.sequential.append( nn.Sequential( nn.Conv1d(h_in, h_out, kernel_size=stride, stride=1, padding=1), nn.BatchNorm1d(h_out), nn.ReLU(), nn.MaxPool1d(stride, stride=stride), ) ) # 1 x 512 self.sequential.append( nn.Sequential( nn.Conv1d(512, 512, kernel_size=3, stride=1, padding=1), nn.BatchNorm1d(512), nn.ReLU(), ) ) self.sequential = nn.Sequential(*self.sequential) if self.supervised: self.dropout = nn.Dropout(0.5) self.fc = nn.Linear(512, out_dim) def forward(self, x): out = self.sequential(x) if self.supervised: out = self.dropout(out) out = out.reshape(x.shape[0], out.size(1) * out.size(2)) logit = self.fc(out) return logit
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CLMR-master/clmr/models/sample_cnn_xl.py
import torch import torch.nn as nn from .model import Model class SampleCNNXL(Model): def __init__(self, strides, supervised, out_dim): super(SampleCNN, self).__init__() self.strides = strides self.supervised = supervised self.sequential = [ nn.Sequential( nn.Conv1d(1, 128, kernel_size=3, stride=3, padding=0), nn.BatchNorm1d(128), nn.ReLU(), ) ] self.hidden = [ [128, 128], [128, 128], [128, 256], [256, 256], [256, 512], [512, 512], [512, 1024], [1024, 1024], [1024, 2048], ] assert len(self.hidden) == len( self.strides ), "Number of hidden layers and strides are not equal" for stride, (h_in, h_out) in zip(self.strides, self.hidden): self.sequential.append( nn.Sequential( nn.Conv1d(h_in, h_out, kernel_size=stride, stride=1, padding=1), nn.BatchNorm1d(h_out), nn.ReLU(), nn.MaxPool1d(stride, stride=stride), ) ) # 1 x 512 self.sequential.append( nn.Sequential( nn.Conv1d(2048, 2048, kernel_size=3, stride=1, padding=1), nn.BatchNorm1d(2048), nn.ReLU(), ) ) self.sequential = nn.Sequential(*self.sequential) if self.supervised: self.dropout = nn.Dropout(0.5) self.fc = nn.Linear(2048, out_dim) def forward(self, x): out = self.sequential(x) if self.supervised: out = self.dropout(out) out = out.reshape(x.shape[0], out.size(1) * out.size(2)) logit = self.fc(out) return logit
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CLMR-master/clmr/models/shortchunk_cnn.py
import torch.nn as nn class ShortChunkCNN_Res(nn.Module): """ Short-chunk CNN architecture with residual connections. """ def __init__(self, n_channels=128, n_classes=50): super(ShortChunkCNN_Res, self).__init__() self.spec_bn = nn.BatchNorm2d(1) # CNN self.layer1 = Res_2d(1, n_channels, stride=2) self.layer2 = Res_2d(n_channels, n_channels, stride=2) self.layer3 = Res_2d(n_channels, n_channels * 2, stride=2) self.layer4 = Res_2d(n_channels * 2, n_channels * 2, stride=2) self.layer5 = Res_2d(n_channels * 2, n_channels * 2, stride=2) self.layer6 = Res_2d(n_channels * 2, n_channels * 2, stride=2) self.layer7 = Res_2d(n_channels * 2, n_channels * 4, stride=2) # Dense self.dense1 = nn.Linear(n_channels * 4, n_channels * 4) self.bn = nn.BatchNorm1d(n_channels * 4) self.fc = nn.Linear(n_channels * 4, n_classes) self.dropout = nn.Dropout(0.5) self.relu = nn.ReLU() def forward(self, x): x = self.spec_bn(x) # CNN x = self.layer1(x) x = self.layer2(x) x = self.layer3(x) x = self.layer4(x) x = self.layer5(x) x = self.layer6(x) x = self.layer7(x) x = x.squeeze(2) # Global Max Pooling if x.size(-1) != 1: x = nn.MaxPool1d(x.size(-1))(x) x = x.squeeze(2) # Dense x = self.dense1(x) x = self.bn(x) x = self.relu(x) x = self.dropout(x) x = self.fc(x) # x = nn.Sigmoid()(x) return x class Res_2d(nn.Module): def __init__(self, input_channels, output_channels, shape=3, stride=2): super(Res_2d, self).__init__() # convolution self.conv_1 = nn.Conv2d( input_channels, output_channels, shape, stride=stride, padding=shape // 2 ) self.bn_1 = nn.BatchNorm2d(output_channels) self.conv_2 = nn.Conv2d( output_channels, output_channels, shape, padding=shape // 2 ) self.bn_2 = nn.BatchNorm2d(output_channels) # residual self.diff = False if (stride != 1) or (input_channels != output_channels): self.conv_3 = nn.Conv2d( input_channels, output_channels, shape, stride=stride, padding=shape // 2, ) self.bn_3 = nn.BatchNorm2d(output_channels) self.diff = True self.relu = nn.ReLU() def forward(self, x): # convolution out = self.bn_2(self.conv_2(self.relu(self.bn_1(self.conv_1(x))))) # residual if self.diff: x = self.bn_3(self.conv_3(x)) out = x + out out = self.relu(out) return out
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CLMR-master/clmr/models/model.py
import torch.nn as nn import numpy as np class Model(nn.Module): def __init__(self): super(Model, self).__init__() def initialize(self, m): if isinstance(m, (nn.Conv1d)): # nn.init.xavier_uniform_(m.weight) # if m.bias is not None: # nn.init.xavier_uniform_(m.bias) nn.init.kaiming_uniform_(m.weight, mode="fan_in", nonlinearity="relu") class Identity(nn.Module): def __init__(self): super(Identity, self).__init__() def forward(self, x): return x
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CLMR-master/clmr/models/__init__.py
from .model import Model, Identity from .sample_cnn import SampleCNN from .shortchunk_cnn import ShortChunkCNN_Res from .sinc_net import SincNet
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CLMR
CLMR-master/clmr/models/sinc_net.py
import numpy as np import torch import torch.nn.functional as F import torch.nn as nn import sys from torch.autograd import Variable import math def flip(x, dim): xsize = x.size() dim = x.dim() + dim if dim < 0 else dim x = x.contiguous() x = x.view(-1, *xsize[dim:]) x = x.view(x.size(0), x.size(1), -1)[ :, getattr( torch.arange(x.size(1) - 1, -1, -1), ("cpu", "cuda")[x.is_cuda] )().long(), :, ] return x.view(xsize) def sinc(band, t_right): y_right = torch.sin(2 * math.pi * band * t_right) / (2 * math.pi * band * t_right) y_left = flip(y_right, 0) y = torch.cat([y_left, Variable(torch.ones(1)).cuda(), y_right]) return y class SincConv_fast(nn.Module): """Sinc-based convolution Parameters ---------- in_channels : `int` Number of input channels. Must be 1. out_channels : `int` Number of filters. kernel_size : `int` Filter length. sample_rate : `int`, optional Sample rate. Defaults to 16000. Usage ----- See `torch.nn.Conv1d` Reference --------- Mirco Ravanelli, Yoshua Bengio, "Speaker Recognition from raw waveform with SincNet". https://arxiv.org/abs/1808.00158 """ @staticmethod def to_mel(hz): return 2595 * np.log10(1 + hz / 700) @staticmethod def to_hz(mel): return 700 * (10 ** (mel / 2595) - 1) def __init__( self, out_channels, kernel_size, sample_rate=16000, in_channels=1, stride=1, padding=0, dilation=1, bias=False, groups=1, min_low_hz=50, min_band_hz=50, ): super(SincConv_fast, self).__init__() if in_channels != 1: # msg = (f'SincConv only support one input channel ' # f'(here, in_channels = {in_channels:d}).') msg = ( "SincConv only support one input channel (here, in_channels = {%i})" % (in_channels) ) raise ValueError(msg) self.out_channels = out_channels self.kernel_size = kernel_size # Forcing the filters to be odd (i.e, perfectly symmetrics) if kernel_size % 2 == 0: self.kernel_size = self.kernel_size + 1 self.stride = stride self.padding = padding self.dilation = dilation if bias: raise ValueError("SincConv does not support bias.") if groups > 1: raise ValueError("SincConv does not support groups.") self.sample_rate = sample_rate self.min_low_hz = min_low_hz self.min_band_hz = min_band_hz # initialize filterbanks such that they are equally spaced in Mel scale low_hz = 30 high_hz = self.sample_rate / 2 - (self.min_low_hz + self.min_band_hz) mel = np.linspace( self.to_mel(low_hz), self.to_mel(high_hz), self.out_channels + 1 ) hz = self.to_hz(mel) # filter lower frequency (out_channels, 1) self.low_hz_ = nn.Parameter(torch.Tensor(hz[:-1]).view(-1, 1)) # filter frequency band (out_channels, 1) self.band_hz_ = nn.Parameter(torch.Tensor(np.diff(hz)).view(-1, 1)) # Hamming window # self.window_ = torch.hamming_window(self.kernel_size) n_lin = torch.linspace( 0, (self.kernel_size / 2) - 1, steps=int((self.kernel_size / 2)) ) # computing only half of the window self.window_ = 0.54 - 0.46 * torch.cos(2 * math.pi * n_lin / self.kernel_size) # (1, kernel_size/2) n = (self.kernel_size - 1) / 2.0 self.n_ = ( 2 * math.pi * torch.arange(-n, 0).view(1, -1) / self.sample_rate ) # Due to symmetry, I only need half of the time axes def forward(self, waveforms): """ Parameters ---------- waveforms : `torch.Tensor` (batch_size, 1, n_samples) Batch of waveforms. Returns ------- features : `torch.Tensor` (batch_size, out_channels, n_samples_out) Batch of sinc filters activations. """ self.n_ = self.n_.to(waveforms.device) self.window_ = self.window_.to(waveforms.device) low = self.min_low_hz + torch.abs(self.low_hz_) high = torch.clamp( low + self.min_band_hz + torch.abs(self.band_hz_), self.min_low_hz, self.sample_rate / 2, ) band = (high - low)[:, 0] f_times_t_low = torch.matmul(low, self.n_) f_times_t_high = torch.matmul(high, self.n_) band_pass_left = ( (torch.sin(f_times_t_high) - torch.sin(f_times_t_low)) / (self.n_ / 2) ) * self.window_ # Equivalent of Eq.4 of the reference paper (SPEAKER RECOGNITION FROM RAW WAVEFORM WITH SINCNET). I just have expanded the sinc and simplified the terms. This way I avoid several useless computations. band_pass_center = 2 * band.view(-1, 1) band_pass_right = torch.flip(band_pass_left, dims=[1]) band_pass = torch.cat( [band_pass_left, band_pass_center, band_pass_right], dim=1 ) band_pass = band_pass / (2 * band[:, None]) self.filters = (band_pass).view(self.out_channels, 1, self.kernel_size) return F.conv1d( waveforms, self.filters, stride=self.stride, padding=self.padding, dilation=self.dilation, bias=None, groups=1, ) class sinc_conv(nn.Module): def __init__(self, N_filt, Filt_dim, fs): super(sinc_conv, self).__init__() # Mel Initialization of the filterbanks low_freq_mel = 80 high_freq_mel = 2595 * np.log10(1 + (fs / 2) / 700) # Convert Hz to Mel mel_points = np.linspace( low_freq_mel, high_freq_mel, N_filt ) # Equally spaced in Mel scale f_cos = 700 * (10 ** (mel_points / 2595) - 1) # Convert Mel to Hz b1 = np.roll(f_cos, 1) b2 = np.roll(f_cos, -1) b1[0] = 30 b2[-1] = (fs / 2) - 100 self.freq_scale = fs * 1.0 self.filt_b1 = nn.Parameter(torch.from_numpy(b1 / self.freq_scale)) self.filt_band = nn.Parameter(torch.from_numpy((b2 - b1) / self.freq_scale)) self.N_filt = N_filt self.Filt_dim = Filt_dim self.fs = fs def forward(self, x): filters = Variable(torch.zeros((self.N_filt, self.Filt_dim))).cuda() N = self.Filt_dim t_right = Variable( torch.linspace(1, (N - 1) / 2, steps=int((N - 1) / 2)) / self.fs ).cuda() min_freq = 50.0 min_band = 50.0 filt_beg_freq = torch.abs(self.filt_b1) + min_freq / self.freq_scale filt_end_freq = filt_beg_freq + ( torch.abs(self.filt_band) + min_band / self.freq_scale ) n = torch.linspace(0, N, steps=N) # Filter window (hamming) window = 0.54 - 0.46 * torch.cos(2 * math.pi * n / N) window = Variable(window.float().cuda()) for i in range(self.N_filt): low_pass1 = ( 2 * filt_beg_freq[i].float() * sinc(filt_beg_freq[i].float() * self.freq_scale, t_right) ) low_pass2 = ( 2 * filt_end_freq[i].float() * sinc(filt_end_freq[i].float() * self.freq_scale, t_right) ) band_pass = low_pass2 - low_pass1 band_pass = band_pass / torch.max(band_pass) filters[i, :] = band_pass.cuda() * window out = F.conv1d(x, filters.view(self.N_filt, 1, self.Filt_dim)) return out def act_fun(act_type): if act_type == "relu": return nn.ReLU() if act_type == "tanh": return nn.Tanh() if act_type == "sigmoid": return nn.Sigmoid() if act_type == "leaky_relu": return nn.LeakyReLU(0.2) if act_type == "elu": return nn.ELU() if act_type == "softmax": return nn.LogSoftmax(dim=1) if act_type == "linear": return nn.LeakyReLU(1) # initializzed like this, but not used in forward! class LayerNorm(nn.Module): def __init__(self, features, eps=1e-6): super(LayerNorm, self).__init__() self.gamma = nn.Parameter(torch.ones(features)) self.beta = nn.Parameter(torch.zeros(features)) self.eps = eps def forward(self, x): mean = x.mean(-1, keepdim=True) std = x.std(-1, keepdim=True) return self.gamma * (x - mean) / (std + self.eps) + self.beta class MLP(nn.Module): def __init__(self, options): super(MLP, self).__init__() self.input_dim = int(options["input_dim"]) self.fc_lay = options["fc_lay"] self.fc_drop = options["fc_drop"] self.fc_use_batchnorm = options["fc_use_batchnorm"] self.fc_use_laynorm = options["fc_use_laynorm"] self.fc_use_laynorm_inp = options["fc_use_laynorm_inp"] self.fc_use_batchnorm_inp = options["fc_use_batchnorm_inp"] self.fc_act = options["fc_act"] self.wx = nn.ModuleList([]) self.bn = nn.ModuleList([]) self.ln = nn.ModuleList([]) self.act = nn.ModuleList([]) self.drop = nn.ModuleList([]) # input layer normalization if self.fc_use_laynorm_inp: self.ln0 = LayerNorm(self.input_dim) # input batch normalization if self.fc_use_batchnorm_inp: self.bn0 = nn.BatchNorm1d([self.input_dim], momentum=0.05) self.N_fc_lay = len(self.fc_lay) current_input = self.input_dim # Initialization of hidden layers for i in range(self.N_fc_lay): # dropout self.drop.append(nn.Dropout(p=self.fc_drop[i])) # activation self.act.append(act_fun(self.fc_act[i])) add_bias = True # layer norm initialization self.ln.append(LayerNorm(self.fc_lay[i])) self.bn.append(nn.BatchNorm1d(self.fc_lay[i], momentum=0.05)) if self.fc_use_laynorm[i] or self.fc_use_batchnorm[i]: add_bias = False # Linear operations self.wx.append(nn.Linear(current_input, self.fc_lay[i], bias=add_bias)) # weight initialization self.wx[i].weight = torch.nn.Parameter( torch.Tensor(self.fc_lay[i], current_input).uniform_( -np.sqrt(0.01 / (current_input + self.fc_lay[i])), np.sqrt(0.01 / (current_input + self.fc_lay[i])), ) ) self.wx[i].bias = torch.nn.Parameter(torch.zeros(self.fc_lay[i])) current_input = self.fc_lay[i] def forward(self, x): # Applying Layer/Batch Norm if bool(self.fc_use_laynorm_inp): x = self.ln0((x)) if bool(self.fc_use_batchnorm_inp): x = self.bn0((x)) for i in range(self.N_fc_lay): if self.fc_act[i] != "linear": if self.fc_use_laynorm[i]: x = self.drop[i](self.act[i](self.ln[i](self.wx[i](x)))) if self.fc_use_batchnorm[i]: x = self.drop[i](self.act[i](self.bn[i](self.wx[i](x)))) if ( self.fc_use_batchnorm[i] == False and self.fc_use_laynorm[i] == False ): x = self.drop[i](self.act[i](self.wx[i](x))) else: if self.fc_use_laynorm[i]: x = self.drop[i](self.ln[i](self.wx[i](x))) if self.fc_use_batchnorm[i]: x = self.drop[i](self.bn[i](self.wx[i](x))) if ( self.fc_use_batchnorm[i] == False and self.fc_use_laynorm[i] == False ): x = self.drop[i](self.wx[i](x)) return x class SincNet(nn.Module): def __init__( self, cnn_N_filt, cnn_len_filt, cnn_max_pool_len, cnn_act, cnn_drop, cnn_use_laynorm, cnn_use_batchnorm, cnn_use_laynorm_inp, cnn_use_batchnorm_inp, input_dim, fs, ): super(SincNet, self).__init__() self.cnn_N_filt = cnn_N_filt self.cnn_len_filt = cnn_len_filt self.cnn_max_pool_len = cnn_max_pool_len self.cnn_act = cnn_act self.cnn_drop = cnn_drop self.cnn_use_laynorm = cnn_use_laynorm self.cnn_use_batchnorm = cnn_use_batchnorm self.cnn_use_laynorm_inp = cnn_use_laynorm_inp self.cnn_use_batchnorm_inp = cnn_use_batchnorm_inp self.input_dim = int(input_dim) self.fs = fs self.N_cnn_lay = len(self.cnn_N_filt) self.conv = nn.ModuleList([]) self.bn = nn.ModuleList([]) self.ln = nn.ModuleList([]) self.act = nn.ModuleList([]) self.drop = nn.ModuleList([]) if self.cnn_use_laynorm_inp: self.ln0 = LayerNorm(self.input_dim) if self.cnn_use_batchnorm_inp: self.bn0 = nn.BatchNorm1d([self.input_dim], momentum=0.05) current_input = self.input_dim for i in range(self.N_cnn_lay): N_filt = int(self.cnn_N_filt[i]) len_filt = int(self.cnn_len_filt[i]) # dropout self.drop.append(nn.Dropout(p=self.cnn_drop[i])) # activation self.act.append(act_fun(self.cnn_act[i])) # layer norm initialization self.ln.append( LayerNorm( [ N_filt, int( (current_input - self.cnn_len_filt[i] + 1) / self.cnn_max_pool_len[i] ), ] ) ) self.bn.append( nn.BatchNorm1d( N_filt, int( (current_input - self.cnn_len_filt[i] + 1) / self.cnn_max_pool_len[i] ), momentum=0.05, ) ) if i == 0: self.conv.append( SincConv_fast(self.cnn_N_filt[0], self.cnn_len_filt[0], self.fs) ) else: self.conv.append( nn.Conv1d( self.cnn_N_filt[i - 1], self.cnn_N_filt[i], self.cnn_len_filt[i] ) ) current_input = int( (current_input - self.cnn_len_filt[i] + 1) / self.cnn_max_pool_len[i] ) self.out_dim = current_input * N_filt def forward(self, x): batch = x.shape[0] seq_len = x.shape[1] if bool(self.cnn_use_laynorm_inp): x = self.ln0((x)) if bool(self.cnn_use_batchnorm_inp): x = self.bn0((x)) x = x.view(batch, 1, seq_len) for i in range(self.N_cnn_lay): if self.cnn_use_laynorm[i]: if i == 0: x = self.drop[i]( self.act[i]( self.ln[i]( F.max_pool1d( torch.abs(self.conv[i](x)), self.cnn_max_pool_len[i] ) ) ) ) else: x = self.drop[i]( self.act[i]( self.ln[i]( F.max_pool1d(self.conv[i](x), self.cnn_max_pool_len[i]) ) ) ) if self.cnn_use_batchnorm[i]: x = self.drop[i]( self.act[i]( self.bn[i]( F.max_pool1d(self.conv[i](x), self.cnn_max_pool_len[i]) ) ) ) if self.cnn_use_batchnorm[i] == False and self.cnn_use_laynorm[i] == False: x = self.drop[i]( self.act[i](F.max_pool1d(self.conv[i](x), self.cnn_max_pool_len[i])) ) x = x.view(batch, -1) return x
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CLMR-master/clmr/datasets/magnatagatune.py
import os import warnings import subprocess import torch import numpy as np import zipfile from collections import defaultdict from typing import Any, Tuple, Optional from tqdm import tqdm import soundfile as sf import torchaudio torchaudio.set_audio_backend("soundfile") from torch import Tensor, FloatTensor from torchaudio.datasets.utils import ( download_url, extract_archive, ) from clmr.datasets import Dataset FOLDER_IN_ARCHIVE = "magnatagatune" _CHECKSUMS = { "http://mi.soi.city.ac.uk/datasets/magnatagatune/mp3.zip.001": "", "http://mi.soi.city.ac.uk/datasets/magnatagatune/mp3.zip.002": "", "http://mi.soi.city.ac.uk/datasets/magnatagatune/mp3.zip.003": "", "http://mi.soi.city.ac.uk/datasets/magnatagatune/annotations_final.csv": "", "https://github.com/minzwon/sota-music-tagging-models/raw/master/split/mtat/binary.npy": "", "https://github.com/minzwon/sota-music-tagging-models/raw/master/split/mtat/tags.npy": "", "https://github.com/minzwon/sota-music-tagging-models/raw/master/split/mtat/test.npy": "", "https://github.com/minzwon/sota-music-tagging-models/raw/master/split/mtat/train.npy": "", "https://github.com/minzwon/sota-music-tagging-models/raw/master/split/mtat/valid.npy": "", "https://github.com/jordipons/musicnn-training/raw/master/data/index/mtt/train_gt_mtt.tsv": "", "https://github.com/jordipons/musicnn-training/raw/master/data/index/mtt/val_gt_mtt.tsv": "", "https://github.com/jordipons/musicnn-training/raw/master/data/index/mtt/test_gt_mtt.tsv": "", "https://github.com/jordipons/musicnn-training/raw/master/data/index/mtt/index_mtt.tsv": "", } def get_file_list(root, subset, split): if subset == "train": if split == "pons2017": fl = open(os.path.join(root, "train_gt_mtt.tsv")).read().splitlines() else: fl = np.load(os.path.join(root, "train.npy")) elif subset == "valid": if split == "pons2017": fl = open(os.path.join(root, "val_gt_mtt.tsv")).read().splitlines() else: fl = np.load(os.path.join(root, "valid.npy")) else: if split == "pons2017": fl = open(os.path.join(root, "test_gt_mtt.tsv")).read().splitlines() else: fl = np.load(os.path.join(root, "test.npy")) if split == "pons2017": binary = {} index = open(os.path.join(root, "index_mtt.tsv")).read().splitlines() fp_dict = {} for i in index: clip_id, fp = i.split("\t") fp_dict[clip_id] = fp for idx, f in enumerate(fl): clip_id, label = f.split("\t") fl[idx] = "{}\t{}".format(clip_id, fp_dict[clip_id]) clip_id = int(clip_id) binary[clip_id] = eval(label) else: binary = np.load(os.path.join(root, "binary.npy")) return fl, binary class MAGNATAGATUNE(Dataset): """Create a Dataset for MagnaTagATune. Args: root (str): Path to the directory where the dataset is found or downloaded. folder_in_archive (str, optional): The top-level directory of the dataset. download (bool, optional): Whether to download the dataset if it is not found at root path. (default: ``False``). subset (str, optional): Which subset of the dataset to use. One of ``"training"``, ``"validation"``, ``"testing"`` or ``None``. If ``None``, the entire dataset is used. (default: ``None``). """ _ext_audio = ".wav" def __init__( self, root: str, folder_in_archive: Optional[str] = FOLDER_IN_ARCHIVE, download: Optional[bool] = False, subset: Optional[str] = None, split: Optional[str] = "pons2017", ) -> None: super(MAGNATAGATUNE, self).__init__(root) self.root = root self.folder_in_archive = folder_in_archive self.download = download self.subset = subset self.split = split assert subset is None or subset in ["train", "valid", "test"], ( "When `subset` not None, it must take a value from " + "{'train', 'valid', 'test'}." ) self._path = os.path.join(root, folder_in_archive) if download: if not os.path.isdir(self._path): os.makedirs(self._path) zip_files = [] for url, checksum in _CHECKSUMS.items(): target_fn = os.path.basename(url) target_fp = os.path.join(self._path, target_fn) if ".zip" in target_fp: zip_files.append(target_fp) if not os.path.exists(target_fp): download_url( url, self._path, filename=target_fn, hash_value=checksum, hash_type="md5", ) if not os.path.exists( os.path.join( self._path, "f", "american_bach_soloists-j_s__bach_solo_cantatas-01-bwv54__i_aria-30-59.mp3", ) ): merged_zip = os.path.join(self._path, "mp3.zip") print("Merging zip files...") with open(merged_zip, "wb") as f: for filename in zip_files: with open(filename, "rb") as g: f.write(g.read()) extract_archive(merged_zip) if not os.path.isdir(self._path): raise RuntimeError( "Dataset not found. Please use `download=True` to download it." ) self.fl, self.binary = get_file_list(self._path, self.subset, self.split) self.n_classes = 50 # self.binary.shape[1] # self.audio = {} # for f in tqdm(self.fl): # clip_id, fp = f.split("\t") # if clip_id not in self.audio.keys(): # audio, _ = load_magnatagatune_item(fp, self._path, self._ext_audio) # self.audio[clip_id] = audio def file_path(self, n: int) -> str: _, fp = self.fl[n].split("\t") return os.path.join(self._path, fp) def __getitem__(self, n: int) -> Tuple[Tensor, Tensor]: """Load the n-th sample from the dataset. Args: n (int): The index of the sample to be loaded Returns: tuple: ``(waveform, label)`` """ clip_id, fp = self.fl[n].split("\t") label = self.binary[int(clip_id)] audio, _ = self.load(n) label = FloatTensor(label) return audio, label def __len__(self) -> int: return len(self.fl)
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CLMR-master/clmr/datasets/million_song_dataset.py
import os import pickle import torch import torchaudio from collections import defaultdict from pathlib import Path from torch import Tensor, FloatTensor from tqdm import tqdm from typing import Any, Tuple, Optional from clmr.datasets import Dataset def load_id2gt(gt_file, msd_7d): ids = [] with open(gt_file) as f: id2gt = dict() for line in f.readlines(): msd_id, gt = line.strip().split("\t") # id is string id_7d = msd_7d[msd_id] id2gt[msd_id] = eval(gt) # gt is array ids.append(msd_id) return ids, id2gt def load_id2path(index_file, msd_7d): paths = [] with open(index_file) as f: id2path = dict() for line in f.readlines(): msd_id, msd_path = line.strip().split("\t") id_7d = msd_7d[msd_id] path = os.path.join(id_7d[0], id_7d[1], f"{id_7d}.clip.mp3") id2path[msd_id] = path paths.append(path) return paths, id2path def default_indexer(ids, id2audio_path, id2gt): index = [] track_index = defaultdict(list) track_idx = 0 clip_idx = 0 for clip_id in ids: fp = id2audio_path[clip_id] label = id2gt[clip_id] track_idx = clip_id clip_id = clip_idx clip_idx += 1 index.append([track_idx, clip_id, fp, label]) track_index[track_idx].append([clip_id, fp, label]) return index, track_index def default_loader(path): audio, sr = torchaudio.load(path) audio = audio.mean(dim=0, keepdim=True) return audio, sr class MillionSongDataset(Dataset): _base_dir = "million_song_dataset" _ext_audio = ".wav" def __init__( self, root: str, base_dir: str = _base_dir, download: bool = False, subset: Optional[str] = None, ): if download: raise Exception("The Million Song Dataset is not publicly available") self.root = root self.base_dir = base_dir self.subset = subset assert subset is None or subset in ["train", "valid", "test"], ( "When `subset` not None, it must take a value from " + "{'train', 'valid', 'test'}." ) self._path = os.path.join(self.root, self.base_dir) if not os.path.exists(self._path): raise RuntimeError( "Dataset not found. Please place the MSD files in the {} folder.".format( self._path ) ) msd_processed_annot = Path(self._path, "processed_annotations") if self.subset == "train": self.annotations_file = Path(msd_processed_annot) / "train_gt_msd.tsv" elif self.subset == "valid": self.annotations_file = Path(msd_processed_annot) / "val_gt_msd.tsv" else: self.annotations_file = Path(msd_processed_annot) / "test_gt_msd.tsv" with open(Path(msd_processed_annot) / "MSD_id_to_7D_id.pkl", "rb") as f: self.msd_to_7d = pickle.load(f) # int to label with open(Path(msd_processed_annot) / "output_labels_msd.txt", "r") as f: lines = f.readlines() self.tags = eval(lines[1][lines[1].find("[") :]) self.n_classes = len(self.tags) [audio_repr_paths, id2audio_path] = load_id2path( Path(msd_processed_annot) / "index_msd.tsv", self.msd_to_7d ) [ids, id2gt] = load_id2gt(self.annotations_file, self.msd_to_7d) self.index, self.track_index = default_indexer(ids, id2audio_path, id2gt) def file_path(self, n: int) -> str: _, _, fp, _ = self.index[n] return os.path.join(self._path, "preprocessed", fp) def __getitem__(self, n: int) -> Tuple[Tensor, Tensor]: track_id, clip_id, fp, label = self.index[n] label = torch.FloatTensor(label) try: audio, _ = self.load(n) except Exception as e: print(f"Skipped {track_id, fp}, could not load audio: {e}") return self.__getitem__(n + 1) return audio, label def __len__(self) -> int: return len(self.index)
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CLMR-master/clmr/datasets/gtzan.py
import torchaudio from torchaudio.datasets.gtzan import gtzan_genres from torch.utils.data import Dataset class GTZAN(Dataset): subset_map = {"train": "training", "valid": "validation", "test": "testing"} def __init__(self, root, download, subset): self.dataset = torchaudio.datasets.GTZAN( root=root, download=download, subset=self.subset_map[subset] ) self.labels = gtzan_genres self.label2idx = {} for idx, label in enumerate(self.labels): self.label2idx[label] = idx self.n_classes = len(self.label2idx.keys()) def __getitem__(self, idx): audio, sr, label = self.dataset[idx] label = self.label2idx[label] return audio, label def __len__(self): return len(self.dataset)
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CLMR
CLMR-master/clmr/datasets/audio.py
import os from glob import glob from torch import Tensor from typing import Tuple from clmr.datasets import Dataset class AUDIO(Dataset): """Create a Dataset for any folder of audio files. Args: root (str): Path to the directory where the dataset is found or downloaded. src_ext_audio (str): The extension of the audio files to analyze. """ def __init__( self, root: str, src_ext_audio: str = ".wav", n_classes: int = 1, ) -> None: super(AUDIO, self).__init__(root) self._path = root self._src_ext_audio = src_ext_audio self.n_classes = n_classes self.fl = glob( os.path.join(self._path, "**", "*{}".format(self._src_ext_audio)), recursive=True, ) if len(self.fl) == 0: raise RuntimeError( "Dataset not found. Please place the audio files in the {} folder.".format( self._path ) ) def file_path(self, n: int) -> str: fp = self.fl[n] return fp def __getitem__(self, n: int) -> Tuple[Tensor, Tensor]: """Load the n-th sample from the dataset. Args: n (int): The index of the sample to be loaded Returns: Tuple [Tensor, Tensor]: ``(waveform, label)`` """ audio, _ = self.load(n) label = [] return audio, label def __len__(self) -> int: return len(self.fl)
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CLMR-master/clmr/datasets/dataset.py
import os import subprocess import torchaudio from torch.utils.data import Dataset as TorchDataset from abc import abstractmethod def preprocess_audio(source, target, sample_rate): p = subprocess.Popen( ["ffmpeg", "-i", source, "-ar", str(sample_rate), target, "-loglevel", "quiet"] ) p.wait() class Dataset(TorchDataset): _ext_audio = ".wav" def __init__(self, root: str): pass @abstractmethod def file_path(self, n: int): pass def target_file_path(self, n: int) -> str: fp = self.file_path(n) file_basename, _ = os.path.splitext(fp) return file_basename + self._ext_audio def preprocess(self, n: int, sample_rate: int): fp = self.file_path(n) target_fp = self.target_file_path(n) if not os.path.exists(target_fp): preprocess_audio(fp, target_fp, sample_rate) def load(self, n): target_fp = self.target_file_path(n) try: audio, sample_rate = torchaudio.load(target_fp) except OSError as e: print("File not found, try running `python preprocess.py` first.\n\n", e) return return audio, sample_rate
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CLMR
CLMR-master/clmr/datasets/__init__.py
import os from .dataset import Dataset from .audio import AUDIO from .librispeech import LIBRISPEECH from .gtzan import GTZAN from .magnatagatune import MAGNATAGATUNE from .million_song_dataset import MillionSongDataset def get_dataset(dataset, dataset_dir, subset, download=True): if not os.path.exists(dataset_dir): os.makedirs(dataset_dir) if dataset == "audio": d = AUDIO(root=dataset_dir) elif dataset == "librispeech": d = LIBRISPEECH(root=dataset_dir, download=download, subset=subset) elif dataset == "gtzan": d = GTZAN(root=dataset_dir, download=download, subset=subset) elif dataset == "magnatagatune": d = MAGNATAGATUNE(root=dataset_dir, download=download, subset=subset) elif dataset == "msd": d = MillionSongDataset(root=dataset_dir, subset=subset) else: raise NotImplementedError("Dataset not implemented") return d
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CLMR-master/clmr/datasets/librispeech.py
import os import torchaudio from torch.utils.data import Dataset class LIBRISPEECH(Dataset): subset_map = {"train": "train-clean-100", "test": "test-clean"} def __init__(self, root, download, subset): self.dataset = torchaudio.datasets.LIBRISPEECH( root=root, download=download, url=self.subset_map[subset] ) self.speaker2idx = {} if not os.path.exists(self.dataset._path): raise RuntimeError( "Dataset not found. Please use `download=True` to download it." ) self.speaker_ids = list(map(int, os.listdir(self.dataset._path))) for idx, speaker_id in enumerate(sorted(self.speaker_ids)): self.speaker2idx[speaker_id] = idx self.n_classes = len(self.speaker2idx.keys()) def __getitem__(self, idx): ( audio, sample_rate, utterance, speaker_id, chapter_id, utterance_id, ) = self.dataset[idx] label = self.speaker2idx[speaker_id] return audio, label def __len__(self): return len(self.dataset)
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CLMR
CLMR-master/clmr/utils/yaml_config_hook.py
import os import yaml def yaml_config_hook(config_file): """ Custom YAML config loader, which can include other yaml files (I like using config files insteaad of using argparser) """ # load yaml files in the nested 'defaults' section, which include defaults for experiments with open(config_file) as f: cfg = yaml.safe_load(f) for d in cfg.get("defaults", []): config_dir, cf = d.popitem() cf = os.path.join(os.path.dirname(config_file), config_dir, cf + ".yaml") with open(cf) as f: l = yaml.safe_load(f) cfg.update(l) if "defaults" in cfg.keys(): del cfg["defaults"] return cfg
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CLMR-master/clmr/utils/checkpoint.py
import torch from collections import OrderedDict def load_encoder_checkpoint(checkpoint_path: str, output_dim: int) -> OrderedDict: state_dict = torch.load(checkpoint_path, map_location=torch.device("cpu")) if "pytorch-lightning_version" in state_dict.keys(): new_state_dict = OrderedDict( { k.replace("model.encoder.", ""): v for k, v in state_dict["state_dict"].items() if "model.encoder." in k } ) else: new_state_dict = OrderedDict() for k, v in state_dict.items(): if "encoder." in k: new_state_dict[k.replace("encoder.", "")] = v new_state_dict["fc.weight"] = torch.zeros(output_dim, 512) new_state_dict["fc.bias"] = torch.zeros(output_dim) return new_state_dict def load_finetuner_checkpoint(checkpoint_path: str) -> OrderedDict: state_dict = torch.load(checkpoint_path, map_location=torch.device("cpu")) if "pytorch-lightning_version" in state_dict.keys(): state_dict = OrderedDict( { k.replace("model.", ""): v for k, v in state_dict["state_dict"].items() if "model." in k } ) return state_dict
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CLMR
CLMR-master/clmr/utils/__init__.py
from .checkpoint import load_encoder_checkpoint, load_finetuner_checkpoint from .yaml_config_hook import yaml_config_hook
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RSFormer
RSFormer-master/calculate_psnr_ssim.py
import os import sys import cv2 from skimage.metrics import peak_signal_noise_ratio, structural_similarity from config import Options opt = Options() path_result = opt.Result_Path_Test path_target = opt.Target_Path_Test image_list = os.listdir(path_target) L = len(image_list) total_psnr, total_ssim = 0, 0 for i in range(L): image_in = cv2.imread(path_result+str(image_list[i]), 1) image_tar = cv2.imread(path_target+str(image_list[i]), 1) psnr = peak_signal_noise_ratio(image_in, image_tar) ssim = structural_similarity(image_in/255., image_tar/255., channel_axis=-1) # ss = structural_similarity(image_in/255., image_tar/255., multichannel=True) total_psnr += psnr total_ssim += ssim sys.stdout.write(f'\r{(i+1)} / {L}, PSNR: {psnr}, SSIM: {ssim}\t') sys.stdout.flush() print(f'\nPSNR: {total_psnr/L}, SSIM: {total_ssim/L}')
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RSFormer
RSFormer-master/utils.py
import torch.nn.functional as F # pad def pad(x, factor=16, mode='reflect'): _, _, h_even, w_even = x.shape padh_left = (factor - h_even % factor) // 2 padw_top = (factor - w_even % factor) // 2 padh_right = padh_left if h_even % 2 == 0 else padh_left + 1 padw_bottom = padw_top if w_even % 2 == 0 else padw_top + 1 x = F.pad(x, pad=[padw_top, padw_bottom, padh_left, padh_right], mode=mode) return x, (padh_left, padh_right, padw_top, padw_bottom) # reverse pad def unpad(x, pad_size): padh_left, padh_right, padw_top, padw_bottom = pad_size _, _, newh, neww = x.shape h_start = padh_left h_end = newh - padh_right w_start = padw_top w_end = neww - padw_bottom x = x[:, :, h_start:h_end, w_start:w_end] return x
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RSFormer
RSFormer-master/config.py
class Options(): def __init__(self): super().__init__() self.Input_Path_Test = 'E://RSCityScape_small/test/input/' self.Target_Path_Test = 'E://RSCityScape_small/test/target/' self.Result_Path_Test = 'E://RSCityScape_small/test/result_Restormer/' self.MODEL_PATH = './model_best.pth' self.Num_Works = 4 self.CUDA_USE = True
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RSFormer
RSFormer-master/datasets.py
import os from PIL import Image from torch.utils.data import Dataset import torchvision.transforms.functional as ttf class MyTestDataSet(Dataset): def __init__(self, inputPathTest): super(MyTestDataSet, self).__init__() self.inputPath = inputPathTest self.inputImages = os.listdir(inputPathTest) def __len__(self): return len(self.inputImages) def __getitem__(self, index): index = index % len(self.inputImages) inputImagePath = os.path.join(self.inputPath, self.inputImages[index]) inputImage = Image.open(inputImagePath).convert('RGB') input_ = ttf.to_tensor(inputImage) return input_, self.inputImages[index]
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RSFormer
RSFormer-master/demo.py
import sys import time import torch import torch.nn as nn from tqdm import tqdm from torch.utils.data import DataLoader from torchvision.utils import save_image from RSFormer import RSFormer from datasets import * from config import Options from utils import pad, unpad if __name__ == '__main__': opt = Options() inputPathTest = opt.Input_Path_Test resultPathTest = opt.Result_Path_Test modelPath = opt.MODEL_PATH myNet = RSFormer() myNet = nn.DataParallel(myNet) if opt.CUDA_USE: myNet = myNet.cuda() datasetTest = MyTestDataSet(inputPathTest) testLoader = DataLoader(dataset=datasetTest, batch_size=1, shuffle=False, drop_last=False, num_workers=opt.Num_Works, pin_memory=True) print('--------------------------------------------------------------') # pretrained model if opt.CUDA_USE: myNet.load_state_dict(torch.load(modelPath)) else: myNet.load_state_dict(torch.load(modelPath, map_location=torch.device('cpu'))) myNet.eval() with torch.no_grad(): timeStart = time.time() for index, (x, name) in enumerate(tqdm(testLoader, desc='Testing !!! ', file=sys.stdout), 0): torch.cuda.empty_cache() input_test = x.cuda() if opt.CUDA_USE else x input_test, pad_size = pad(input_test, factor=16) output_test = myNet(input_test) output_test = unpad(output_test, pad_size) save_image(output_test, resultPathTest + name[0]) timeEnd = time.time() print('---------------------------------------------------------') print("Testing Process Finished !!! Time: {:.4f} s".format(timeEnd - timeStart))
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RSFormer
RSFormer-master/RSFormer.py
import torch import torch.nn as nn class FeedForward(nn.Module): def __init__(self, dim, mlp_ratio=4): super().__init__() hidden_features = int(dim * mlp_ratio) self.norm = LayerNorm(dim) self.fc1 = nn.Conv2d(dim, hidden_features, 1) self.dwconv = nn.Conv2d(hidden_features, hidden_features, 3, padding=1, groups=hidden_features) self.fc2 = nn.Conv2d(hidden_features, dim, 1) self.act = nn.GELU() def forward(self, x): x = self.norm(x) x = self.fc1(x) x = self.act(x) res = x x = self.dwconv(x) x = self.act(x) + res x = self.fc2(x) return x class Attention(nn.Module): def __init__(self, dim, bias=False): super().__init__() self.norm = LayerNorm(dim) self.qk = nn.Conv2d(dim, dim, 1, bias=bias) self.act = nn.GELU() self.dwconv = nn.Conv2d(dim, dim, 11, padding=5, groups=dim, bias=bias) self.v = nn.Conv2d(dim, dim, 1) self.proj = nn.Conv2d(dim, dim, 1) def forward(self, x): x = self.norm(x) qk = self.qk(x) attn = self.act(qk) attn = self.dwconv(attn) attn = self.act(attn) v = self.v(x) x = attn * v x = self.proj(x) return x class ConvolutionBlock(nn.Module): def __init__(self, dim, mlp_ratio=4): super().__init__() self.attn = Attention(dim) self.ffn = FeedForward(dim, mlp_ratio) layer_scale_init_value = 1e-6 self.layer_scale_1 = nn.Parameter( layer_scale_init_value * torch.ones((dim)), requires_grad=True) self.layer_scale_2 = nn.Parameter( layer_scale_init_value * torch.ones((dim)), requires_grad=True) def forward(self, x): x = x + self.layer_scale_1.unsqueeze(-1).unsqueeze(-1) * self.attn(x) x = x + self.layer_scale_2.unsqueeze(-1).unsqueeze(-1) * self.ffn(x) return x class LayerNorm(nn.Module): def __init__(self, dim): super().__init__() self.weight = nn.Parameter(torch.ones(dim)) self.bias = nn.Parameter(torch.zeros(dim)) self.eps = 1e-6 def forward(self, x): u = x.mean(1, keepdim=True) s = (x - u).pow(2).mean(1, keepdim=True) x = (x - u) / torch.sqrt(s + self.eps) x = self.weight[:, None, None] * x + self.bias[:, None, None] return x class PatchEmbed(nn.Module): def __init__(self, in_c=3, embed_dim=48, bias=False): super().__init__() self.proj = nn.Conv2d(in_c, embed_dim, kernel_size=3, stride=1, padding=1, bias=bias) def forward(self, x): x = self.proj(x) return x class Downsample(nn.Module): def __init__(self, dim, num_head=8, bias=False): super().__init__() self.num_head = num_head self.temperature = nn.Parameter(torch.ones(num_head, 1, 1)) self.v = nn.Sequential( nn.Conv2d(dim, dim, kernel_size=3, stride=2, padding=1, bias=bias), LayerNorm(dim), nn.Conv2d(dim, dim * 2, kernel_size=1, bias=bias) ) self.v_hp = nn.Conv2d(dim * 2, dim * 2, kernel_size=3, stride=1, padding=1, groups=dim, bias=bias) self.qk = nn.Conv2d(dim, dim * 4, kernel_size=1, bias=bias) self.proj = nn.Conv2d(dim * 2, dim * 2, kernel_size=1, bias=bias) def forward(self, x): B, C, H, W = x.shape out_shape = B, C * 2, H // 2, W // 2 qk = self.qk(x).reshape(B, 2, self.num_head, (C * 2) // self.num_head, -1).transpose(0, 1) q, k = qk[0], qk[1] v = self.v(x) v_hp = self.v_hp(v) v = v.reshape(B, self.num_head, (C * 2) // self.num_head, -1) attn = (q @ k.transpose(-1, -2)) * self.temperature attn = attn.softmax(dim=-1) x = (attn @ v).reshape(out_shape) + v_hp x = self.proj(x) return x class Upsample(nn.Module): def __init__(self, dim, num_head=8, bias=False): super().__init__() self.num_head = num_head self.temperature = nn.Parameter(torch.ones(num_head, 1, 1)) self.v = nn.Sequential( nn.ConvTranspose2d(dim, dim, kernel_size=4, stride=2, padding=1, bias=bias), LayerNorm(dim), nn.Conv2d(dim, dim // 2, kernel_size=1, bias=False) ) self.v_hp = nn.Conv2d(dim // 2, dim // 2, kernel_size=3, stride=1, padding=1, groups=dim // 2, bias=False) self.qk = nn.Conv2d(dim, dim, kernel_size=1, bias=False) self.proj = nn.Conv2d(dim // 2, dim // 2, kernel_size=1, bias=False) def forward(self, x): B, C, H, W = x.shape out_shape = B, C // 2, H * 2, W * 2 qk = self.qk(x).reshape(B, 2, self.num_head, (C // 2) // self.num_head, -1).transpose(0, 1) q, k = qk[0], qk[1] v = self.v(x) v_hp = self.v_hp(v) v = v.reshape(B, self.num_head, (C // 2) // self.num_head, -1) attn = (q @ k.transpose(-1, -2)) * self.temperature attn = attn.softmax(dim=-1) x = (attn @ v).reshape(out_shape) + v_hp x = self.proj(x) return x class RSFormer(nn.Module): def __init__(self, in_channels=3, dim=48, num_blocks=(4, 6, 6, 8), num_heads=(2, 4, 8), # sampling head num_refinement_blocks=4, mlp_ratios=(4, 4, 4, 4), bias=False, ): super(RSFormer, self).__init__() self.patch_embed = PatchEmbed(in_channels, dim) self.encoder1 = nn.Sequential(*[ ConvolutionBlock(dim=dim, mlp_ratio=mlp_ratios[0]) for i in range(num_blocks[0])]) self.down1 = Downsample(dim, num_head=num_heads[0]) self.encoder2 = nn.Sequential(*[ ConvolutionBlock(dim=int(dim * 2 ** 1), mlp_ratio=mlp_ratios[1]) for i in range(num_blocks[1])]) self.down2 = Downsample(int(dim * 2 ** 1), num_head=num_heads[1]) self.encoder3 = nn.Sequential(*[ ConvolutionBlock(dim=int(dim * 2 ** 2), mlp_ratio=mlp_ratios[2]) for i in range(num_blocks[2])]) self.down3 = Downsample(int(dim * 2 ** 2), num_head=num_heads[2]) self.latent = nn.Sequential(*[ ConvolutionBlock(dim=int(dim * 2 ** 3), mlp_ratio=mlp_ratios[3]) for i in range(num_blocks[3])]) self.up3 = Upsample(int(dim * 2 ** 3), num_head=num_heads[2]) self.reduce3 = nn.Conv2d(int(dim * 2 ** 3), int(dim * 2 ** 2), kernel_size=1, bias=bias) self.decoder3 = nn.Sequential(*[ ConvolutionBlock(dim=int(dim * 2 ** 2), mlp_ratio=mlp_ratios[2]) for i in range(num_blocks[2])]) self.up2 = Upsample(int(dim * 2 ** 2), num_head=num_heads[1]) self.reduce2 = nn.Conv2d(int(dim * 2 ** 2), int(dim * 2 ** 1), kernel_size=1, bias=bias) self.decoder2 = nn.Sequential(*[ ConvolutionBlock(dim=int(dim * 2 ** 1), mlp_ratio=mlp_ratios[1]) for i in range(num_blocks[1])]) self.up1 = Upsample(int(dim * 2 ** 1), num_head=num_heads[0]) self.decoder1 = nn.Sequential(*[ ConvolutionBlock(dim=int(dim * 2 ** 1), mlp_ratio=mlp_ratios[0]) for i in range(num_blocks[0])]) self.refinement = nn.Sequential(*[ConvolutionBlock(dim=int(dim * 2 ** 1), mlp_ratio=mlp_ratios[0]) for i in range(num_refinement_blocks)]) self.output = nn.Conv2d(int(dim * 2 ** 1), in_channels, kernel_size=3, stride=1, padding=1, bias=bias) def forward(self, x): input_ = x x = self.patch_embed(x) # stage 1 x0 = self.encoder1(x) x = self.down1(x0) # stage 2 x1 = self.encoder2(x) x = self.down2(x1) # stage 3 x2 = self.encoder3(x) x = self.down3(x2) # stage 4 x = self.latent(x) x = self.up3(x) x2 = torch.cat([x, x2], 1) x2 = self.reduce3(x2) x2 = self.decoder3(x2) x = self.up2(x2) x1 = torch.cat([x, x1], 1) x1 = self.reduce2(x1) x1 = self.decoder2(x1) x = self.up1(x1) x0 = torch.cat([x, x0], 1) x0 = self.decoder1(x0) x = self.refinement(x0) x = self.output(x) + input_ return x if __name__ == '__main__': x = torch.randn((1, 3, 256, 256)).cuda() net = RSFormer().cuda() from thop import profile, clever_format flops, params = profile(net, (x,)) flops, params = clever_format([flops, params], "%.3f") print(flops, params)
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DRT
DRT-master/libsvm/tools/easy.py
#!/usr/bin/env python import sys import os from subprocess import * if len(sys.argv) <= 1: print('Usage: %s training_file [testing_file]' % sys.argv[0]) raise SystemExit # svm, grid, and gnuplot executable files is_win32 = (sys.platform == 'win32') if not is_win32: svmscale_exe = "../svm-scale" svmtrain_exe = "../svm-train" svmpredict_exe = "../svm-predict" grid_py = "./grid.py" gnuplot_exe = "/usr/bin/gnuplot" else: # example for windows svmscale_exe = r"..\windows\svm-scale.exe" svmtrain_exe = r"..\windows\svm-train.exe" svmpredict_exe = r"..\windows\svm-predict.exe" gnuplot_exe = r"c:\tmp\gnuplot\bin\pgnuplot.exe" grid_py = r".\grid.py" assert os.path.exists(svmscale_exe),"svm-scale executable not found" assert os.path.exists(svmtrain_exe),"svm-train executable not found" assert os.path.exists(svmpredict_exe),"svm-predict executable not found" assert os.path.exists(gnuplot_exe),"gnuplot executable not found" assert os.path.exists(grid_py),"grid.py not found" train_pathname = sys.argv[1] assert os.path.exists(train_pathname),"training file not found" file_name = os.path.split(train_pathname)[1] scaled_file = file_name + ".scale" model_file = file_name + ".model" range_file = file_name + ".range" if len(sys.argv) > 2: test_pathname = sys.argv[2] file_name = os.path.split(test_pathname)[1] assert os.path.exists(test_pathname),"testing file not found" scaled_test_file = file_name + ".scale" predict_test_file = file_name + ".predict" cmd = '%s -s "%s" "%s" > "%s"' % (svmscale_exe, range_file, train_pathname, scaled_file) print('Scaling training data...') Popen(cmd, shell = True, stdout = PIPE).communicate() cmd = '%s -svmtrain "%s" -gnuplot "%s" "%s"' % (grid_py, svmtrain_exe, gnuplot_exe, scaled_file) print('Cross validation...') f = Popen(cmd, shell = True, stdout = PIPE).stdout line = '' while True: last_line = line line = f.readline() if not line: break c,g,rate = map(float,last_line.split()) print('Best c=%s, g=%s CV rate=%s' % (c,g,rate)) cmd = '%s -c %s -g %s "%s" "%s"' % (svmtrain_exe,c,g,scaled_file,model_file) print('Training...') Popen(cmd, shell = True, stdout = PIPE).communicate() print('Output model: %s' % model_file) if len(sys.argv) > 2: cmd = '%s -r "%s" "%s" > "%s"' % (svmscale_exe, range_file, test_pathname, scaled_test_file) print('Scaling testing data...') Popen(cmd, shell = True, stdout = PIPE).communicate() cmd = '%s "%s" "%s" "%s"' % (svmpredict_exe, scaled_test_file, model_file, predict_test_file) print('Testing...') Popen(cmd, shell = True).communicate() print('Output prediction: %s' % predict_test_file)
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DRT
DRT-master/libsvm/tools/checkdata.py
#!/usr/bin/env python # # A format checker for LIBSVM # # # Copyright (c) 2007, Rong-En Fan # # All rights reserved. # # This program is distributed under the same license of the LIBSVM package. # from sys import argv, exit import os.path def err(line_no, msg): print("line %d: %s" % (line_no, msg)) # works like float() but does not accept nan and inf def my_float(x): if x.lower().find("nan") != -1 or x.lower().find("inf") != -1: raise ValueError return float(x) def main(): if len(argv) != 2: print("Usage: %s dataset" % (argv[0])) exit(1) dataset = argv[1] if not os.path.exists(dataset): print("dataset %s not found" % (dataset)) exit(1) line_no = 1 error_line_count = 0 for line in open(dataset, 'r'): line_error = False # each line must end with a newline character if line[-1] != '\n': err(line_no, "missing a newline character in the end") line_error = True nodes = line.split() # check label try: label = nodes.pop(0) if label.find(',') != -1: # multi-label format try: for l in label.split(','): l = my_float(l) except: err(line_no, "label %s is not a valid multi-label form" % label) line_error = True else: try: label = my_float(label) except: err(line_no, "label %s is not a number" % label) line_error = True except: err(line_no, "missing label, perhaps an empty line?") line_error = True # check features prev_index = -1 for i in range(len(nodes)): try: (index, value) = nodes[i].split(':') index = int(index) value = my_float(value) # precomputed kernel's index starts from 0 and LIBSVM # checks it. Hence, don't treat index 0 as an error. if index < 0: err(line_no, "feature index must be positive; wrong feature %s" % nodes[i]) line_error = True elif index < prev_index: err(line_no, "feature indices must be in an ascending order, previous/current features %s %s" % (nodes[i-1], nodes[i])) line_error = True prev_index = index except: err(line_no, "feature '%s' not an <index>:<value> pair, <index> integer, <value> real number " % nodes[i]) line_error = True line_no += 1 if line_error: error_line_count += 1 if error_line_count > 0: print("Found %d lines with error." % (error_line_count)) return 1 else: print("No error.") return 0 if __name__ == "__main__": exit(main())
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DRT
DRT-master/libsvm/tools/grid.py
#!/usr/bin/env python import os, sys, traceback import getpass from threading import Thread from subprocess import * if(sys.hexversion < 0x03000000): import Queue else: import queue as Queue # svmtrain and gnuplot executable is_win32 = (sys.platform == 'win32') if not is_win32: svmtrain_exe = "../svm-train" gnuplot_exe = "/usr/bin/gnuplot" else: # example for windows svmtrain_exe = r"..\windows\svm-train.exe" gnuplot_exe = r"c:\tmp\gnuplot\bin\pgnuplot.exe" # global parameters and their default values fold = 5 c_begin, c_end, c_step = -5, 15, 2 g_begin, g_end, g_step = 3, -15, -2 global dataset_pathname, dataset_title, pass_through_string global out_filename, png_filename # experimental telnet_workers = [] ssh_workers = [] nr_local_worker = 1 # process command line options, set global parameters def process_options(argv=sys.argv): global fold global c_begin, c_end, c_step global g_begin, g_end, g_step global dataset_pathname, dataset_title, pass_through_string global svmtrain_exe, gnuplot_exe, gnuplot, out_filename, png_filename usage = """\ Usage: grid.py [-log2c begin,end,step] [-log2g begin,end,step] [-v fold] [-svmtrain pathname] [-gnuplot pathname] [-out pathname] [-png pathname] [additional parameters for svm-train] dataset""" if len(argv) < 2: print(usage) sys.exit(1) dataset_pathname = argv[-1] dataset_title = os.path.split(dataset_pathname)[1] out_filename = '%s.out' % dataset_title png_filename = '%s.png' % dataset_title pass_through_options = [] i = 1 while i < len(argv) - 1: if argv[i] == "-log2c": i = i + 1 (c_begin,c_end,c_step) = map(float,argv[i].split(",")) elif argv[i] == "-log2g": i = i + 1 (g_begin,g_end,g_step) = map(float,argv[i].split(",")) elif argv[i] == "-v": i = i + 1 fold = argv[i] elif argv[i] in ('-c','-g'): print("Option -c and -g are renamed.") print(usage) sys.exit(1) elif argv[i] == '-svmtrain': i = i + 1 svmtrain_exe = argv[i] elif argv[i] == '-gnuplot': i = i + 1 gnuplot_exe = argv[i] elif argv[i] == '-out': i = i + 1 out_filename = argv[i] elif argv[i] == '-png': i = i + 1 png_filename = argv[i] else: pass_through_options.append(argv[i]) i = i + 1 pass_through_string = " ".join(pass_through_options) assert os.path.exists(svmtrain_exe),"svm-train executable not found" assert os.path.exists(gnuplot_exe),"gnuplot executable not found" assert os.path.exists(dataset_pathname),"dataset not found" gnuplot = Popen(gnuplot_exe,stdin = PIPE).stdin def range_f(begin,end,step): # like range, but works on non-integer too seq = [] while True: if step > 0 and begin > end: break if step < 0 and begin < end: break seq.append(begin) begin = begin + step return seq def permute_sequence(seq): n = len(seq) if n <= 1: return seq mid = int(n/2) left = permute_sequence(seq[:mid]) right = permute_sequence(seq[mid+1:]) ret = [seq[mid]] while left or right: if left: ret.append(left.pop(0)) if right: ret.append(right.pop(0)) return ret def redraw(db,best_param,tofile=False): if len(db) == 0: return begin_level = round(max(x[2] for x in db)) - 3 step_size = 0.5 best_log2c,best_log2g,best_rate = best_param if tofile: gnuplot.write( "set term png transparent small\n".encode()) gnuplot.write( ("set output \"%s\"\n" % png_filename.replace('\\','\\\\')).encode()) #gnuplot.write("set term postscript color solid\n".encode()) #gnuplot.write(("set output \"%s.ps\"\n" % dataset_title).encode()) elif is_win32: gnuplot.write("set term windows\n".encode()) else: gnuplot.write( "set term x11\n".encode()) gnuplot.write("set xlabel \"log2(C)\"\n".encode()) gnuplot.write("set ylabel \"log2(gamma)\"\n".encode()) gnuplot.write(("set xrange [%s:%s]\n" % (c_begin,c_end)).encode()) gnuplot.write(("set yrange [%s:%s]\n" % (g_begin,g_end)).encode()) gnuplot.write("set contour\n".encode()) gnuplot.write(("set cntrparam levels incremental %s,%s,100\n" % (begin_level,step_size)).encode()) gnuplot.write("unset surface\n".encode()) gnuplot.write("unset ztics\n".encode()) gnuplot.write("set view 0,0\n".encode()) gnuplot.write(("set title \"%s\"\n" % dataset_title).encode()) gnuplot.write("unset label\n".encode()) gnuplot.write(("set label \"Best log2(C) = %s log2(gamma) = %s accuracy = %s%%\" \ at screen 0.5,0.85 center\n" % \ (best_log2c, best_log2g, best_rate)).encode()) gnuplot.write(("set label \"C = %s gamma = %s\"" " at screen 0.5,0.8 center\n" % (2**best_log2c, 2**best_log2g)).encode()) gnuplot.write("splot \"-\" with lines\n".encode()) db.sort(key = lambda x:(x[0], -x[1])) prevc = db[0][0] for line in db: if prevc != line[0]: gnuplot.write("\n".encode()) prevc = line[0] gnuplot.write(("%s %s %s\n" % line).encode()) gnuplot.write("e\n".encode()) gnuplot.write("\n".encode()) # force gnuplot back to prompt when term set failure gnuplot.flush() def calculate_jobs(): c_seq = permute_sequence(range_f(c_begin,c_end,c_step)) g_seq = permute_sequence(range_f(g_begin,g_end,g_step)) nr_c = float(len(c_seq)) nr_g = float(len(g_seq)) i = 0 j = 0 jobs = [] while i < nr_c or j < nr_g: if i/nr_c < j/nr_g: # increase C resolution line = [] for k in range(0,j): line.append((c_seq[i],g_seq[k])) i = i + 1 jobs.append(line) else: # increase g resolution line = [] for k in range(0,i): line.append((c_seq[k],g_seq[j])) j = j + 1 jobs.append(line) return jobs class WorkerStopToken: # used to notify the worker to stop pass class Worker(Thread): def __init__(self,name,job_queue,result_queue): Thread.__init__(self) self.name = name self.job_queue = job_queue self.result_queue = result_queue def run(self): while True: (cexp,gexp) = self.job_queue.get() if cexp is WorkerStopToken: self.job_queue.put((cexp,gexp)) # print 'worker %s stop.' % self.name break try: rate = self.run_one(2.0**cexp,2.0**gexp) if rate is None: raise RuntimeError("get no rate") except: # we failed, let others do that and we just quit traceback.print_exception(sys.exc_info()[0], sys.exc_info()[1], sys.exc_info()[2]) self.job_queue.put((cexp,gexp)) print('worker %s quit.' % self.name) break else: self.result_queue.put((self.name,cexp,gexp,rate)) class LocalWorker(Worker): def run_one(self,c,g): cmdline = '%s -c %s -g %s -v %s %s %s' % \ (svmtrain_exe,c,g,fold,pass_through_string,dataset_pathname) result = Popen(cmdline,shell=True,stdout=PIPE).stdout for line in result.readlines(): if str(line).find("Cross") != -1: return float(line.split()[-1][0:-1]) class SSHWorker(Worker): def __init__(self,name,job_queue,result_queue,host): Worker.__init__(self,name,job_queue,result_queue) self.host = host self.cwd = os.getcwd() def run_one(self,c,g): cmdline = 'ssh -x %s "cd %s; %s -c %s -g %s -v %s %s %s"' % \ (self.host,self.cwd, svmtrain_exe,c,g,fold,pass_through_string,dataset_pathname) result = Popen(cmdline,shell=True,stdout=PIPE).stdout for line in result.readlines(): if str(line).find("Cross") != -1: return float(line.split()[-1][0:-1]) class TelnetWorker(Worker): def __init__(self,name,job_queue,result_queue,host,username,password): Worker.__init__(self,name,job_queue,result_queue) self.host = host self.username = username self.password = password def run(self): import telnetlib self.tn = tn = telnetlib.Telnet(self.host) tn.read_until("login: ") tn.write(self.username + "\n") tn.read_until("Password: ") tn.write(self.password + "\n") # XXX: how to know whether login is successful? tn.read_until(self.username) # print('login ok', self.host) tn.write("cd "+os.getcwd()+"\n") Worker.run(self) tn.write("exit\n") def run_one(self,c,g): cmdline = '%s -c %s -g %s -v %s %s %s' % \ (svmtrain_exe,c,g,fold,pass_through_string,dataset_pathname) result = self.tn.write(cmdline+'\n') (idx,matchm,output) = self.tn.expect(['Cross.*\n']) for line in output.split('\n'): if str(line).find("Cross") != -1: return float(line.split()[-1][0:-1]) def main(): # set parameters process_options() # put jobs in queue jobs = calculate_jobs() job_queue = Queue.Queue(0) result_queue = Queue.Queue(0) for line in jobs: for (c,g) in line: job_queue.put((c,g)) job_queue._put = job_queue.queue.appendleft # fire telnet workers if telnet_workers: nr_telnet_worker = len(telnet_workers) username = getpass.getuser() password = getpass.getpass() for host in telnet_workers: TelnetWorker(host,job_queue,result_queue, host,username,password).start() # fire ssh workers if ssh_workers: for host in ssh_workers: SSHWorker(host,job_queue,result_queue,host).start() # fire local workers for i in range(nr_local_worker): LocalWorker('local',job_queue,result_queue).start() # gather results done_jobs = {} result_file = open(out_filename, 'w') db = [] best_rate = -1 best_c1,best_g1 = None,None for line in jobs: for (c,g) in line: while (c, g) not in done_jobs: (worker,c1,g1,rate) = result_queue.get() done_jobs[(c1,g1)] = rate result_file.write('%s %s %s\n' %(c1,g1,rate)) result_file.flush() if (rate > best_rate) or (rate==best_rate and g1==best_g1 and c1<best_c1): best_rate = rate best_c1,best_g1=c1,g1 best_c = 2.0**c1 best_g = 2.0**g1 print("[%s] %s %s %s (best c=%s, g=%s, rate=%s)" % \ (worker,c1,g1,rate, best_c, best_g, best_rate)) db.append((c,g,done_jobs[(c,g)])) redraw(db,[best_c1, best_g1, best_rate]) redraw(db,[best_c1, best_g1, best_rate],True) job_queue.put((WorkerStopToken,None)) print("%s %s %s" % (best_c, best_g, best_rate)) main()
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DRT
DRT-master/libsvm/tools/subset.py
#!/usr/bin/env python from sys import argv, exit, stdout, stderr from random import randint method = 0 global n global dataset_filename subset_filename = "" rest_filename = "" def exit_with_help(): print("""\ Usage: %s [options] dataset number [output1] [output2] This script selects a subset of the given dataset. options: -s method : method of selection (default 0) 0 -- stratified selection (classification only) 1 -- random selection output1 : the subset (optional) output2 : rest of the data (optional) If output1 is omitted, the subset will be printed on the screen.""" % argv[0]) exit(1) def process_options(): global method, n global dataset_filename, subset_filename, rest_filename argc = len(argv) if argc < 3: exit_with_help() i = 1 while i < len(argv): if argv[i][0] != "-": break if argv[i] == "-s": i = i + 1 method = int(argv[i]) if method < 0 or method > 1: print("Unknown selection method %d" % (method)) exit_with_help() i = i + 1 dataset_filename = argv[i] n = int(argv[i+1]) if i+2 < argc: subset_filename = argv[i+2] if i+3 < argc: rest_filename = argv[i+3] def main(): class Label: def __init__(self, label, index, selected): self.label = label self.index = index self.selected = selected process_options() # get labels i = 0 labels = [] f = open(dataset_filename, 'r') for line in f: labels.append(Label(float((line.split())[0]), i, 0)) i = i + 1 f.close() l = i # determine where to output if subset_filename != "": file1 = open(subset_filename, 'w') else: file1 = stdout split = 0 if rest_filename != "": split = 1 file2 = open(rest_filename, 'w') # select the subset warning = 0 if method == 0: # stratified labels.sort(key = lambda x: x.label) label_end = labels[l-1].label + 1 labels.append(Label(label_end, l, 0)) begin = 0 label = labels[begin].label for i in range(l+1): new_label = labels[i].label if new_label != label: nr_class = i - begin k = i*n//l - begin*n//l # at least one instance per class if k == 0: k = 1 warning = warning + 1 for j in range(nr_class): if randint(0, nr_class-j-1) < k: labels[begin+j].selected = 1 k = k - 1 begin = i label = new_label elif method == 1: # random k = n for i in range(l): if randint(0,l-i-1) < k: labels[i].selected = 1 k = k - 1 i = i + 1 # output i = 0 if method == 0: labels.sort(key = lambda x: int(x.index)) f = open(dataset_filename, 'r') for line in f: if labels[i].selected == 1: file1.write(line) else: if split == 1: file2.write(line) i = i + 1 if warning > 0: stderr.write("""\ Warning: 1. You may have regression data. Please use -s 1. 2. Classification data unbalanced or too small. We select at least 1 per class. The subset thus contains %d instances. """ % (n+warning)) # cleanup f.close() file1.close() if split == 1: file2.close() main()
2,987
19.326531
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py
DRT
DRT-master/libsvm/python/svm.py
#!/usr/bin/env python from ctypes import * from ctypes.util import find_library import sys # For unix the prefix 'lib' is not considered. if find_library('svm'): libsvm = CDLL(find_library('svm')) elif find_library('libsvm'): libsvm = CDLL(find_library('libsvm')) else: if sys.platform == 'win32': libsvm = CDLL('../windows/libsvm.dll') else: libsvm = CDLL('../libsvm.so.2') # Construct constants SVM_TYPE = ['C_SVC', 'NU_SVC', 'ONE_CLASS', 'EPSILON_SVR', 'NU_SVR' ] KERNEL_TYPE = ['LINEAR', 'POLY', 'RBF', 'SIGMOID', 'PRECOMPUTED'] for i, s in enumerate(SVM_TYPE): exec("%s = %d" % (s , i)) for i, s in enumerate(KERNEL_TYPE): exec("%s = %d" % (s , i)) PRINT_STRING_FUN = CFUNCTYPE(None, c_char_p) def print_null(s): return def genFields(names, types): return list(zip(names, types)) def fillprototype(f, restype, argtypes): f.restype = restype f.argtypes = argtypes class svm_node(Structure): _names = ["index", "value"] _types = [c_int, c_double] _fields_ = genFields(_names, _types) def gen_svm_nodearray(xi, feature_max=None, issparse=None): if isinstance(xi, dict): index_range = xi.keys() elif isinstance(xi, (list, tuple)): index_range = range(len(xi)) else: raise TypeError('xi should be a dictionary, list or tuple') if feature_max: assert(isinstance(feature_max, int)) index_range = filter(lambda j: j <= feature_max, index_range) if issparse: index_range = filter(lambda j:xi[j] != 0, index_range) index_range = sorted(index_range) ret = (svm_node * (len(index_range)+1))() ret[-1].index = -1 for idx, j in enumerate(index_range): ret[idx].index = j ret[idx].value = xi[j] max_idx = 0 if index_range: max_idx = index_range[-1] return ret, max_idx class svm_problem(Structure): _names = ["l", "y", "x"] _types = [c_int, POINTER(c_double), POINTER(POINTER(svm_node))] _fields_ = genFields(_names, _types) def __init__(self, y, x): if len(y) != len(x): raise ValueError("len(y) != len(x)") self.l = l = len(y) max_idx = 0 x_space = self.x_space = [] for i, xi in enumerate(x): tmp_xi, tmp_idx = gen_svm_nodearray(xi) x_space += [tmp_xi] max_idx = max(max_idx, tmp_idx) self.n = max_idx self.y = (c_double * l)() for i, yi in enumerate(y): self.y[i] = yi self.x = (POINTER(svm_node) * l)() for i, xi in enumerate(self.x_space): self.x[i] = xi class svm_parameter(Structure): _names = ["svm_type", "kernel_type", "degree", "gamma", "coef0", "cache_size", "eps", "C", "nr_weight", "weight_label", "weight", "nu", "p", "shrinking", "probability"] _types = [c_int, c_int, c_int, c_double, c_double, c_double, c_double, c_double, c_int, POINTER(c_int), POINTER(c_double), c_double, c_double, c_int, c_int] _fields_ = genFields(_names, _types) def __init__(self, options = None): if options == None: options = '' self.parse_options(options) def show(self): attrs = svm_parameter._names + self.__dict__.keys() values = map(lambda attr: getattr(self, attr), attrs) for attr, val in zip(attrs, values): print(' %s: %s' % (attr, val)) def set_to_default_values(self): self.svm_type = C_SVC; self.kernel_type = RBF self.degree = 3 self.gamma = 0 self.coef0 = 0 self.nu = 0.5 self.cache_size = 100 self.C = 1 self.eps = 0.001 self.p = 0.1 self.shrinking = 1 self.probability = 0 self.nr_weight = 0 self.weight_label = (c_int*0)() self.weight = (c_double*0)() self.cross_validation = False self.nr_fold = 0 self.print_func = None def parse_options(self, options): argv = options.split() self.set_to_default_values() self.print_func = cast(None, PRINT_STRING_FUN) weight_label = [] weight = [] i = 0 while i < len(argv): if argv[i] == "-s": i = i + 1 self.svm_type = int(argv[i]) elif argv[i] == "-t": i = i + 1 self.kernel_type = int(argv[i]) elif argv[i] == "-d": i = i + 1 self.degree = int(argv[i]) elif argv[i] == "-g": i = i + 1 self.gamma = float(argv[i]) elif argv[i] == "-r": i = i + 1 self.coef0 = float(argv[i]) elif argv[i] == "-n": i = i + 1 self.nu = float(argv[i]) elif argv[i] == "-m": i = i + 1 self.cache_size = float(argv[i]) elif argv[i] == "-c": i = i + 1 self.C = float(argv[i]) elif argv[i] == "-e": i = i + 1 self.eps = float(argv[i]) elif argv[i] == "-p": i = i + 1 self.p = float(argv[i]) elif argv[i] == "-h": i = i + 1 self.shrinking = int(argv[i]) elif argv[i] == "-b": i = i + 1 self.probability = int(argv[i]) elif argv[i] == "-q": self.print_func = PRINT_STRING_FUN(print_null) elif argv[i] == "-v": i = i + 1 self.cross_validation = 1 self.nr_fold = int(argv[i]) if self.nr_fold < 2: raise ValueError("n-fold cross validation: n must >= 2") elif argv[i].startswith("-w"): i = i + 1 self.nr_weight += 1 nr_weight = self.nr_weight weight_label += [int(argv[i-1][2:])] weight += [float(argv[i])] else: raise ValueError("Wrong options") i += 1 libsvm.svm_set_print_string_function(self.print_func) self.weight_label = (c_int*self.nr_weight)() self.weight = (c_double*self.nr_weight)() for i in range(self.nr_weight): self.weight[i] = weight[i] self.weight_label[i] = weight_label[i] class svm_model(Structure): def __init__(self): self.__createfrom__ = 'python' def __del__(self): # free memory created by C to avoid memory leak if hasattr(self, '__createfrom__') and self.__createfrom__ == 'C': libsvm.svm_free_and_destroy_model(pointer(self)) def get_svm_type(self): return libsvm.svm_get_svm_type(self) def get_nr_class(self): return libsvm.svm_get_nr_class(self) def get_svr_probability(self): return libsvm.svm_get_svr_probability(self) def get_labels(self): nr_class = self.get_nr_class() labels = (c_int * nr_class)() libsvm.svm_get_labels(self, labels) return labels[:nr_class] def is_probability_model(self): return (libsvm.svm_check_probability_model(self) == 1) def toPyModel(model_ptr): """ toPyModel(model_ptr) -> svm_model Convert a ctypes POINTER(svm_model) to a Python svm_model """ if bool(model_ptr) == False: raise ValueError("Null pointer") m = model_ptr.contents m.__createfrom__ = 'C' return m fillprototype(libsvm.svm_train, POINTER(svm_model), [POINTER(svm_problem), POINTER(svm_parameter)]) fillprototype(libsvm.svm_cross_validation, None, [POINTER(svm_problem), POINTER(svm_parameter), c_int, POINTER(c_double)]) fillprototype(libsvm.svm_save_model, c_int, [c_char_p, POINTER(svm_model)]) fillprototype(libsvm.svm_load_model, POINTER(svm_model), [c_char_p]) fillprototype(libsvm.svm_get_svm_type, c_int, [POINTER(svm_model)]) fillprototype(libsvm.svm_get_nr_class, c_int, [POINTER(svm_model)]) fillprototype(libsvm.svm_get_labels, None, [POINTER(svm_model), POINTER(c_int)]) fillprototype(libsvm.svm_get_svr_probability, c_double, [POINTER(svm_model)]) fillprototype(libsvm.svm_predict_values, c_double, [POINTER(svm_model), POINTER(svm_node), POINTER(c_double)]) fillprototype(libsvm.svm_predict, c_double, [POINTER(svm_model), POINTER(svm_node)]) fillprototype(libsvm.svm_predict_probability, c_double, [POINTER(svm_model), POINTER(svm_node), POINTER(c_double)]) fillprototype(libsvm.svm_free_model_content, None, [POINTER(svm_model)]) fillprototype(libsvm.svm_free_and_destroy_model, None, [POINTER(POINTER(svm_model))]) fillprototype(libsvm.svm_destroy_param, None, [POINTER(svm_parameter)]) fillprototype(libsvm.svm_check_parameter, c_char_p, [POINTER(svm_problem), POINTER(svm_parameter)]) fillprototype(libsvm.svm_check_probability_model, c_int, [POINTER(svm_model)]) fillprototype(libsvm.svm_set_print_string_function, None, [PRINT_STRING_FUN])
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28.880769
122
py
DRT
DRT-master/libsvm/python/svmutil.py
#!/usr/bin/env python from svm import * def svm_read_problem(data_file_name): """ svm_read_problem(data_file_name) -> [y, x] Read LIBSVM-format data from data_file_name and return labels y and data instances x. """ prob_y = [] prob_x = [] for line in open(data_file_name): line = line.split(None, 1) # In case an instance with all zero features if len(line) == 1: line += [''] label, features = line xi = {} for e in features.split(): ind, val = e.split(":") xi[int(ind)] = float(val) prob_y += [float(label)] prob_x += [xi] return (prob_y, prob_x) def svm_load_model(model_file_name): """ svm_load_model(model_file_name) -> model Load a LIBSVM model from model_file_name and return. """ model = libsvm.svm_load_model(model_file_name) if not model: print("can't open model file %s" % model_file_name) return None model = toPyModel(model) return model def svm_save_model(model_file_name, model): """ svm_save_model(model_file_name, model) -> None Save a LIBSVM model to the file model_file_name. """ libsvm.svm_save_model(model_file_name, model) def evaluations(ty, pv): """ evaluations(ty, pv) -> (ACC, MSE, SCC) Calculate accuracy, mean squared error and squared correlation coefficient using the true values (ty) and predicted values (pv). """ if len(ty) != len(pv): raise ValueError("len(ty) must equal to len(pv)") total_correct = total_error = 0 sumv = sumy = sumvv = sumyy = sumvy = 0 for v, y in zip(pv, ty): if y == v: total_correct += 1 total_error += (v-y)*(v-y) sumv += v sumy += y sumvv += v*v sumyy += y*y sumvy += v*y l = len(ty) ACC = 100.0*total_correct/l MSE = total_error/l try: SCC = ((l*sumvy-sumv*sumy)*(l*sumvy-sumv*sumy))/((l*sumvv-sumv*sumv)*(l*sumyy-sumy*sumy)) except: SCC = float('nan') return (ACC, MSE, SCC) def svm_train(arg1, arg2=None, arg3=None): """ svm_train(y, x [, 'options']) -> model | ACC | MSE svm_train(prob, [, 'options']) -> model | ACC | MSE svm_train(prob, param) -> model | ACC| MSE Train an SVM model from data (y, x) or an svm_problem prob using 'options' or an svm_parameter param. If '-v' is specified in 'options' (i.e., cross validation) either accuracy (ACC) or mean-squared error (MSE) is returned. 'options': -s svm_type : set type of SVM (default 0) 0 -- C-SVC 1 -- nu-SVC 2 -- one-class SVM 3 -- epsilon-SVR 4 -- nu-SVR -t kernel_type : set type of kernel function (default 2) 0 -- linear: u'*v 1 -- polynomial: (gamma*u'*v + coef0)^degree 2 -- radial basis function: exp(-gamma*|u-v|^2) 3 -- sigmoid: tanh(gamma*u'*v + coef0) 4 -- precomputed kernel (kernel values in training_set_file) -d degree : set degree in kernel function (default 3) -g gamma : set gamma in kernel function (default 1/num_features) -r coef0 : set coef0 in kernel function (default 0) -c cost : set the parameter C of C-SVC, epsilon-SVR, and nu-SVR (default 1) -n nu : set the parameter nu of nu-SVC, one-class SVM, and nu-SVR (default 0.5) -p epsilon : set the epsilon in loss function of epsilon-SVR (default 0.1) -m cachesize : set cache memory size in MB (default 100) -e epsilon : set tolerance of termination criterion (default 0.001) -h shrinking : whether to use the shrinking heuristics, 0 or 1 (default 1) -b probability_estimates : whether to train a SVC or SVR model for probability estimates, 0 or 1 (default 0) -wi weight : set the parameter C of class i to weight*C, for C-SVC (default 1) -v n: n-fold cross validation mode -q : quiet mode (no outputs) """ prob, param = None, None if isinstance(arg1, (list, tuple)): assert isinstance(arg2, (list, tuple)) y, x, options = arg1, arg2, arg3 prob = svm_problem(y, x) param = svm_parameter(options) elif isinstance(arg1, svm_problem): prob = arg1 if isinstance(arg2, svm_parameter): param = arg2 else: param = svm_parameter(arg2) if prob == None or param == None: raise TypeError("Wrong types for the arguments") if param.kernel_type == PRECOMPUTED: for xi in prob.x_space: idx, val = xi[0].index, xi[0].value if xi[0].index != 0: raise ValueError('Wrong input format: first column must be 0:sample_serial_number') if val <= 0 or val > prob.n: raise ValueError('Wrong input format: sample_serial_number out of range') if param.gamma == 0 and prob.n > 0: param.gamma = 1.0 / prob.n libsvm.svm_set_print_string_function(param.print_func) err_msg = libsvm.svm_check_parameter(prob, param) if err_msg: raise ValueError('Error: %s' % err_msg) if param.cross_validation: l, nr_fold = prob.l, param.nr_fold target = (c_double * l)() libsvm.svm_cross_validation(prob, param, nr_fold, target) ACC, MSE, SCC = evaluations(prob.y[:l], target[:l]) if param.svm_type in [EPSILON_SVR, NU_SVR]: print("Cross Validation Mean squared error = %g" % MSE) print("Cross Validation Squared correlation coefficient = %g" % SCC) return MSE else: print("Cross Validation Accuracy = %g%%" % ACC) return ACC else: m = libsvm.svm_train(prob, param) m = toPyModel(m) # If prob is destroyed, data including SVs pointed by m can remain. m.x_space = prob.x_space return m def svm_predict(y, x, m, options=""): """ svm_predict(y, x, m [, "options"]) -> (p_labels, p_acc, p_vals) Predict data (y, x) with the SVM model m. "options": -b probability_estimates: whether to predict probability estimates, 0 or 1 (default 0); for one-class SVM only 0 is supported. The return tuple contains p_labels: a list of predicted labels p_acc: a tuple including accuracy (for classification), mean-squared error, and squared correlation coefficient (for regression). p_vals: a list of decision values or probability estimates (if '-b 1' is specified). If k is the number of classes, for decision values, each element includes results of predicting k(k-1)/2 binary-class SVMs. For probabilities, each element contains k values indicating the probability that the testing instance is in each class. Note that the order of classes here is the same as 'model.label' field in the model structure. """ predict_probability = 0 argv = options.split() i = 0 while i < len(argv): if argv[i] == '-b': i += 1 predict_probability = int(argv[i]) else: raise ValueError("Wrong options") i+=1 svm_type = m.get_svm_type() is_prob_model = m.is_probability_model() nr_class = m.get_nr_class() pred_labels = [] pred_values = [] if predict_probability: if not is_prob_model: raise ValueError("Model does not support probabiliy estimates") if svm_type in [NU_SVR, EPSILON_SVR]: print("Prob. model for test data: target value = predicted value + z,\n" "z: Laplace distribution e^(-|z|/sigma)/(2sigma),sigma=%g" % m.get_svr_probability()); nr_class = 0 prob_estimates = (c_double * nr_class)() for xi in x: xi, idx = gen_svm_nodearray(xi) label = libsvm.svm_predict_probability(m, xi, prob_estimates) values = prob_estimates[:nr_class] pred_labels += [label] pred_values += [values] else: if is_prob_model: print("Model supports probability estimates, but disabled in predicton.") if svm_type in (ONE_CLASS, EPSILON_SVR, NU_SVC): nr_classifier = 1 else: nr_classifier = nr_class*(nr_class-1)//2 dec_values = (c_double * nr_classifier)() for xi in x: xi, idx = gen_svm_nodearray(xi) label = libsvm.svm_predict_values(m, xi, dec_values) values = dec_values[:nr_classifier] pred_labels += [label] pred_values += [values] ACC, MSE, SCC = evaluations(y, pred_labels) l = len(y) if svm_type in [EPSILON_SVR, NU_SVR]: print("Mean squared error = %g (regression)" % MSE) print("Squared correlation coefficient = %g (regression)" % SCC) else: print("Accuracy = %g%% (%d/%d) (classification)" % (ACC, int(l*ACC/100), l)) return pred_labels, (ACC, MSE, SCC), pred_values
8,068
32.205761
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DRT
DRT-master/external_libs/matconvnet/matconvnet/utils/layers.py
# file: layers.py # brief: A number of objects to wrap caffe layers for conversion # author: Andrea Vedaldi from collections import OrderedDict from math import floor, ceil from operator import mul import numpy as np from numpy import array import scipy import scipy.io import scipy.misc import copy import collections # Recent Caffes just pass a string as a type; this is used for legacy support layers_type = {} layers_type[0] = 'none' layers_type[1] = 'accuracy' layers_type[2] = 'bnll' layers_type[3] = 'concat' layers_type[4] = 'conv' layers_type[5] = 'data' layers_type[6] = 'dropout' layers_type[7] = 'euclidean_loss' layers_type[8] = 'flatten' layers_type[9] = 'hdf5_data' layers_type[10] = 'hdf5_output' layers_type[28] = 'hinge_loss' layers_type[11] = 'im2col' layers_type[12] = 'image_data' layers_type[13] = 'infogain_loss' layers_type[14] = 'inner_product' layers_type[15] = 'lrn' layers_type[25] = 'eltwise' layers_type[29] = 'memory_data' layers_type[16] = 'multinomial_logistic_loss' layers_type[17] = 'pool' layers_type[26] = 'power' layers_type[18] = 'relu' layers_type[19] = 'sigmoid' layers_type[27] = 'sigmoid_cross_entropy_loss' layers_type[20] = 'softmax' layers_type[21] = 'softmax_loss' layers_type[22] = 'split' layers_type[23] = 'tanh' layers_type[24] = 'window_data' layers_type[39] = 'deconvolution' layers_type[40] = 'crop' def getFilterOutputSize(size, kernelSize, stride, pad): return [floor((size[0] + pad[0]+pad[1] - kernelSize[0]) / stride[0]) + 1., \ floor((size[1] + pad[2]+pad[3] - kernelSize[1]) / stride[1]) + 1.] def getFilterTransform(ks, stride, pad): y1 = 1. - pad[0] ; y2 = 1. - pad[0] + ks[0] - 1 ; x1 = 1. - pad[2] ; x2 = 1. - pad[2] + ks[1] - 1 ; h = y2 - y1 + 1. ; w = x2 - x1 + 1. ; return CaffeTransform([h, w], stride, [(y1+y2)/2, (x1+x2)/2]) def reorder(aList, order): return [aList[i] for i in order] def row(x): return np.array(x,dtype=float).reshape(1,-1) def rowarray(x): return x.reshape(1,-1) def rowcell(x): return np.array(x,dtype=object).reshape(1,-1) def dictToMatlabStruct(d): if not d: return np.zeros((0,)) dt = [] for x in d.keys(): pair = (x,object) if isinstance(d[x], np.ndarray): pair = (x,type(d[x])) dt.append(pair) y = np.empty((1,),dtype=dt) for x in d.keys(): y[x][0] = d[x] return y # -------------------------------------------------------------------- # MatConvNet in NumPy # -------------------------------------------------------------------- mlayerdt = [('name',object), ('type',object), ('inputs',object), ('outputs',object), ('params',object), ('block',object)] mparamdt = [('name',object), ('value',object)] minputdt = [('name',object), ('size',object)] # -------------------------------------------------------------------- # Vars and params # -------------------------------------------------------------------- class CaffeBlob(object): def __init__(self, name): self.name = name self.shape = None self.value = np.zeros(shape=(0,0), dtype='float32') self.bgrInput = False self.transposable = True # first two dimensions are spatial def transpose(self): if self.shape: self.shape = [self.shape[k] for k in [1,0,2,3]] def toMatlab(self): mparam = np.empty(shape=[1,], dtype=mparamdt) mparam['name'][0] = self.name mparam['value'][0] = self.value return mparam def toMatlabSimpleNN(self): return self.value def hasValue(self): return reduce(mul, self.value.shape, 1) > 0 class CaffeTransform(object): def __init__(self, size, stride, offset): self.shape = size self.stride = stride self.offset = offset def __str__(self): return "<%s %s %s>" % (self.shape, self.stride, self.offset) def composeTransforms(a, b): size = [0.,0.] stride = [0.,0.] offset = [0.,0.] for i in [0,1]: size[i] = a.stride[i] * (b.shape[i] - 1) + a.shape[i] stride[i] = a.stride[i] * b.stride[i] offset[i] = a.stride[i] * (b.offset[i] - 1) + a.offset[i] c = CaffeTransform(size, stride, offset) return c def transposeTransform(a): size = [0.,0.] stride = [0.,0.] offset = [0.,0.] for i in [0,1]: size[i] = (a.shape[i] + a.stride[i] - 1.0) / a.stride[i] stride[i] = 1.0/a.stride[i] offset[i] = (1.0 + a.stride[i] - a.offset[i]) / a.stride[i] c = CaffeTransform(size, stride, offset) return c # -------------------------------------------------------------------- # Errors # -------------------------------------------------------------------- class ConversionError(Exception): def __init__(self, value): self.value = value def __str__(self): return repr(self.value) # -------------------------------------------------------------------- # Basic Layers # -------------------------------------------------------------------- class CaffeLayer(object): def __init__(self, name, inputs, outputs): self.name = name self.inputs = inputs self.outputs = outputs self.params = [] self.model = None def reshape(self, model): pass def display(self): print "Layer \'{}\'".format(self.name) print " +- type: %s" % (self.__class__.__name__) print " +- inputs: %s" % (self.inputs,) print " +- outputs: %s" % (self.outputs,) print " +- params: %s" % (self.params,) def getTransforms(self, model): transforms = [] for i in enumerate(self.inputs): row = [] for j in enumerate(self.outputs): row.append(CaffeTransform([1.,1.], [1.,1.], [1.,1.])) transforms.append(row) return transforms def transpose(self, model): pass def setBlob(self, model, i, blob): assert(False) def toMatlab(self): mlayer = np.empty(shape=[1,],dtype=mlayerdt) mlayer['name'][0] = self.name mlayer['type'][0] = None mlayer['inputs'][0] = rowcell(self.inputs) mlayer['outputs'][0] = rowcell(self.outputs) mlayer['params'][0] = rowcell(self.params) mlayer['block'][0] = dictToMatlabStruct({}) return mlayer def toMatlabSimpleNN(self): mparam = collections.OrderedDict() ; mparam['name'] = self.name mparam['type'] = None return mparam class CaffeElementWise(CaffeLayer): def reshape(self, model): for i in range(len(self.inputs)): model.vars[self.outputs[i]].shape = \ model.vars[self.inputs[i]].shape class CaffeReLU(CaffeElementWise): def __init__(self, name, inputs, outputs): super(CaffeReLU, self).__init__(name, inputs, outputs) def toMatlab(self): mlayer = super(CaffeReLU, self).toMatlab() mlayer['type'][0] = u'dagnn.ReLU' mlayer['block'][0] = dictToMatlabStruct( {'leak': float(0.0) }) # todo: leak factor return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeReLU, self).toMatlabSimpleNN() mlayer['type'] = u'relu' mlayer['leak'] = float(0.0) return mlayer class CaffeLRN(CaffeElementWise): def __init__(self, name, inputs, outputs, local_size, alpha, beta, norm_region, kappa): super(CaffeLRN, self).__init__(name, inputs, outputs) self.local_size = local_size self.alpha = alpha self.beta = beta self.norm_region = norm_region self.kappa = kappa assert(norm_region == 'across_channels') def toMatlab(self): mlayer = super(CaffeLRN, self).toMatlab() mlayer['type'][0] = u'dagnn.LRN' mlayer['block'][0] = dictToMatlabStruct( {'param': row([self.local_size, self.kappa, self.alpha / self.local_size, self.beta])}) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeLRN, self).toMatlabSimpleNN() mlayer['type'] = u'lrn' mlayer['param'] = row([self.local_size, self.kappa, self.alpha / self.local_size, self.beta]) return mlayer class CaffeSoftMax(CaffeElementWise): def __init__(self, name, inputs, outputs): super(CaffeSoftMax, self).__init__(name, inputs, outputs) def toMatlab(self): mlayer = super(CaffeSoftMax, self).toMatlab() mlayer['type'][0] = u'dagnn.SoftMax' return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeSoftMax, self).toMatlabSimpleNN() mlayer['type'] = u'softmax' return mlayer class CaffeSoftMaxLoss(CaffeElementWise): def __init__(self, name, inputs, outputs): super(CaffeSoftMaxLoss, self).__init__(name, inputs, outputs) def toMatlab(self): mlayer = super(CaffeSoftMaxLoss, self).toMatlab() mlayer['type'][0] = u'dagnn.SoftMaxLoss' return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeSoftMaxLoss, self).toMatlabSimpleNN() mlayer['type'] = u'softmax' return mlayer class CaffeDropout(CaffeElementWise): def __init__(self, name, inputs, outputs, ratio): super(CaffeDropout, self).__init__(name, inputs, outputs) self.ratio = ratio def toMatlab(self): mlayer = super(CaffeDropout, self).toMatlab() mlayer['type'][0] = u'dagnn.DropOut' mlayer['block'][0] = dictToMatlabStruct({'rate': float(self.ratio)}) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeDropout, self).toMatlabSimpleNN() mlayer['type'] = u'dropout' mlayer['rate'] = float(self.ratio) return mlayer def display(self): super(CaffeDropout, self).display() print " c- ratio (dropout rate):", self.ratio class CaffeData(CaffeLayer): def __init__(self, name, inputs, outputs): super(CaffeData, self).__init__(name, inputs, outputs) def reshape(self, model): # todo: complete otehr cases shape = [layer.transform_param.crop_size, layer.transform_param.crop_size, 3, layer.batch_size] model.vars[self.outputs[0]].shape = shape def toMatlab(self): return None def toMatlabSimpleNN(self): return None # -------------------------------------------------------------------- # Convolution # -------------------------------------------------------------------- class CaffeConv(CaffeLayer): def __init__(self, name, inputs, outputs, num_output, bias_term, pad, kernel_size, stride, dilation, group): super(CaffeConv, self).__init__(name, inputs, outputs) if len(kernel_size) == 1 : kernel_size = kernel_size * 2 if len(stride) == 1 : stride = stride * 2 if len(pad) == 1 : pad = pad * 4 elif len(pad) == 2 : pad = [pad[0], pad[0], pad[1], pad[1]] self.num_output = num_output self.bias_term = bias_term self.pad = pad self.kernel_size = kernel_size self.stride = stride self.dilation = dilation self.group = group self.params = [name + '_filter'] if bias_term: self.params.append(name + '_bias') self.filter_depth = None def display(self): super(CaffeConv, self).display() print " +- filter dimension:", self.filter_depth print " c- num_output (num filters): %s" % self.num_output print " c- bias_term: %s" % self.bias_term print " c- pad: %s" % (self.pad,) print " c- kernel_size: %s" % self.kernel_size print " c- stride: %s" % (self.stride,) print " c- dilation: %s" % (self.dilation,) print " c- group: %s" % (self.group,) def reshape(self, model): varin = model.vars[self.inputs[0]] varout = model.vars[self.outputs[0]] if not varin.shape: return varout.shape = getFilterOutputSize(varin.shape[0:2], self.kernel_size, self.stride, self.pad) \ + [self.num_output, varin.shape[3]] self.filter_depth = varin.shape[2] / self.group def getTransforms(self, model): return [[getFilterTransform(self.kernel_size, self.stride, self.pad)]] def setBlob(self, model, i, blob): assert(i < 2) if i == 0: assert(blob.shape[0] == self.kernel_size[0]) assert(blob.shape[1] == self.kernel_size[1]) assert(blob.shape[3] == self.num_output) self.filter_depth = blob.shape[2] elif i == 1: assert(blob.shape[0] == self.num_output) model.params[self.params[i]].value = blob model.params[self.params[i]].shape = blob.shape def transpose(self, model): self.kernel_size = reorder(self.kernel_size, [1,0]) self.stride = reorder(self.stride, [1,0]) self.pad = reorder(self.pad, [2,3,0,1]) if model.params[self.params[0]].hasValue(): print "Layer %s: transposing filters" % self.name param = model.params[self.params[0]] param.value = param.value.transpose([1,0,2,3]) if model.vars[self.inputs[0]].bgrInput: print "Layer %s: BGR to RGB conversion" % self.name param.value = param.value[:,:,: : -1,:] def toMatlab(self): size = self.kernel_size + [self.filter_depth, self.num_output] mlayer = super(CaffeConv, self).toMatlab() mlayer['type'][0] = u'dagnn.Conv' mlayer['block'][0] = dictToMatlabStruct( {'hasBias': self.bias_term, 'size': row(size), 'pad': row(self.pad), 'stride': row(self.stride)}) return mlayer def toMatlabSimpleNN(self): size = self.kernel_size + [self.filter_depth, self.num_output] mlayer = super(CaffeConv, self).toMatlabSimpleNN() mlayer['type'] = u'conv' mlayer['weights'] = np.empty([1,len(self.params)], dtype=np.object) mlayer['size'] = row(size) mlayer['pad'] = row(self.pad) mlayer['stride'] = row(self.stride) for p, name in enumerate(self.params): mlayer['weights'][0,p] = self.model.params[name].toMatlabSimpleNN() return mlayer # -------------------------------------------------------------------- # InnerProduct # -------------------------------------------------------------------- # special case: inner product class CaffeInnerProduct(CaffeConv): def __init__(self, name, inputs, outputs, num_output, bias_term, axis): super(CaffeInnerProduct, self).__init__(name, inputs, outputs, num_output = num_output, bias_term = bias_term, pad = [0, 0, 0, 0], kernel_size = [1, 1], stride = [1, 1], dilation = [], group = 1) self.axis = axis assert(axis == 1) def setBlob(self, model, i, blob): assert(i < 1 + self.bias_term) if i == 0: self.filter_depth = blob.shape[0] assert(blob.shape[1] == self.num_output) blob = blob.reshape([1, 1, self.filter_depth, self.num_output]) elif i == 1: assert(blob.shape[0] == self.num_output) model.params[self.params[i]].value = blob model.params[self.params[i]].shape = blob.shape def reshape(self, model): if not model.vars[self.inputs[0]].shape: return s = model.vars[self.inputs[0]].shape self.kernel_size = [s[0], s[1], s[2], self.num_output] print "Layer %s: inner product converted to filter bank of shape %s" \ % (self.name, self.kernel_size) param = model.params[self.params[0]] if param.hasValue(): print "Layer %s: reshaping inner product paramters of shape %s into a filter bank" % (self.name, param.value.shape) param.value = param.value.reshape(self.kernel_size, order='F') super(CaffeInnerProduct, self).reshape(model) # -------------------------------------------------------------------- # Deconvolution # -------------------------------------------------------------------- class CaffeDeconvolution(CaffeConv): def __init__(self, name, inputs, outputs, num_output, bias_term, pad, kernel_size, stride, dilation, group): super(CaffeDeconvolution, self).__init__(name, inputs, outputs, num_output = num_output, bias_term = bias_term, pad = pad, kernel_size = kernel_size, stride = stride, dilation = dilation, group = group) def setBlob(self, model, i, blob): assert(i < 2) if i == 0: assert(blob.shape[0] == self.kernel_size[0]) assert(blob.shape[1] == self.kernel_size[1]) assert(blob.shape[2] == self.num_output) self.filter_depth = blob.shape[3] elif i == 1: assert(blob.shape[0] == self.num_output) model.params[self.params[i]].value = blob model.params[self.params[i]].shape = blob.shape def reshape(self, model): inshape = model.vars[self.inputs[0]].shape if not inshape: return model.vars[self.outputs[0]].shape = \ getFilterOutputSize(inshape[0:2], self.kernel_size, self.stride, self.pad) + \ [self.num_output, inshape[3]] self.filter_depth = inshape[2] def getTransforms(self, model): t = getFilterTransform(self.kernel_size, self.stride, self.pad) t = transposeTransform(t) return [[t]] def transpose(self, model): self.kernel_size = reorder(self.kernel_size, [1,0]) self.stride = reorder(self.stride, [1,0]) self.pad = reorder(self.pad, [2,3,0,1]) if model.params[self.params[0]].hasValue(): print "Layer %s transposing filters" % self.name param = model.params[self.params[0]] param.value = param.value.transpose([1,0,2,3]) if model.vars[self.inputs[0]].bgrInput: print "Layer %s BGR to RGB conversion" % self.name param.value = param.value[:,:,:,: : -1] def toMatlab(self): size = self.kernel_size + [self.num_output, self.filter_depth / self.group] mlayer = super(CaffeDeconvolution, self).toMatlab() mlayer['type'][0] = u'dagnn.ConvTranspose' mlayer['block'][0] = dictToMatlabStruct( {'hasBias': self.bias_term, 'size': row(size), 'upsample': row(self.stride), 'crop': row(self.pad)}) return mlayer def toMatlabSimpleNN(self): size = self.kernel_size + [self.num_output, self.filter_depth / self.group] mlayer = super(CaffeDeconvolution, self).toMatlabSimpleNN() mlayer['type'] = u'convt' mlayer['weights'] = np.empty([1,len(self.params)], dtype=np.object) mlayer['size'] = row(size) mlayer['upsample'] = row(self.stride) mlayer['crop'] = row(self.pad) for p, name in enumerate(self.params): mlayer['weights'][0,p] = self.model.params[name].toMatlabSimpleNN() return mlayer # -------------------------------------------------------------------- # Pooling # -------------------------------------------------------------------- class CaffePooling(CaffeLayer): def __init__(self, name, inputs, outputs, method, pad, kernel_size, stride): super(CaffePooling, self).__init__(name, inputs, outputs) if len(kernel_size) == 1 : kernel_size = kernel_size * 2 if len(stride) == 1 : stride = stride * 2 if len(pad) == 1 : pad = pad * 4 elif len(pad) == 2 : pad = [pad[0], pad[0], pad[1], pad[1]] self.method = method self.pad = pad self.kernel_size = kernel_size self.stride = stride self.pad_corrected = None def display(self): super(CaffePooling, self).display() print " +- pad_corrected: %s" % (self.pad_corrected,) print " c- method: ", self.method print " c- pad: %s" % (self.pad,) print " c- kernel_size: %s" % (self.kernel_size,) print " c- stride: %s" % (self.stride,) def reshape(self, model): shape = model.vars[self.inputs[0]].shape if not shape: return # MatConvNet uses a slighly different definition of padding, which we think # is the correct one (it corresponds to the filters) self.pad_corrected = copy.deepcopy(self.pad) for i in [0, 1]: self.pad_corrected[1 + i*2] = min( self.pad[1 + i*2] + self.stride[i] - 1, self.kernel_size[i] - 1) model.vars[self.outputs[0]].shape = \ getFilterOutputSize(shape[0:2], self.kernel_size, self.stride, self.pad_corrected) + shape[2:5] def getTransforms(self, model): return [[getFilterTransform(self.kernel_size, self.stride, self.pad)]] def transpose(self, model): self.kernel_size = reorder(self.kernel_size, [1,0]) self.stride = reorder(self.stride, [1,0]) self.pad = reorder(self.pad, [2,3,0,1]) if self.pad_corrected: self.pad_corrected = reorder(self.pad_corrected, [2,3,0,1]) def toMatlab(self): mlayer = super(CaffePooling, self).toMatlab() mlayer['type'][0] = u'dagnn.Pooling' mlayer['block'][0] = dictToMatlabStruct( {'method': self.method, 'poolSize': row(self.kernel_size), 'stride': row(self.stride), 'pad': row(self.pad_corrected)}) if not self.pad_corrected: print "Warning: pad correction for layer %s could not be computed because the layer input shape could not be determined" % (self.name) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffePooling, self).toMatlabSimpleNN() mlayer['type'] = u'pool' mlayer['method'] = self.method mlayer['pool'] = row(self.kernel_size) mlayer['stride'] = row(self.stride) mlayer['pad'] = row(self.pad_corrected) if not self.pad_corrected: print "Warning: pad correction for layer %s could not be computed because the layer input shape could not be determined" % (self.name) return mlayer # -------------------------------------------------------------------- # ROIPooling # -------------------------------------------------------------------- class CaffeROIPooling(CaffeLayer): def __init__(self, name, inputs, outputs, pooled_w, pooled_h, spatial_scale): super(CaffeROIPooling, self).__init__(name, inputs, outputs) self.pooled_w = pooled_w self.pooled_h = pooled_h self.spatial_scale = spatial_scale self.flatten = True def display(self): super(CaffeROIPooling, self).display() print " c- pooled_w: %s" % (self.pooled_w,) print " c- pooled_h: %s" % (self.pooled_h,) print " c- spatial_scale: %s" % (self.spatial_scale,) print " c- flatten: %s" % (self.flatten,) def reshape(self, model): shape1 = model.vars[self.inputs[0]].shape shape2 = model.vars[self.inputs[1]].shape if not shape1 or not shape2: return numChannels = shape1[2] numROIs = reduce(mul, shape2, 1) / 5 if self.flatten: oshape = [1, 1, self.pooled_w * self.pooled_h * numChannels, numROIs] else: oshape = [self.pooled_w, self.pooled_h, numChannels, numROIs] model.vars[self.outputs[0]].shape = oshape def getTransforms(self, model): # no transform return [[CaffeTransform([1.,1.], [1.,1.], [1.,1.])]] def transpose(self, model): assert(not self.flatten) tmp = self.pooled_w self.pooled_w = self.pooled_h self.pooled_h = tmp def toMatlab(self): mlayer = super(CaffeROIPooling, self).toMatlab() mlayer['type'][0] = u'dagnn.ROIPooling' mlayer['block'][0] = dictToMatlabStruct( {'subdivisions':row([self.pooled_w, self.pooled_h]), 'transform':self.spatial_scale, 'flatten':self.flatten}) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeROIPooling, self).toMatlabSimpleNN() mlayer['type'] = u'roipool' mlayer['subdivisions'] = row([self.pooled_w, self.pooled_h]) mlayer['transform'] = self.spatial_scale mlayer['flatten'] = self.flatten return mlayer # -------------------------------------------------------------------- # Scale # -------------------------------------------------------------------- class CaffeScale(CaffeLayer): def __init__(self, name, inputs, outputs, axis, num_axes, bias_term): super(CaffeScale, self).__init__(name, inputs, outputs) self.axis = axis self.num_axes = num_axes self.bias_term = bias_term if len(self.inputs) == 1: self.params.append(name + '_mult') if len(self.inputs) < 2 and self.bias_term: self.params.append(name + '_bias') self.mult_size = [0, 0, 0, 0] def display(self): super(CaffeScale, self).display() print " +- mult_size: %s" % (self.mult_size,) print " c- axis: %s" % (self.axis,) print " c- num_axes: %s" % (self.num_axes,) print " c- bias_term: %s" % (self.bias_term,) def reshape(self, model): model.vars[self.outputs[0]].shape = model.vars[self.inputs[0]].shape def setBlob(self, model, i, blob): assert(i < self.bias_term + 1) # Caffe *ends* with WIDTH, we start with it, blobs are already swapped here k = 3 - self.axis # This means that the MULT dimensions are aligned to the INPUT # dimensions such that MULT[end] <-> INPUT[k]. For MatConvNet, # we simply add singletion dimensions at the beginning of MULT # to achieve this effect. BIAS is the same. mshape = tuple([1] * (k - len(blob.shape) + 1) + list(blob.shape)) blob = blob.reshape(mshape) model.params[self.params[i]].value = blob model.params[self.params[i]].shape = blob.shape if i == 0: self.mult_size = blob.shape def getTransforms(self, model): # The second input can be either a variable or a paramter; in # both cases, there is no transform for it return [[CaffeTransform([1.,1.], [1.,1.], [1.,1.])]] def transpose(self, model): if len(self.inputs) == 1: # we only need to transpose if the scale is a parameter, not an input for i in range(1 + self.bias_term): param = model.params[self.params[i]] n = len(param.shape) if n >= 2: order = range(n) order[0] = 1 order[1] = 0 param.value = param.value.transpose(order) def toMatlab(self): mlayer = super(CaffeScale, self).toMatlab() mlayer['type'][0] = u'dagnn.Scale' mlayer['block'][0] = dictToMatlabStruct( {'size': row(self.mult_size), 'hasBias': self.bias_term}) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeScale, self).toMatlabSimpleNN() # SimpleNN works only if the scaling blob is a parameter (and not a variable) mlayer['type'] = u'scale' mlayer['size'] = row(self.mult_size) mlayer['hasBias'] = self.bias_term return mlayer # -------------------------------------------------------------------- # BatchNorm # -------------------------------------------------------------------- class CaffeBatchNorm(CaffeLayer): def __init__(self, name, inputs, outputs, use_global_stats, moving_average_fraction, eps): super(CaffeBatchNorm, self).__init__(name, inputs, outputs) self.use_global_stats = use_global_stats self.moving_average_fraction = moving_average_fraction self.eps = eps self.params = [name + u'_mean', name + u'_variance', name + u'_scale_factor'] def display(self): super(CaffeBatchNorm, self).display() print " c- use_global_stats: %s" % (self.use_global_stats,) print " c- moving_average_fraction: %s" % (self.moving_average_fraction,) print " c- eps: %s" % (self.eps) def setBlob(self, model, i, blob): assert(i < 3) model.params[self.params[i]].value = blob model.params[self.params[i]].shape = blob.shape def reshape(self, model): shape = model.vars[self.inputs[0]].shape mean = model.params[self.params[0]].value variance = model.params[self.params[1]].value scale_factor = model.params[self.params[2]].value for i in range(3): del model.params[self.params[i]] self.params = [self.name + u'_mult', self.name + u'_bias', self.name + u'_moments'] model.addParam(self.params[0]) model.addParam(self.params[1]) model.addParam(self.params[2]) if shape: mult = np.ones((shape[2],),dtype='float32') bias = np.zeros((shape[2],),dtype='float32') model.params[self.params[0]].value = mult model.params[self.params[0]].shape = mult.shape model.params[self.params[1]].value = bias model.params[self.params[1]].shape = bias.shape if mean.size: moments = np.concatenate( (mean.reshape(-1,1) / scale_factor, np.sqrt(variance.reshape(-1,1) / scale_factor + self.eps)), axis=1) model.params[self.params[2]].value = moments model.params[self.params[2]].shape = moments.shape model.vars[self.outputs[0]].shape = shape def toMatlab(self): mlayer = super(CaffeBatchNorm, self).toMatlab() mlayer['type'][0] = u'dagnn.BatchNorm' mlayer['block'][0] = dictToMatlabStruct( {'epsilon': self.eps}) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeBatchNorm, self).toMatlabSimpleNN() mlayer['type'] = u'bnorm' mlayer['epsilon'] = self.eps return mlayer # -------------------------------------------------------------------- # Concat # -------------------------------------------------------------------- class CaffeConcat(CaffeLayer): def __init__(self, name, inputs, outputs, concatDim): super(CaffeConcat, self).__init__(name, inputs, outputs) self.concatDim = concatDim def transpose(self, model): self.concatDim = [1, 0, 2, 3][self.concatDim] def reshape(self, model): sizes = [model.vars[x].shape for x in self.inputs] osize = copy.deepcopy(sizes[0]) osize[self.concatDim] = 0 for thisSize in sizes: for i in range(len(thisSize)): if self.concatDim == i: osize[i] = osize[i] + thisSize[i] else: if osize[i] != thisSize[i]: print "Warning: concat layer: inconsistent input dimensions", sizes model.vars[self.outputs[0]].shape = osize def display(self): super(CaffeConcat, self).display() print " Concat Dim: ", self.concatDim def toMatlab(self): mlayer = super(CaffeConcat, self).toMatlab() mlayer['type'][0] = u'dagnn.Concat' mlayer['block'][0] = dictToMatlabStruct({'dim': float(self.concatDim) + 1}) return mlayer def toMatlabSimpleNN(self): raise ConversionError('Concat layers do not work in a SimpleNN network') # -------------------------------------------------------------------- # EltWise (Sum, ...) # -------------------------------------------------------------------- class CaffeEltWise(CaffeElementWise): def __init__(self, name, inputs, outputs, operation, coeff, stable_prod_grad): super(CaffeEltWise, self).__init__(name, inputs, outputs) self.operation = operation self.coeff = coeff self.stable_prod_grad = stable_prod_grad def toMatlab(self): mlayer = super(CaffeEltWise, self).toMatlab() if self.operation == 'sum': mlayer['type'][0] = u'dagnn.Sum' else: # not implemented assert(False) return mlayer def display(self): super(CaffeEltWise, self).display() print " c- operation: ", self.operation print " c- coeff: %s" % self.coeff print " c- stable_prod_grad: %s" % self.stable_prod_grad def reshape(self, model): model.vars[self.outputs[0]].shape = \ model.vars[self.inputs[0]].shape for i in range(1, len(self.inputs)): assert(model.vars[self.inputs[0]].shape == model.vars[self.inputs[i]].shape) def toMatlabSimpleNN(self): raise ConversionError('EltWise (sum, ...) layers do not work in a SimpleNN network') # -------------------------------------------------------------------- # Crop # -------------------------------------------------------------------- class CaffeCrop(CaffeLayer): def __init__(self, name, inputs, outputs): super(CaffeCrop, self).__init__(name, inputs, outputs) self.crop = [] def display(self): super(CaffeCrop, self).display() print " Crop: %s" % self.crop def reshape(self, model): # this is quite complex as we need to compute on the fly # the geometry tfs1 = model.getParentTransforms(self.inputs[0], self.name) tfs2 = model.getParentTransforms(self.inputs[1], self.name) print print self.name, self.inputs[0] for a,x in enumerate(tfs1): print "%10s %s" % (x,tfs1[x]) print self.name, self.inputs[1] for a,x in enumerate(tfs2): print "%10s %s" % (x,tfs2[x]) # the goal is to crop inputs[0] to make it as big as inputs[1] and # aligned to it; so now we find the map from inputs[0] to inputs[1] tf = None for name, tf2 in tfs2.items(): if tfs1.has_key(name): tf1 = tfs1[name] tf = composeTransforms(transposeTransform(tf2), tf1) break if tf is None: print "Error: could not find common ancestor for inputs '%s' and '%s' of the CaffeCrop layer '%s'" % (self.inputs[0], self.inputs[1], self.name) sys.exit(1) print " Transformation %s -> %s = %s" % (self.inputs[0], self.inputs[1], tf) # for this to make sense it shoudl be tf.stride = 1 assert(tf.stride[0] == 1 and tf.stride[1] == 1) # finally we can get the crops! self.crop = [0.,0.] for i in [0,1]: # i' = alpha (i - 1) + beta + crop = 1 for i = 1 # crop = 1 - beta self.crop[i] = round(1 - tf.offset[i]) print " Crop %s" % self.crop # print # print "resolved" # tfs3 = model.getParentTransforms(self.outputs[0]) # for a,x in enumerate(tfs3): print "%10s %s" % (x,tfs3[x]) # now compute output variable size, which will be the size of the second input model.vars[self.outputs[0]].shape = model.vars[self.inputs[1]].shape def getTransforms(self, model): t = CaffeTransform([1.,1.], [1.,1.], [1.+self.crop[0],1.+self.crop[1]]) return [[t],[None]] def toMatlab(self): mlayer = super(CaffeCrop, self).toMatlab() mlayer['type'][0] = u'dagnn.Crop' mlayer['block'][0] = dictToMatlabStruct({'crop': row(self.crop)}) return mlayer def toMatlabSimpleNN(self): # todo: simple 1 input crop layers should be supported though! raise ConversionError('Crop layers do not work in a SimpleNN network') # -------------------------------------------------------------------- # Caffe Model # -------------------------------------------------------------------- class CaffeModel(object): def __init__(self): self.layers = OrderedDict() self.vars = OrderedDict() self.params = OrderedDict() def addLayer(self, layer): ename = layer.name while self.layers.has_key(ename): ename = ename + 'x' if layer.name != ename: print "Warning: a layer with name %s was already found, using %s instead" % \ (layer.name, ename) layer.name = ename for v in layer.inputs: self.addVar(v) for v in layer.outputs: self.addVar(v) for p in layer.params: self.addParam(p) self.layers[layer.name] = layer def addVar(self, name): if not self.vars.has_key(name): self.vars[name] = CaffeBlob(name) def addParam(self, name): if not self.params.has_key(name): self.params[name] = CaffeBlob(name) def renameLayer(self, old, new): self.layers[old].name = new # reinsert layer with new name -- this mess is to preserve the order layers = OrderedDict([(new,v) if k==old else (k,v) for k,v in self.layers.items()]) self.layers = layers def renameVar(self, old, new, afterLayer=None): self.vars[old].name = new if afterLayer is not None: start = self.layers.keys().index(afterLayer) + 1 else: start = 0 # fix all references to the variable for layer in self.layers.values()[start:-1]: layer.inputs = [new if x==old else x for x in layer.inputs] layer.outputs = [new if x==old else x for x in layer.outputs] self.vars[new] = copy.deepcopy(self.vars[old]) # check if we can delete the old one (for afterLayet != None) stillUsed = False for layer in self.layers.values(): stillUsed = stillUsed or old in layer.inputs or old in layer.outputs if not stillUsed: del self.vars[old] def renameParam(self, old, new): self.params[old].name = new # fix all references to the variable for layer in self.layers.itervalues(): layer.params = [new if x==old else x for x in layer.params] var = self.params[old] del self.params[old] self.params[new] = var def removeParam(self, name): del self.params[name] def removeLayer(self, name): # todo: fix this stuff for weight sharing layer = self.layers[name] for paramName in layer.params: self.removeParam(paramName) del self.layers[name] def getLayersWithOutput(self, varName): layerNames = [] for layer in self.layers.itervalues(): if varName in layer.outputs: layerNames.append(layer.name) return layerNames def getLayersWithInput(self, varName): layerNames = [] for layer in self.layers.itervalues(): if varName in layer.inputs: layerNames.append(layer.name) return layerNames def reshape(self): for layer in self.layers.itervalues(): layer.reshape(self) def display(self): for layer in self.layers.itervalues(): layer.display() for var in self.vars.itervalues(): print 'Variable \'{}\''.format(var.name) print ' + shape (computed): %s' % (var.shape,) for par in self.params.itervalues(): print 'Parameter \'{}\''.format(par.name) print ' + data found: %s' % (par.shape is not None) print ' + data shape: %s' % (par.shape,) def transpose(self): for var in self.vars.itervalues(): if var.transposable: var.transpose() for layer in self.layers.itervalues(): layer.transpose(self) def getParentTransforms(self, variableName, topLayerName=None): layerNames = self.layers.keys() if topLayerName: layerIndex = layerNames.index(topLayerName) else: layerIndex = len(self.layers) + 1 transforms = OrderedDict() transforms[variableName] = CaffeTransform([1.,1.], [1.,1.], [1.,1.]) for layerName in reversed(layerNames[0:layerIndex]): layer = self.layers[layerName] layerTfs = layer.getTransforms(self) for i, inputName in enumerate(layer.inputs): tfs = [] if transforms.has_key(inputName): tfs.append(transforms[inputName]) for j, outputName in enumerate(layer.outputs): if layerTfs[i][j] is None: continue if transforms.has_key(outputName): composed = composeTransforms(layerTfs[i][j], transforms[outputName]) tfs.append(composed) if len(tfs) > 0: # should resolve conflicts, not simply pick the first tf transforms[inputName] = tfs[0] return transforms
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DRT-master/external_libs/matconvnet/matconvnet/utils/import-caffe.py
#! /usr/bin/python # file: import-caffe.py # brief: Caffe importer for DagNN and SimpleNN # author: Karel Lenc and Andrea Vedaldi # Requires Google Protobuf for Python and SciPy import sys import os import argparse import code import re import numpy as np from math import floor, ceil import numpy from numpy import array import scipy import scipy.io import scipy.misc import google.protobuf.text_format from ast import literal_eval as make_tuple from layers import * # -------------------------------------------------------------------- # Check NumPy version # -------------------------------------------------------------------- def versiontuple(version): return tuple(map(int, (version.split(".")))) min_numpy_version = "1.7.0" if versiontuple(numpy.version.version) < versiontuple(min_numpy_version): print 'Unsupported numpy version ({}), must be >= {}'.format(numpy.version.version, min_numpy_version) sys.exit(0) # -------------------------------------------------------------------- # Helper functions # -------------------------------------------------------------------- def find(seq, name): for item in seq: if item.name == name: return item return None def blobproto_to_array(blob): """Convert a Caffe Blob to a numpy array. It also reverses the order of all dimensions to [width, height, channels, instance]. """ dims = [] if hasattr(blob, 'shape'): dims = tolist(blob.shape.dim) if not dims: dims = [blob.num, blob.channels, blob.height, blob.width] return np.array(blob.data,dtype='float32').reshape(dims).transpose() def dict_to_struct_array(d): if not d: return np.zeros((0,)) dt=[(x,object) for x in d.keys()] y = np.empty((1,),dtype=dt) for x in d.keys(): y[x][0] = d[x] return y def tolist(x): "Convert x to a Python list. x can be a Protobuf container, a list or tuple, or scalar" if isinstance(x,google.protobuf.internal.containers.RepeatedScalarFieldContainer): return [z for z in x] elif isinstance(x, (list,tuple)): return [z for z in x] else: return [x] def escape(name): return name.replace('-','_') # -------------------------------------------------------------------- # Parse options # -------------------------------------------------------------------- parser = argparse.ArgumentParser(description='Convert a Caffe CNN into a MATLAB structure.') parser.add_argument('caffe_proto', type=argparse.FileType('rb'), help='The Caffe CNN parameter file (ASCII .proto)') parser.add_argument('--caffe-data', type=argparse.FileType('rb'), help='The Caffe CNN data file (binary .proto)') parser.add_argument('output', type=argparse.FileType('w'), help='Output MATLAB file') parser.add_argument('--full-image-size', type=str, nargs='?', default=None, help='Size of the full image') parser.add_argument('--average-image', type=argparse.FileType('rb'), nargs='?', help='Average image') parser.add_argument('--average-value', type=str, nargs='?', default=None, help='Average image value') parser.add_argument('--synsets', type=argparse.FileType('r'), nargs='?', help='Synset file (ASCII)') parser.add_argument('--class-names', type=str, nargs='?', help='Class names') parser.add_argument('--caffe-variant', type=str, nargs='?', default='caffe', help='Variant of Caffe software (use ? to get a list)') parser.add_argument('--transpose', dest='transpose', action='store_true', help='Transpose CNN in a sane MATLAB format') parser.add_argument('--no-transpose', dest='transpose', action='store_false', help='Do not transpose CNN') parser.add_argument('--color-format', dest='color_format', default='bgr', action='store', help='Set the color format used by the network: ''rgb'' or ''bgr'' (default)') parser.add_argument('--preproc', type=str, nargs='?', default='caffe', help='Variant of image preprocessing to use (use ? to get a list)') parser.add_argument('--simplify', dest='simplify', action='store_true', help='Apply simplifications') parser.add_argument('--no-simplify', dest='simplify', action='store_false', help='Do not apply simplifications') parser.add_argument('--remove-dropout', dest='remove_dropout', action='store_true', help='Remove dropout layers') parser.add_argument('--no-remove-dropout', dest='remove_dropout', action='store_false', help='Do not remove dropout layers') parser.add_argument('--remove-loss', dest='remove_loss', action='store_true', help='Remove loss layers') parser.add_argument('--no-remove-loss', dest='remove_loss', action='store_false', help='Do not remove loss layers') parser.add_argument('--append-softmax', dest='append_softmax', action='append', default=[], help='Add a softmax layer after the specified layer') parser.add_argument('--output-format', dest='output_format', default='dagnn', help='Either ''dagnn'' or ''simplenn''') parser.set_defaults(transpose=True) parser.set_defaults(remove_dropout=False) parser.set_defaults(remove_loss=False) parser.set_defaults(simplify=True) args = parser.parse_args() print 'Caffe varaint set to', args.caffe_variant if args.caffe_variant == 'vgg-caffe': import proto.vgg_caffe_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe-old': import proto.caffe_old_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe': import proto.caffe_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe_0115': import proto.caffe_0115_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe_6e3916': import proto.caffe_6e3916_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe_b590f1d': import proto.caffe_b590f1d_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe_fastrcnn': import proto.caffe_fastrcnn_pb2 as caffe_pb2 elif args.caffe_variant == '?': print 'Supported variants: caffe, vgg-caffe, caffe-old, caffe_0115, caffe_6e3916, caffe_b590f1d, caffe_fastrcnn' sys.exit(0) else: print 'Unknown Caffe variant', args.caffe_variant sys.exit(1) if args.preproc == '?': print 'Preprocessing variants: caffe, vgg, fcn' sys.exit(0) if args.preproc not in ['caffe', 'vgg-caffe', 'fcn']: print 'Unknown preprocessing variant', args.preproc sys.exit(1) # -------------------------------------------------------------------- # Helper functions # -------------------------------------------------------------------- def keyboard(banner=None): ''' Function that mimics the matlab keyboard command ''' # use exception trick to pick up the current frame try: raise None except: frame = sys.exc_info()[2].tb_frame.f_back print "# Use quit() to exit :) Happy debugging!" # evaluate commands in current namespace namespace = frame.f_globals.copy() namespace.update(frame.f_locals) try: code.interact(banner=banner, local=namespace) except SystemExit: return def bilinear_interpolate(im, x, y): x = np.asarray(x) y = np.asarray(y) x0 = np.floor(x).astype(int) x1 = x0 + 1 y0 = np.floor(y).astype(int) y1 = y0 + 1 x0 = np.clip(x0, 0, im.shape[1]-1); x1 = np.clip(x1, 0, im.shape[1]-1); y0 = np.clip(y0, 0, im.shape[0]-1); y1 = np.clip(y1, 0, im.shape[0]-1); Ia = im[ y0, x0 ] Ib = im[ y1, x0 ] Ic = im[ y0, x1 ] Id = im[ y1, x1 ] wa = (1-x+x0) * (1-y+y0) wb = (1-x+x0) * (y-y0) wc = (x-x0) * (1-y+y0) wd = (x-x0) * (y-y0) wa = wa.reshape(x.shape[0], x.shape[1], 1) wb = wb.reshape(x.shape[0], x.shape[1], 1) wc = wc.reshape(x.shape[0], x.shape[1], 1) wd = wd.reshape(x.shape[0], x.shape[1], 1) return wa*Ia + wb*Ib + wc*Ic + wd*Id # Get the parameters for a layer from Caffe's proto entries def getopts(layer, name): if hasattr(layer, name): return getattr(layer, name) else: # Older Caffe proto formats did not have sub-structures for layer # specific parameters but mixed everything up! This falls back to # that situation when fetching the parameters. return layer # -------------------------------------------------------------------- # Load average image # -------------------------------------------------------------------- average_image = None resize_average_image = False if args.average_image: print 'Loading average image from {}'.format(args.average_image.name) resize_average_image = True # in case different from data size avgim_nm, avgim_ext = os.path.splitext(args.average_image.name) if avgim_ext == '.binaryproto': blob=caffe_pb2.BlobProto() blob.MergeFromString(args.average_image.read()) average_image = blobproto_to_array(blob).astype('float32') average_image = np.squeeze(average_image,3) if args.transpose and average_image is not None: average_image = average_image.transpose([1,0,2]) average_image = average_image[:,:,: : -1] # to RGB elif avgim_ext == '.mat': avgim_data = scipy.io.loadmat(args.average_image) average_image = avgim_data['mean_img'] else: print 'Unsupported average image format {}'.format(avgim_ext) if args.average_value: rgb = make_tuple(args.average_value) print 'Using average image value', rgb # this will be resized later to a constant image average_image = np.array(rgb,dtype=float).reshape(1,1,3,order='F') resize_average_image = False # -------------------------------------------------------------------- # Load ImageNet synseths (if any) # -------------------------------------------------------------------- synsets_wnid=None synsets_name=None if args.synsets: print 'Loading synsets from {}'.format(args.synsets.name) r=re.compile('(?P<wnid>n[0-9]{8}?) (?P<name>.*)') synsets_wnid=[] synsets_name=[] for line in args.synsets: match = r.match(line) synsets_wnid.append(match.group('wnid')) synsets_name.append(match.group('name')) if args.class_names: synsets_wnid=list(make_tuple(args.class_names)) synsets_name=synsets_wnid # -------------------------------------------------------------------- # Load layers # -------------------------------------------------------------------- # Caffe stores the network structure and data into two different files # We load them both and merge them into a single MATLAB structure net=caffe_pb2.NetParameter() data=caffe_pb2.NetParameter() print 'Loading Caffe CNN structure from {}'.format(args.caffe_proto.name) google.protobuf.text_format.Merge(args.caffe_proto.read(), net) if args.caffe_data: print 'Loading Caffe CNN parameters from {}'.format(args.caffe_data.name) data.MergeFromString(args.caffe_data.read()) # -------------------------------------------------------------------- # Read layers in a CaffeModel object # -------------------------------------------------------------------- if args.caffe_variant in ['caffe_b590f1d', 'caffe_fastrcnn']: layers_list = net.layer data_layers_list = data.layer else: layers_list = net.layers data_layers_list = data.layers print 'Converting {} layers'.format(len(layers_list)) cmodel = CaffeModel() for layer in layers_list: # Depending on how old the proto-buf, the top and bottom parameters # are found at a different level than the others top = layer.top bottom = layer.bottom if args.caffe_variant in ['vgg-caffe', 'caffe-old']: layer = layer.layer # get the type of layer # depending on the Caffe variant, this is a string or a numeric # ID, which we convert back to a string ltype = layer.type if not isinstance(ltype, basestring): ltype = layers_type[ltype] print 'Added layer \'{}\' ({})'.format(ltype, layer.name) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ if ltype in ['conv', 'deconvolution', 'Convolution', 'Deconvolution']: opts = getopts(layer, 'convolution_param') if hasattr(opts, 'kernelsize'): kernel_size = opts.kernelsize else: kernel_size = opts.kernel_size if hasattr(opts, 'bias_term'): bias_term = opts.bias_term else: bias_term = True if hasattr(opts, 'dilation'): dilation = opts.dilation else: dilation = 1 if ltype in ['conv', 'Convolution']: clayer = CaffeConv(layer.name, bottom, top, kernel_size = tolist(kernel_size), bias_term = bias_term, num_output = opts.num_output, group = opts.group, dilation = dilation, stride = tolist(opts.stride), pad = tolist(opts.pad)) else: clayer = CaffeDeconvolution(layer.name, bottom, top, kernel_size = tolist(kernel_size), bias_term = bias_term, num_output = opts.num_output, group = opts.group, dilation = dilation, stride = tolist(opts.stride), pad = tolist(opts.pad)) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['innerproduct', 'inner_product', 'InnerProduct']: opts = getopts(layer, 'inner_product_param') if hasattr(opts, 'bias_term'): bias_term = opts.bias_term else: bias_term = True if hasattr(opts, 'axis'): axis = opts.axis else: axis = 1 clayer = CaffeInnerProduct(layer.name, bottom, top, num_output = opts.num_output, bias_term = bias_term, axis = axis) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['relu', 'ReLU']: clayer = CaffeReLU(layer.name, bottom, top) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['crop', 'Crop']: clayer = CaffeCrop(layer.name, bottom, top) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['lrn', 'LRN']: opts = getopts(layer, 'lrn_param') local_size = float(opts.local_size) alpha = float(opts.alpha) beta = float(opts.beta) kappa = opts.k if hasattr(opts,'k') else 1. regions = ['across_channels', 'within_channel'] if hasattr(opts, 'norm_region'): norm_region = opts.norm_region else: norm_region = 0 clayer = CaffeLRN(layer.name, bottom, top, local_size = local_size, alpha = alpha, beta = beta, norm_region = regions[norm_region], kappa = kappa) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['pool', 'Pooling']: opts = getopts(layer, 'pooling_param') if hasattr(layer, 'kernelsize'): kernel_size = opts.kernelsize else: kernel_size = opts.kernel_size clayer = CaffePooling(layer.name, bottom, top, method = ['max', 'avg'][opts.pool], pad = tolist(opts.pad), kernel_size = tolist(kernel_size), stride = tolist(opts.stride)) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['dropout', 'Dropout']: opts = getopts(layer, 'dropout_param') clayer = CaffeDropout(layer.name, bottom, top, opts.dropout_ratio) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['softmax', 'Softmax']: clayer = CaffeSoftMax(layer.name, bottom, top) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['softmax_loss', 'SoftmaxLoss']: clayer = CaffeSoftMaxLoss(layer.name, bottom, top) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['concat', 'Concat']: opts = getopts(layer, 'concat_param') clayer = CaffeConcat(layer.name, bottom, top, 3 - opts.concat_dim) # todo: depreceted in recent Caffes # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['Scale']: opts = getopts(layer, 'scale_param') clayer = CaffeScale(layer.name, bottom, top, axis = opts.axis, num_axes = opts.num_axes, bias_term = opts.bias_term) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['BatchNorm']: opts = getopts(layer, 'batch_norm_param') clayer = CaffeBatchNorm(layer.name, bottom, top, use_global_stats = opts.use_global_stats, moving_average_fraction = opts.moving_average_fraction, eps = opts.eps) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['eltwise', 'Eltwise']: opts = getopts(layer, 'eltwise_param') operations = ['prod', 'sum', 'max'] clayer = CaffeEltWise(layer.name, bottom, top, operation = operations[opts.operation], coeff = opts.coeff, stable_prod_grad = opts.stable_prod_grad) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['data', 'Data']: opts = getopts(layer, 'eltwise_param') operations = ['prod', 'sum', 'max'] clayer = CaffeData(layer.name, bottom, top, operation = operations[opts.operation], coeff = opts.coeff, stable_prod_grad = opts.stable_prod_grad) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['roipooling', 'ROIPooling']: opts = getopts(layer, 'roi_pooling_param') clayer = CaffeROIPooling(layer.name, bottom, top, pooled_w = opts.pooled_w, pooled_h = opts.pooled_h, spatial_scale = opts.spatial_scale) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['accuracy', 'Accuracy']: continue # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ else: print 'Warning: unknown layer type', ltype continue if clayer is not None: clayer.model = cmodel cmodel.addLayer(clayer) # Fill parameters for dlayer in data_layers_list: if args.caffe_variant in ['vgg-caffe', 'caffe-old']: dlayer = dlayer.layer if dlayer.name == layer.name: for i, blob in enumerate(dlayer.blobs): blob = blobproto_to_array(blob).astype('float32') print ' + parameter \'%s\' <-- blob%s' % (clayer.params[i], blob.shape) clayer.setBlob(cmodel, i, blob) # -------------------------------------------------------------------- # Get the size of the network variables # -------------------------------------------------------------------- # Get the sizes of the network inputs for i, inputVarName in enumerate(net.input): if hasattr(net, 'input_shape') and net.input_shape: shape = net.input_shape[i].dim._values # ensure that shape is a list of dimensions if isinstance(shape, caffe_pb2.BlobShape): # shape.tolist() may not preserve the order of dimensions shape = shape.dim._values shape.reverse() else: shape = [net.input_dim[k + 4*i] for k in [3,2,1,0]] cmodel.vars[inputVarName].shape = shape print ' c- Input \'{}\' is {}'.format(inputVarName, shape) # -------------------------------------------------------------------- # Sanitize # -------------------------------------------------------------------- # Rename layers, parametrs, and variables if they contain symbols that # are incompatible with MatConvNet. layerNames = cmodel.layers.keys() for name in layerNames: ename = escape(name) if ename == name: continue # ensure unique while cmodel.layers.has_key(ename): ename = ename + 'x' print "Renaming layer {} to {}".format(name, ename) cmodel.renameLayer(name, ename) varNames = cmodel.vars.keys() for name in varNames: ename = escape(name) if ename == name: continue while cmodel.vars.has_key(ename): ename = ename + 'x' print "Renaming variable {} to {}".format(name, ename) cmodel.renameVar(name, ename) parNames = cmodel.params.keys() for name in parNames: ename = escape(name) if ename == name: continue while cmodel.params.has_key(ename): ename = ename + 'x' print "Renaming parameter {} to {}".format(name, ename) cmodel.renameParam(name, ename) # Split in-place layers. MatConvNet handles such optimizations # differently. for layer in cmodel.layers.itervalues(): if len(layer.inputs[0]) >= 1 and \ len(layer.outputs[0]) >= 1 and \ layer.inputs[0] == layer.outputs[0]: name = layer.inputs[0] ename = layer.inputs[0] while cmodel.vars.has_key(ename): ename = ename + 'x' print "Splitting in-place layer: renaming variable {} to {}".format(name, ename) cmodel.addVar(ename) cmodel.renameVar(name, ename, afterLayer=layer.name) layer.inputs[0] = name layer.outputs[0] = ename # -------------------------------------------------------------------- # Get variable sizes # -------------------------------------------------------------------- # Get the size of all other variables. This information is required # for some special layer conversions: # # * For Pooling layers, fix incompatibility between padding in # MatConvNet and Caffe. # # * For Crop layers (in FCNs), determine the amount of crop (in Caffe # this is done at run time). # Unflatten ROIPooling. ROIPooling will produce a H x W array instead # of a stacked version of the same. The reshape operation below will # convert the following InnerProduct layers in corresponding # convolitions. This works well with transposition later. layerNames = cmodel.layers.keys() for name in layerNames: layer = cmodel.layers[name] if type(layer) is CaffeROIPooling: childrenNames = cmodel.getLayersWithInput(layer.outputs[0]) for childName in childrenNames: child = cmodel.layers[childName] if type(child) is not CaffeInnerProduct: print "Error: cannot unflatten ROIPooling if this is not followed only InnerProduct layers" sys.exit(1) layer.flatten = False cmodel.reshape() # -------------------------------------------------------------------- # Edit # -------------------------------------------------------------------- # Remove dropout if args.remove_dropout: layerNames = cmodel.layers.keys() for name in layerNames: layer = cmodel.layers[name] if type(layer) is CaffeDropout: print "Removing dropout layer ", name cmodel.renameVar(layer.outputs[0], layer.inputs[0]) cmodel.removeLayer(name) # Remove loss if args.remove_loss: layerNames = cmodel.layers.keys() for name in layerNames: layer = cmodel.layers[name] if type(layer) is CaffeSoftMaxLoss: print "Removing loss layer ", name cmodel.renameVar(layer.outputs[0], layer.inputs[0]) cmodel.removeLayer(name) # Append softmax for i, name in enumerate(args.append_softmax): # search for the layer to append SoftMax to if not cmodel.layers.has_key(name): print 'Cannot append softmax to layer {} as no such layer could be found'.format(name) sys.exit(1) if len(args.append_softmax) > 1: layerName = 'softmax' + (l + 1) outputs= ['prob' + (l + 1)] else: layerName = 'softmax' outputs = ['prob'] cmodel.addLayer(CaffeSoftMax(layerName, cmodel.layers[name].outputs[0:1], outputs)) # Simplifications if args.simplify: # Merge BatchNorm followed by Scale layerNames = cmodel.layers.keys() for name in layerNames: layer = cmodel.layers[name] if type(layer) is CaffeScale: if len(layer.inputs) > 1: continue # the scaling factor is an input, not a parameter if len(cmodel.getLayersWithInput(layer.inputs[0])) > 1: continue # other layers use the same input parentNames = cmodel.getLayersWithOutput(layer.inputs[0]) if len(parentNames) != 1: continue parent = cmodel.layers[parentNames[0]] if type(parent) is not CaffeBatchNorm: continue smult = cmodel.params[layer.params[0]] sbias = cmodel.params[layer.params[1]] mult = cmodel.params[parent.params[0]] bias = cmodel.params[parent.params[1]] # simplification can only occur if scale layer is 1x1xC if smult.shape[0] != 1 or smult.shape[1] != 1: continue C = smult.shape[2] mult.value = np.reshape(smult.value, (C,)) * mult.value bias.value = np.reshape(smult.value, (C,)) * bias.value + \ np.reshape(sbias.value, (C,)) print "Simplifying scale layer \'{}\'".format(name) cmodel.renameVar(layer.outputs[0], layer.inputs[0]) cmodel.removeLayer(name) # -------------------------------------------------------------------- # Transposition # -------------------------------------------------------------------- # # There are a few different conventions in MATLAB and Caffe: # # * In MATLAB, the frist spatial dimension is Y (vertical) followed by # X (horizontal), whereas in Caffe the opposite is true. # # * In MATLAB, images are stored in RGB format, whereas Caffe uses # BGR. # # * In MatConvNet, the first spatial coordinate is Y, whereas in Caffe # it is X. This affects layers such as ROI pooling. # # These conventions means that, if the network is directly saved in # MCN format, then images and spatial coordinates are transposed as # just described. While this is not a deal breaker, it is # inconvenient. # # Thus we transpose all X,Y spatial dimensions in the network. For now, # this is partially heuristic. In the future, we should add adapter layer to # convert from MCN inputs and outputs to Caffe input and outputs and then # simplity those away using graph transformations. # Mark variables: # - requiring BGR -> RGB conversion # - requiring XY transposition for i, inputVarName in enumerate(net.input): if inputVarName == 'data' or i == 0: if cmodel.vars[inputVarName].shape[2] == 3: cmodel.vars[inputVarName].bgrInput = (args.color_format == 'bgr') if not inputVarName == 'rois': cmodel.vars[inputVarName].transposable = True else: cmodel.vars[inputVarName].transposable = False # Apply transformations if args.transpose: cmodel.transpose() cmodel.display() # -------------------------------------------------------------------- # Normalization # -------------------------------------------------------------------- minputs = np.empty(shape=[0,], dtype=minputdt) # Determine the size of the inputs and input image (dataShape) for i, inputVarName in enumerate(net.input): shape = cmodel.vars[inputVarName].shape # add metadata minput = np.empty(shape=[1,], dtype=minputdt) minput['name'][0] = inputVarName minput['size'][0] = row(shape) minputs = np.append(minputs, minput, axis=0) # heuristic: the first input or 'data' is the input image if i == 0 or inputVarName == 'data': dataShape = shape print "Input image data tensor shape:", dataShape fullImageSize = [256, 256] if args.full_image_size: fullImageSize = list(make_tuple(args.full_image_size)) print "Full input image size:", fullImageSize if average_image is not None: if resize_average_image: x = numpy.linspace(0, average_image.shape[1]-1, dataShape[0]) y = numpy.linspace(0, average_image.shape[0]-1, dataShape[1]) x, y = np.meshgrid(x, y, sparse=False, indexing='xy') average_image = bilinear_interpolate(average_image, x, y) else: average_image = np.zeros((0,),dtype='float') mnormalization = { 'imageSize': row(dataShape), 'averageImage': average_image, 'interpolation': 'bilinear', 'keepAspect': True, 'border': row([0,0]), 'cropSize': 1.0} if len(fullImageSize) == 1: fw = max(fullImageSize[0],dataShape[1]) fh = max(fullImageSize[0],dataShape[0]) mnormalization['border'] = max([float(fw - dataShape[1]), float(fh - dataShape[0])]) mnormalization['cropSize'] = min([float(dataShape[1]) / fw, float(dataShape[0]) / fh]) else: fw = max(fullImageSize[0],dataShape[1]) fh = max(fullImageSize[1],dataShape[0]) mnormalization['border'] = row([float(fw - dataShape[1]), float(fh - dataShape[0])]) mnormalization['cropSize'] = row([float(dataShape[1]) / fw, float(dataShape[0]) / fh]) if args.caffe_variant == 'caffe_fastrcnn': mnormalization['interpolation'] = 'bilinear' if args.preproc == 'caffe': mnormalization['interpolation'] = 'bicubic' mnormalization['keepAspect'] = False print 'Input image border: ', mnormalization['border'] print 'Full input image relative crop size: ', mnormalization['cropSize'] # -------------------------------------------------------------------- # Classes # -------------------------------------------------------------------- mclassnames = np.empty((0,), dtype=np.object) mclassdescriptions = np.array((0,), dtype=np.object) if synsets_wnid: mclassnames = np.array(synsets_wnid, dtype=np.object).reshape(1,-1) if synsets_name: mclassdescriptions = np.array(synsets_name, dtype=np.object).reshape(1,-1) mclasses = dictToMatlabStruct({'name': mclassnames, 'description': mclassdescriptions}) # -------------------------------------------------------------------- # Convert to MATLAB # -------------------------------------------------------------------- # net.meta mmeta = dictToMatlabStruct({'inputs': minputs.reshape(1,-1), 'normalization': mnormalization, 'classes': mclasses}) if args.output_format == 'dagnn': # This object should stay a dictionary and not a NumPy array due to # how NumPy saves to MATLAB mnet = {'layers': np.empty(shape=[0,], dtype=mlayerdt), 'params': np.empty(shape=[0,], dtype=mparamdt), 'meta': mmeta} for layer in cmodel.layers.itervalues(): mnet['layers'] = np.append(mnet['layers'], layer.toMatlab(), axis=0) for param in cmodel.params.itervalues(): mnet['params'] = np.append(mnet['params'], param.toMatlab(), axis=0) # to row mnet['layers'] = mnet['layers'].reshape(1,-1) mnet['params'] = mnet['params'].reshape(1,-1) elif args.output_format == 'simplenn': # This object should stay a dictionary and not a NumPy array due to # how NumPy saves to MATLAB mnet = {'layers': np.empty(shape=[0,], dtype=np.object), 'meta': mmeta} for layer in cmodel.layers.itervalues(): mnet['layers'] = np.append(mnet['layers'], np.object) mnet['layers'][-1] = dictToMatlabStruct(layer.toMatlabSimpleNN()) # to row mnet['layers'] = mnet['layers'].reshape(1,-1) # -------------------------------------------------------------------- # Save output # -------------------------------------------------------------------- print 'Saving network to {}'.format(args.output.name) scipy.io.savemat(args.output, mnet, oned_as='column')
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36.213244
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DRT
DRT-master/external_libs/matconvnet/matconvnet/utils/proto/caffe_0115_pb2.py
# Generated by the protocol buffer compiler. 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file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='TRAIN', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='TEST', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=9074, serialized_end=9102, ) TRAIN = 0 TEST = 1 _SOLVERPARAMETER_SOLVERMODE = descriptor.EnumDescriptor( name='SolverMode', full_name='caffe.SolverParameter.SolverMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='CPU', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='GPU', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=1574, serialized_end=1604, ) _SOLVERPARAMETER_SOLVERTYPE = descriptor.EnumDescriptor( name='SolverType', full_name='caffe.SolverParameter.SolverType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='SGD', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='NESTEROV', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ADAGRAD', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=1606, serialized_end=1654, ) _LAYERPARAMETER_LAYERTYPE = descriptor.EnumDescriptor( name='LayerType', full_name='caffe.LayerParameter.LayerType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='NONE', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='ABSVAL', index=1, number=35, options=None, type=None), descriptor.EnumValueDescriptor( name='ACCURACY', index=2, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ARGMAX', index=3, number=30, options=None, type=None), descriptor.EnumValueDescriptor( name='BNLL', index=4, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='CONCAT', index=5, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='CONTRASTIVE_LOSS', index=6, number=37, options=None, type=None), descriptor.EnumValueDescriptor( name='CONVOLUTION', index=7, number=4, options=None, type=None), descriptor.EnumValueDescriptor( name='DATA', index=8, number=5, options=None, type=None), descriptor.EnumValueDescriptor( name='DROPOUT', index=9, number=6, options=None, type=None), descriptor.EnumValueDescriptor( name='DUMMY_DATA', index=10, number=32, options=None, type=None), descriptor.EnumValueDescriptor( name='EUCLIDEAN_LOSS', index=11, number=7, options=None, type=None), descriptor.EnumValueDescriptor( name='ELTWISE', index=12, number=25, options=None, type=None), descriptor.EnumValueDescriptor( name='FLATTEN', index=13, number=8, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_DATA', index=14, number=9, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_OUTPUT', index=15, number=10, options=None, type=None), descriptor.EnumValueDescriptor( name='HINGE_LOSS', index=16, number=28, options=None, type=None), descriptor.EnumValueDescriptor( name='IM2COL', index=17, number=11, options=None, type=None), descriptor.EnumValueDescriptor( name='IMAGE_DATA', index=18, number=12, options=None, type=None), descriptor.EnumValueDescriptor( name='INFOGAIN_LOSS', index=19, number=13, options=None, type=None), descriptor.EnumValueDescriptor( name='INNER_PRODUCT', index=20, number=14, options=None, type=None), descriptor.EnumValueDescriptor( name='LRN', index=21, number=15, options=None, type=None), descriptor.EnumValueDescriptor( name='MEMORY_DATA', index=22, number=29, options=None, type=None), descriptor.EnumValueDescriptor( name='MULTINOMIAL_LOGISTIC_LOSS', index=23, number=16, options=None, type=None), descriptor.EnumValueDescriptor( name='MVN', index=24, number=34, options=None, type=None), descriptor.EnumValueDescriptor( name='POOLING', index=25, number=17, options=None, type=None), descriptor.EnumValueDescriptor( name='POWER', index=26, number=26, options=None, type=None), descriptor.EnumValueDescriptor( name='RELU', index=27, number=18, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID', index=28, number=19, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID_CROSS_ENTROPY_LOSS', index=29, number=27, options=None, type=None), descriptor.EnumValueDescriptor( name='SILENCE', index=30, number=36, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX', index=31, number=20, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX_LOSS', index=32, number=21, options=None, type=None), descriptor.EnumValueDescriptor( name='SPLIT', index=33, number=22, options=None, type=None), descriptor.EnumValueDescriptor( name='SLICE', index=34, number=33, options=None, type=None), descriptor.EnumValueDescriptor( name='TANH', index=35, number=23, options=None, type=None), descriptor.EnumValueDescriptor( name='WINDOW_DATA', index=36, number=24, options=None, type=None), descriptor.EnumValueDescriptor( name='THRESHOLD', index=37, number=31, options=None, type=None), ], containing_type=None, options=None, serialized_start=3760, serialized_end=4332, ) _LAYERPARAMETER_DIMCHECKMODE = descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.LayerParameter.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=4334, serialized_end=4376, ) _CONVOLUTIONPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.ConvolutionParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _DATAPARAMETER_DB = descriptor.EnumDescriptor( name='DB', full_name='caffe.DataParameter.DB', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='LEVELDB', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='LMDB', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=5339, serialized_end=5366, ) _ELTWISEPARAMETER_ELTWISEOP = descriptor.EnumDescriptor( name='EltwiseOp', full_name='caffe.EltwiseParameter.EltwiseOp', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='PROD', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='SUM', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='MAX', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5672, serialized_end=5711, ) _HINGELOSSPARAMETER_NORM = descriptor.EnumDescriptor( name='Norm', full_name='caffe.HingeLossParameter.Norm', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='L1', index=0, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='L2', index=1, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5928, serialized_end=5950, ) _LRNPARAMETER_NORMREGION = descriptor.EnumDescriptor( name='NormRegion', full_name='caffe.LRNParameter.NormRegion', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='ACROSS_CHANNELS', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='WITHIN_CHANNEL', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=6536, serialized_end=6589, ) _POOLINGPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.PoolingParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7062, serialized_end=7108, ) _POOLINGPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.PoolingParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _RELUPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.ReLUParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _SIGMOIDPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SigmoidParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _SOFTMAXPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SoftmaxParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _TANHPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.TanHParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _V0LAYERPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.V0LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7062, serialized_end=7108, ) _BLOBPROTO = descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=22, serialized_end=143, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=145, serialized_end=195, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=197, serialized_end=302, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sparse', full_name='caffe.FillerParameter.sparse', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=305, serialized_end=449, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=1, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='state', full_name='caffe.NetParameter.state', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=452, serialized_end=616, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='net', full_name='caffe.SolverParameter.net', index=0, number=24, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='net_param', full_name='caffe.SolverParameter.net_param', index=1, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=2, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=3, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net_param', full_name='caffe.SolverParameter.train_net_param', index=4, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net_param', full_name='caffe.SolverParameter.test_net_param', index=5, number=22, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_state', full_name='caffe.SolverParameter.train_state', index=6, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_state', full_name='caffe.SolverParameter.test_state', index=7, number=27, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=8, number=3, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=9, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_compute_loss', full_name='caffe.SolverParameter.test_compute_loss', index=10, number=19, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_initialization', full_name='caffe.SolverParameter.test_initialization', index=11, number=32, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=12, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=13, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='average_loss', full_name='caffe.SolverParameter.average_loss', index=14, number=33, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=15, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=16, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=17, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=18, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=19, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=20, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='regularization_type', full_name='caffe.SolverParameter.regularization_type', index=21, number=29, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("L2", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=22, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepvalue', full_name='caffe.SolverParameter.stepvalue', index=23, number=34, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=24, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=25, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=26, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=27, number=17, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=28, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='random_seed', full_name='caffe.SolverParameter.random_seed', index=29, number=20, type=3, cpp_type=2, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_type', full_name='caffe.SolverParameter.solver_type', index=30, number=30, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='delta', full_name='caffe.SolverParameter.delta', index=31, number=31, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-08, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='debug_info', full_name='caffe.SolverParameter.debug_info', index=32, number=23, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_after_train', full_name='caffe.SolverParameter.snapshot_after_train', index=33, number=28, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOLVERPARAMETER_SOLVERMODE, _SOLVERPARAMETER_SOLVERTYPE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=619, serialized_end=1654, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='current_step', full_name='caffe.SolverState.current_step', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1656, serialized_end=1764, ) _NETSTATE = descriptor.Descriptor( name='NetState', full_name='caffe.NetState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetState.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='level', full_name='caffe.NetState.level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetState.stage', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1766, serialized_end=1844, ) _NETSTATERULE = descriptor.Descriptor( name='NetStateRule', full_name='caffe.NetStateRule', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetStateRule.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min_level', full_name='caffe.NetStateRule.min_level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_level', full_name='caffe.NetStateRule.max_level', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetStateRule.stage', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='not_stage', full_name='caffe.NetStateRule.not_stage', index=4, number=5, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1846, serialized_end=1961, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerParameter.bottom', index=0, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerParameter.top', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=2, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='include', full_name='caffe.LayerParameter.include', index=3, number=32, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exclude', full_name='caffe.LayerParameter.exclude', index=4, number=33, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=5, number=5, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param', full_name='caffe.LayerParameter.param', index=7, number=1001, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blob_share_mode', full_name='caffe.LayerParameter.blob_share_mode', index=8, number=1002, type=14, cpp_type=8, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.LayerParameter.blobs_lr', index=9, number=7, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.LayerParameter.weight_decay', index=10, number=8, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.LayerParameter.loss_weight', index=11, number=35, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.LayerParameter.accuracy_param', index=12, number=27, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.LayerParameter.argmax_param', index=13, number=23, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.LayerParameter.concat_param', index=14, number=9, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.LayerParameter.contrastive_loss_param', index=15, number=40, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.LayerParameter.convolution_param', index=16, number=10, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.LayerParameter.data_param', index=17, number=11, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.LayerParameter.dropout_param', index=18, number=12, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.LayerParameter.dummy_data_param', index=19, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.LayerParameter.eltwise_param', index=20, number=24, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.LayerParameter.hdf5_data_param', index=21, number=13, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.LayerParameter.hdf5_output_param', index=22, number=14, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.LayerParameter.hinge_loss_param', index=23, number=29, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.LayerParameter.image_data_param', index=24, number=15, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.LayerParameter.infogain_loss_param', index=25, number=16, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.LayerParameter.inner_product_param', index=26, number=17, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.LayerParameter.lrn_param', index=27, number=18, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.LayerParameter.memory_data_param', index=28, number=22, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.LayerParameter.mvn_param', index=29, number=34, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.LayerParameter.pooling_param', index=30, number=19, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.LayerParameter.power_param', index=31, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='relu_param', full_name='caffe.LayerParameter.relu_param', index=32, number=30, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.LayerParameter.sigmoid_param', index=33, number=38, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.LayerParameter.softmax_param', index=34, number=39, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_param', full_name='caffe.LayerParameter.slice_param', index=35, number=31, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.LayerParameter.tanh_param', index=36, number=37, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.LayerParameter.threshold_param', index=37, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.LayerParameter.window_data_param', index=38, number=20, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='transform_param', full_name='caffe.LayerParameter.transform_param', index=39, number=36, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.LayerParameter.layer', index=40, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LAYERPARAMETER_LAYERTYPE, _LAYERPARAMETER_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1964, serialized_end=4376, ) _TRANSFORMATIONPARAMETER = descriptor.Descriptor( name='TransformationParameter', full_name='caffe.TransformationParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='scale', full_name='caffe.TransformationParameter.scale', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.TransformationParameter.mirror', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.TransformationParameter.crop_size', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.TransformationParameter.mean_file', index=3, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4378, serialized_end=4485, ) _ACCURACYPARAMETER = descriptor.Descriptor( name='AccuracyParameter', full_name='caffe.AccuracyParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='top_k', full_name='caffe.AccuracyParameter.top_k', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4487, serialized_end=4524, ) _ARGMAXPARAMETER = descriptor.Descriptor( name='ArgMaxParameter', full_name='caffe.ArgMaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='out_max_val', full_name='caffe.ArgMaxParameter.out_max_val', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top_k', full_name='caffe.ArgMaxParameter.top_k', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4526, serialized_end=4589, ) _CONCATPARAMETER = descriptor.Descriptor( name='ConcatParameter', full_name='caffe.ConcatParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.ConcatParameter.concat_dim', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4591, serialized_end=4631, ) _CONTRASTIVELOSSPARAMETER = descriptor.Descriptor( name='ContrastiveLossParameter', full_name='caffe.ContrastiveLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='margin', full_name='caffe.ContrastiveLossParameter.margin', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4633, serialized_end=4678, ) _CONVOLUTIONPARAMETER = descriptor.Descriptor( name='ConvolutionParameter', full_name='caffe.ConvolutionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.ConvolutionParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ConvolutionParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.ConvolutionParameter.pad', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.ConvolutionParameter.pad_h', index=3, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.ConvolutionParameter.pad_w', index=4, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.ConvolutionParameter.kernel_size', index=5, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.ConvolutionParameter.kernel_h', index=6, number=11, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.ConvolutionParameter.kernel_w', index=7, number=12, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.ConvolutionParameter.group', index=8, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.ConvolutionParameter.stride', index=9, number=6, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.ConvolutionParameter.stride_h', index=10, number=13, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.ConvolutionParameter.stride_w', index=11, number=14, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.ConvolutionParameter.weight_filler', index=12, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ConvolutionParameter.bias_filler', index=13, number=8, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ConvolutionParameter.engine', index=14, number=15, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _CONVOLUTIONPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4681, serialized_end=5128, ) _DATAPARAMETER = descriptor.Descriptor( name='DataParameter', full_name='caffe.DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.DataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.DataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='backend', full_name='caffe.DataParameter.backend', index=3, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.DataParameter.scale', index=4, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.DataParameter.mean_file', index=5, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.DataParameter.crop_size', index=6, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.DataParameter.mirror', index=7, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _DATAPARAMETER_DB, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5131, serialized_end=5366, ) _DROPOUTPARAMETER = descriptor.Descriptor( name='DropoutParameter', full_name='caffe.DropoutParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.DropoutParameter.dropout_ratio', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5368, serialized_end=5414, ) _DUMMYDATAPARAMETER = descriptor.Descriptor( name='DummyDataParameter', full_name='caffe.DummyDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='data_filler', full_name='caffe.DummyDataParameter.data_filler', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num', full_name='caffe.DummyDataParameter.num', index=1, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.DummyDataParameter.channels', index=2, number=3, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.DummyDataParameter.height', index=3, number=4, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.DummyDataParameter.width', index=4, number=5, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5416, serialized_end=5543, ) _ELTWISEPARAMETER = descriptor.Descriptor( name='EltwiseParameter', full_name='caffe.EltwiseParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='operation', full_name='caffe.EltwiseParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='coeff', full_name='caffe.EltwiseParameter.coeff', index=1, number=2, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stable_prod_grad', full_name='caffe.EltwiseParameter.stable_prod_grad', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _ELTWISEPARAMETER_ELTWISEOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5546, serialized_end=5711, ) _THRESHOLDPARAMETER = descriptor.Descriptor( name='ThresholdParameter', full_name='caffe.ThresholdParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='threshold', full_name='caffe.ThresholdParameter.threshold', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5713, serialized_end=5755, ) _HDF5DATAPARAMETER = descriptor.Descriptor( name='HDF5DataParameter', full_name='caffe.HDF5DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.HDF5DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.HDF5DataParameter.batch_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5757, serialized_end=5812, ) _HDF5OUTPUTPARAMETER = descriptor.Descriptor( name='HDF5OutputParameter', full_name='caffe.HDF5OutputParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='file_name', full_name='caffe.HDF5OutputParameter.file_name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5814, serialized_end=5854, ) _HINGELOSSPARAMETER = descriptor.Descriptor( name='HingeLossParameter', full_name='caffe.HingeLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='norm', full_name='caffe.HingeLossParameter.norm', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _HINGELOSSPARAMETER_NORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5856, serialized_end=5950, ) _IMAGEDATAPARAMETER = descriptor.Descriptor( name='ImageDataParameter', full_name='caffe.ImageDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.ImageDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.ImageDataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.ImageDataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.ImageDataParameter.shuffle', index=3, number=8, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.ImageDataParameter.new_height', index=4, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.ImageDataParameter.new_width', index=5, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ImageDataParameter.scale', index=6, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.ImageDataParameter.mean_file', index=7, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.ImageDataParameter.crop_size', index=8, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.ImageDataParameter.mirror', index=9, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5953, serialized_end=6182, ) _INFOGAINLOSSPARAMETER = descriptor.Descriptor( name='InfogainLossParameter', full_name='caffe.InfogainLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.InfogainLossParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6184, serialized_end=6223, ) _INNERPRODUCTPARAMETER = descriptor.Descriptor( name='InnerProductParameter', full_name='caffe.InnerProductParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.InnerProductParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.InnerProductParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.InnerProductParameter.weight_filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.InnerProductParameter.bias_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6226, serialized_end=6386, ) _LRNPARAMETER = descriptor.Descriptor( name='LRNParameter', full_name='caffe.LRNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='local_size', full_name='caffe.LRNParameter.local_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LRNParameter.alpha', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LRNParameter.beta', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='norm_region', full_name='caffe.LRNParameter.norm_region', index=3, number=4, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LRNPARAMETER_NORMREGION, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6389, serialized_end=6589, ) _MEMORYDATAPARAMETER = descriptor.Descriptor( name='MemoryDataParameter', full_name='caffe.MemoryDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='batch_size', full_name='caffe.MemoryDataParameter.batch_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.MemoryDataParameter.channels', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.MemoryDataParameter.height', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.MemoryDataParameter.width', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6591, serialized_end=6681, ) _MVNPARAMETER = descriptor.Descriptor( name='MVNParameter', full_name='caffe.MVNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='normalize_variance', full_name='caffe.MVNParameter.normalize_variance', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='across_channels', full_name='caffe.MVNParameter.across_channels', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6683, serialized_end=6763, ) _POOLINGPARAMETER = descriptor.Descriptor( name='PoolingParameter', full_name='caffe.PoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pool', full_name='caffe.PoolingParameter.pool', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.PoolingParameter.pad', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.PoolingParameter.pad_h', index=2, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.PoolingParameter.pad_w', index=3, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.PoolingParameter.kernel_size', index=4, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.PoolingParameter.kernel_h', index=5, number=5, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.PoolingParameter.kernel_w', index=6, number=6, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.PoolingParameter.stride', index=7, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.PoolingParameter.stride_h', index=8, number=7, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.PoolingParameter.stride_w', index=9, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.PoolingParameter.engine', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _POOLINGPARAMETER_POOLMETHOD, _POOLINGPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6766, serialized_end=7153, ) _POWERPARAMETER = descriptor.Descriptor( name='PowerParameter', full_name='caffe.PowerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='power', full_name='caffe.PowerParameter.power', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.PowerParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.PowerParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7155, serialized_end=7225, ) _RELUPARAMETER = descriptor.Descriptor( name='ReLUParameter', full_name='caffe.ReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='negative_slope', full_name='caffe.ReLUParameter.negative_slope', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ReLUParameter.engine', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _RELUPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7228, serialized_end=7369, ) _SIGMOIDPARAMETER = descriptor.Descriptor( name='SigmoidParameter', full_name='caffe.SigmoidParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SigmoidParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SIGMOIDPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7371, serialized_end=7491, ) _SLICEPARAMETER = descriptor.Descriptor( name='SliceParameter', full_name='caffe.SliceParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='slice_dim', full_name='caffe.SliceParameter.slice_dim', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_point', full_name='caffe.SliceParameter.slice_point', index=1, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7493, serialized_end=7552, ) _SOFTMAXPARAMETER = descriptor.Descriptor( name='SoftmaxParameter', full_name='caffe.SoftmaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SoftmaxParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOFTMAXPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7554, serialized_end=7674, ) _TANHPARAMETER = descriptor.Descriptor( name='TanHParameter', full_name='caffe.TanHParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.TanHParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _TANHPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7676, serialized_end=7790, ) _WINDOWDATAPARAMETER = descriptor.Descriptor( name='WindowDataParameter', full_name='caffe.WindowDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.WindowDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.WindowDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.WindowDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.WindowDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.WindowDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.WindowDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_threshold', full_name='caffe.WindowDataParameter.fg_threshold', index=6, number=7, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bg_threshold', full_name='caffe.WindowDataParameter.bg_threshold', index=7, number=8, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_fraction', full_name='caffe.WindowDataParameter.fg_fraction', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='context_pad', full_name='caffe.WindowDataParameter.context_pad', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_mode', full_name='caffe.WindowDataParameter.crop_mode', index=10, number=11, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7793, serialized_end=8062, ) _V0LAYERPARAMETER = descriptor.Descriptor( name='V0LayerParameter', full_name='caffe.V0LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.V0LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V0LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.V0LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.V0LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.V0LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.V0LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.V0LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.V0LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.V0LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.V0LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.V0LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.V0LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.V0LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.V0LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.V0LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.V0LayerParameter.source', index=15, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.V0LayerParameter.scale', index=16, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.V0LayerParameter.meanfile', index=17, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.V0LayerParameter.batchsize', index=18, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.V0LayerParameter.cropsize', index=19, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.V0LayerParameter.mirror', index=20, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V0LayerParameter.blobs', index=21, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V0LayerParameter.blobs_lr', index=22, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V0LayerParameter.weight_decay', index=23, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.V0LayerParameter.rand_skip', index=24, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.V0LayerParameter.det_fg_threshold', index=25, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.V0LayerParameter.det_bg_threshold', index=26, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.V0LayerParameter.det_fg_fraction', index=27, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.V0LayerParameter.det_context_pad', index=28, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.V0LayerParameter.det_crop_mode', index=29, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_num', full_name='caffe.V0LayerParameter.new_num', index=30, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_channels', full_name='caffe.V0LayerParameter.new_channels', index=31, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.V0LayerParameter.new_height', index=32, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.V0LayerParameter.new_width', index=33, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.V0LayerParameter.shuffle_images', index=34, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.V0LayerParameter.concat_dim', index=35, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V0LayerParameter.hdf5_output_param', index=36, number=1001, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V0LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8065, serialized_end=9072, ) _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _NETPARAMETER.fields_by_name['layers'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['test_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['test_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['solver_mode'].enum_type = _SOLVERPARAMETER_SOLVERMODE _SOLVERPARAMETER.fields_by_name['solver_type'].enum_type = _SOLVERPARAMETER_SOLVERTYPE _SOLVERPARAMETER_SOLVERMODE.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERTYPE.containing_type = _SOLVERPARAMETER; _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _NETSTATE.fields_by_name['phase'].enum_type = _PHASE _NETSTATERULE.fields_by_name['phase'].enum_type = _PHASE _LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['type'].enum_type = _LAYERPARAMETER_LAYERTYPE _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['blob_share_mode'].enum_type = _LAYERPARAMETER_DIMCHECKMODE _LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _LAYERPARAMETER.fields_by_name['layer'].message_type = _V0LAYERPARAMETER _LAYERPARAMETER_LAYERTYPE.containing_type = _LAYERPARAMETER; _LAYERPARAMETER_DIMCHECKMODE.containing_type = _LAYERPARAMETER; _CONVOLUTIONPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['engine'].enum_type = _CONVOLUTIONPARAMETER_ENGINE _CONVOLUTIONPARAMETER_ENGINE.containing_type = _CONVOLUTIONPARAMETER; _DATAPARAMETER.fields_by_name['backend'].enum_type = _DATAPARAMETER_DB _DATAPARAMETER_DB.containing_type = _DATAPARAMETER; _DUMMYDATAPARAMETER.fields_by_name['data_filler'].message_type = _FILLERPARAMETER _ELTWISEPARAMETER.fields_by_name['operation'].enum_type = _ELTWISEPARAMETER_ELTWISEOP _ELTWISEPARAMETER_ELTWISEOP.containing_type = _ELTWISEPARAMETER; _HINGELOSSPARAMETER.fields_by_name['norm'].enum_type = _HINGELOSSPARAMETER_NORM _HINGELOSSPARAMETER_NORM.containing_type = _HINGELOSSPARAMETER; _INNERPRODUCTPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LRNPARAMETER.fields_by_name['norm_region'].enum_type = _LRNPARAMETER_NORMREGION _LRNPARAMETER_NORMREGION.containing_type = _LRNPARAMETER; _POOLINGPARAMETER.fields_by_name['pool'].enum_type = _POOLINGPARAMETER_POOLMETHOD _POOLINGPARAMETER.fields_by_name['engine'].enum_type = _POOLINGPARAMETER_ENGINE _POOLINGPARAMETER_POOLMETHOD.containing_type = _POOLINGPARAMETER; _POOLINGPARAMETER_ENGINE.containing_type = _POOLINGPARAMETER; _RELUPARAMETER.fields_by_name['engine'].enum_type = _RELUPARAMETER_ENGINE _RELUPARAMETER_ENGINE.containing_type = _RELUPARAMETER; _SIGMOIDPARAMETER.fields_by_name['engine'].enum_type = _SIGMOIDPARAMETER_ENGINE _SIGMOIDPARAMETER_ENGINE.containing_type = _SIGMOIDPARAMETER; _SOFTMAXPARAMETER.fields_by_name['engine'].enum_type = _SOFTMAXPARAMETER_ENGINE _SOFTMAXPARAMETER_ENGINE.containing_type = _SOFTMAXPARAMETER; _TANHPARAMETER.fields_by_name['engine'].enum_type = _TANHPARAMETER_ENGINE _TANHPARAMETER_ENGINE.containing_type = _TANHPARAMETER; _V0LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['pool'].enum_type = _V0LAYERPARAMETER_POOLMETHOD _V0LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V0LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V0LAYERPARAMETER_POOLMETHOD.containing_type = _V0LAYERPARAMETER; DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE DESCRIPTOR.message_types_by_name['NetState'] = _NETSTATE DESCRIPTOR.message_types_by_name['NetStateRule'] = _NETSTATERULE DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['TransformationParameter'] = _TRANSFORMATIONPARAMETER DESCRIPTOR.message_types_by_name['AccuracyParameter'] = _ACCURACYPARAMETER DESCRIPTOR.message_types_by_name['ArgMaxParameter'] = _ARGMAXPARAMETER DESCRIPTOR.message_types_by_name['ConcatParameter'] = _CONCATPARAMETER DESCRIPTOR.message_types_by_name['ContrastiveLossParameter'] = _CONTRASTIVELOSSPARAMETER DESCRIPTOR.message_types_by_name['ConvolutionParameter'] = _CONVOLUTIONPARAMETER DESCRIPTOR.message_types_by_name['DataParameter'] = _DATAPARAMETER DESCRIPTOR.message_types_by_name['DropoutParameter'] = _DROPOUTPARAMETER DESCRIPTOR.message_types_by_name['DummyDataParameter'] = _DUMMYDATAPARAMETER DESCRIPTOR.message_types_by_name['EltwiseParameter'] = _ELTWISEPARAMETER DESCRIPTOR.message_types_by_name['ThresholdParameter'] = _THRESHOLDPARAMETER DESCRIPTOR.message_types_by_name['HDF5DataParameter'] = _HDF5DATAPARAMETER DESCRIPTOR.message_types_by_name['HDF5OutputParameter'] = _HDF5OUTPUTPARAMETER DESCRIPTOR.message_types_by_name['HingeLossParameter'] = _HINGELOSSPARAMETER DESCRIPTOR.message_types_by_name['ImageDataParameter'] = _IMAGEDATAPARAMETER DESCRIPTOR.message_types_by_name['InfogainLossParameter'] = _INFOGAINLOSSPARAMETER DESCRIPTOR.message_types_by_name['InnerProductParameter'] = _INNERPRODUCTPARAMETER DESCRIPTOR.message_types_by_name['LRNParameter'] = _LRNPARAMETER DESCRIPTOR.message_types_by_name['MemoryDataParameter'] = _MEMORYDATAPARAMETER DESCRIPTOR.message_types_by_name['MVNParameter'] = _MVNPARAMETER DESCRIPTOR.message_types_by_name['PoolingParameter'] = _POOLINGPARAMETER DESCRIPTOR.message_types_by_name['PowerParameter'] = _POWERPARAMETER DESCRIPTOR.message_types_by_name['ReLUParameter'] = _RELUPARAMETER DESCRIPTOR.message_types_by_name['SigmoidParameter'] = _SIGMOIDPARAMETER DESCRIPTOR.message_types_by_name['SliceParameter'] = _SLICEPARAMETER DESCRIPTOR.message_types_by_name['SoftmaxParameter'] = _SOFTMAXPARAMETER DESCRIPTOR.message_types_by_name['TanHParameter'] = _TANHPARAMETER DESCRIPTOR.message_types_by_name['WindowDataParameter'] = _WINDOWDATAPARAMETER DESCRIPTOR.message_types_by_name['V0LayerParameter'] = _V0LAYERPARAMETER class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) class NetState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATE # @@protoc_insertion_point(class_scope:caffe.NetState) class NetStateRule(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATERULE # @@protoc_insertion_point(class_scope:caffe.NetStateRule) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class TransformationParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TRANSFORMATIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.TransformationParameter) class AccuracyParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ACCURACYPARAMETER # @@protoc_insertion_point(class_scope:caffe.AccuracyParameter) class ArgMaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ARGMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.ArgMaxParameter) class ConcatParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONCATPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConcatParameter) class ContrastiveLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONTRASTIVELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.ContrastiveLossParameter) class ConvolutionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONVOLUTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConvolutionParameter) class DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DataParameter) class DropoutParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DROPOUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.DropoutParameter) class DummyDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DUMMYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DummyDataParameter) class EltwiseParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ELTWISEPARAMETER # @@protoc_insertion_point(class_scope:caffe.EltwiseParameter) class ThresholdParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _THRESHOLDPARAMETER # @@protoc_insertion_point(class_scope:caffe.ThresholdParameter) class HDF5DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5DataParameter) class HDF5OutputParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5OUTPUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5OutputParameter) class HingeLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HINGELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.HingeLossParameter) class ImageDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _IMAGEDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.ImageDataParameter) class InfogainLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INFOGAINLOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.InfogainLossParameter) class InnerProductParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INNERPRODUCTPARAMETER # @@protoc_insertion_point(class_scope:caffe.InnerProductParameter) class LRNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LRNPARAMETER # @@protoc_insertion_point(class_scope:caffe.LRNParameter) class MemoryDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MEMORYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.MemoryDataParameter) class MVNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MVNPARAMETER # @@protoc_insertion_point(class_scope:caffe.MVNParameter) class PoolingParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.PoolingParameter) class PowerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POWERPARAMETER # @@protoc_insertion_point(class_scope:caffe.PowerParameter) class ReLUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _RELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReLUParameter) class SigmoidParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SIGMOIDPARAMETER # @@protoc_insertion_point(class_scope:caffe.SigmoidParameter) class SliceParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SLICEPARAMETER # @@protoc_insertion_point(class_scope:caffe.SliceParameter) class SoftmaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOFTMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.SoftmaxParameter) class TanHParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TANHPARAMETER # @@protoc_insertion_point(class_scope:caffe.TanHParameter) class WindowDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _WINDOWDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.WindowDataParameter) class V0LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V0LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V0LayerParameter) # @@protoc_insertion_point(module_scope)
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41.163028
17,413
py
DRT
DRT-master/external_libs/matconvnet/matconvnet/utils/proto/caffe_fastrcnn_pb2.py
# Generated by the protocol buffer compiler. DO NOT EDIT! # source: caffe_fastrcnn.proto from google.protobuf.internal import enum_type_wrapper from google.protobuf import descriptor as _descriptor from google.protobuf import message as _message from google.protobuf import reflection as _reflection from google.protobuf import descriptor_pb2 # @@protoc_insertion_point(imports) DESCRIPTOR = _descriptor.FileDescriptor( name='caffe_fastrcnn.proto', package='caffe', serialized_pb='\n\x14\x63\x61\x66\x66\x65_fastrcnn.proto\x12\x05\x63\x61\x66\x66\x65\"\x1c\n\tBlobShape\x12\x0f\n\x03\x64im\x18\x01 \x03(\x03\x42\x02\x10\x01\"\x9a\x01\n\tBlobProto\x12\x1f\n\x05shape\x18\x07 \x01(\x0b\x32\x10.caffe.BlobShape\x12\x10\n\x04\x64\x61ta\x18\x05 \x03(\x02\x42\x02\x10\x01\x12\x10\n\x04\x64iff\x18\x06 \x03(\x02\x42\x02\x10\x01\x12\x0e\n\x03num\x18\x01 \x01(\x05:\x01\x30\x12\x13\n\x08\x63hannels\x18\x02 \x01(\x05:\x01\x30\x12\x11\n\x06height\x18\x03 \x01(\x05:\x01\x30\x12\x10\n\x05width\x18\x04 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options=None, type=None), ], containing_type=None, options=None, serialized_start=6072, serialized_end=6094, ) _LRNPARAMETER_NORMREGION = _descriptor.EnumDescriptor( name='NormRegion', full_name='caffe.LRNParameter.NormRegion', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='ACROSS_CHANNELS', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='WITHIN_CHANNEL', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=6758, serialized_end=6811, ) _POOLINGPARAMETER_POOLMETHOD = _descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.PoolingParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7315, serialized_end=7361, ) _POOLINGPARAMETER_ENGINE = _descriptor.EnumDescriptor( name='Engine', full_name='caffe.PoolingParameter.Engine', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5109, serialized_end=5152, ) _RELUPARAMETER_ENGINE = _descriptor.EnumDescriptor( name='Engine', full_name='caffe.ReLUParameter.Engine', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5109, serialized_end=5152, ) _SIGMOIDPARAMETER_ENGINE = _descriptor.EnumDescriptor( name='Engine', full_name='caffe.SigmoidParameter.Engine', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5109, serialized_end=5152, ) _SOFTMAXPARAMETER_ENGINE = _descriptor.EnumDescriptor( name='Engine', full_name='caffe.SoftmaxParameter.Engine', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5109, serialized_end=5152, ) _TANHPARAMETER_ENGINE = _descriptor.EnumDescriptor( name='Engine', full_name='caffe.TanHParameter.Engine', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5109, serialized_end=5152, ) _V1LAYERPARAMETER_LAYERTYPE = _descriptor.EnumDescriptor( name='LayerType', full_name='caffe.V1LayerParameter.LayerType', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='NONE', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='ABSVAL', index=1, number=35, options=None, type=None), _descriptor.EnumValueDescriptor( name='ACCURACY', index=2, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='ARGMAX', index=3, number=30, options=None, type=None), _descriptor.EnumValueDescriptor( name='BNLL', index=4, number=2, options=None, type=None), _descriptor.EnumValueDescriptor( name='CONCAT', index=5, number=3, options=None, type=None), _descriptor.EnumValueDescriptor( name='CONTRASTIVE_LOSS', index=6, number=37, options=None, type=None), _descriptor.EnumValueDescriptor( name='CONVOLUTION', index=7, number=4, options=None, type=None), _descriptor.EnumValueDescriptor( name='DATA', index=8, number=5, options=None, type=None), _descriptor.EnumValueDescriptor( name='DECONVOLUTION', index=9, number=39, options=None, type=None), _descriptor.EnumValueDescriptor( name='DROPOUT', index=10, number=6, options=None, type=None), _descriptor.EnumValueDescriptor( name='DUMMY_DATA', index=11, number=32, options=None, type=None), _descriptor.EnumValueDescriptor( name='EUCLIDEAN_LOSS', index=12, number=7, options=None, type=None), _descriptor.EnumValueDescriptor( name='ELTWISE', index=13, number=25, options=None, type=None), _descriptor.EnumValueDescriptor( name='EXP', index=14, number=38, options=None, type=None), _descriptor.EnumValueDescriptor( name='FLATTEN', index=15, number=8, options=None, type=None), _descriptor.EnumValueDescriptor( name='HDF5_DATA', index=16, number=9, options=None, type=None), _descriptor.EnumValueDescriptor( name='HDF5_OUTPUT', index=17, number=10, options=None, type=None), _descriptor.EnumValueDescriptor( name='HINGE_LOSS', index=18, number=28, options=None, type=None), _descriptor.EnumValueDescriptor( name='IM2COL', index=19, number=11, options=None, type=None), _descriptor.EnumValueDescriptor( name='IMAGE_DATA', index=20, number=12, options=None, type=None), _descriptor.EnumValueDescriptor( name='INFOGAIN_LOSS', index=21, number=13, options=None, type=None), _descriptor.EnumValueDescriptor( name='INNER_PRODUCT', index=22, number=14, options=None, type=None), _descriptor.EnumValueDescriptor( name='LRN', index=23, number=15, options=None, type=None), _descriptor.EnumValueDescriptor( name='MEMORY_DATA', index=24, number=29, options=None, type=None), _descriptor.EnumValueDescriptor( name='MULTINOMIAL_LOGISTIC_LOSS', index=25, number=16, options=None, type=None), _descriptor.EnumValueDescriptor( name='MVN', index=26, number=34, options=None, type=None), _descriptor.EnumValueDescriptor( name='POOLING', index=27, number=17, options=None, type=None), _descriptor.EnumValueDescriptor( name='POWER', index=28, number=26, options=None, type=None), _descriptor.EnumValueDescriptor( name='RELU', index=29, number=18, options=None, type=None), _descriptor.EnumValueDescriptor( name='SIGMOID', index=30, number=19, options=None, type=None), _descriptor.EnumValueDescriptor( name='SIGMOID_CROSS_ENTROPY_LOSS', index=31, number=27, options=None, type=None), _descriptor.EnumValueDescriptor( name='SILENCE', index=32, number=36, options=None, type=None), _descriptor.EnumValueDescriptor( name='SOFTMAX', index=33, number=20, options=None, type=None), _descriptor.EnumValueDescriptor( name='SOFTMAX_LOSS', index=34, number=21, options=None, type=None), _descriptor.EnumValueDescriptor( name='SPLIT', index=35, number=22, options=None, type=None), _descriptor.EnumValueDescriptor( name='SLICE', index=36, number=33, options=None, type=None), _descriptor.EnumValueDescriptor( name='TANH', index=37, number=23, options=None, type=None), _descriptor.EnumValueDescriptor( name='WINDOW_DATA', index=38, number=24, options=None, type=None), _descriptor.EnumValueDescriptor( name='THRESHOLD', index=39, number=31, options=None, type=None), ], containing_type=None, options=None, serialized_start=10495, serialized_end=11095, ) _V1LAYERPARAMETER_DIMCHECKMODE = _descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.V1LayerParameter.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2317, serialized_end=2359, ) _V0LAYERPARAMETER_POOLMETHOD = _descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.V0LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7315, serialized_end=7361, ) _BLOBSHAPE = _descriptor.Descriptor( name='BlobShape', full_name='caffe.BlobShape', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='dim', full_name='caffe.BlobShape.dim', index=0, number=1, type=3, cpp_type=2, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=_descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=31, serialized_end=59, ) _BLOBPROTO = _descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='shape', full_name='caffe.BlobProto.shape', index=0, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=1, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=_descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), _descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=2, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=_descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), _descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=3, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=4, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=5, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=6, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=62, serialized_end=216, ) _BLOBPROTOVECTOR = _descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=218, serialized_end=268, ) _DATUM = _descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='encoded', full_name='caffe.Datum.encoded', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=271, serialized_end=400, ) _FILLERPARAMETER = _descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='sparse', full_name='caffe.FillerParameter.sparse', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=403, serialized_end=547, ) _NETPARAMETER = _descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='input_shape', full_name='caffe.NetParameter.input_shape', index=2, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='state', full_name='caffe.NetParameter.state', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='debug_info', full_name='caffe.NetParameter.debug_info', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='layer', full_name='caffe.NetParameter.layer', index=7, number=100, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=8, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=550, serialized_end=820, ) _SOLVERPARAMETER = _descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='net', full_name='caffe.SolverParameter.net', index=0, number=24, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='net_param', full_name='caffe.SolverParameter.net_param', index=1, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=2, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=3, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='train_net_param', full_name='caffe.SolverParameter.train_net_param', index=4, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_net_param', full_name='caffe.SolverParameter.test_net_param', index=5, number=22, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='train_state', full_name='caffe.SolverParameter.train_state', index=6, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_state', full_name='caffe.SolverParameter.test_state', index=7, number=27, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=8, number=3, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=9, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_compute_loss', full_name='caffe.SolverParameter.test_compute_loss', index=10, number=19, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_initialization', full_name='caffe.SolverParameter.test_initialization', index=11, number=32, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=12, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=13, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='average_loss', full_name='caffe.SolverParameter.average_loss', index=14, number=33, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=15, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=16, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=17, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=18, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=19, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=20, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='regularization_type', full_name='caffe.SolverParameter.regularization_type', index=21, number=29, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("L2", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=22, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stepvalue', full_name='caffe.SolverParameter.stepvalue', index=23, number=34, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='clip_gradients', full_name='caffe.SolverParameter.clip_gradients', index=24, number=35, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=25, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=26, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=27, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=28, number=17, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=29, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='random_seed', full_name='caffe.SolverParameter.random_seed', index=30, number=20, type=3, cpp_type=2, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='solver_type', full_name='caffe.SolverParameter.solver_type', index=31, number=30, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='delta', full_name='caffe.SolverParameter.delta', index=32, number=31, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-08, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='debug_info', full_name='caffe.SolverParameter.debug_info', index=33, number=23, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='snapshot_after_train', full_name='caffe.SolverParameter.snapshot_after_train', index=34, number=28, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOLVERPARAMETER_SOLVERMODE, _SOLVERPARAMETER_SOLVERTYPE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=823, serialized_end=1886, ) _SOLVERSTATE = _descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='current_step', full_name='caffe.SolverState.current_step', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1888, serialized_end=1996, ) _NETSTATE = _descriptor.Descriptor( name='NetState', full_name='caffe.NetState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='phase', full_name='caffe.NetState.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='level', full_name='caffe.NetState.level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stage', full_name='caffe.NetState.stage', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1998, serialized_end=2076, ) _NETSTATERULE = _descriptor.Descriptor( name='NetStateRule', full_name='caffe.NetStateRule', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='phase', full_name='caffe.NetStateRule.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='min_level', full_name='caffe.NetStateRule.min_level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='max_level', full_name='caffe.NetStateRule.max_level', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stage', full_name='caffe.NetStateRule.stage', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='not_stage', full_name='caffe.NetStateRule.not_stage', index=4, number=5, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2078, serialized_end=2193, ) _PARAMSPEC = _descriptor.Descriptor( name='ParamSpec', full_name='caffe.ParamSpec', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='name', full_name='caffe.ParamSpec.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='share_mode', full_name='caffe.ParamSpec.share_mode', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='lr_mult', full_name='caffe.ParamSpec.lr_mult', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='decay_mult', full_name='caffe.ParamSpec.decay_mult', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _PARAMSPEC_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2196, serialized_end=2359, ) _LAYERPARAMETER = _descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerParameter.bottom', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='top', full_name='caffe.LayerParameter.top', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='phase', full_name='caffe.LayerParameter.phase', index=4, number=10, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.LayerParameter.loss_weight', index=5, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='param', full_name='caffe.LayerParameter.param', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=7, number=7, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='include', full_name='caffe.LayerParameter.include', index=8, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='exclude', full_name='caffe.LayerParameter.exclude', index=9, number=9, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='transform_param', full_name='caffe.LayerParameter.transform_param', index=10, number=100, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='loss_param', full_name='caffe.LayerParameter.loss_param', index=11, number=101, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.LayerParameter.accuracy_param', index=12, number=102, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.LayerParameter.argmax_param', index=13, number=103, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='concat_param', full_name='caffe.LayerParameter.concat_param', index=14, number=104, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.LayerParameter.contrastive_loss_param', index=15, number=105, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.LayerParameter.convolution_param', index=16, number=106, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='data_param', full_name='caffe.LayerParameter.data_param', index=17, number=107, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.LayerParameter.dropout_param', index=18, number=108, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.LayerParameter.dummy_data_param', index=19, number=109, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.LayerParameter.eltwise_param', index=20, number=110, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='exp_param', full_name='caffe.LayerParameter.exp_param', index=21, number=111, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.LayerParameter.hdf5_data_param', index=22, number=112, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.LayerParameter.hdf5_output_param', index=23, number=113, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.LayerParameter.hinge_loss_param', index=24, number=114, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.LayerParameter.image_data_param', index=25, number=115, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.LayerParameter.infogain_loss_param', index=26, number=116, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.LayerParameter.inner_product_param', index=27, number=117, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.LayerParameter.lrn_param', index=28, number=118, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.LayerParameter.memory_data_param', index=29, number=119, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.LayerParameter.mvn_param', index=30, number=120, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.LayerParameter.pooling_param', index=31, number=121, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='power_param', full_name='caffe.LayerParameter.power_param', index=32, number=122, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='prelu_param', full_name='caffe.LayerParameter.prelu_param', index=33, number=131, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='python_param', full_name='caffe.LayerParameter.python_param', index=34, number=130, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='relu_param', full_name='caffe.LayerParameter.relu_param', index=35, number=123, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='roi_pooling_param', full_name='caffe.LayerParameter.roi_pooling_param', index=36, number=8266711, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.LayerParameter.sigmoid_param', index=37, number=124, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.LayerParameter.softmax_param', index=38, number=125, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='slice_param', full_name='caffe.LayerParameter.slice_param', index=39, number=126, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.LayerParameter.tanh_param', index=40, number=127, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.LayerParameter.threshold_param', index=41, number=128, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.LayerParameter.window_data_param', index=42, number=129, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2362, serialized_end=4260, ) _TRANSFORMATIONPARAMETER = _descriptor.Descriptor( name='TransformationParameter', full_name='caffe.TransformationParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='scale', full_name='caffe.TransformationParameter.scale', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mirror', full_name='caffe.TransformationParameter.mirror', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='crop_size', full_name='caffe.TransformationParameter.crop_size', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean_file', full_name='caffe.TransformationParameter.mean_file', index=3, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean_value', full_name='caffe.TransformationParameter.mean_value', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4262, serialized_end=4389, ) _LOSSPARAMETER = _descriptor.Descriptor( name='LossParameter', full_name='caffe.LossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.LossParameter.ignore_label', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='normalize', full_name='caffe.LossParameter.normalize', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4391, serialized_end=4453, ) _ACCURACYPARAMETER = _descriptor.Descriptor( name='AccuracyParameter', full_name='caffe.AccuracyParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='top_k', full_name='caffe.AccuracyParameter.top_k', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='axis', full_name='caffe.AccuracyParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.AccuracyParameter.ignore_label', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4455, serialized_end=4531, ) _ARGMAXPARAMETER = _descriptor.Descriptor( name='ArgMaxParameter', full_name='caffe.ArgMaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='out_max_val', full_name='caffe.ArgMaxParameter.out_max_val', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='top_k', full_name='caffe.ArgMaxParameter.top_k', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4533, serialized_end=4596, ) _CONCATPARAMETER = _descriptor.Descriptor( name='ConcatParameter', full_name='caffe.ConcatParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='axis', full_name='caffe.ConcatParameter.axis', index=0, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.ConcatParameter.concat_dim', index=1, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4598, serialized_end=4655, ) _CONTRASTIVELOSSPARAMETER = _descriptor.Descriptor( name='ContrastiveLossParameter', full_name='caffe.ContrastiveLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='margin', full_name='caffe.ContrastiveLossParameter.margin', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4657, serialized_end=4702, ) _CONVOLUTIONPARAMETER = _descriptor.Descriptor( name='ConvolutionParameter', full_name='caffe.ConvolutionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='num_output', full_name='caffe.ConvolutionParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ConvolutionParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad', full_name='caffe.ConvolutionParameter.pad', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad_h', full_name='caffe.ConvolutionParameter.pad_h', index=3, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad_w', full_name='caffe.ConvolutionParameter.pad_w', index=4, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.ConvolutionParameter.kernel_size', index=5, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.ConvolutionParameter.kernel_h', index=6, number=11, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.ConvolutionParameter.kernel_w', index=7, number=12, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='group', full_name='caffe.ConvolutionParameter.group', index=8, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride', full_name='caffe.ConvolutionParameter.stride', index=9, number=6, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride_h', full_name='caffe.ConvolutionParameter.stride_h', index=10, number=13, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride_w', full_name='caffe.ConvolutionParameter.stride_w', index=11, number=14, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.ConvolutionParameter.weight_filler', index=12, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ConvolutionParameter.bias_filler', index=13, number=8, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='engine', full_name='caffe.ConvolutionParameter.engine', index=14, number=15, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _CONVOLUTIONPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4705, serialized_end=5152, ) _DATAPARAMETER = _descriptor.Descriptor( name='DataParameter', full_name='caffe.DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='source', full_name='caffe.DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='batch_size', full_name='caffe.DataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.DataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='backend', full_name='caffe.DataParameter.backend', index=3, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.DataParameter.scale', index=4, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean_file', full_name='caffe.DataParameter.mean_file', index=5, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='crop_size', full_name='caffe.DataParameter.crop_size', index=6, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mirror', full_name='caffe.DataParameter.mirror', index=7, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='force_encoded_color', full_name='caffe.DataParameter.force_encoded_color', index=8, number=9, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _DATAPARAMETER_DB, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5155, serialized_end=5426, ) _DROPOUTPARAMETER = _descriptor.Descriptor( name='DropoutParameter', full_name='caffe.DropoutParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.DropoutParameter.dropout_ratio', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5428, serialized_end=5474, ) _DUMMYDATAPARAMETER = _descriptor.Descriptor( name='DummyDataParameter', full_name='caffe.DummyDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='data_filler', full_name='caffe.DummyDataParameter.data_filler', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shape', full_name='caffe.DummyDataParameter.shape', index=1, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='num', full_name='caffe.DummyDataParameter.num', index=2, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='channels', full_name='caffe.DummyDataParameter.channels', index=3, number=3, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='height', full_name='caffe.DummyDataParameter.height', index=4, number=4, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='width', full_name='caffe.DummyDataParameter.width', index=5, number=5, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5477, serialized_end=5637, ) _ELTWISEPARAMETER = _descriptor.Descriptor( name='EltwiseParameter', full_name='caffe.EltwiseParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='operation', full_name='caffe.EltwiseParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='coeff', full_name='caffe.EltwiseParameter.coeff', index=1, number=2, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stable_prod_grad', full_name='caffe.EltwiseParameter.stable_prod_grad', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _ELTWISEPARAMETER_ELTWISEOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5640, serialized_end=5805, ) _EXPPARAMETER = _descriptor.Descriptor( name='ExpParameter', full_name='caffe.ExpParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='base', full_name='caffe.ExpParameter.base', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.ExpParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shift', full_name='caffe.ExpParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5807, serialized_end=5875, ) _HDF5DATAPARAMETER = _descriptor.Descriptor( name='HDF5DataParameter', full_name='caffe.HDF5DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='source', full_name='caffe.HDF5DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='batch_size', full_name='caffe.HDF5DataParameter.batch_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shuffle', full_name='caffe.HDF5DataParameter.shuffle', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5877, serialized_end=5956, ) _HDF5OUTPUTPARAMETER = _descriptor.Descriptor( name='HDF5OutputParameter', full_name='caffe.HDF5OutputParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='file_name', full_name='caffe.HDF5OutputParameter.file_name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5958, serialized_end=5998, ) _HINGELOSSPARAMETER = _descriptor.Descriptor( name='HingeLossParameter', full_name='caffe.HingeLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='norm', full_name='caffe.HingeLossParameter.norm', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _HINGELOSSPARAMETER_NORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6000, serialized_end=6094, ) _IMAGEDATAPARAMETER = _descriptor.Descriptor( name='ImageDataParameter', full_name='caffe.ImageDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='source', full_name='caffe.ImageDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='batch_size', full_name='caffe.ImageDataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.ImageDataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shuffle', full_name='caffe.ImageDataParameter.shuffle', index=3, number=8, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_height', full_name='caffe.ImageDataParameter.new_height', index=4, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_width', full_name='caffe.ImageDataParameter.new_width', index=5, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='is_color', full_name='caffe.ImageDataParameter.is_color', index=6, number=11, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.ImageDataParameter.scale', index=7, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean_file', full_name='caffe.ImageDataParameter.mean_file', index=8, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='crop_size', full_name='caffe.ImageDataParameter.crop_size', index=9, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mirror', full_name='caffe.ImageDataParameter.mirror', index=10, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='root_folder', full_name='caffe.ImageDataParameter.root_folder', index=11, number=12, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6097, serialized_end=6373, ) _INFOGAINLOSSPARAMETER = _descriptor.Descriptor( name='InfogainLossParameter', full_name='caffe.InfogainLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='source', full_name='caffe.InfogainLossParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6375, serialized_end=6414, ) _INNERPRODUCTPARAMETER = _descriptor.Descriptor( name='InnerProductParameter', full_name='caffe.InnerProductParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='num_output', full_name='caffe.InnerProductParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bias_term', full_name='caffe.InnerProductParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.InnerProductParameter.weight_filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.InnerProductParameter.bias_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='axis', full_name='caffe.InnerProductParameter.axis', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6417, serialized_end=6594, ) _LRNPARAMETER = _descriptor.Descriptor( name='LRNParameter', full_name='caffe.LRNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='local_size', full_name='caffe.LRNParameter.local_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='alpha', full_name='caffe.LRNParameter.alpha', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='beta', full_name='caffe.LRNParameter.beta', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='norm_region', full_name='caffe.LRNParameter.norm_region', index=3, number=4, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='k', full_name='caffe.LRNParameter.k', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LRNPARAMETER_NORMREGION, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6597, serialized_end=6811, ) _MEMORYDATAPARAMETER = _descriptor.Descriptor( name='MemoryDataParameter', full_name='caffe.MemoryDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='batch_size', full_name='caffe.MemoryDataParameter.batch_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='channels', full_name='caffe.MemoryDataParameter.channels', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='height', full_name='caffe.MemoryDataParameter.height', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='width', full_name='caffe.MemoryDataParameter.width', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6813, serialized_end=6903, ) _MVNPARAMETER = _descriptor.Descriptor( name='MVNParameter', full_name='caffe.MVNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='normalize_variance', full_name='caffe.MVNParameter.normalize_variance', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='across_channels', full_name='caffe.MVNParameter.across_channels', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6905, serialized_end=6985, ) _POOLINGPARAMETER = _descriptor.Descriptor( name='PoolingParameter', full_name='caffe.PoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='pool', full_name='caffe.PoolingParameter.pool', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad', full_name='caffe.PoolingParameter.pad', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad_h', full_name='caffe.PoolingParameter.pad_h', index=2, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad_w', full_name='caffe.PoolingParameter.pad_w', index=3, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.PoolingParameter.kernel_size', index=4, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.PoolingParameter.kernel_h', index=5, number=5, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.PoolingParameter.kernel_w', index=6, number=6, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride', full_name='caffe.PoolingParameter.stride', index=7, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride_h', full_name='caffe.PoolingParameter.stride_h', index=8, number=7, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride_w', full_name='caffe.PoolingParameter.stride_w', index=9, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='engine', full_name='caffe.PoolingParameter.engine', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='global_pooling', full_name='caffe.PoolingParameter.global_pooling', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _POOLINGPARAMETER_POOLMETHOD, _POOLINGPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6988, serialized_end=7406, ) _POWERPARAMETER = _descriptor.Descriptor( name='PowerParameter', full_name='caffe.PowerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='power', full_name='caffe.PowerParameter.power', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.PowerParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shift', full_name='caffe.PowerParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7408, serialized_end=7478, ) _PYTHONPARAMETER = _descriptor.Descriptor( name='PythonParameter', full_name='caffe.PythonParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='module', full_name='caffe.PythonParameter.module', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='layer', full_name='caffe.PythonParameter.layer', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='param_str', full_name='caffe.PythonParameter.param_str', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7480, serialized_end=7549, ) _RELUPARAMETER = _descriptor.Descriptor( name='ReLUParameter', full_name='caffe.ReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='negative_slope', full_name='caffe.ReLUParameter.negative_slope', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='engine', full_name='caffe.ReLUParameter.engine', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _RELUPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7552, serialized_end=7693, ) _ROIPOOLINGPARAMETER = _descriptor.Descriptor( name='ROIPoolingParameter', full_name='caffe.ROIPoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='pooled_h', full_name='caffe.ROIPoolingParameter.pooled_h', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pooled_w', full_name='caffe.ROIPoolingParameter.pooled_w', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='spatial_scale', full_name='caffe.ROIPoolingParameter.spatial_scale', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7695, serialized_end=7784, ) _SIGMOIDPARAMETER = _descriptor.Descriptor( name='SigmoidParameter', full_name='caffe.SigmoidParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='engine', full_name='caffe.SigmoidParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SIGMOIDPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7786, serialized_end=7906, ) _SLICEPARAMETER = _descriptor.Descriptor( name='SliceParameter', full_name='caffe.SliceParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='axis', full_name='caffe.SliceParameter.axis', index=0, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='slice_point', full_name='caffe.SliceParameter.slice_point', index=1, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='slice_dim', full_name='caffe.SliceParameter.slice_dim', index=2, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7908, serialized_end=7984, ) _SOFTMAXPARAMETER = _descriptor.Descriptor( name='SoftmaxParameter', full_name='caffe.SoftmaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='engine', full_name='caffe.SoftmaxParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='axis', full_name='caffe.SoftmaxParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOFTMAXPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7987, serialized_end=8124, ) _TANHPARAMETER = _descriptor.Descriptor( name='TanHParameter', full_name='caffe.TanHParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='engine', full_name='caffe.TanHParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _TANHPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8126, serialized_end=8240, ) _THRESHOLDPARAMETER = _descriptor.Descriptor( name='ThresholdParameter', full_name='caffe.ThresholdParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='threshold', full_name='caffe.ThresholdParameter.threshold', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8242, serialized_end=8284, ) _WINDOWDATAPARAMETER = _descriptor.Descriptor( name='WindowDataParameter', full_name='caffe.WindowDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='source', full_name='caffe.WindowDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.WindowDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean_file', full_name='caffe.WindowDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='batch_size', full_name='caffe.WindowDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='crop_size', full_name='caffe.WindowDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mirror', full_name='caffe.WindowDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='fg_threshold', full_name='caffe.WindowDataParameter.fg_threshold', index=6, number=7, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bg_threshold', full_name='caffe.WindowDataParameter.bg_threshold', index=7, number=8, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='fg_fraction', full_name='caffe.WindowDataParameter.fg_fraction', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='context_pad', full_name='caffe.WindowDataParameter.context_pad', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='crop_mode', full_name='caffe.WindowDataParameter.crop_mode', index=10, number=11, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='cache_images', full_name='caffe.WindowDataParameter.cache_images', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='root_folder', full_name='caffe.WindowDataParameter.root_folder', index=12, number=13, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8287, serialized_end=8608, ) _V1LAYERPARAMETER = _descriptor.Descriptor( name='V1LayerParameter', full_name='caffe.V1LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='bottom', full_name='caffe.V1LayerParameter.bottom', index=0, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='top', full_name='caffe.V1LayerParameter.top', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='name', full_name='caffe.V1LayerParameter.name', index=2, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='include', full_name='caffe.V1LayerParameter.include', index=3, number=32, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='exclude', full_name='caffe.V1LayerParameter.exclude', index=4, number=33, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='type', full_name='caffe.V1LayerParameter.type', index=5, number=5, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blobs', full_name='caffe.V1LayerParameter.blobs', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='param', full_name='caffe.V1LayerParameter.param', index=7, number=1001, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blob_share_mode', full_name='caffe.V1LayerParameter.blob_share_mode', index=8, number=1002, type=14, cpp_type=8, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V1LayerParameter.blobs_lr', index=9, number=7, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V1LayerParameter.weight_decay', index=10, number=8, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.V1LayerParameter.loss_weight', index=11, number=35, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.V1LayerParameter.accuracy_param', index=12, number=27, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.V1LayerParameter.argmax_param', index=13, number=23, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='concat_param', full_name='caffe.V1LayerParameter.concat_param', index=14, number=9, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.V1LayerParameter.contrastive_loss_param', index=15, number=40, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.V1LayerParameter.convolution_param', index=16, number=10, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='data_param', full_name='caffe.V1LayerParameter.data_param', index=17, number=11, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.V1LayerParameter.dropout_param', index=18, number=12, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.V1LayerParameter.dummy_data_param', index=19, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.V1LayerParameter.eltwise_param', index=20, number=24, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='exp_param', full_name='caffe.V1LayerParameter.exp_param', index=21, number=41, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.V1LayerParameter.hdf5_data_param', index=22, number=13, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V1LayerParameter.hdf5_output_param', index=23, number=14, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.V1LayerParameter.hinge_loss_param', index=24, number=29, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.V1LayerParameter.image_data_param', index=25, number=15, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.V1LayerParameter.infogain_loss_param', index=26, number=16, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.V1LayerParameter.inner_product_param', index=27, number=17, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.V1LayerParameter.lrn_param', index=28, number=18, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.V1LayerParameter.memory_data_param', index=29, number=22, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.V1LayerParameter.mvn_param', index=30, number=34, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.V1LayerParameter.pooling_param', index=31, number=19, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='power_param', full_name='caffe.V1LayerParameter.power_param', index=32, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='relu_param', full_name='caffe.V1LayerParameter.relu_param', index=33, number=30, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.V1LayerParameter.sigmoid_param', index=34, number=38, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.V1LayerParameter.softmax_param', index=35, number=39, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='slice_param', full_name='caffe.V1LayerParameter.slice_param', index=36, number=31, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.V1LayerParameter.tanh_param', index=37, number=37, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.V1LayerParameter.threshold_param', index=38, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.V1LayerParameter.window_data_param', index=39, number=20, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='transform_param', full_name='caffe.V1LayerParameter.transform_param', index=40, number=36, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='loss_param', full_name='caffe.V1LayerParameter.loss_param', index=41, number=42, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='layer', full_name='caffe.V1LayerParameter.layer', index=42, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V1LAYERPARAMETER_LAYERTYPE, _V1LAYERPARAMETER_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8611, serialized_end=11139, ) _V0LAYERPARAMETER = _descriptor.Descriptor( name='V0LayerParameter', full_name='caffe.V0LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='name', full_name='caffe.V0LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='type', full_name='caffe.V0LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='num_output', full_name='caffe.V0LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='biasterm', full_name='caffe.V0LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.V0LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.V0LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad', full_name='caffe.V0LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.V0LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='group', full_name='caffe.V0LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride', full_name='caffe.V0LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pool', full_name='caffe.V0LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.V0LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='local_size', full_name='caffe.V0LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='alpha', full_name='caffe.V0LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='beta', full_name='caffe.V0LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='k', full_name='caffe.V0LayerParameter.k', index=15, number=22, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='source', full_name='caffe.V0LayerParameter.source', index=16, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.V0LayerParameter.scale', index=17, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='meanfile', full_name='caffe.V0LayerParameter.meanfile', index=18, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='batchsize', full_name='caffe.V0LayerParameter.batchsize', index=19, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='cropsize', full_name='caffe.V0LayerParameter.cropsize', index=20, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mirror', full_name='caffe.V0LayerParameter.mirror', index=21, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blobs', full_name='caffe.V0LayerParameter.blobs', index=22, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V0LayerParameter.blobs_lr', index=23, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V0LayerParameter.weight_decay', index=24, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.V0LayerParameter.rand_skip', index=25, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.V0LayerParameter.det_fg_threshold', index=26, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.V0LayerParameter.det_bg_threshold', index=27, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.V0LayerParameter.det_fg_fraction', index=28, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.V0LayerParameter.det_context_pad', index=29, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.V0LayerParameter.det_crop_mode', index=30, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_num', full_name='caffe.V0LayerParameter.new_num', index=31, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_channels', full_name='caffe.V0LayerParameter.new_channels', index=32, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_height', full_name='caffe.V0LayerParameter.new_height', index=33, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_width', full_name='caffe.V0LayerParameter.new_width', index=34, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.V0LayerParameter.shuffle_images', index=35, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.V0LayerParameter.concat_dim', index=36, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V0LayerParameter.hdf5_output_param', index=37, number=1001, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V0LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=11142, serialized_end=12163, ) _PRELUPARAMETER = _descriptor.Descriptor( name='PReLUParameter', full_name='caffe.PReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='filler', full_name='caffe.PReLUParameter.filler', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='channel_shared', full_name='caffe.PReLUParameter.channel_shared', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=12165, serialized_end=12252, ) _BLOBPROTO.fields_by_name['shape'].message_type = _BLOBSHAPE _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _NETPARAMETER.fields_by_name['input_shape'].message_type = _BLOBSHAPE _NETPARAMETER.fields_by_name['state'].message_type = _NETSTATE _NETPARAMETER.fields_by_name['layer'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['layers'].message_type = _V1LAYERPARAMETER _SOLVERPARAMETER.fields_by_name['net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['test_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['test_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['solver_mode'].enum_type = _SOLVERPARAMETER_SOLVERMODE _SOLVERPARAMETER.fields_by_name['solver_type'].enum_type = _SOLVERPARAMETER_SOLVERTYPE _SOLVERPARAMETER_SOLVERMODE.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERTYPE.containing_type = _SOLVERPARAMETER; _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _NETSTATE.fields_by_name['phase'].enum_type = _PHASE _NETSTATERULE.fields_by_name['phase'].enum_type = _PHASE _PARAMSPEC.fields_by_name['share_mode'].enum_type = _PARAMSPEC_DIMCHECKMODE _PARAMSPEC_DIMCHECKMODE.containing_type = _PARAMSPEC; _LAYERPARAMETER.fields_by_name['phase'].enum_type = _PHASE _LAYERPARAMETER.fields_by_name['param'].message_type = _PARAMSPEC _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _LAYERPARAMETER.fields_by_name['prelu_param'].message_type = _PRELUPARAMETER _LAYERPARAMETER.fields_by_name['python_param'].message_type = _PYTHONPARAMETER _LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _LAYERPARAMETER.fields_by_name['roi_pooling_param'].message_type = _ROIPOOLINGPARAMETER _LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['engine'].enum_type = _CONVOLUTIONPARAMETER_ENGINE _CONVOLUTIONPARAMETER_ENGINE.containing_type = _CONVOLUTIONPARAMETER; _DATAPARAMETER.fields_by_name['backend'].enum_type = _DATAPARAMETER_DB _DATAPARAMETER_DB.containing_type = _DATAPARAMETER; _DUMMYDATAPARAMETER.fields_by_name['data_filler'].message_type = _FILLERPARAMETER _DUMMYDATAPARAMETER.fields_by_name['shape'].message_type = _BLOBSHAPE _ELTWISEPARAMETER.fields_by_name['operation'].enum_type = _ELTWISEPARAMETER_ELTWISEOP _ELTWISEPARAMETER_ELTWISEOP.containing_type = _ELTWISEPARAMETER; _HINGELOSSPARAMETER.fields_by_name['norm'].enum_type = _HINGELOSSPARAMETER_NORM _HINGELOSSPARAMETER_NORM.containing_type = _HINGELOSSPARAMETER; _INNERPRODUCTPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LRNPARAMETER.fields_by_name['norm_region'].enum_type = _LRNPARAMETER_NORMREGION _LRNPARAMETER_NORMREGION.containing_type = _LRNPARAMETER; _POOLINGPARAMETER.fields_by_name['pool'].enum_type = _POOLINGPARAMETER_POOLMETHOD _POOLINGPARAMETER.fields_by_name['engine'].enum_type = _POOLINGPARAMETER_ENGINE _POOLINGPARAMETER_POOLMETHOD.containing_type = _POOLINGPARAMETER; _POOLINGPARAMETER_ENGINE.containing_type = _POOLINGPARAMETER; _RELUPARAMETER.fields_by_name['engine'].enum_type = _RELUPARAMETER_ENGINE _RELUPARAMETER_ENGINE.containing_type = _RELUPARAMETER; _SIGMOIDPARAMETER.fields_by_name['engine'].enum_type = _SIGMOIDPARAMETER_ENGINE _SIGMOIDPARAMETER_ENGINE.containing_type = _SIGMOIDPARAMETER; _SOFTMAXPARAMETER.fields_by_name['engine'].enum_type = _SOFTMAXPARAMETER_ENGINE _SOFTMAXPARAMETER_ENGINE.containing_type = _SOFTMAXPARAMETER; _TANHPARAMETER.fields_by_name['engine'].enum_type = _TANHPARAMETER_ENGINE _TANHPARAMETER_ENGINE.containing_type = _TANHPARAMETER; _V1LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['type'].enum_type = _V1LAYERPARAMETER_LAYERTYPE _V1LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V1LAYERPARAMETER.fields_by_name['blob_share_mode'].enum_type = _V1LAYERPARAMETER_DIMCHECKMODE _V1LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _V1LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _V1LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _V1LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _V1LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _V1LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V1LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _V1LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _V1LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _V1LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _V1LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _V1LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _V1LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _V1LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _V1LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _V1LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _V1LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _V1LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['layer'].message_type = _V0LAYERPARAMETER _V1LAYERPARAMETER_LAYERTYPE.containing_type = _V1LAYERPARAMETER; _V1LAYERPARAMETER_DIMCHECKMODE.containing_type = _V1LAYERPARAMETER; _V0LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['pool'].enum_type = _V0LAYERPARAMETER_POOLMETHOD _V0LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V0LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V0LAYERPARAMETER_POOLMETHOD.containing_type = _V0LAYERPARAMETER; _PRELUPARAMETER.fields_by_name['filler'].message_type = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['BlobShape'] = _BLOBSHAPE DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE DESCRIPTOR.message_types_by_name['NetState'] = _NETSTATE DESCRIPTOR.message_types_by_name['NetStateRule'] = _NETSTATERULE DESCRIPTOR.message_types_by_name['ParamSpec'] = _PARAMSPEC DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['TransformationParameter'] = _TRANSFORMATIONPARAMETER DESCRIPTOR.message_types_by_name['LossParameter'] = _LOSSPARAMETER DESCRIPTOR.message_types_by_name['AccuracyParameter'] = _ACCURACYPARAMETER DESCRIPTOR.message_types_by_name['ArgMaxParameter'] = _ARGMAXPARAMETER DESCRIPTOR.message_types_by_name['ConcatParameter'] = _CONCATPARAMETER DESCRIPTOR.message_types_by_name['ContrastiveLossParameter'] = _CONTRASTIVELOSSPARAMETER DESCRIPTOR.message_types_by_name['ConvolutionParameter'] = _CONVOLUTIONPARAMETER DESCRIPTOR.message_types_by_name['DataParameter'] = _DATAPARAMETER DESCRIPTOR.message_types_by_name['DropoutParameter'] = _DROPOUTPARAMETER DESCRIPTOR.message_types_by_name['DummyDataParameter'] = _DUMMYDATAPARAMETER DESCRIPTOR.message_types_by_name['EltwiseParameter'] = _ELTWISEPARAMETER DESCRIPTOR.message_types_by_name['ExpParameter'] = _EXPPARAMETER DESCRIPTOR.message_types_by_name['HDF5DataParameter'] = _HDF5DATAPARAMETER DESCRIPTOR.message_types_by_name['HDF5OutputParameter'] = _HDF5OUTPUTPARAMETER DESCRIPTOR.message_types_by_name['HingeLossParameter'] = _HINGELOSSPARAMETER DESCRIPTOR.message_types_by_name['ImageDataParameter'] = _IMAGEDATAPARAMETER DESCRIPTOR.message_types_by_name['InfogainLossParameter'] = _INFOGAINLOSSPARAMETER DESCRIPTOR.message_types_by_name['InnerProductParameter'] = _INNERPRODUCTPARAMETER DESCRIPTOR.message_types_by_name['LRNParameter'] = _LRNPARAMETER DESCRIPTOR.message_types_by_name['MemoryDataParameter'] = _MEMORYDATAPARAMETER DESCRIPTOR.message_types_by_name['MVNParameter'] = _MVNPARAMETER DESCRIPTOR.message_types_by_name['PoolingParameter'] = _POOLINGPARAMETER DESCRIPTOR.message_types_by_name['PowerParameter'] = _POWERPARAMETER DESCRIPTOR.message_types_by_name['PythonParameter'] = _PYTHONPARAMETER DESCRIPTOR.message_types_by_name['ReLUParameter'] = _RELUPARAMETER DESCRIPTOR.message_types_by_name['ROIPoolingParameter'] = _ROIPOOLINGPARAMETER DESCRIPTOR.message_types_by_name['SigmoidParameter'] = _SIGMOIDPARAMETER DESCRIPTOR.message_types_by_name['SliceParameter'] = _SLICEPARAMETER DESCRIPTOR.message_types_by_name['SoftmaxParameter'] = _SOFTMAXPARAMETER DESCRIPTOR.message_types_by_name['TanHParameter'] = _TANHPARAMETER DESCRIPTOR.message_types_by_name['ThresholdParameter'] = _THRESHOLDPARAMETER DESCRIPTOR.message_types_by_name['WindowDataParameter'] = _WINDOWDATAPARAMETER DESCRIPTOR.message_types_by_name['V1LayerParameter'] = _V1LAYERPARAMETER DESCRIPTOR.message_types_by_name['V0LayerParameter'] = _V0LAYERPARAMETER DESCRIPTOR.message_types_by_name['PReLUParameter'] = _PRELUPARAMETER class BlobShape(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBSHAPE # @@protoc_insertion_point(class_scope:caffe.BlobShape) class BlobProto(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class NetParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) class NetState(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATE # @@protoc_insertion_point(class_scope:caffe.NetState) class NetStateRule(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATERULE # @@protoc_insertion_point(class_scope:caffe.NetStateRule) class ParamSpec(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _PARAMSPEC # @@protoc_insertion_point(class_scope:caffe.ParamSpec) class LayerParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class TransformationParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _TRANSFORMATIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.TransformationParameter) class LossParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _LOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.LossParameter) class AccuracyParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _ACCURACYPARAMETER # @@protoc_insertion_point(class_scope:caffe.AccuracyParameter) class ArgMaxParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _ARGMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.ArgMaxParameter) class ConcatParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONCATPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConcatParameter) class ContrastiveLossParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONTRASTIVELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.ContrastiveLossParameter) class ConvolutionParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONVOLUTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConvolutionParameter) class DataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DataParameter) class DropoutParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _DROPOUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.DropoutParameter) class DummyDataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _DUMMYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DummyDataParameter) class EltwiseParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _ELTWISEPARAMETER # @@protoc_insertion_point(class_scope:caffe.EltwiseParameter) class ExpParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _EXPPARAMETER # @@protoc_insertion_point(class_scope:caffe.ExpParameter) class HDF5DataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5DataParameter) class HDF5OutputParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5OUTPUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5OutputParameter) class HingeLossParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _HINGELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.HingeLossParameter) class ImageDataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _IMAGEDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.ImageDataParameter) class InfogainLossParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _INFOGAINLOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.InfogainLossParameter) class InnerProductParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _INNERPRODUCTPARAMETER # @@protoc_insertion_point(class_scope:caffe.InnerProductParameter) class LRNParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _LRNPARAMETER # @@protoc_insertion_point(class_scope:caffe.LRNParameter) class MemoryDataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _MEMORYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.MemoryDataParameter) class MVNParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _MVNPARAMETER # @@protoc_insertion_point(class_scope:caffe.MVNParameter) class PoolingParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _POOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.PoolingParameter) class PowerParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _POWERPARAMETER # @@protoc_insertion_point(class_scope:caffe.PowerParameter) class PythonParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _PYTHONPARAMETER # @@protoc_insertion_point(class_scope:caffe.PythonParameter) class ReLUParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _RELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReLUParameter) class ROIPoolingParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _ROIPOOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.ROIPoolingParameter) class SigmoidParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _SIGMOIDPARAMETER # @@protoc_insertion_point(class_scope:caffe.SigmoidParameter) class SliceParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _SLICEPARAMETER # @@protoc_insertion_point(class_scope:caffe.SliceParameter) class SoftmaxParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOFTMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.SoftmaxParameter) class TanHParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _TANHPARAMETER # @@protoc_insertion_point(class_scope:caffe.TanHParameter) class ThresholdParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _THRESHOLDPARAMETER # @@protoc_insertion_point(class_scope:caffe.ThresholdParameter) class WindowDataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _WINDOWDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.WindowDataParameter) class V1LayerParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _V1LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V1LayerParameter) class V0LayerParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _V0LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V0LayerParameter) class PReLUParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _PRELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.PReLUParameter) _BLOBSHAPE.fields_by_name['dim'].has_options = True _BLOBSHAPE.fields_by_name['dim']._options = _descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001') _BLOBPROTO.fields_by_name['data'].has_options = True _BLOBPROTO.fields_by_name['data']._options = _descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001') _BLOBPROTO.fields_by_name['diff'].has_options = True _BLOBPROTO.fields_by_name['diff']._options = _descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001') # @@protoc_insertion_point(module_scope)
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DRT
DRT-master/external_libs/matconvnet/matconvnet/utils/proto/caffe_6e3916_pb2.py
# Generated by the protocol buffer compiler. 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number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='FAN_OUT', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='AVERAGE', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=665, serialized_end=717, ) _SOLVERPARAMETER_SNAPSHOTFORMAT = descriptor.EnumDescriptor( name='SnapshotFormat', full_name='caffe.SolverParameter.SnapshotFormat', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='HDF5', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='BINARYPROTO', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2120, serialized_end=2163, ) _SOLVERPARAMETER_SOLVERMODE = descriptor.EnumDescriptor( name='SolverMode', full_name='caffe.SolverParameter.SolverMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='CPU', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='GPU', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2165, serialized_end=2195, ) _SOLVERPARAMETER_SOLVERTYPE = descriptor.EnumDescriptor( name='SolverType', full_name='caffe.SolverParameter.SolverType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='SGD', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='NESTEROV', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ADAGRAD', index=2, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='RMSPROP', index=3, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='ADADELTA', index=4, number=4, options=None, type=None), descriptor.EnumValueDescriptor( name='ADAM', index=5, number=5, options=None, type=None), ], containing_type=None, options=None, serialized_start=2197, serialized_end=2282, ) _PARAMSPEC_DIMCHECKMODE = descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.ParamSpec.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2713, serialized_end=2755, ) _CONVOLUTIONPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.ConvolutionParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _DATAPARAMETER_DB = descriptor.EnumDescriptor( name='DB', full_name='caffe.DataParameter.DB', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='LEVELDB', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='LMDB', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=6190, serialized_end=6217, ) _ELTWISEPARAMETER_ELTWISEOP = descriptor.EnumDescriptor( name='EltwiseOp', full_name='caffe.EltwiseParameter.EltwiseOp', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='PROD', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='SUM', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='MAX', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6557, serialized_end=6596, ) _HINGELOSSPARAMETER_NORM = descriptor.EnumDescriptor( name='Norm', full_name='caffe.HingeLossParameter.Norm', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='L1', index=0, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='L2', index=1, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7097, serialized_end=7119, ) _LRNPARAMETER_NORMREGION = descriptor.EnumDescriptor( name='NormRegion', full_name='caffe.LRNParameter.NormRegion', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='ACROSS_CHANNELS', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='WITHIN_CHANNEL', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=7856, serialized_end=7909, ) _POOLINGPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.PoolingParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=8433, serialized_end=8479, ) _POOLINGPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.PoolingParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _REDUCTIONPARAMETER_REDUCTIONOP = descriptor.EnumDescriptor( name='ReductionOp', full_name='caffe.ReductionParameter.ReductionOp', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='SUM', index=0, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ASUM', index=1, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='SUMSQ', index=2, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='MEAN', index=3, number=4, options=None, type=None), ], containing_type=None, options=None, serialized_start=8824, serialized_end=8877, ) _RELUPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.ReLUParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _SIGMOIDPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SigmoidParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _SOFTMAXPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SoftmaxParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _TANHPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.TanHParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _SPPPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.SPPParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=8433, serialized_end=8479, ) _SPPPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SPPParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _V1LAYERPARAMETER_LAYERTYPE = descriptor.EnumDescriptor( name='LayerType', full_name='caffe.V1LayerParameter.LayerType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='NONE', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='ABSVAL', index=1, number=35, options=None, type=None), descriptor.EnumValueDescriptor( name='ACCURACY', index=2, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ARGMAX', index=3, number=30, options=None, type=None), descriptor.EnumValueDescriptor( name='BNLL', index=4, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='CONCAT', index=5, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='CONTRASTIVE_LOSS', index=6, number=37, options=None, type=None), descriptor.EnumValueDescriptor( name='CONVOLUTION', index=7, number=4, options=None, type=None), descriptor.EnumValueDescriptor( name='CROP', index=8, number=40, options=None, type=None), descriptor.EnumValueDescriptor( name='DATA', index=9, number=5, options=None, type=None), descriptor.EnumValueDescriptor( name='DECONVOLUTION', index=10, number=39, options=None, type=None), descriptor.EnumValueDescriptor( name='DROPOUT', index=11, number=6, options=None, type=None), descriptor.EnumValueDescriptor( name='DUMMY_DATA', index=12, number=32, options=None, type=None), descriptor.EnumValueDescriptor( name='EUCLIDEAN_LOSS', index=13, number=7, options=None, type=None), descriptor.EnumValueDescriptor( name='ELTWISE', index=14, number=25, options=None, type=None), descriptor.EnumValueDescriptor( name='EXP', index=15, number=38, options=None, type=None), descriptor.EnumValueDescriptor( name='FLATTEN', index=16, number=8, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_DATA', index=17, number=9, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_OUTPUT', index=18, number=10, options=None, type=None), descriptor.EnumValueDescriptor( name='HINGE_LOSS', index=19, number=28, options=None, type=None), descriptor.EnumValueDescriptor( name='IM2COL', index=20, number=11, options=None, type=None), descriptor.EnumValueDescriptor( name='IMAGE_DATA', index=21, number=12, options=None, type=None), descriptor.EnumValueDescriptor( name='INFOGAIN_LOSS', index=22, number=13, options=None, type=None), descriptor.EnumValueDescriptor( name='INNER_PRODUCT', index=23, number=14, options=None, type=None), descriptor.EnumValueDescriptor( name='LRN', index=24, number=15, options=None, type=None), descriptor.EnumValueDescriptor( name='MEMORY_DATA', index=25, number=29, options=None, type=None), descriptor.EnumValueDescriptor( name='MULTINOMIAL_LOGISTIC_LOSS', index=26, number=16, options=None, type=None), descriptor.EnumValueDescriptor( name='MVN', index=27, number=34, options=None, type=None), descriptor.EnumValueDescriptor( name='POOLING', index=28, number=17, options=None, type=None), descriptor.EnumValueDescriptor( name='POWER', index=29, number=26, options=None, type=None), descriptor.EnumValueDescriptor( name='RELU', index=30, number=18, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID', index=31, number=19, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID_CROSS_ENTROPY_LOSS', index=32, number=27, options=None, type=None), descriptor.EnumValueDescriptor( name='SILENCE', index=33, number=36, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX', index=34, number=20, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX_LOSS', index=35, number=21, options=None, type=None), descriptor.EnumValueDescriptor( name='SPLIT', index=36, number=22, options=None, type=None), descriptor.EnumValueDescriptor( name='SLICE', index=37, number=33, options=None, type=None), descriptor.EnumValueDescriptor( name='TANH', index=38, number=23, options=None, type=None), descriptor.EnumValueDescriptor( name='WINDOW_DATA', index=39, number=24, options=None, type=None), descriptor.EnumValueDescriptor( name='THRESHOLD', index=40, number=31, options=None, type=None), ], containing_type=None, options=None, serialized_start=12111, serialized_end=12721, ) _V1LAYERPARAMETER_DIMCHECKMODE = descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.V1LayerParameter.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2713, serialized_end=2755, ) _V0LAYERPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.V0LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=8433, serialized_end=8479, ) _BLOBSHAPE = descriptor.Descriptor( name='BlobShape', full_name='caffe.BlobShape', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dim', full_name='caffe.BlobShape.dim', index=0, number=1, type=3, cpp_type=2, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=29, serialized_end=57, ) _BLOBPROTO = descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='shape', full_name='caffe.BlobProto.shape', index=0, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=1, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=2, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='double_data', full_name='caffe.BlobProto.double_data', index=3, number=8, type=1, cpp_type=5, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='double_diff', full_name='caffe.BlobProto.double_diff', index=4, number=9, type=1, cpp_type=5, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=5, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=6, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=7, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=8, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=60, serialized_end=264, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=266, serialized_end=316, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='encoded', full_name='caffe.Datum.encoded', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=319, serialized_end=448, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sparse', full_name='caffe.FillerParameter.sparse', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='variance_norm', full_name='caffe.FillerParameter.variance_norm', index=7, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _FILLERPARAMETER_VARIANCENORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=451, serialized_end=717, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_shape', full_name='caffe.NetParameter.input_shape', index=2, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='state', full_name='caffe.NetParameter.state', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='debug_info', full_name='caffe.NetParameter.debug_info', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.NetParameter.layer', index=7, number=100, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=8, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=720, serialized_end=990, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='net', full_name='caffe.SolverParameter.net', index=0, number=24, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='net_param', full_name='caffe.SolverParameter.net_param', index=1, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=2, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=3, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net_param', full_name='caffe.SolverParameter.train_net_param', index=4, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net_param', full_name='caffe.SolverParameter.test_net_param', index=5, number=22, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_state', full_name='caffe.SolverParameter.train_state', index=6, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_state', full_name='caffe.SolverParameter.test_state', index=7, number=27, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=8, number=3, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=9, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_compute_loss', full_name='caffe.SolverParameter.test_compute_loss', index=10, number=19, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_initialization', full_name='caffe.SolverParameter.test_initialization', index=11, number=32, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=12, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=13, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='average_loss', full_name='caffe.SolverParameter.average_loss', index=14, number=33, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=15, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='iter_size', full_name='caffe.SolverParameter.iter_size', index=16, number=36, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=17, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=18, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=19, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=20, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=21, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='regularization_type', full_name='caffe.SolverParameter.regularization_type', index=22, number=29, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("L2", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=23, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepvalue', full_name='caffe.SolverParameter.stepvalue', index=24, number=34, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='clip_gradients', full_name='caffe.SolverParameter.clip_gradients', index=25, number=35, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=26, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=27, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=28, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_format', full_name='caffe.SolverParameter.snapshot_format', index=29, number=37, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=30, number=17, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=31, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='random_seed', full_name='caffe.SolverParameter.random_seed', index=32, number=20, type=3, cpp_type=2, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_type', full_name='caffe.SolverParameter.solver_type', index=33, number=30, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='delta', full_name='caffe.SolverParameter.delta', index=34, number=31, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-08, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum2', full_name='caffe.SolverParameter.momentum2', index=35, number=39, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.999, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rms_decay', full_name='caffe.SolverParameter.rms_decay', index=36, number=38, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='debug_info', full_name='caffe.SolverParameter.debug_info', index=37, number=23, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_after_train', full_name='caffe.SolverParameter.snapshot_after_train', index=38, number=28, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOLVERPARAMETER_SNAPSHOTFORMAT, _SOLVERPARAMETER_SOLVERMODE, _SOLVERPARAMETER_SOLVERTYPE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=993, serialized_end=2282, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='current_step', full_name='caffe.SolverState.current_step', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2284, serialized_end=2392, ) _NETSTATE = descriptor.Descriptor( name='NetState', full_name='caffe.NetState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetState.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='level', full_name='caffe.NetState.level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetState.stage', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2394, serialized_end=2472, ) _NETSTATERULE = descriptor.Descriptor( name='NetStateRule', full_name='caffe.NetStateRule', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetStateRule.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min_level', full_name='caffe.NetStateRule.min_level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_level', full_name='caffe.NetStateRule.max_level', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetStateRule.stage', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='not_stage', full_name='caffe.NetStateRule.not_stage', index=4, number=5, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2474, serialized_end=2589, ) _PARAMSPEC = descriptor.Descriptor( name='ParamSpec', full_name='caffe.ParamSpec', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.ParamSpec.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='share_mode', full_name='caffe.ParamSpec.share_mode', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_mult', full_name='caffe.ParamSpec.lr_mult', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='decay_mult', full_name='caffe.ParamSpec.decay_mult', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _PARAMSPEC_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2592, serialized_end=2755, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerParameter.bottom', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerParameter.top', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='phase', full_name='caffe.LayerParameter.phase', index=4, number=10, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.LayerParameter.loss_weight', index=5, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param', full_name='caffe.LayerParameter.param', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=7, number=7, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='propagate_down', full_name='caffe.LayerParameter.propagate_down', index=8, number=11, type=8, cpp_type=7, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='include', full_name='caffe.LayerParameter.include', index=9, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exclude', full_name='caffe.LayerParameter.exclude', index=10, number=9, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='transform_param', full_name='caffe.LayerParameter.transform_param', index=11, number=100, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_param', full_name='caffe.LayerParameter.loss_param', index=12, number=101, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.LayerParameter.accuracy_param', index=13, number=102, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.LayerParameter.argmax_param', index=14, number=103, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.LayerParameter.concat_param', index=15, number=104, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.LayerParameter.contrastive_loss_param', index=16, number=105, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.LayerParameter.convolution_param', index=17, number=106, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.LayerParameter.data_param', index=18, number=107, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.LayerParameter.dropout_param', index=19, number=108, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.LayerParameter.dummy_data_param', index=20, number=109, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.LayerParameter.eltwise_param', index=21, number=110, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='embed_param', full_name='caffe.LayerParameter.embed_param', index=22, number=137, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exp_param', full_name='caffe.LayerParameter.exp_param', index=23, number=111, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='flatten_param', full_name='caffe.LayerParameter.flatten_param', index=24, number=135, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.LayerParameter.hdf5_data_param', index=25, number=112, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.LayerParameter.hdf5_output_param', index=26, number=113, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.LayerParameter.hinge_loss_param', index=27, number=114, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.LayerParameter.image_data_param', index=28, number=115, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.LayerParameter.infogain_loss_param', index=29, number=116, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.LayerParameter.inner_product_param', index=30, number=117, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='log_param', full_name='caffe.LayerParameter.log_param', index=31, number=134, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.LayerParameter.lrn_param', index=32, number=118, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.LayerParameter.memory_data_param', index=33, number=119, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.LayerParameter.mvn_param', index=34, number=120, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.LayerParameter.pooling_param', index=35, number=121, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.LayerParameter.power_param', index=36, number=122, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='prelu_param', full_name='caffe.LayerParameter.prelu_param', index=37, number=131, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='python_param', full_name='caffe.LayerParameter.python_param', index=38, number=130, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='reduction_param', full_name='caffe.LayerParameter.reduction_param', index=39, number=136, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='relu_param', full_name='caffe.LayerParameter.relu_param', index=40, number=123, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='reshape_param', full_name='caffe.LayerParameter.reshape_param', index=41, number=133, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.LayerParameter.sigmoid_param', index=42, number=124, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.LayerParameter.softmax_param', index=43, number=125, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='spp_param', full_name='caffe.LayerParameter.spp_param', index=44, number=132, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_param', full_name='caffe.LayerParameter.slice_param', index=45, number=126, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.LayerParameter.tanh_param', index=46, number=127, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.LayerParameter.threshold_param', index=47, number=128, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tile_param', full_name='caffe.LayerParameter.tile_param', index=48, number=138, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.LayerParameter.window_data_param', index=49, number=129, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2758, serialized_end=4943, ) _TRANSFORMATIONPARAMETER = descriptor.Descriptor( name='TransformationParameter', full_name='caffe.TransformationParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='scale', full_name='caffe.TransformationParameter.scale', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.TransformationParameter.mirror', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.TransformationParameter.crop_size', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.TransformationParameter.mean_file', index=3, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_value', full_name='caffe.TransformationParameter.mean_value', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_color', full_name='caffe.TransformationParameter.force_color', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_gray', full_name='caffe.TransformationParameter.force_gray', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4946, serialized_end=5128, ) _LOSSPARAMETER = descriptor.Descriptor( name='LossParameter', full_name='caffe.LossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.LossParameter.ignore_label', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='normalize', full_name='caffe.LossParameter.normalize', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5130, serialized_end=5192, ) _ACCURACYPARAMETER = descriptor.Descriptor( name='AccuracyParameter', full_name='caffe.AccuracyParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='top_k', full_name='caffe.AccuracyParameter.top_k', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.AccuracyParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.AccuracyParameter.ignore_label', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5194, serialized_end=5270, ) _ARGMAXPARAMETER = descriptor.Descriptor( name='ArgMaxParameter', full_name='caffe.ArgMaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='out_max_val', full_name='caffe.ArgMaxParameter.out_max_val', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top_k', full_name='caffe.ArgMaxParameter.top_k', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5272, serialized_end=5335, ) _CONCATPARAMETER = descriptor.Descriptor( name='ConcatParameter', full_name='caffe.ConcatParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.ConcatParameter.axis', index=0, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.ConcatParameter.concat_dim', index=1, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5337, serialized_end=5394, ) _CONTRASTIVELOSSPARAMETER = descriptor.Descriptor( name='ContrastiveLossParameter', full_name='caffe.ContrastiveLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='margin', full_name='caffe.ContrastiveLossParameter.margin', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='legacy_version', full_name='caffe.ContrastiveLossParameter.legacy_version', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5396, serialized_end=5472, ) _CONVOLUTIONPARAMETER = descriptor.Descriptor( name='ConvolutionParameter', full_name='caffe.ConvolutionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.ConvolutionParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ConvolutionParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.ConvolutionParameter.pad', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.ConvolutionParameter.pad_h', index=3, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.ConvolutionParameter.pad_w', index=4, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.ConvolutionParameter.kernel_size', index=5, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.ConvolutionParameter.kernel_h', index=6, number=11, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.ConvolutionParameter.kernel_w', index=7, number=12, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.ConvolutionParameter.group', index=8, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.ConvolutionParameter.stride', index=9, number=6, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.ConvolutionParameter.stride_h', index=10, number=13, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.ConvolutionParameter.stride_w', index=11, number=14, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.ConvolutionParameter.weight_filler', index=12, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ConvolutionParameter.bias_filler', index=13, number=8, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ConvolutionParameter.engine', index=14, number=15, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _CONVOLUTIONPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5475, serialized_end=5922, ) _DATAPARAMETER = descriptor.Descriptor( name='DataParameter', full_name='caffe.DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.DataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.DataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='backend', full_name='caffe.DataParameter.backend', index=3, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.DataParameter.scale', index=4, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.DataParameter.mean_file', index=5, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.DataParameter.crop_size', index=6, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.DataParameter.mirror', index=7, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_encoded_color', full_name='caffe.DataParameter.force_encoded_color', index=8, number=9, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='prefetch', full_name='caffe.DataParameter.prefetch', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=4, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _DATAPARAMETER_DB, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5925, serialized_end=6217, ) _DROPOUTPARAMETER = descriptor.Descriptor( name='DropoutParameter', full_name='caffe.DropoutParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.DropoutParameter.dropout_ratio', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6219, serialized_end=6265, ) _DUMMYDATAPARAMETER = descriptor.Descriptor( name='DummyDataParameter', full_name='caffe.DummyDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='data_filler', full_name='caffe.DummyDataParameter.data_filler', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shape', full_name='caffe.DummyDataParameter.shape', index=1, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num', full_name='caffe.DummyDataParameter.num', index=2, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.DummyDataParameter.channels', index=3, number=3, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.DummyDataParameter.height', index=4, number=4, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.DummyDataParameter.width', index=5, number=5, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6268, serialized_end=6428, ) _ELTWISEPARAMETER = descriptor.Descriptor( name='EltwiseParameter', full_name='caffe.EltwiseParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='operation', full_name='caffe.EltwiseParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='coeff', full_name='caffe.EltwiseParameter.coeff', index=1, number=2, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stable_prod_grad', full_name='caffe.EltwiseParameter.stable_prod_grad', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _ELTWISEPARAMETER_ELTWISEOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6431, serialized_end=6596, ) _EMBEDPARAMETER = descriptor.Descriptor( name='EmbedParameter', full_name='caffe.EmbedParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.EmbedParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.EmbedParameter.input_dim', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.EmbedParameter.bias_term', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.EmbedParameter.weight_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.EmbedParameter.bias_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6599, serialized_end=6771, ) _EXPPARAMETER = descriptor.Descriptor( name='ExpParameter', full_name='caffe.ExpParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='base', full_name='caffe.ExpParameter.base', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ExpParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.ExpParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6773, serialized_end=6841, ) _FLATTENPARAMETER = descriptor.Descriptor( name='FlattenParameter', full_name='caffe.FlattenParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.FlattenParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='end_axis', full_name='caffe.FlattenParameter.end_axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6843, serialized_end=6900, ) _HDF5DATAPARAMETER = descriptor.Descriptor( name='HDF5DataParameter', full_name='caffe.HDF5DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.HDF5DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.HDF5DataParameter.batch_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.HDF5DataParameter.shuffle', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6902, serialized_end=6981, ) _HDF5OUTPUTPARAMETER = descriptor.Descriptor( name='HDF5OutputParameter', full_name='caffe.HDF5OutputParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='file_name', full_name='caffe.HDF5OutputParameter.file_name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6983, serialized_end=7023, ) _HINGELOSSPARAMETER = descriptor.Descriptor( name='HingeLossParameter', full_name='caffe.HingeLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='norm', full_name='caffe.HingeLossParameter.norm', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _HINGELOSSPARAMETER_NORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7025, serialized_end=7119, ) _IMAGEDATAPARAMETER = descriptor.Descriptor( name='ImageDataParameter', full_name='caffe.ImageDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.ImageDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.ImageDataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.ImageDataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.ImageDataParameter.shuffle', index=3, number=8, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.ImageDataParameter.new_height', index=4, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.ImageDataParameter.new_width', index=5, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='is_color', full_name='caffe.ImageDataParameter.is_color', index=6, number=11, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ImageDataParameter.scale', index=7, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.ImageDataParameter.mean_file', index=8, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.ImageDataParameter.crop_size', index=9, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.ImageDataParameter.mirror', index=10, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='root_folder', full_name='caffe.ImageDataParameter.root_folder', index=11, number=12, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7122, serialized_end=7401, ) _INFOGAINLOSSPARAMETER = descriptor.Descriptor( name='InfogainLossParameter', full_name='caffe.InfogainLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.InfogainLossParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7403, serialized_end=7442, ) _INNERPRODUCTPARAMETER = descriptor.Descriptor( name='InnerProductParameter', full_name='caffe.InnerProductParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.InnerProductParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.InnerProductParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.InnerProductParameter.weight_filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.InnerProductParameter.bias_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.InnerProductParameter.axis', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7445, serialized_end=7622, ) _LOGPARAMETER = descriptor.Descriptor( name='LogParameter', full_name='caffe.LogParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='base', full_name='caffe.LogParameter.base', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.LogParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.LogParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7624, serialized_end=7692, ) _LRNPARAMETER = descriptor.Descriptor( name='LRNParameter', full_name='caffe.LRNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='local_size', full_name='caffe.LRNParameter.local_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LRNParameter.alpha', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LRNParameter.beta', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='norm_region', full_name='caffe.LRNParameter.norm_region', index=3, number=4, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='k', full_name='caffe.LRNParameter.k', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LRNPARAMETER_NORMREGION, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7695, serialized_end=7909, ) _MEMORYDATAPARAMETER = descriptor.Descriptor( name='MemoryDataParameter', full_name='caffe.MemoryDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='batch_size', full_name='caffe.MemoryDataParameter.batch_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.MemoryDataParameter.channels', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.MemoryDataParameter.height', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.MemoryDataParameter.width', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7911, serialized_end=8001, ) _MVNPARAMETER = descriptor.Descriptor( name='MVNParameter', full_name='caffe.MVNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='normalize_variance', full_name='caffe.MVNParameter.normalize_variance', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='across_channels', full_name='caffe.MVNParameter.across_channels', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eps', full_name='caffe.MVNParameter.eps', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-09, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8003, serialized_end=8103, ) _POOLINGPARAMETER = descriptor.Descriptor( name='PoolingParameter', full_name='caffe.PoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pool', full_name='caffe.PoolingParameter.pool', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.PoolingParameter.pad', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.PoolingParameter.pad_h', index=2, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.PoolingParameter.pad_w', index=3, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.PoolingParameter.kernel_size', index=4, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.PoolingParameter.kernel_h', index=5, number=5, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.PoolingParameter.kernel_w', index=6, number=6, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.PoolingParameter.stride', index=7, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.PoolingParameter.stride_h', index=8, number=7, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.PoolingParameter.stride_w', index=9, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.PoolingParameter.engine', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='global_pooling', full_name='caffe.PoolingParameter.global_pooling', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _POOLINGPARAMETER_POOLMETHOD, _POOLINGPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8106, serialized_end=8524, ) _POWERPARAMETER = descriptor.Descriptor( name='PowerParameter', full_name='caffe.PowerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='power', full_name='caffe.PowerParameter.power', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.PowerParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.PowerParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8526, serialized_end=8596, ) _PYTHONPARAMETER = descriptor.Descriptor( name='PythonParameter', full_name='caffe.PythonParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='module', full_name='caffe.PythonParameter.module', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.PythonParameter.layer', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param_str', full_name='caffe.PythonParameter.param_str', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='share_in_parallel', full_name='caffe.PythonParameter.share_in_parallel', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8598, serialized_end=8701, ) _REDUCTIONPARAMETER = descriptor.Descriptor( name='ReductionParameter', full_name='caffe.ReductionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='operation', full_name='caffe.ReductionParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ReductionParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='coeff', full_name='caffe.ReductionParameter.coeff', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _REDUCTIONPARAMETER_REDUCTIONOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8704, serialized_end=8877, ) _RELUPARAMETER = descriptor.Descriptor( name='ReLUParameter', full_name='caffe.ReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='negative_slope', full_name='caffe.ReLUParameter.negative_slope', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ReLUParameter.engine', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _RELUPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8880, serialized_end=9021, ) _RESHAPEPARAMETER = descriptor.Descriptor( name='ReshapeParameter', full_name='caffe.ReshapeParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='shape', full_name='caffe.ReshapeParameter.shape', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ReshapeParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_axes', full_name='caffe.ReshapeParameter.num_axes', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9023, serialized_end=9113, ) _SIGMOIDPARAMETER = descriptor.Descriptor( name='SigmoidParameter', full_name='caffe.SigmoidParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SigmoidParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SIGMOIDPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9115, serialized_end=9235, ) _SLICEPARAMETER = descriptor.Descriptor( name='SliceParameter', full_name='caffe.SliceParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.SliceParameter.axis', index=0, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_point', full_name='caffe.SliceParameter.slice_point', index=1, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_dim', full_name='caffe.SliceParameter.slice_dim', index=2, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9237, serialized_end=9313, ) _SOFTMAXPARAMETER = descriptor.Descriptor( name='SoftmaxParameter', full_name='caffe.SoftmaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SoftmaxParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.SoftmaxParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOFTMAXPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9316, serialized_end=9453, ) _TANHPARAMETER = descriptor.Descriptor( name='TanHParameter', full_name='caffe.TanHParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.TanHParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _TANHPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9455, serialized_end=9569, ) _TILEPARAMETER = descriptor.Descriptor( name='TileParameter', full_name='caffe.TileParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.TileParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tiles', full_name='caffe.TileParameter.tiles', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9571, serialized_end=9618, ) _THRESHOLDPARAMETER = descriptor.Descriptor( name='ThresholdParameter', full_name='caffe.ThresholdParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='threshold', full_name='caffe.ThresholdParameter.threshold', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9620, serialized_end=9662, ) _WINDOWDATAPARAMETER = descriptor.Descriptor( name='WindowDataParameter', full_name='caffe.WindowDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.WindowDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.WindowDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.WindowDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.WindowDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.WindowDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.WindowDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_threshold', full_name='caffe.WindowDataParameter.fg_threshold', index=6, number=7, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bg_threshold', full_name='caffe.WindowDataParameter.bg_threshold', index=7, number=8, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_fraction', full_name='caffe.WindowDataParameter.fg_fraction', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='context_pad', full_name='caffe.WindowDataParameter.context_pad', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_mode', full_name='caffe.WindowDataParameter.crop_mode', index=10, number=11, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cache_images', full_name='caffe.WindowDataParameter.cache_images', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='root_folder', full_name='caffe.WindowDataParameter.root_folder', index=12, number=13, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9665, serialized_end=9986, ) _SPPPARAMETER = descriptor.Descriptor( name='SPPParameter', full_name='caffe.SPPParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pyramid_height', full_name='caffe.SPPParameter.pyramid_height', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.SPPParameter.pool', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.SPPParameter.engine', index=2, number=6, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SPPPARAMETER_POOLMETHOD, _SPPPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9989, serialized_end=10224, ) _V1LAYERPARAMETER = descriptor.Descriptor( name='V1LayerParameter', full_name='caffe.V1LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='bottom', full_name='caffe.V1LayerParameter.bottom', index=0, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.V1LayerParameter.top', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='name', full_name='caffe.V1LayerParameter.name', index=2, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='include', full_name='caffe.V1LayerParameter.include', index=3, number=32, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exclude', full_name='caffe.V1LayerParameter.exclude', index=4, number=33, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V1LayerParameter.type', index=5, number=5, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V1LayerParameter.blobs', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param', full_name='caffe.V1LayerParameter.param', index=7, number=1001, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blob_share_mode', full_name='caffe.V1LayerParameter.blob_share_mode', index=8, number=1002, type=14, cpp_type=8, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V1LayerParameter.blobs_lr', index=9, number=7, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V1LayerParameter.weight_decay', index=10, number=8, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.V1LayerParameter.loss_weight', index=11, number=35, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.V1LayerParameter.accuracy_param', index=12, number=27, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.V1LayerParameter.argmax_param', index=13, number=23, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.V1LayerParameter.concat_param', index=14, number=9, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.V1LayerParameter.contrastive_loss_param', index=15, number=40, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.V1LayerParameter.convolution_param', index=16, number=10, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.V1LayerParameter.data_param', index=17, number=11, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.V1LayerParameter.dropout_param', index=18, number=12, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.V1LayerParameter.dummy_data_param', index=19, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.V1LayerParameter.eltwise_param', index=20, number=24, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exp_param', full_name='caffe.V1LayerParameter.exp_param', index=21, number=41, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.V1LayerParameter.hdf5_data_param', index=22, number=13, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V1LayerParameter.hdf5_output_param', index=23, number=14, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.V1LayerParameter.hinge_loss_param', index=24, number=29, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.V1LayerParameter.image_data_param', index=25, number=15, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.V1LayerParameter.infogain_loss_param', index=26, number=16, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.V1LayerParameter.inner_product_param', index=27, number=17, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.V1LayerParameter.lrn_param', index=28, number=18, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.V1LayerParameter.memory_data_param', index=29, number=22, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.V1LayerParameter.mvn_param', index=30, number=34, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.V1LayerParameter.pooling_param', index=31, number=19, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.V1LayerParameter.power_param', index=32, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='relu_param', full_name='caffe.V1LayerParameter.relu_param', index=33, number=30, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.V1LayerParameter.sigmoid_param', index=34, number=38, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.V1LayerParameter.softmax_param', index=35, number=39, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_param', full_name='caffe.V1LayerParameter.slice_param', index=36, number=31, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.V1LayerParameter.tanh_param', index=37, number=37, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.V1LayerParameter.threshold_param', index=38, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.V1LayerParameter.window_data_param', index=39, number=20, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='transform_param', full_name='caffe.V1LayerParameter.transform_param', index=40, number=36, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_param', full_name='caffe.V1LayerParameter.loss_param', index=41, number=42, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.V1LayerParameter.layer', index=42, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V1LAYERPARAMETER_LAYERTYPE, _V1LAYERPARAMETER_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10227, serialized_end=12765, ) _V0LAYERPARAMETER = descriptor.Descriptor( name='V0LayerParameter', full_name='caffe.V0LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.V0LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V0LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.V0LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.V0LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.V0LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.V0LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.V0LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.V0LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.V0LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.V0LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.V0LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.V0LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.V0LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.V0LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.V0LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='k', full_name='caffe.V0LayerParameter.k', index=15, number=22, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.V0LayerParameter.source', index=16, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.V0LayerParameter.scale', index=17, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.V0LayerParameter.meanfile', index=18, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.V0LayerParameter.batchsize', index=19, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.V0LayerParameter.cropsize', index=20, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.V0LayerParameter.mirror', index=21, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V0LayerParameter.blobs', index=22, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V0LayerParameter.blobs_lr', index=23, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V0LayerParameter.weight_decay', index=24, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.V0LayerParameter.rand_skip', index=25, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.V0LayerParameter.det_fg_threshold', index=26, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.V0LayerParameter.det_bg_threshold', index=27, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.V0LayerParameter.det_fg_fraction', index=28, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.V0LayerParameter.det_context_pad', index=29, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.V0LayerParameter.det_crop_mode', index=30, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_num', full_name='caffe.V0LayerParameter.new_num', index=31, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_channels', full_name='caffe.V0LayerParameter.new_channels', index=32, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.V0LayerParameter.new_height', index=33, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.V0LayerParameter.new_width', index=34, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.V0LayerParameter.shuffle_images', index=35, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.V0LayerParameter.concat_dim', index=36, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V0LayerParameter.hdf5_output_param', index=37, number=1001, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V0LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=12768, serialized_end=13789, ) _PRELUPARAMETER = descriptor.Descriptor( name='PReLUParameter', full_name='caffe.PReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='filler', full_name='caffe.PReLUParameter.filler', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channel_shared', full_name='caffe.PReLUParameter.channel_shared', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=13791, serialized_end=13878, ) _BLOBPROTO.fields_by_name['shape'].message_type = _BLOBSHAPE _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _FILLERPARAMETER.fields_by_name['variance_norm'].enum_type = _FILLERPARAMETER_VARIANCENORM _FILLERPARAMETER_VARIANCENORM.containing_type = _FILLERPARAMETER; _NETPARAMETER.fields_by_name['input_shape'].message_type = _BLOBSHAPE _NETPARAMETER.fields_by_name['state'].message_type = _NETSTATE _NETPARAMETER.fields_by_name['layer'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['layers'].message_type = _V1LAYERPARAMETER _SOLVERPARAMETER.fields_by_name['net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['test_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['test_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['snapshot_format'].enum_type = _SOLVERPARAMETER_SNAPSHOTFORMAT _SOLVERPARAMETER.fields_by_name['solver_mode'].enum_type = _SOLVERPARAMETER_SOLVERMODE _SOLVERPARAMETER.fields_by_name['solver_type'].enum_type = _SOLVERPARAMETER_SOLVERTYPE _SOLVERPARAMETER_SNAPSHOTFORMAT.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERMODE.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERTYPE.containing_type = _SOLVERPARAMETER; _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _NETSTATE.fields_by_name['phase'].enum_type = _PHASE _NETSTATERULE.fields_by_name['phase'].enum_type = _PHASE _PARAMSPEC.fields_by_name['share_mode'].enum_type = _PARAMSPEC_DIMCHECKMODE _PARAMSPEC_DIMCHECKMODE.containing_type = _PARAMSPEC; _LAYERPARAMETER.fields_by_name['phase'].enum_type = _PHASE _LAYERPARAMETER.fields_by_name['param'].message_type = _PARAMSPEC _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _LAYERPARAMETER.fields_by_name['embed_param'].message_type = _EMBEDPARAMETER _LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _LAYERPARAMETER.fields_by_name['flatten_param'].message_type = _FLATTENPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _LAYERPARAMETER.fields_by_name['log_param'].message_type = _LOGPARAMETER _LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _LAYERPARAMETER.fields_by_name['prelu_param'].message_type = _PRELUPARAMETER _LAYERPARAMETER.fields_by_name['python_param'].message_type = _PYTHONPARAMETER _LAYERPARAMETER.fields_by_name['reduction_param'].message_type = _REDUCTIONPARAMETER _LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _LAYERPARAMETER.fields_by_name['reshape_param'].message_type = _RESHAPEPARAMETER _LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _LAYERPARAMETER.fields_by_name['spp_param'].message_type = _SPPPARAMETER _LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _LAYERPARAMETER.fields_by_name['tile_param'].message_type = _TILEPARAMETER _LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['engine'].enum_type = _CONVOLUTIONPARAMETER_ENGINE _CONVOLUTIONPARAMETER_ENGINE.containing_type = _CONVOLUTIONPARAMETER; _DATAPARAMETER.fields_by_name['backend'].enum_type = _DATAPARAMETER_DB _DATAPARAMETER_DB.containing_type = _DATAPARAMETER; _DUMMYDATAPARAMETER.fields_by_name['data_filler'].message_type = _FILLERPARAMETER _DUMMYDATAPARAMETER.fields_by_name['shape'].message_type = _BLOBSHAPE _ELTWISEPARAMETER.fields_by_name['operation'].enum_type = _ELTWISEPARAMETER_ELTWISEOP _ELTWISEPARAMETER_ELTWISEOP.containing_type = _ELTWISEPARAMETER; _EMBEDPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _EMBEDPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _HINGELOSSPARAMETER.fields_by_name['norm'].enum_type = _HINGELOSSPARAMETER_NORM _HINGELOSSPARAMETER_NORM.containing_type = _HINGELOSSPARAMETER; _INNERPRODUCTPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LRNPARAMETER.fields_by_name['norm_region'].enum_type = _LRNPARAMETER_NORMREGION _LRNPARAMETER_NORMREGION.containing_type = _LRNPARAMETER; _POOLINGPARAMETER.fields_by_name['pool'].enum_type = _POOLINGPARAMETER_POOLMETHOD _POOLINGPARAMETER.fields_by_name['engine'].enum_type = _POOLINGPARAMETER_ENGINE _POOLINGPARAMETER_POOLMETHOD.containing_type = _POOLINGPARAMETER; _POOLINGPARAMETER_ENGINE.containing_type = _POOLINGPARAMETER; _REDUCTIONPARAMETER.fields_by_name['operation'].enum_type = _REDUCTIONPARAMETER_REDUCTIONOP _REDUCTIONPARAMETER_REDUCTIONOP.containing_type = _REDUCTIONPARAMETER; _RELUPARAMETER.fields_by_name['engine'].enum_type = _RELUPARAMETER_ENGINE _RELUPARAMETER_ENGINE.containing_type = _RELUPARAMETER; _RESHAPEPARAMETER.fields_by_name['shape'].message_type = _BLOBSHAPE _SIGMOIDPARAMETER.fields_by_name['engine'].enum_type = _SIGMOIDPARAMETER_ENGINE _SIGMOIDPARAMETER_ENGINE.containing_type = _SIGMOIDPARAMETER; _SOFTMAXPARAMETER.fields_by_name['engine'].enum_type = _SOFTMAXPARAMETER_ENGINE _SOFTMAXPARAMETER_ENGINE.containing_type = _SOFTMAXPARAMETER; _TANHPARAMETER.fields_by_name['engine'].enum_type = _TANHPARAMETER_ENGINE _TANHPARAMETER_ENGINE.containing_type = _TANHPARAMETER; _SPPPARAMETER.fields_by_name['pool'].enum_type = _SPPPARAMETER_POOLMETHOD _SPPPARAMETER.fields_by_name['engine'].enum_type = _SPPPARAMETER_ENGINE _SPPPARAMETER_POOLMETHOD.containing_type = _SPPPARAMETER; _SPPPARAMETER_ENGINE.containing_type = _SPPPARAMETER; _V1LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['type'].enum_type = _V1LAYERPARAMETER_LAYERTYPE _V1LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V1LAYERPARAMETER.fields_by_name['blob_share_mode'].enum_type = _V1LAYERPARAMETER_DIMCHECKMODE _V1LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _V1LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _V1LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _V1LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _V1LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _V1LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V1LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _V1LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _V1LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _V1LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _V1LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _V1LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _V1LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _V1LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _V1LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _V1LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _V1LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _V1LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['layer'].message_type = _V0LAYERPARAMETER _V1LAYERPARAMETER_LAYERTYPE.containing_type = _V1LAYERPARAMETER; _V1LAYERPARAMETER_DIMCHECKMODE.containing_type = _V1LAYERPARAMETER; _V0LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['pool'].enum_type = _V0LAYERPARAMETER_POOLMETHOD _V0LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V0LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V0LAYERPARAMETER_POOLMETHOD.containing_type = _V0LAYERPARAMETER; _PRELUPARAMETER.fields_by_name['filler'].message_type = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['BlobShape'] = _BLOBSHAPE DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE DESCRIPTOR.message_types_by_name['NetState'] = _NETSTATE DESCRIPTOR.message_types_by_name['NetStateRule'] = _NETSTATERULE DESCRIPTOR.message_types_by_name['ParamSpec'] = _PARAMSPEC DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['TransformationParameter'] = _TRANSFORMATIONPARAMETER DESCRIPTOR.message_types_by_name['LossParameter'] = _LOSSPARAMETER DESCRIPTOR.message_types_by_name['AccuracyParameter'] = _ACCURACYPARAMETER DESCRIPTOR.message_types_by_name['ArgMaxParameter'] = _ARGMAXPARAMETER DESCRIPTOR.message_types_by_name['ConcatParameter'] = _CONCATPARAMETER DESCRIPTOR.message_types_by_name['ContrastiveLossParameter'] = _CONTRASTIVELOSSPARAMETER DESCRIPTOR.message_types_by_name['ConvolutionParameter'] = _CONVOLUTIONPARAMETER DESCRIPTOR.message_types_by_name['DataParameter'] = _DATAPARAMETER DESCRIPTOR.message_types_by_name['DropoutParameter'] = _DROPOUTPARAMETER DESCRIPTOR.message_types_by_name['DummyDataParameter'] = _DUMMYDATAPARAMETER DESCRIPTOR.message_types_by_name['EltwiseParameter'] = _ELTWISEPARAMETER DESCRIPTOR.message_types_by_name['EmbedParameter'] = _EMBEDPARAMETER DESCRIPTOR.message_types_by_name['ExpParameter'] = _EXPPARAMETER DESCRIPTOR.message_types_by_name['FlattenParameter'] = _FLATTENPARAMETER DESCRIPTOR.message_types_by_name['HDF5DataParameter'] = _HDF5DATAPARAMETER DESCRIPTOR.message_types_by_name['HDF5OutputParameter'] = _HDF5OUTPUTPARAMETER DESCRIPTOR.message_types_by_name['HingeLossParameter'] = _HINGELOSSPARAMETER DESCRIPTOR.message_types_by_name['ImageDataParameter'] = _IMAGEDATAPARAMETER DESCRIPTOR.message_types_by_name['InfogainLossParameter'] = _INFOGAINLOSSPARAMETER DESCRIPTOR.message_types_by_name['InnerProductParameter'] = _INNERPRODUCTPARAMETER DESCRIPTOR.message_types_by_name['LogParameter'] = _LOGPARAMETER DESCRIPTOR.message_types_by_name['LRNParameter'] = _LRNPARAMETER DESCRIPTOR.message_types_by_name['MemoryDataParameter'] = _MEMORYDATAPARAMETER DESCRIPTOR.message_types_by_name['MVNParameter'] = _MVNPARAMETER DESCRIPTOR.message_types_by_name['PoolingParameter'] = _POOLINGPARAMETER DESCRIPTOR.message_types_by_name['PowerParameter'] = _POWERPARAMETER DESCRIPTOR.message_types_by_name['PythonParameter'] = _PYTHONPARAMETER DESCRIPTOR.message_types_by_name['ReductionParameter'] = _REDUCTIONPARAMETER DESCRIPTOR.message_types_by_name['ReLUParameter'] = _RELUPARAMETER DESCRIPTOR.message_types_by_name['ReshapeParameter'] = _RESHAPEPARAMETER DESCRIPTOR.message_types_by_name['SigmoidParameter'] = _SIGMOIDPARAMETER DESCRIPTOR.message_types_by_name['SliceParameter'] = _SLICEPARAMETER DESCRIPTOR.message_types_by_name['SoftmaxParameter'] = _SOFTMAXPARAMETER DESCRIPTOR.message_types_by_name['TanHParameter'] = _TANHPARAMETER DESCRIPTOR.message_types_by_name['TileParameter'] = _TILEPARAMETER DESCRIPTOR.message_types_by_name['ThresholdParameter'] = _THRESHOLDPARAMETER DESCRIPTOR.message_types_by_name['WindowDataParameter'] = _WINDOWDATAPARAMETER DESCRIPTOR.message_types_by_name['SPPParameter'] = _SPPPARAMETER DESCRIPTOR.message_types_by_name['V1LayerParameter'] = _V1LAYERPARAMETER DESCRIPTOR.message_types_by_name['V0LayerParameter'] = _V0LAYERPARAMETER DESCRIPTOR.message_types_by_name['PReLUParameter'] = _PRELUPARAMETER class BlobShape(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBSHAPE # @@protoc_insertion_point(class_scope:caffe.BlobShape) class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) class NetState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATE # @@protoc_insertion_point(class_scope:caffe.NetState) class NetStateRule(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATERULE # @@protoc_insertion_point(class_scope:caffe.NetStateRule) class ParamSpec(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PARAMSPEC # @@protoc_insertion_point(class_scope:caffe.ParamSpec) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class TransformationParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TRANSFORMATIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.TransformationParameter) class LossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.LossParameter) class AccuracyParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ACCURACYPARAMETER # @@protoc_insertion_point(class_scope:caffe.AccuracyParameter) class ArgMaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ARGMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.ArgMaxParameter) class ConcatParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONCATPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConcatParameter) class ContrastiveLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONTRASTIVELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.ContrastiveLossParameter) class ConvolutionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONVOLUTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConvolutionParameter) class DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DataParameter) class DropoutParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DROPOUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.DropoutParameter) class DummyDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DUMMYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DummyDataParameter) class EltwiseParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ELTWISEPARAMETER # @@protoc_insertion_point(class_scope:caffe.EltwiseParameter) class EmbedParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EMBEDPARAMETER # @@protoc_insertion_point(class_scope:caffe.EmbedParameter) class ExpParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EXPPARAMETER # @@protoc_insertion_point(class_scope:caffe.ExpParameter) class FlattenParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FLATTENPARAMETER # @@protoc_insertion_point(class_scope:caffe.FlattenParameter) class HDF5DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5DataParameter) class HDF5OutputParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5OUTPUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5OutputParameter) class HingeLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HINGELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.HingeLossParameter) class ImageDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _IMAGEDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.ImageDataParameter) class InfogainLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INFOGAINLOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.InfogainLossParameter) class InnerProductParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INNERPRODUCTPARAMETER # @@protoc_insertion_point(class_scope:caffe.InnerProductParameter) class LogParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LOGPARAMETER # @@protoc_insertion_point(class_scope:caffe.LogParameter) class LRNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LRNPARAMETER # @@protoc_insertion_point(class_scope:caffe.LRNParameter) class MemoryDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MEMORYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.MemoryDataParameter) class MVNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MVNPARAMETER # @@protoc_insertion_point(class_scope:caffe.MVNParameter) class PoolingParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.PoolingParameter) class PowerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POWERPARAMETER # @@protoc_insertion_point(class_scope:caffe.PowerParameter) class PythonParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PYTHONPARAMETER # @@protoc_insertion_point(class_scope:caffe.PythonParameter) class ReductionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _REDUCTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReductionParameter) class ReLUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _RELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReLUParameter) class ReshapeParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _RESHAPEPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReshapeParameter) class SigmoidParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SIGMOIDPARAMETER # @@protoc_insertion_point(class_scope:caffe.SigmoidParameter) class SliceParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SLICEPARAMETER # @@protoc_insertion_point(class_scope:caffe.SliceParameter) class SoftmaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOFTMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.SoftmaxParameter) class TanHParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TANHPARAMETER # @@protoc_insertion_point(class_scope:caffe.TanHParameter) class TileParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TILEPARAMETER # @@protoc_insertion_point(class_scope:caffe.TileParameter) class ThresholdParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _THRESHOLDPARAMETER # @@protoc_insertion_point(class_scope:caffe.ThresholdParameter) class WindowDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _WINDOWDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.WindowDataParameter) class SPPParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SPPPARAMETER # @@protoc_insertion_point(class_scope:caffe.SPPParameter) class V1LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V1LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V1LayerParameter) class V0LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V0LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V0LayerParameter) class PReLUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PRELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.PReLUParameter) # @@protoc_insertion_point(module_scope)
218,004
42.349572
26,073
py
DRT
DRT-master/external_libs/matconvnet/matconvnet/utils/proto/caffe_old_pb2.py
# Generated by the protocol buffer compiler. DO NOT EDIT! from google.protobuf import descriptor from google.protobuf import message from google.protobuf import reflection from google.protobuf import descriptor_pb2 # @@protoc_insertion_point(imports) DESCRIPTOR = descriptor.FileDescriptor( name='caffe-old.proto', package='caffe', serialized_pb='\n\x0f\x63\x61\x66\x66\x65-old.proto\x12\x05\x63\x61\x66\x66\x65\"y\n\tBlobProto\x12\x0e\n\x03num\x18\x01 \x01(\x05:\x01\x30\x12\x13\n\x08\x63hannels\x18\x02 \x01(\x05:\x01\x30\x12\x11\n\x06height\x18\x03 \x01(\x05:\x01\x30\x12\x10\n\x05width\x18\x04 \x01(\x05:\x01\x30\x12\x10\n\x04\x64\x61ta\x18\x05 \x03(\x02\x42\x02\x10\x01\x12\x10\n\x04\x64iff\x18\x06 \x03(\x02\x42\x02\x10\x01\"2\n\x0f\x42lobProtoVector\x12\x1f\n\x05\x62lobs\x18\x01 \x03(\x0b\x32\x10.caffe.BlobProto\"i\n\x05\x44\x61tum\x12\x10\n\x08\x63hannels\x18\x01 \x01(\x05\x12\x0e\n\x06height\x18\x02 \x01(\x05\x12\r\n\x05width\x18\x03 \x01(\x05\x12\x0c\n\x04\x64\x61ta\x18\x04 \x01(\x0c\x12\r\n\x05label\x18\x05 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\x01(\x05:\x01\x30\x12\x17\n\x0cnew_channels\x18= \x01(\x05:\x01\x30\x12\x15\n\nnew_height\x18> \x01(\x05:\x01\x30\x12\x14\n\tnew_width\x18? \x01(\x05:\x01\x30\x12\x1d\n\x0eshuffle_images\x18@ \x01(\x08:\x05\x66\x61lse\x12\x15\n\nconcat_dim\x18\x41 \x01(\r:\x01\x31\".\n\nPoolMethod\x12\x07\n\x03MAX\x10\x00\x12\x07\n\x03\x41VE\x10\x01\x12\x0e\n\nSTOCHASTIC\x10\x02\"T\n\x0fLayerConnection\x12$\n\x05layer\x18\x01 \x01(\x0b\x32\x15.caffe.LayerParameter\x12\x0e\n\x06\x62ottom\x18\x02 \x03(\t\x12\x0b\n\x03top\x18\x03 \x03(\t\"\x85\x01\n\x0cNetParameter\x12\x0c\n\x04name\x18\x01 \x01(\t\x12&\n\x06layers\x18\x02 \x03(\x0b\x32\x16.caffe.LayerConnection\x12\r\n\x05input\x18\x03 \x03(\t\x12\x11\n\tinput_dim\x18\x04 \x03(\x05\x12\x1d\n\x0e\x66orce_backward\x18\x05 \x01(\x08:\x05\x66\x61lse\"\xff\x02\n\x0fSolverParameter\x12\x11\n\ttrain_net\x18\x01 \x01(\t\x12\x10\n\x08test_net\x18\x02 \x01(\t\x12\x14\n\ttest_iter\x18\x03 \x01(\x05:\x01\x30\x12\x18\n\rtest_interval\x18\x04 \x01(\x05:\x01\x30\x12\x0f\n\x07\x62\x61se_lr\x18\x05 \x01(\x02\x12\x0f\n\x07\x64isplay\x18\x06 \x01(\x05\x12\x10\n\x08max_iter\x18\x07 \x01(\x05\x12\x11\n\tlr_policy\x18\x08 \x01(\t\x12\r\n\x05gamma\x18\t \x01(\x02\x12\r\n\x05power\x18\n \x01(\x02\x12\x10\n\x08momentum\x18\x0b \x01(\x02\x12\x14\n\x0cweight_decay\x18\x0c \x01(\x02\x12\x10\n\x08stepsize\x18\r \x01(\x05\x12\x13\n\x08snapshot\x18\x0e \x01(\x05:\x01\x30\x12\x17\n\x0fsnapshot_prefix\x18\x0f \x01(\t\x12\x1c\n\rsnapshot_diff\x18\x10 \x01(\x08:\x05\x66\x61lse\x12\x16\n\x0bsolver_mode\x18\x11 \x01(\x05:\x01\x31\x12\x14\n\tdevice_id\x18\x12 \x01(\x05:\x01\x30\"S\n\x0bSolverState\x12\x0c\n\x04iter\x18\x01 \x01(\x05\x12\x13\n\x0blearned_net\x18\x02 \x01(\t\x12!\n\x07history\x18\x03 \x03(\x0b\x32\x10.caffe.BlobProto') _LAYERPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=1336, serialized_end=1382, ) _BLOBPROTO = descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=26, serialized_end=147, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=149, serialized_end=199, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=201, serialized_end=306, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=308, serialized_end=432, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.LayerParameter.source', index=15, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.LayerParameter.scale', index=16, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.LayerParameter.meanfile', index=17, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.LayerParameter.batchsize', index=18, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.LayerParameter.cropsize', index=19, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.LayerParameter.mirror', index=20, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=21, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.LayerParameter.blobs_lr', index=22, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.LayerParameter.weight_decay', index=23, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.LayerParameter.rand_skip', index=24, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.LayerParameter.det_fg_threshold', index=25, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.LayerParameter.det_bg_threshold', index=26, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.LayerParameter.det_fg_fraction', index=27, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.LayerParameter.det_context_pad', index=28, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.LayerParameter.det_crop_mode', index=29, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_num', full_name='caffe.LayerParameter.new_num', index=30, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_channels', full_name='caffe.LayerParameter.new_channels', index=31, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.LayerParameter.new_height', index=32, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.LayerParameter.new_width', index=33, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.LayerParameter.shuffle_images', index=34, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.LayerParameter.concat_dim', index=35, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=435, serialized_end=1382, ) _LAYERCONNECTION = descriptor.Descriptor( name='LayerConnection', full_name='caffe.LayerConnection', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='layer', full_name='caffe.LayerConnection.layer', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerConnection.bottom', index=1, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerConnection.top', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1384, serialized_end=1468, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=1, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1471, serialized_end=1604, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=5, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=7, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=9, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=10, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=12, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=13, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=14, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=15, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=16, number=17, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=17, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1607, serialized_end=1990, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1992, serialized_end=2075, ) _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LAYERPARAMETER.fields_by_name['pool'].enum_type = _LAYERPARAMETER_POOLMETHOD _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER_POOLMETHOD.containing_type = _LAYERPARAMETER; _LAYERCONNECTION.fields_by_name['layer'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['layers'].message_type = _LAYERCONNECTION _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['LayerConnection'] = _LAYERCONNECTION DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class LayerConnection(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERCONNECTION # @@protoc_insertion_point(class_scope:caffe.LayerConnection) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) # @@protoc_insertion_point(module_scope)
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DRT-master/external_libs/matconvnet/matconvnet/utils/proto/caffe_b590f1d_pb2.py
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descriptor.EnumDescriptor( name='NormRegion', full_name='caffe.LRNParameter.NormRegion', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='ACROSS_CHANNELS', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='WITHIN_CHANNEL', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=8557, serialized_end=8610, ) _LRNPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.LRNParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _POOLINGPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.PoolingParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=9179, serialized_end=9225, ) _POOLINGPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.PoolingParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _REDUCTIONPARAMETER_REDUCTIONOP = descriptor.EnumDescriptor( name='ReductionOp', full_name='caffe.ReductionParameter.ReductionOp', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='SUM', index=0, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ASUM', index=1, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='SUMSQ', index=2, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='MEAN', index=3, number=4, options=None, type=None), ], containing_type=None, options=None, serialized_start=9570, serialized_end=9623, ) _RELUPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.ReLUParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _SIGMOIDPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SigmoidParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _SOFTMAXPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SoftmaxParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _TANHPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.TanHParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _SPPPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.SPPParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=9179, serialized_end=9225, ) _SPPPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SPPParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _V1LAYERPARAMETER_LAYERTYPE = descriptor.EnumDescriptor( name='LayerType', full_name='caffe.V1LayerParameter.LayerType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='NONE', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='ABSVAL', index=1, number=35, options=None, type=None), descriptor.EnumValueDescriptor( name='ACCURACY', index=2, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ARGMAX', index=3, number=30, options=None, type=None), descriptor.EnumValueDescriptor( name='BNLL', index=4, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='CONCAT', index=5, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='CONTRASTIVE_LOSS', index=6, number=37, options=None, type=None), descriptor.EnumValueDescriptor( name='CONVOLUTION', index=7, number=4, options=None, type=None), descriptor.EnumValueDescriptor( name='DATA', index=8, number=5, options=None, type=None), descriptor.EnumValueDescriptor( name='DECONVOLUTION', index=9, number=39, options=None, type=None), descriptor.EnumValueDescriptor( name='DROPOUT', index=10, number=6, options=None, type=None), descriptor.EnumValueDescriptor( name='DUMMY_DATA', index=11, number=32, options=None, type=None), descriptor.EnumValueDescriptor( name='EUCLIDEAN_LOSS', index=12, number=7, options=None, type=None), descriptor.EnumValueDescriptor( name='ELTWISE', index=13, number=25, options=None, type=None), descriptor.EnumValueDescriptor( name='EXP', index=14, number=38, options=None, type=None), descriptor.EnumValueDescriptor( name='FLATTEN', index=15, number=8, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_DATA', index=16, number=9, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_OUTPUT', index=17, number=10, options=None, type=None), descriptor.EnumValueDescriptor( name='HINGE_LOSS', index=18, number=28, options=None, type=None), descriptor.EnumValueDescriptor( name='IM2COL', index=19, number=11, options=None, type=None), descriptor.EnumValueDescriptor( name='IMAGE_DATA', index=20, number=12, options=None, type=None), descriptor.EnumValueDescriptor( name='INFOGAIN_LOSS', index=21, number=13, options=None, type=None), descriptor.EnumValueDescriptor( name='INNER_PRODUCT', index=22, number=14, options=None, type=None), descriptor.EnumValueDescriptor( name='LRN', index=23, number=15, options=None, type=None), descriptor.EnumValueDescriptor( name='MEMORY_DATA', index=24, number=29, options=None, type=None), descriptor.EnumValueDescriptor( name='MULTINOMIAL_LOGISTIC_LOSS', index=25, number=16, options=None, type=None), descriptor.EnumValueDescriptor( name='MVN', index=26, number=34, options=None, type=None), descriptor.EnumValueDescriptor( name='POOLING', index=27, number=17, options=None, type=None), descriptor.EnumValueDescriptor( name='POWER', index=28, number=26, options=None, type=None), descriptor.EnumValueDescriptor( name='RELU', index=29, number=18, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID', index=30, number=19, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID_CROSS_ENTROPY_LOSS', index=31, number=27, options=None, type=None), descriptor.EnumValueDescriptor( name='SILENCE', index=32, number=36, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX', index=33, number=20, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX_LOSS', index=34, number=21, options=None, type=None), descriptor.EnumValueDescriptor( name='SPLIT', index=35, number=22, options=None, type=None), descriptor.EnumValueDescriptor( name='SLICE', index=36, number=33, options=None, type=None), descriptor.EnumValueDescriptor( name='TANH', index=37, number=23, options=None, type=None), descriptor.EnumValueDescriptor( name='WINDOW_DATA', index=38, number=24, options=None, type=None), descriptor.EnumValueDescriptor( name='THRESHOLD', index=39, number=31, options=None, type=None), ], containing_type=None, options=None, serialized_start=13025, serialized_end=13625, ) _V1LAYERPARAMETER_DIMCHECKMODE = descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.V1LayerParameter.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2733, serialized_end=2775, ) _V0LAYERPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.V0LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=9179, serialized_end=9225, ) _BLOBSHAPE = descriptor.Descriptor( name='BlobShape', full_name='caffe.BlobShape', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dim', full_name='caffe.BlobShape.dim', index=0, number=1, type=3, cpp_type=2, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=30, serialized_end=58, ) _BLOBPROTO = descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='shape', full_name='caffe.BlobProto.shape', index=0, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=1, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=2, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='double_data', full_name='caffe.BlobProto.double_data', index=3, number=8, type=1, cpp_type=5, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='double_diff', full_name='caffe.BlobProto.double_diff', index=4, number=9, type=1, cpp_type=5, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=5, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=6, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=7, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=8, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=61, serialized_end=265, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=267, serialized_end=317, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='encoded', full_name='caffe.Datum.encoded', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=320, serialized_end=449, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sparse', full_name='caffe.FillerParameter.sparse', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='variance_norm', full_name='caffe.FillerParameter.variance_norm', index=7, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _FILLERPARAMETER_VARIANCENORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=452, serialized_end=718, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_shape', full_name='caffe.NetParameter.input_shape', index=2, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='state', full_name='caffe.NetParameter.state', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='debug_info', full_name='caffe.NetParameter.debug_info', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.NetParameter.layer', index=7, number=100, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=8, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=721, serialized_end=991, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='net', full_name='caffe.SolverParameter.net', index=0, number=24, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='net_param', full_name='caffe.SolverParameter.net_param', index=1, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=2, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=3, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net_param', full_name='caffe.SolverParameter.train_net_param', index=4, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net_param', full_name='caffe.SolverParameter.test_net_param', index=5, number=22, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_state', full_name='caffe.SolverParameter.train_state', index=6, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_state', full_name='caffe.SolverParameter.test_state', index=7, number=27, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=8, number=3, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=9, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_compute_loss', full_name='caffe.SolverParameter.test_compute_loss', index=10, number=19, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_initialization', full_name='caffe.SolverParameter.test_initialization', index=11, number=32, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=12, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=13, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='average_loss', full_name='caffe.SolverParameter.average_loss', index=14, number=33, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=15, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='iter_size', full_name='caffe.SolverParameter.iter_size', index=16, number=36, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=17, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=18, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=19, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=20, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=21, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='regularization_type', full_name='caffe.SolverParameter.regularization_type', index=22, number=29, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("L2", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=23, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepvalue', full_name='caffe.SolverParameter.stepvalue', index=24, number=34, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='clip_gradients', full_name='caffe.SolverParameter.clip_gradients', index=25, number=35, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=26, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=27, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=28, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_format', full_name='caffe.SolverParameter.snapshot_format', index=29, number=37, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=30, number=17, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=31, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='random_seed', full_name='caffe.SolverParameter.random_seed', index=32, number=20, type=3, cpp_type=2, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.SolverParameter.type', index=33, number=40, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("SGD", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='delta', full_name='caffe.SolverParameter.delta', index=34, number=31, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-08, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum2', full_name='caffe.SolverParameter.momentum2', index=35, number=39, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.999, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rms_decay', full_name='caffe.SolverParameter.rms_decay', index=36, number=38, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='debug_info', full_name='caffe.SolverParameter.debug_info', index=37, number=23, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_after_train', full_name='caffe.SolverParameter.snapshot_after_train', index=38, number=28, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_type', full_name='caffe.SolverParameter.solver_type', index=39, number=30, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOLVERPARAMETER_SNAPSHOTFORMAT, _SOLVERPARAMETER_SOLVERMODE, _SOLVERPARAMETER_SOLVERTYPE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=994, serialized_end=2302, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='current_step', full_name='caffe.SolverState.current_step', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2304, serialized_end=2412, ) _NETSTATE = descriptor.Descriptor( name='NetState', full_name='caffe.NetState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetState.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='level', full_name='caffe.NetState.level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetState.stage', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2414, serialized_end=2492, ) _NETSTATERULE = descriptor.Descriptor( name='NetStateRule', full_name='caffe.NetStateRule', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetStateRule.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min_level', full_name='caffe.NetStateRule.min_level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_level', full_name='caffe.NetStateRule.max_level', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetStateRule.stage', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='not_stage', full_name='caffe.NetStateRule.not_stage', index=4, number=5, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2494, serialized_end=2609, ) _PARAMSPEC = descriptor.Descriptor( name='ParamSpec', full_name='caffe.ParamSpec', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.ParamSpec.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='share_mode', full_name='caffe.ParamSpec.share_mode', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_mult', full_name='caffe.ParamSpec.lr_mult', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='decay_mult', full_name='caffe.ParamSpec.decay_mult', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _PARAMSPEC_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2612, serialized_end=2775, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerParameter.bottom', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerParameter.top', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='phase', full_name='caffe.LayerParameter.phase', index=4, number=10, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.LayerParameter.loss_weight', index=5, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param', full_name='caffe.LayerParameter.param', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=7, number=7, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='propagate_down', full_name='caffe.LayerParameter.propagate_down', index=8, number=11, type=8, cpp_type=7, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='include', full_name='caffe.LayerParameter.include', index=9, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exclude', full_name='caffe.LayerParameter.exclude', index=10, number=9, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='transform_param', full_name='caffe.LayerParameter.transform_param', index=11, number=100, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_param', full_name='caffe.LayerParameter.loss_param', index=12, number=101, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.LayerParameter.accuracy_param', index=13, number=102, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.LayerParameter.argmax_param', index=14, number=103, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_norm_param', full_name='caffe.LayerParameter.batch_norm_param', index=15, number=139, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_param', full_name='caffe.LayerParameter.bias_param', index=16, number=141, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.LayerParameter.concat_param', index=17, number=104, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.LayerParameter.contrastive_loss_param', index=18, number=105, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.LayerParameter.convolution_param', index=19, number=106, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.LayerParameter.data_param', index=20, number=107, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.LayerParameter.dropout_param', index=21, number=108, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.LayerParameter.dummy_data_param', index=22, number=109, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.LayerParameter.eltwise_param', index=23, number=110, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='elu_param', full_name='caffe.LayerParameter.elu_param', index=24, number=140, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='embed_param', full_name='caffe.LayerParameter.embed_param', index=25, number=137, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exp_param', full_name='caffe.LayerParameter.exp_param', index=26, number=111, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='flatten_param', full_name='caffe.LayerParameter.flatten_param', index=27, number=135, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.LayerParameter.hdf5_data_param', index=28, number=112, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.LayerParameter.hdf5_output_param', index=29, number=113, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.LayerParameter.hinge_loss_param', index=30, number=114, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.LayerParameter.image_data_param', index=31, number=115, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.LayerParameter.infogain_loss_param', index=32, number=116, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.LayerParameter.inner_product_param', index=33, number=117, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='log_param', full_name='caffe.LayerParameter.log_param', index=34, number=134, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.LayerParameter.lrn_param', index=35, number=118, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.LayerParameter.memory_data_param', index=36, number=119, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.LayerParameter.mvn_param', index=37, number=120, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.LayerParameter.pooling_param', index=38, number=121, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.LayerParameter.power_param', index=39, number=122, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='prelu_param', full_name='caffe.LayerParameter.prelu_param', index=40, number=131, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='python_param', full_name='caffe.LayerParameter.python_param', index=41, number=130, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='reduction_param', full_name='caffe.LayerParameter.reduction_param', index=42, number=136, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='relu_param', full_name='caffe.LayerParameter.relu_param', index=43, number=123, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='reshape_param', full_name='caffe.LayerParameter.reshape_param', index=44, number=133, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale_param', full_name='caffe.LayerParameter.scale_param', index=45, number=142, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.LayerParameter.sigmoid_param', index=46, number=124, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.LayerParameter.softmax_param', index=47, number=125, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='spp_param', full_name='caffe.LayerParameter.spp_param', index=48, number=132, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_param', full_name='caffe.LayerParameter.slice_param', index=49, number=126, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.LayerParameter.tanh_param', index=50, number=127, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.LayerParameter.threshold_param', index=51, number=128, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tile_param', full_name='caffe.LayerParameter.tile_param', index=52, number=138, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.LayerParameter.window_data_param', index=53, number=129, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2778, serialized_end=5146, ) _TRANSFORMATIONPARAMETER = descriptor.Descriptor( name='TransformationParameter', full_name='caffe.TransformationParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='scale', full_name='caffe.TransformationParameter.scale', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.TransformationParameter.mirror', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.TransformationParameter.crop_size', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.TransformationParameter.mean_file', index=3, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_value', full_name='caffe.TransformationParameter.mean_value', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_color', full_name='caffe.TransformationParameter.force_color', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_gray', full_name='caffe.TransformationParameter.force_gray', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5149, serialized_end=5331, ) _LOSSPARAMETER = descriptor.Descriptor( name='LossParameter', full_name='caffe.LossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.LossParameter.ignore_label', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='normalization', full_name='caffe.LossParameter.normalization', index=1, number=3, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='normalize', full_name='caffe.LossParameter.normalize', index=2, number=2, type=8, cpp_type=7, label=1, has_default_value=False, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LOSSPARAMETER_NORMALIZATIONMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5334, serialized_end=5528, ) _ACCURACYPARAMETER = descriptor.Descriptor( name='AccuracyParameter', full_name='caffe.AccuracyParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='top_k', full_name='caffe.AccuracyParameter.top_k', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.AccuracyParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.AccuracyParameter.ignore_label', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5530, serialized_end=5606, ) _ARGMAXPARAMETER = descriptor.Descriptor( name='ArgMaxParameter', full_name='caffe.ArgMaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='out_max_val', full_name='caffe.ArgMaxParameter.out_max_val', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top_k', full_name='caffe.ArgMaxParameter.top_k', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ArgMaxParameter.axis', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5608, serialized_end=5685, ) _CONCATPARAMETER = descriptor.Descriptor( name='ConcatParameter', full_name='caffe.ConcatParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.ConcatParameter.axis', index=0, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.ConcatParameter.concat_dim', index=1, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5687, serialized_end=5744, ) _BATCHNORMPARAMETER = descriptor.Descriptor( name='BatchNormParameter', full_name='caffe.BatchNormParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='use_global_stats', full_name='caffe.BatchNormParameter.use_global_stats', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=False, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='moving_average_fraction', full_name='caffe.BatchNormParameter.moving_average_fraction', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.999, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eps', full_name='caffe.BatchNormParameter.eps', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-05, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5746, serialized_end=5852, ) _BIASPARAMETER = descriptor.Descriptor( name='BiasParameter', full_name='caffe.BiasParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.BiasParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_axes', full_name='caffe.BiasParameter.num_axes', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='filler', full_name='caffe.BiasParameter.filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5854, serialized_end=5947, ) _CONTRASTIVELOSSPARAMETER = descriptor.Descriptor( name='ContrastiveLossParameter', full_name='caffe.ContrastiveLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='margin', full_name='caffe.ContrastiveLossParameter.margin', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='legacy_version', full_name='caffe.ContrastiveLossParameter.legacy_version', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5949, serialized_end=6025, ) _CONVOLUTIONPARAMETER = descriptor.Descriptor( name='ConvolutionParameter', full_name='caffe.ConvolutionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.ConvolutionParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ConvolutionParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.ConvolutionParameter.pad', index=2, number=3, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.ConvolutionParameter.kernel_size', index=3, number=4, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.ConvolutionParameter.stride', index=4, number=6, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dilation', full_name='caffe.ConvolutionParameter.dilation', index=5, number=18, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.ConvolutionParameter.pad_h', index=6, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.ConvolutionParameter.pad_w', index=7, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.ConvolutionParameter.kernel_h', index=8, number=11, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.ConvolutionParameter.kernel_w', index=9, number=12, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.ConvolutionParameter.stride_h', index=10, number=13, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.ConvolutionParameter.stride_w', index=11, number=14, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.ConvolutionParameter.group', index=12, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.ConvolutionParameter.weight_filler', index=13, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ConvolutionParameter.bias_filler', index=14, number=8, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ConvolutionParameter.engine', index=15, number=15, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ConvolutionParameter.axis', index=16, number=16, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_nd_im2col', full_name='caffe.ConvolutionParameter.force_nd_im2col', index=17, number=17, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _CONVOLUTIONPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6028, serialized_end=6536, ) _DATAPARAMETER = descriptor.Descriptor( name='DataParameter', full_name='caffe.DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.DataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.DataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='backend', full_name='caffe.DataParameter.backend', index=3, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.DataParameter.scale', index=4, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.DataParameter.mean_file', index=5, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.DataParameter.crop_size', index=6, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.DataParameter.mirror', index=7, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_encoded_color', full_name='caffe.DataParameter.force_encoded_color', index=8, number=9, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='prefetch', full_name='caffe.DataParameter.prefetch', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=4, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _DATAPARAMETER_DB, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6539, serialized_end=6831, ) _DROPOUTPARAMETER = descriptor.Descriptor( name='DropoutParameter', full_name='caffe.DropoutParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.DropoutParameter.dropout_ratio', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6833, serialized_end=6879, ) _DUMMYDATAPARAMETER = descriptor.Descriptor( name='DummyDataParameter', full_name='caffe.DummyDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='data_filler', full_name='caffe.DummyDataParameter.data_filler', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shape', full_name='caffe.DummyDataParameter.shape', index=1, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num', full_name='caffe.DummyDataParameter.num', index=2, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.DummyDataParameter.channels', index=3, number=3, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.DummyDataParameter.height', index=4, number=4, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.DummyDataParameter.width', index=5, number=5, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6882, serialized_end=7042, ) _ELTWISEPARAMETER = descriptor.Descriptor( name='EltwiseParameter', full_name='caffe.EltwiseParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='operation', full_name='caffe.EltwiseParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='coeff', full_name='caffe.EltwiseParameter.coeff', index=1, number=2, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stable_prod_grad', full_name='caffe.EltwiseParameter.stable_prod_grad', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _ELTWISEPARAMETER_ELTWISEOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7045, serialized_end=7210, ) _ELUPARAMETER = descriptor.Descriptor( name='ELUParameter', full_name='caffe.ELUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='alpha', full_name='caffe.ELUParameter.alpha', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7212, serialized_end=7244, ) _EMBEDPARAMETER = descriptor.Descriptor( name='EmbedParameter', full_name='caffe.EmbedParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.EmbedParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.EmbedParameter.input_dim', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.EmbedParameter.bias_term', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.EmbedParameter.weight_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.EmbedParameter.bias_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7247, serialized_end=7419, ) _EXPPARAMETER = descriptor.Descriptor( name='ExpParameter', full_name='caffe.ExpParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='base', full_name='caffe.ExpParameter.base', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ExpParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.ExpParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7421, serialized_end=7489, ) _FLATTENPARAMETER = descriptor.Descriptor( name='FlattenParameter', full_name='caffe.FlattenParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.FlattenParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='end_axis', full_name='caffe.FlattenParameter.end_axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7491, serialized_end=7548, ) _HDF5DATAPARAMETER = descriptor.Descriptor( name='HDF5DataParameter', full_name='caffe.HDF5DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.HDF5DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.HDF5DataParameter.batch_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.HDF5DataParameter.shuffle', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7550, serialized_end=7629, ) _HDF5OUTPUTPARAMETER = descriptor.Descriptor( name='HDF5OutputParameter', full_name='caffe.HDF5OutputParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='file_name', full_name='caffe.HDF5OutputParameter.file_name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7631, serialized_end=7671, ) _HINGELOSSPARAMETER = descriptor.Descriptor( name='HingeLossParameter', full_name='caffe.HingeLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='norm', full_name='caffe.HingeLossParameter.norm', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _HINGELOSSPARAMETER_NORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7673, serialized_end=7767, ) _IMAGEDATAPARAMETER = descriptor.Descriptor( name='ImageDataParameter', full_name='caffe.ImageDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.ImageDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.ImageDataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.ImageDataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.ImageDataParameter.shuffle', index=3, number=8, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.ImageDataParameter.new_height', index=4, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.ImageDataParameter.new_width', index=5, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='is_color', full_name='caffe.ImageDataParameter.is_color', index=6, number=11, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ImageDataParameter.scale', index=7, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.ImageDataParameter.mean_file', index=8, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.ImageDataParameter.crop_size', index=9, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.ImageDataParameter.mirror', index=10, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='root_folder', full_name='caffe.ImageDataParameter.root_folder', index=11, number=12, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7770, serialized_end=8049, ) _INFOGAINLOSSPARAMETER = descriptor.Descriptor( name='InfogainLossParameter', full_name='caffe.InfogainLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.InfogainLossParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8051, serialized_end=8090, ) _INNERPRODUCTPARAMETER = descriptor.Descriptor( name='InnerProductParameter', full_name='caffe.InnerProductParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.InnerProductParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.InnerProductParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.InnerProductParameter.weight_filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.InnerProductParameter.bias_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.InnerProductParameter.axis', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8093, serialized_end=8270, ) _LOGPARAMETER = descriptor.Descriptor( name='LogParameter', full_name='caffe.LogParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='base', full_name='caffe.LogParameter.base', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.LogParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.LogParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8272, serialized_end=8340, ) _LRNPARAMETER = descriptor.Descriptor( name='LRNParameter', full_name='caffe.LRNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='local_size', full_name='caffe.LRNParameter.local_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LRNParameter.alpha', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LRNParameter.beta', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='norm_region', full_name='caffe.LRNParameter.norm_region', index=3, number=4, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='k', full_name='caffe.LRNParameter.k', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.LRNParameter.engine', index=5, number=6, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LRNPARAMETER_NORMREGION, _LRNPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8343, serialized_end=8655, ) _MEMORYDATAPARAMETER = descriptor.Descriptor( name='MemoryDataParameter', full_name='caffe.MemoryDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='batch_size', full_name='caffe.MemoryDataParameter.batch_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.MemoryDataParameter.channels', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.MemoryDataParameter.height', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.MemoryDataParameter.width', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8657, serialized_end=8747, ) _MVNPARAMETER = descriptor.Descriptor( name='MVNParameter', full_name='caffe.MVNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='normalize_variance', full_name='caffe.MVNParameter.normalize_variance', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='across_channels', full_name='caffe.MVNParameter.across_channels', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eps', full_name='caffe.MVNParameter.eps', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-09, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8749, serialized_end=8849, ) _POOLINGPARAMETER = descriptor.Descriptor( name='PoolingParameter', full_name='caffe.PoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pool', full_name='caffe.PoolingParameter.pool', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.PoolingParameter.pad', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.PoolingParameter.pad_h', index=2, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.PoolingParameter.pad_w', index=3, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.PoolingParameter.kernel_size', index=4, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.PoolingParameter.kernel_h', index=5, number=5, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.PoolingParameter.kernel_w', index=6, number=6, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.PoolingParameter.stride', index=7, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.PoolingParameter.stride_h', index=8, number=7, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.PoolingParameter.stride_w', index=9, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.PoolingParameter.engine', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='global_pooling', full_name='caffe.PoolingParameter.global_pooling', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _POOLINGPARAMETER_POOLMETHOD, _POOLINGPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8852, serialized_end=9270, ) _POWERPARAMETER = descriptor.Descriptor( name='PowerParameter', full_name='caffe.PowerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='power', full_name='caffe.PowerParameter.power', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.PowerParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.PowerParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9272, serialized_end=9342, ) _PYTHONPARAMETER = descriptor.Descriptor( name='PythonParameter', full_name='caffe.PythonParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='module', full_name='caffe.PythonParameter.module', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.PythonParameter.layer', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param_str', full_name='caffe.PythonParameter.param_str', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='share_in_parallel', full_name='caffe.PythonParameter.share_in_parallel', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9344, serialized_end=9447, ) _REDUCTIONPARAMETER = descriptor.Descriptor( name='ReductionParameter', full_name='caffe.ReductionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='operation', full_name='caffe.ReductionParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ReductionParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='coeff', full_name='caffe.ReductionParameter.coeff', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _REDUCTIONPARAMETER_REDUCTIONOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9450, serialized_end=9623, ) _RELUPARAMETER = descriptor.Descriptor( name='ReLUParameter', full_name='caffe.ReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='negative_slope', full_name='caffe.ReLUParameter.negative_slope', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ReLUParameter.engine', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _RELUPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9626, serialized_end=9767, ) _RESHAPEPARAMETER = descriptor.Descriptor( name='ReshapeParameter', full_name='caffe.ReshapeParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='shape', full_name='caffe.ReshapeParameter.shape', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ReshapeParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_axes', full_name='caffe.ReshapeParameter.num_axes', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9769, serialized_end=9859, ) _SCALEPARAMETER = descriptor.Descriptor( name='ScaleParameter', full_name='caffe.ScaleParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.ScaleParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_axes', full_name='caffe.ScaleParameter.num_axes', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='filler', full_name='caffe.ScaleParameter.filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ScaleParameter.bias_term', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ScaleParameter.bias_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9862, serialized_end=10027, ) _SIGMOIDPARAMETER = descriptor.Descriptor( name='SigmoidParameter', full_name='caffe.SigmoidParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SigmoidParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SIGMOIDPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10029, serialized_end=10149, ) _SLICEPARAMETER = descriptor.Descriptor( name='SliceParameter', full_name='caffe.SliceParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.SliceParameter.axis', index=0, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_point', full_name='caffe.SliceParameter.slice_point', index=1, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_dim', full_name='caffe.SliceParameter.slice_dim', index=2, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10151, serialized_end=10227, ) _SOFTMAXPARAMETER = descriptor.Descriptor( name='SoftmaxParameter', full_name='caffe.SoftmaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SoftmaxParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.SoftmaxParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOFTMAXPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10230, serialized_end=10367, ) _TANHPARAMETER = descriptor.Descriptor( name='TanHParameter', full_name='caffe.TanHParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.TanHParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _TANHPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10369, serialized_end=10483, ) _TILEPARAMETER = descriptor.Descriptor( name='TileParameter', full_name='caffe.TileParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.TileParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tiles', full_name='caffe.TileParameter.tiles', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10485, serialized_end=10532, ) _THRESHOLDPARAMETER = descriptor.Descriptor( name='ThresholdParameter', full_name='caffe.ThresholdParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='threshold', full_name='caffe.ThresholdParameter.threshold', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10534, serialized_end=10576, ) _WINDOWDATAPARAMETER = descriptor.Descriptor( name='WindowDataParameter', full_name='caffe.WindowDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.WindowDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.WindowDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.WindowDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.WindowDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.WindowDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.WindowDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_threshold', full_name='caffe.WindowDataParameter.fg_threshold', index=6, number=7, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bg_threshold', full_name='caffe.WindowDataParameter.bg_threshold', index=7, number=8, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_fraction', full_name='caffe.WindowDataParameter.fg_fraction', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='context_pad', full_name='caffe.WindowDataParameter.context_pad', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_mode', full_name='caffe.WindowDataParameter.crop_mode', index=10, number=11, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cache_images', full_name='caffe.WindowDataParameter.cache_images', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='root_folder', full_name='caffe.WindowDataParameter.root_folder', index=12, number=13, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10579, serialized_end=10900, ) _SPPPARAMETER = descriptor.Descriptor( name='SPPParameter', full_name='caffe.SPPParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pyramid_height', full_name='caffe.SPPParameter.pyramid_height', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.SPPParameter.pool', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.SPPParameter.engine', index=2, number=6, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SPPPARAMETER_POOLMETHOD, _SPPPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10903, serialized_end=11138, ) _V1LAYERPARAMETER = descriptor.Descriptor( name='V1LayerParameter', full_name='caffe.V1LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='bottom', full_name='caffe.V1LayerParameter.bottom', index=0, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.V1LayerParameter.top', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='name', full_name='caffe.V1LayerParameter.name', index=2, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='include', full_name='caffe.V1LayerParameter.include', index=3, number=32, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exclude', full_name='caffe.V1LayerParameter.exclude', index=4, number=33, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V1LayerParameter.type', index=5, number=5, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V1LayerParameter.blobs', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param', full_name='caffe.V1LayerParameter.param', index=7, number=1001, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blob_share_mode', full_name='caffe.V1LayerParameter.blob_share_mode', index=8, number=1002, type=14, cpp_type=8, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V1LayerParameter.blobs_lr', index=9, number=7, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V1LayerParameter.weight_decay', index=10, number=8, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.V1LayerParameter.loss_weight', index=11, number=35, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.V1LayerParameter.accuracy_param', index=12, number=27, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.V1LayerParameter.argmax_param', index=13, number=23, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.V1LayerParameter.concat_param', index=14, number=9, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.V1LayerParameter.contrastive_loss_param', index=15, number=40, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.V1LayerParameter.convolution_param', index=16, number=10, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.V1LayerParameter.data_param', index=17, number=11, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.V1LayerParameter.dropout_param', index=18, number=12, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.V1LayerParameter.dummy_data_param', index=19, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.V1LayerParameter.eltwise_param', index=20, number=24, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exp_param', full_name='caffe.V1LayerParameter.exp_param', index=21, number=41, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.V1LayerParameter.hdf5_data_param', index=22, number=13, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V1LayerParameter.hdf5_output_param', index=23, number=14, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.V1LayerParameter.hinge_loss_param', index=24, number=29, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.V1LayerParameter.image_data_param', index=25, number=15, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.V1LayerParameter.infogain_loss_param', index=26, number=16, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.V1LayerParameter.inner_product_param', index=27, number=17, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.V1LayerParameter.lrn_param', index=28, number=18, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.V1LayerParameter.memory_data_param', index=29, number=22, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.V1LayerParameter.mvn_param', index=30, number=34, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.V1LayerParameter.pooling_param', index=31, number=19, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.V1LayerParameter.power_param', index=32, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='relu_param', full_name='caffe.V1LayerParameter.relu_param', index=33, number=30, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.V1LayerParameter.sigmoid_param', index=34, number=38, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.V1LayerParameter.softmax_param', index=35, number=39, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_param', full_name='caffe.V1LayerParameter.slice_param', index=36, number=31, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.V1LayerParameter.tanh_param', index=37, number=37, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.V1LayerParameter.threshold_param', index=38, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.V1LayerParameter.window_data_param', index=39, number=20, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='transform_param', full_name='caffe.V1LayerParameter.transform_param', index=40, number=36, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_param', full_name='caffe.V1LayerParameter.loss_param', index=41, number=42, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.V1LayerParameter.layer', index=42, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V1LAYERPARAMETER_LAYERTYPE, _V1LAYERPARAMETER_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=11141, serialized_end=13669, ) _V0LAYERPARAMETER = descriptor.Descriptor( name='V0LayerParameter', full_name='caffe.V0LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.V0LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V0LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.V0LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.V0LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.V0LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.V0LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.V0LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.V0LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.V0LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.V0LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.V0LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.V0LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.V0LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.V0LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.V0LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='k', full_name='caffe.V0LayerParameter.k', index=15, number=22, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.V0LayerParameter.source', index=16, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.V0LayerParameter.scale', index=17, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.V0LayerParameter.meanfile', index=18, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.V0LayerParameter.batchsize', index=19, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.V0LayerParameter.cropsize', index=20, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.V0LayerParameter.mirror', index=21, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V0LayerParameter.blobs', index=22, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V0LayerParameter.blobs_lr', index=23, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V0LayerParameter.weight_decay', index=24, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.V0LayerParameter.rand_skip', index=25, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.V0LayerParameter.det_fg_threshold', index=26, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.V0LayerParameter.det_bg_threshold', index=27, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.V0LayerParameter.det_fg_fraction', index=28, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.V0LayerParameter.det_context_pad', index=29, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.V0LayerParameter.det_crop_mode', index=30, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_num', full_name='caffe.V0LayerParameter.new_num', index=31, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_channels', full_name='caffe.V0LayerParameter.new_channels', index=32, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.V0LayerParameter.new_height', index=33, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.V0LayerParameter.new_width', index=34, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.V0LayerParameter.shuffle_images', index=35, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.V0LayerParameter.concat_dim', index=36, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V0LayerParameter.hdf5_output_param', index=37, number=1001, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V0LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=13672, serialized_end=14693, ) _PRELUPARAMETER = descriptor.Descriptor( name='PReLUParameter', full_name='caffe.PReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='filler', full_name='caffe.PReLUParameter.filler', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channel_shared', full_name='caffe.PReLUParameter.channel_shared', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=14695, serialized_end=14782, ) _BLOBPROTO.fields_by_name['shape'].message_type = _BLOBSHAPE _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _FILLERPARAMETER.fields_by_name['variance_norm'].enum_type = _FILLERPARAMETER_VARIANCENORM _FILLERPARAMETER_VARIANCENORM.containing_type = _FILLERPARAMETER; _NETPARAMETER.fields_by_name['input_shape'].message_type = _BLOBSHAPE _NETPARAMETER.fields_by_name['state'].message_type = _NETSTATE _NETPARAMETER.fields_by_name['layer'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['layers'].message_type = _V1LAYERPARAMETER _SOLVERPARAMETER.fields_by_name['net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['test_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['test_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['snapshot_format'].enum_type = _SOLVERPARAMETER_SNAPSHOTFORMAT _SOLVERPARAMETER.fields_by_name['solver_mode'].enum_type = _SOLVERPARAMETER_SOLVERMODE _SOLVERPARAMETER.fields_by_name['solver_type'].enum_type = _SOLVERPARAMETER_SOLVERTYPE _SOLVERPARAMETER_SNAPSHOTFORMAT.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERMODE.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERTYPE.containing_type = _SOLVERPARAMETER; _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _NETSTATE.fields_by_name['phase'].enum_type = _PHASE _NETSTATERULE.fields_by_name['phase'].enum_type = _PHASE _PARAMSPEC.fields_by_name['share_mode'].enum_type = _PARAMSPEC_DIMCHECKMODE _PARAMSPEC_DIMCHECKMODE.containing_type = _PARAMSPEC; _LAYERPARAMETER.fields_by_name['phase'].enum_type = _PHASE _LAYERPARAMETER.fields_by_name['param'].message_type = _PARAMSPEC _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _LAYERPARAMETER.fields_by_name['batch_norm_param'].message_type = _BATCHNORMPARAMETER _LAYERPARAMETER.fields_by_name['bias_param'].message_type = _BIASPARAMETER _LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _LAYERPARAMETER.fields_by_name['elu_param'].message_type = _ELUPARAMETER _LAYERPARAMETER.fields_by_name['embed_param'].message_type = _EMBEDPARAMETER _LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _LAYERPARAMETER.fields_by_name['flatten_param'].message_type = _FLATTENPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _LAYERPARAMETER.fields_by_name['log_param'].message_type = _LOGPARAMETER _LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _LAYERPARAMETER.fields_by_name['prelu_param'].message_type = _PRELUPARAMETER _LAYERPARAMETER.fields_by_name['python_param'].message_type = _PYTHONPARAMETER _LAYERPARAMETER.fields_by_name['reduction_param'].message_type = _REDUCTIONPARAMETER _LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _LAYERPARAMETER.fields_by_name['reshape_param'].message_type = _RESHAPEPARAMETER _LAYERPARAMETER.fields_by_name['scale_param'].message_type = _SCALEPARAMETER _LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _LAYERPARAMETER.fields_by_name['spp_param'].message_type = _SPPPARAMETER _LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _LAYERPARAMETER.fields_by_name['tile_param'].message_type = _TILEPARAMETER _LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _LOSSPARAMETER.fields_by_name['normalization'].enum_type = _LOSSPARAMETER_NORMALIZATIONMODE _LOSSPARAMETER_NORMALIZATIONMODE.containing_type = _LOSSPARAMETER; _BIASPARAMETER.fields_by_name['filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['engine'].enum_type = _CONVOLUTIONPARAMETER_ENGINE _CONVOLUTIONPARAMETER_ENGINE.containing_type = _CONVOLUTIONPARAMETER; _DATAPARAMETER.fields_by_name['backend'].enum_type = _DATAPARAMETER_DB _DATAPARAMETER_DB.containing_type = _DATAPARAMETER; _DUMMYDATAPARAMETER.fields_by_name['data_filler'].message_type = _FILLERPARAMETER _DUMMYDATAPARAMETER.fields_by_name['shape'].message_type = _BLOBSHAPE _ELTWISEPARAMETER.fields_by_name['operation'].enum_type = _ELTWISEPARAMETER_ELTWISEOP _ELTWISEPARAMETER_ELTWISEOP.containing_type = _ELTWISEPARAMETER; _EMBEDPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _EMBEDPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _HINGELOSSPARAMETER.fields_by_name['norm'].enum_type = _HINGELOSSPARAMETER_NORM _HINGELOSSPARAMETER_NORM.containing_type = _HINGELOSSPARAMETER; _INNERPRODUCTPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LRNPARAMETER.fields_by_name['norm_region'].enum_type = _LRNPARAMETER_NORMREGION _LRNPARAMETER.fields_by_name['engine'].enum_type = _LRNPARAMETER_ENGINE _LRNPARAMETER_NORMREGION.containing_type = _LRNPARAMETER; _LRNPARAMETER_ENGINE.containing_type = _LRNPARAMETER; _POOLINGPARAMETER.fields_by_name['pool'].enum_type = _POOLINGPARAMETER_POOLMETHOD _POOLINGPARAMETER.fields_by_name['engine'].enum_type = _POOLINGPARAMETER_ENGINE _POOLINGPARAMETER_POOLMETHOD.containing_type = _POOLINGPARAMETER; _POOLINGPARAMETER_ENGINE.containing_type = _POOLINGPARAMETER; _REDUCTIONPARAMETER.fields_by_name['operation'].enum_type = _REDUCTIONPARAMETER_REDUCTIONOP _REDUCTIONPARAMETER_REDUCTIONOP.containing_type = _REDUCTIONPARAMETER; _RELUPARAMETER.fields_by_name['engine'].enum_type = _RELUPARAMETER_ENGINE _RELUPARAMETER_ENGINE.containing_type = _RELUPARAMETER; _RESHAPEPARAMETER.fields_by_name['shape'].message_type = _BLOBSHAPE _SCALEPARAMETER.fields_by_name['filler'].message_type = _FILLERPARAMETER _SCALEPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _SIGMOIDPARAMETER.fields_by_name['engine'].enum_type = _SIGMOIDPARAMETER_ENGINE _SIGMOIDPARAMETER_ENGINE.containing_type = _SIGMOIDPARAMETER; _SOFTMAXPARAMETER.fields_by_name['engine'].enum_type = _SOFTMAXPARAMETER_ENGINE _SOFTMAXPARAMETER_ENGINE.containing_type = _SOFTMAXPARAMETER; _TANHPARAMETER.fields_by_name['engine'].enum_type = _TANHPARAMETER_ENGINE _TANHPARAMETER_ENGINE.containing_type = _TANHPARAMETER; _SPPPARAMETER.fields_by_name['pool'].enum_type = _SPPPARAMETER_POOLMETHOD _SPPPARAMETER.fields_by_name['engine'].enum_type = _SPPPARAMETER_ENGINE _SPPPARAMETER_POOLMETHOD.containing_type = _SPPPARAMETER; _SPPPARAMETER_ENGINE.containing_type = _SPPPARAMETER; _V1LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['type'].enum_type = _V1LAYERPARAMETER_LAYERTYPE _V1LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V1LAYERPARAMETER.fields_by_name['blob_share_mode'].enum_type = _V1LAYERPARAMETER_DIMCHECKMODE _V1LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _V1LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _V1LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _V1LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _V1LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _V1LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V1LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _V1LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _V1LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _V1LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _V1LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _V1LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _V1LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _V1LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _V1LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _V1LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _V1LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _V1LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['layer'].message_type = _V0LAYERPARAMETER _V1LAYERPARAMETER_LAYERTYPE.containing_type = _V1LAYERPARAMETER; _V1LAYERPARAMETER_DIMCHECKMODE.containing_type = _V1LAYERPARAMETER; _V0LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['pool'].enum_type = _V0LAYERPARAMETER_POOLMETHOD _V0LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V0LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V0LAYERPARAMETER_POOLMETHOD.containing_type = _V0LAYERPARAMETER; _PRELUPARAMETER.fields_by_name['filler'].message_type = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['BlobShape'] = _BLOBSHAPE DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE DESCRIPTOR.message_types_by_name['NetState'] = _NETSTATE DESCRIPTOR.message_types_by_name['NetStateRule'] = _NETSTATERULE DESCRIPTOR.message_types_by_name['ParamSpec'] = _PARAMSPEC DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['TransformationParameter'] = _TRANSFORMATIONPARAMETER DESCRIPTOR.message_types_by_name['LossParameter'] = _LOSSPARAMETER DESCRIPTOR.message_types_by_name['AccuracyParameter'] = _ACCURACYPARAMETER DESCRIPTOR.message_types_by_name['ArgMaxParameter'] = _ARGMAXPARAMETER DESCRIPTOR.message_types_by_name['ConcatParameter'] = _CONCATPARAMETER DESCRIPTOR.message_types_by_name['BatchNormParameter'] = _BATCHNORMPARAMETER DESCRIPTOR.message_types_by_name['BiasParameter'] = _BIASPARAMETER DESCRIPTOR.message_types_by_name['ContrastiveLossParameter'] = _CONTRASTIVELOSSPARAMETER DESCRIPTOR.message_types_by_name['ConvolutionParameter'] = _CONVOLUTIONPARAMETER DESCRIPTOR.message_types_by_name['DataParameter'] = _DATAPARAMETER DESCRIPTOR.message_types_by_name['DropoutParameter'] = _DROPOUTPARAMETER DESCRIPTOR.message_types_by_name['DummyDataParameter'] = _DUMMYDATAPARAMETER DESCRIPTOR.message_types_by_name['EltwiseParameter'] = _ELTWISEPARAMETER DESCRIPTOR.message_types_by_name['ELUParameter'] = _ELUPARAMETER DESCRIPTOR.message_types_by_name['EmbedParameter'] = _EMBEDPARAMETER DESCRIPTOR.message_types_by_name['ExpParameter'] = _EXPPARAMETER DESCRIPTOR.message_types_by_name['FlattenParameter'] = _FLATTENPARAMETER DESCRIPTOR.message_types_by_name['HDF5DataParameter'] = _HDF5DATAPARAMETER DESCRIPTOR.message_types_by_name['HDF5OutputParameter'] = _HDF5OUTPUTPARAMETER DESCRIPTOR.message_types_by_name['HingeLossParameter'] = _HINGELOSSPARAMETER DESCRIPTOR.message_types_by_name['ImageDataParameter'] = _IMAGEDATAPARAMETER DESCRIPTOR.message_types_by_name['InfogainLossParameter'] = _INFOGAINLOSSPARAMETER DESCRIPTOR.message_types_by_name['InnerProductParameter'] = _INNERPRODUCTPARAMETER DESCRIPTOR.message_types_by_name['LogParameter'] = _LOGPARAMETER DESCRIPTOR.message_types_by_name['LRNParameter'] = _LRNPARAMETER DESCRIPTOR.message_types_by_name['MemoryDataParameter'] = _MEMORYDATAPARAMETER DESCRIPTOR.message_types_by_name['MVNParameter'] = _MVNPARAMETER DESCRIPTOR.message_types_by_name['PoolingParameter'] = _POOLINGPARAMETER DESCRIPTOR.message_types_by_name['PowerParameter'] = _POWERPARAMETER DESCRIPTOR.message_types_by_name['PythonParameter'] = _PYTHONPARAMETER DESCRIPTOR.message_types_by_name['ReductionParameter'] = _REDUCTIONPARAMETER DESCRIPTOR.message_types_by_name['ReLUParameter'] = _RELUPARAMETER DESCRIPTOR.message_types_by_name['ReshapeParameter'] = _RESHAPEPARAMETER DESCRIPTOR.message_types_by_name['ScaleParameter'] = _SCALEPARAMETER DESCRIPTOR.message_types_by_name['SigmoidParameter'] = _SIGMOIDPARAMETER DESCRIPTOR.message_types_by_name['SliceParameter'] = _SLICEPARAMETER DESCRIPTOR.message_types_by_name['SoftmaxParameter'] = _SOFTMAXPARAMETER DESCRIPTOR.message_types_by_name['TanHParameter'] = _TANHPARAMETER DESCRIPTOR.message_types_by_name['TileParameter'] = _TILEPARAMETER DESCRIPTOR.message_types_by_name['ThresholdParameter'] = _THRESHOLDPARAMETER DESCRIPTOR.message_types_by_name['WindowDataParameter'] = _WINDOWDATAPARAMETER DESCRIPTOR.message_types_by_name['SPPParameter'] = _SPPPARAMETER DESCRIPTOR.message_types_by_name['V1LayerParameter'] = _V1LAYERPARAMETER DESCRIPTOR.message_types_by_name['V0LayerParameter'] = _V0LAYERPARAMETER DESCRIPTOR.message_types_by_name['PReLUParameter'] = _PRELUPARAMETER class BlobShape(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBSHAPE # @@protoc_insertion_point(class_scope:caffe.BlobShape) class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) class NetState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATE # @@protoc_insertion_point(class_scope:caffe.NetState) class NetStateRule(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATERULE # @@protoc_insertion_point(class_scope:caffe.NetStateRule) class ParamSpec(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PARAMSPEC # @@protoc_insertion_point(class_scope:caffe.ParamSpec) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class TransformationParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TRANSFORMATIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.TransformationParameter) class LossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.LossParameter) class AccuracyParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ACCURACYPARAMETER # @@protoc_insertion_point(class_scope:caffe.AccuracyParameter) class ArgMaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ARGMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.ArgMaxParameter) class ConcatParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONCATPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConcatParameter) class BatchNormParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BATCHNORMPARAMETER # @@protoc_insertion_point(class_scope:caffe.BatchNormParameter) class BiasParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BIASPARAMETER # @@protoc_insertion_point(class_scope:caffe.BiasParameter) class ContrastiveLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONTRASTIVELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.ContrastiveLossParameter) class ConvolutionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONVOLUTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConvolutionParameter) class DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DataParameter) class DropoutParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DROPOUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.DropoutParameter) class DummyDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DUMMYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DummyDataParameter) class EltwiseParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ELTWISEPARAMETER # @@protoc_insertion_point(class_scope:caffe.EltwiseParameter) class ELUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.ELUParameter) class EmbedParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EMBEDPARAMETER # @@protoc_insertion_point(class_scope:caffe.EmbedParameter) class ExpParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EXPPARAMETER # @@protoc_insertion_point(class_scope:caffe.ExpParameter) class FlattenParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FLATTENPARAMETER # @@protoc_insertion_point(class_scope:caffe.FlattenParameter) class HDF5DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5DataParameter) class HDF5OutputParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5OUTPUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5OutputParameter) class HingeLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HINGELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.HingeLossParameter) class ImageDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _IMAGEDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.ImageDataParameter) class InfogainLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INFOGAINLOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.InfogainLossParameter) class InnerProductParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INNERPRODUCTPARAMETER # @@protoc_insertion_point(class_scope:caffe.InnerProductParameter) class LogParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LOGPARAMETER # @@protoc_insertion_point(class_scope:caffe.LogParameter) class LRNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LRNPARAMETER # @@protoc_insertion_point(class_scope:caffe.LRNParameter) class MemoryDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MEMORYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.MemoryDataParameter) class MVNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MVNPARAMETER # @@protoc_insertion_point(class_scope:caffe.MVNParameter) class PoolingParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.PoolingParameter) class PowerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POWERPARAMETER # @@protoc_insertion_point(class_scope:caffe.PowerParameter) class PythonParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PYTHONPARAMETER # @@protoc_insertion_point(class_scope:caffe.PythonParameter) class ReductionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _REDUCTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReductionParameter) class ReLUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _RELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReLUParameter) class ReshapeParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _RESHAPEPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReshapeParameter) class ScaleParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SCALEPARAMETER # @@protoc_insertion_point(class_scope:caffe.ScaleParameter) class SigmoidParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SIGMOIDPARAMETER # @@protoc_insertion_point(class_scope:caffe.SigmoidParameter) class SliceParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SLICEPARAMETER # @@protoc_insertion_point(class_scope:caffe.SliceParameter) class SoftmaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOFTMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.SoftmaxParameter) class TanHParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TANHPARAMETER # @@protoc_insertion_point(class_scope:caffe.TanHParameter) class TileParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TILEPARAMETER # @@protoc_insertion_point(class_scope:caffe.TileParameter) class ThresholdParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _THRESHOLDPARAMETER # @@protoc_insertion_point(class_scope:caffe.ThresholdParameter) class WindowDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _WINDOWDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.WindowDataParameter) class SPPParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SPPPARAMETER # @@protoc_insertion_point(class_scope:caffe.SPPParameter) class V1LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V1LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V1LayerParameter) class V0LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V0LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V0LayerParameter) class PReLUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PRELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.PReLUParameter) # @@protoc_insertion_point(module_scope)
232,112
42.264306
27,801
py
DRT
DRT-master/external_libs/matconvnet/matconvnet/utils/proto/__init__.py
0
0
0
py
DRT
DRT-master/external_libs/matconvnet/matconvnet/utils/proto/caffe_pb2.py
# Generated by the protocol buffer compiler. DO NOT EDIT! from google.protobuf import descriptor from google.protobuf import message from google.protobuf import reflection from google.protobuf import descriptor_pb2 # @@protoc_insertion_point(imports) DESCRIPTOR = descriptor.FileDescriptor( name='caffe.proto', package='caffe', serialized_pb='\n\x0b\x63\x61\x66\x66\x65.proto\x12\x05\x63\x61\x66\x66\x65\"y\n\tBlobProto\x12\x0e\n\x03num\x18\x01 \x01(\x05:\x01\x30\x12\x13\n\x08\x63hannels\x18\x02 \x01(\x05:\x01\x30\x12\x11\n\x06height\x18\x03 \x01(\x05:\x01\x30\x12\x10\n\x05width\x18\x04 \x01(\x05:\x01\x30\x12\x10\n\x04\x64\x61ta\x18\x05 \x03(\x02\x42\x02\x10\x01\x12\x10\n\x04\x64iff\x18\x06 \x03(\x02\x42\x02\x10\x01\"2\n\x0f\x42lobProtoVector\x12\x1f\n\x05\x62lobs\x18\x01 \x03(\x0b\x32\x10.caffe.BlobProto\"i\n\x05\x44\x61tum\x12\x10\n\x08\x63hannels\x18\x01 \x01(\x05\x12\x0e\n\x06height\x18\x02 \x01(\x05\x12\r\n\x05width\x18\x03 \x01(\x05\x12\x0c\n\x04\x64\x61ta\x18\x04 \x01(\x0c\x12\r\n\x05label\x18\x05 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type=None), ], containing_type=None, options=None, serialized_start=1068, serialized_end=1098, ) _LAYERPARAMETER_LAYERTYPE = descriptor.EnumDescriptor( name='LayerType', full_name='caffe.LayerParameter.LayerType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='NONE', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='ACCURACY', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='BNLL', index=2, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='CONCAT', index=3, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='CONVOLUTION', index=4, number=4, options=None, type=None), descriptor.EnumValueDescriptor( name='DATA', index=5, number=5, options=None, type=None), descriptor.EnumValueDescriptor( name='DROPOUT', index=6, number=6, options=None, type=None), descriptor.EnumValueDescriptor( name='EUCLIDEAN_LOSS', index=7, number=7, options=None, type=None), descriptor.EnumValueDescriptor( name='ELTWISE_PRODUCT', index=8, number=25, options=None, type=None), descriptor.EnumValueDescriptor( name='FLATTEN', index=9, number=8, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_DATA', index=10, number=9, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_OUTPUT', index=11, number=10, options=None, type=None), descriptor.EnumValueDescriptor( name='HINGE_LOSS', index=12, number=28, options=None, type=None), descriptor.EnumValueDescriptor( name='IM2COL', index=13, number=11, options=None, type=None), descriptor.EnumValueDescriptor( name='IMAGE_DATA', index=14, number=12, options=None, type=None), descriptor.EnumValueDescriptor( name='INFOGAIN_LOSS', index=15, number=13, options=None, type=None), descriptor.EnumValueDescriptor( name='INNER_PRODUCT', index=16, number=14, options=None, type=None), descriptor.EnumValueDescriptor( name='LRN', index=17, number=15, options=None, type=None), descriptor.EnumValueDescriptor( name='MEMORY_DATA', index=18, number=29, options=None, type=None), descriptor.EnumValueDescriptor( name='MULTINOMIAL_LOGISTIC_LOSS', index=19, number=16, options=None, type=None), descriptor.EnumValueDescriptor( name='POOLING', index=20, number=17, options=None, type=None), descriptor.EnumValueDescriptor( name='POWER', index=21, number=26, options=None, type=None), descriptor.EnumValueDescriptor( name='RELU', index=22, number=18, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID', index=23, number=19, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID_CROSS_ENTROPY_LOSS', index=24, number=27, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX', index=25, number=20, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX_LOSS', index=26, number=21, options=None, type=None), descriptor.EnumValueDescriptor( name='SPLIT', index=27, number=22, options=None, type=None), descriptor.EnumValueDescriptor( name='TANH', index=28, number=23, options=None, type=None), descriptor.EnumValueDescriptor( name='WINDOW_DATA', index=29, number=24, options=None, type=None), ], containing_type=None, options=None, serialized_start=2119, serialized_end=2589, ) _LRNPARAMETER_NORMREGION = descriptor.EnumDescriptor( name='NormRegion', full_name='caffe.LRNParameter.NormRegion', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='ACROSS_CHANNELS', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='WITHIN_CHANNEL', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=3758, serialized_end=3811, ) _POOLINGPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.PoolingParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=4037, serialized_end=4083, ) _V0LAYERPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.V0LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=4037, serialized_end=4083, ) _BLOBPROTO = descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=22, serialized_end=143, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=145, serialized_end=195, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=197, serialized_end=302, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sparse', full_name='caffe.FillerParameter.sparse', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=305, serialized_end=449, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=1, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=452, serialized_end=584, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_compute_loss', full_name='caffe.SolverParameter.test_compute_loss', index=4, number=19, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=5, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=6, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=7, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=8, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=9, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=10, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=11, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=12, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=13, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=14, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=15, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=16, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=17, number=17, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=18, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='random_seed', full_name='caffe.SolverParameter.random_seed', index=19, number=20, type=3, cpp_type=2, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOLVERPARAMETER_SOLVERMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=587, serialized_end=1098, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1100, serialized_end=1183, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerParameter.bottom', index=0, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerParameter.top', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=2, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=3, number=5, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=4, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.LayerParameter.blobs_lr', index=5, number=7, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.LayerParameter.weight_decay', index=6, number=8, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.LayerParameter.concat_param', index=7, number=9, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.LayerParameter.convolution_param', index=8, number=10, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.LayerParameter.data_param', index=9, number=11, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.LayerParameter.dropout_param', index=10, number=12, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.LayerParameter.hdf5_data_param', index=11, number=13, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.LayerParameter.hdf5_output_param', index=12, number=14, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.LayerParameter.image_data_param', index=13, number=15, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.LayerParameter.infogain_loss_param', index=14, number=16, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.LayerParameter.inner_product_param', index=15, number=17, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.LayerParameter.lrn_param', index=16, number=18, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.LayerParameter.memory_data_param', index=17, number=22, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.LayerParameter.pooling_param', index=18, number=19, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.LayerParameter.power_param', index=19, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.LayerParameter.window_data_param', index=20, number=20, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.LayerParameter.layer', index=21, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LAYERPARAMETER_LAYERTYPE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1186, serialized_end=2589, ) _CONCATPARAMETER = descriptor.Descriptor( name='ConcatParameter', full_name='caffe.ConcatParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.ConcatParameter.concat_dim', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2591, serialized_end=2631, ) _CONVOLUTIONPARAMETER = descriptor.Descriptor( name='ConvolutionParameter', full_name='caffe.ConvolutionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.ConvolutionParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ConvolutionParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.ConvolutionParameter.pad', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.ConvolutionParameter.kernel_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.ConvolutionParameter.group', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.ConvolutionParameter.stride', index=5, number=6, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.ConvolutionParameter.weight_filler', index=6, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ConvolutionParameter.bias_filler', index=7, number=8, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2634, serialized_end=2867, ) _DATAPARAMETER = descriptor.Descriptor( name='DataParameter', full_name='caffe.DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.DataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.DataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.DataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.DataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.DataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.DataParameter.rand_skip', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2870, serialized_end=3025, ) _DROPOUTPARAMETER = descriptor.Descriptor( name='DropoutParameter', full_name='caffe.DropoutParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.DropoutParameter.dropout_ratio', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3027, serialized_end=3073, ) _HDF5DATAPARAMETER = descriptor.Descriptor( name='HDF5DataParameter', full_name='caffe.HDF5DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.HDF5DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.HDF5DataParameter.batch_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3075, serialized_end=3130, ) _HDF5OUTPUTPARAMETER = descriptor.Descriptor( name='HDF5OutputParameter', full_name='caffe.HDF5OutputParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='file_name', full_name='caffe.HDF5OutputParameter.file_name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3132, serialized_end=3172, ) _IMAGEDATAPARAMETER = descriptor.Descriptor( name='ImageDataParameter', full_name='caffe.ImageDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.ImageDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ImageDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.ImageDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.ImageDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.ImageDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.ImageDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.ImageDataParameter.rand_skip', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.ImageDataParameter.shuffle', index=7, number=8, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.ImageDataParameter.new_height', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.ImageDataParameter.new_width', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3175, serialized_end=3404, ) _INFOGAINLOSSPARAMETER = descriptor.Descriptor( name='InfogainLossParameter', full_name='caffe.InfogainLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.InfogainLossParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3406, serialized_end=3445, ) _INNERPRODUCTPARAMETER = descriptor.Descriptor( name='InnerProductParameter', full_name='caffe.InnerProductParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.InnerProductParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.InnerProductParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.InnerProductParameter.weight_filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.InnerProductParameter.bias_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3448, serialized_end=3608, ) _LRNPARAMETER = descriptor.Descriptor( name='LRNParameter', full_name='caffe.LRNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='local_size', full_name='caffe.LRNParameter.local_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LRNParameter.alpha', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LRNParameter.beta', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='norm_region', full_name='caffe.LRNParameter.norm_region', index=3, number=4, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LRNPARAMETER_NORMREGION, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3611, serialized_end=3811, ) _MEMORYDATAPARAMETER = descriptor.Descriptor( name='MemoryDataParameter', full_name='caffe.MemoryDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='batch_size', full_name='caffe.MemoryDataParameter.batch_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.MemoryDataParameter.channels', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.MemoryDataParameter.height', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.MemoryDataParameter.width', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3813, serialized_end=3903, ) _POOLINGPARAMETER = descriptor.Descriptor( name='PoolingParameter', full_name='caffe.PoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pool', full_name='caffe.PoolingParameter.pool', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.PoolingParameter.kernel_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.PoolingParameter.stride', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.PoolingParameter.pad', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _POOLINGPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3906, serialized_end=4083, ) _POWERPARAMETER = descriptor.Descriptor( name='PowerParameter', full_name='caffe.PowerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='power', full_name='caffe.PowerParameter.power', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.PowerParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.PowerParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4085, serialized_end=4155, ) _WINDOWDATAPARAMETER = descriptor.Descriptor( name='WindowDataParameter', full_name='caffe.WindowDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.WindowDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.WindowDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.WindowDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.WindowDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.WindowDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.WindowDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_threshold', full_name='caffe.WindowDataParameter.fg_threshold', index=6, number=7, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bg_threshold', full_name='caffe.WindowDataParameter.bg_threshold', index=7, number=8, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_fraction', full_name='caffe.WindowDataParameter.fg_fraction', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='context_pad', full_name='caffe.WindowDataParameter.context_pad', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_mode', full_name='caffe.WindowDataParameter.crop_mode', index=10, number=11, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4158, serialized_end=4427, ) _V0LAYERPARAMETER = descriptor.Descriptor( name='V0LayerParameter', full_name='caffe.V0LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.V0LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V0LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.V0LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.V0LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.V0LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.V0LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.V0LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.V0LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.V0LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.V0LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.V0LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.V0LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.V0LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.V0LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.V0LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.V0LayerParameter.source', index=15, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.V0LayerParameter.scale', index=16, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.V0LayerParameter.meanfile', index=17, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.V0LayerParameter.batchsize', index=18, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.V0LayerParameter.cropsize', index=19, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.V0LayerParameter.mirror', index=20, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V0LayerParameter.blobs', index=21, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V0LayerParameter.blobs_lr', index=22, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V0LayerParameter.weight_decay', index=23, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.V0LayerParameter.rand_skip', index=24, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.V0LayerParameter.det_fg_threshold', index=25, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.V0LayerParameter.det_bg_threshold', index=26, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.V0LayerParameter.det_fg_fraction', index=27, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.V0LayerParameter.det_context_pad', index=28, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.V0LayerParameter.det_crop_mode', index=29, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_num', full_name='caffe.V0LayerParameter.new_num', index=30, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_channels', full_name='caffe.V0LayerParameter.new_channels', index=31, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.V0LayerParameter.new_height', index=32, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.V0LayerParameter.new_width', index=33, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.V0LayerParameter.shuffle_images', index=34, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.V0LayerParameter.concat_dim', index=35, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V0LayerParameter.hdf5_output_param', index=36, number=1001, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V0LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4430, serialized_end=5437, ) _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _NETPARAMETER.fields_by_name['layers'].message_type = _LAYERPARAMETER _SOLVERPARAMETER.fields_by_name['solver_mode'].enum_type = _SOLVERPARAMETER_SOLVERMODE _SOLVERPARAMETER_SOLVERMODE.containing_type = _SOLVERPARAMETER; _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['type'].enum_type = _LAYERPARAMETER_LAYERTYPE _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _LAYERPARAMETER.fields_by_name['layer'].message_type = _V0LAYERPARAMETER _LAYERPARAMETER_LAYERTYPE.containing_type = _LAYERPARAMETER; _CONVOLUTIONPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LRNPARAMETER.fields_by_name['norm_region'].enum_type = _LRNPARAMETER_NORMREGION _LRNPARAMETER_NORMREGION.containing_type = _LRNPARAMETER; _POOLINGPARAMETER.fields_by_name['pool'].enum_type = _POOLINGPARAMETER_POOLMETHOD _POOLINGPARAMETER_POOLMETHOD.containing_type = _POOLINGPARAMETER; _V0LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['pool'].enum_type = _V0LAYERPARAMETER_POOLMETHOD _V0LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V0LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V0LAYERPARAMETER_POOLMETHOD.containing_type = _V0LAYERPARAMETER; DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['ConcatParameter'] = _CONCATPARAMETER DESCRIPTOR.message_types_by_name['ConvolutionParameter'] = _CONVOLUTIONPARAMETER DESCRIPTOR.message_types_by_name['DataParameter'] = _DATAPARAMETER DESCRIPTOR.message_types_by_name['DropoutParameter'] = _DROPOUTPARAMETER DESCRIPTOR.message_types_by_name['HDF5DataParameter'] = _HDF5DATAPARAMETER DESCRIPTOR.message_types_by_name['HDF5OutputParameter'] = _HDF5OUTPUTPARAMETER DESCRIPTOR.message_types_by_name['ImageDataParameter'] = _IMAGEDATAPARAMETER DESCRIPTOR.message_types_by_name['InfogainLossParameter'] = _INFOGAINLOSSPARAMETER DESCRIPTOR.message_types_by_name['InnerProductParameter'] = _INNERPRODUCTPARAMETER DESCRIPTOR.message_types_by_name['LRNParameter'] = _LRNPARAMETER DESCRIPTOR.message_types_by_name['MemoryDataParameter'] = _MEMORYDATAPARAMETER DESCRIPTOR.message_types_by_name['PoolingParameter'] = _POOLINGPARAMETER DESCRIPTOR.message_types_by_name['PowerParameter'] = _POWERPARAMETER DESCRIPTOR.message_types_by_name['WindowDataParameter'] = _WINDOWDATAPARAMETER DESCRIPTOR.message_types_by_name['V0LayerParameter'] = _V0LAYERPARAMETER class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class ConcatParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONCATPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConcatParameter) class ConvolutionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONVOLUTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConvolutionParameter) class DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DataParameter) class DropoutParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DROPOUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.DropoutParameter) class HDF5DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5DataParameter) class HDF5OutputParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5OUTPUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5OutputParameter) class ImageDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _IMAGEDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.ImageDataParameter) class InfogainLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INFOGAINLOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.InfogainLossParameter) class InnerProductParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INNERPRODUCTPARAMETER # @@protoc_insertion_point(class_scope:caffe.InnerProductParameter) class LRNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LRNPARAMETER # @@protoc_insertion_point(class_scope:caffe.LRNParameter) class MemoryDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MEMORYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.MemoryDataParameter) class PoolingParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.PoolingParameter) class PowerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POWERPARAMETER # @@protoc_insertion_point(class_scope:caffe.PowerParameter) class WindowDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _WINDOWDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.WindowDataParameter) class V0LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V0LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V0LayerParameter) # @@protoc_insertion_point(module_scope)
91,458
42.407214
10,562
py
DRT
DRT-master/external_libs/matconvnet/matconvnet/utils/proto/vgg_caffe_pb2.py
# Generated by the protocol buffer compiler. DO NOT EDIT! from google.protobuf import descriptor from google.protobuf import message from google.protobuf import reflection from google.protobuf import descriptor_pb2 # @@protoc_insertion_point(imports) DESCRIPTOR = descriptor.FileDescriptor( name='vgg_caffe.proto', package='caffe', serialized_pb='\n\x0fvgg_caffe.proto\x12\x05\x63\x61\x66\x66\x65\"y\n\tBlobProto\x12\x0e\n\x03num\x18\x01 \x01(\x05:\x01\x30\x12\x13\n\x08\x63hannels\x18\x02 \x01(\x05:\x01\x30\x12\x11\n\x06height\x18\x03 \x01(\x05:\x01\x30\x12\x10\n\x05width\x18\x04 \x01(\x05:\x01\x30\x12\x10\n\x04\x64\x61ta\x18\x05 \x03(\x02\x42\x02\x10\x01\x12\x10\n\x04\x64iff\x18\x06 \x03(\x02\x42\x02\x10\x01\"2\n\x0f\x42lobProtoVector\x12\x1f\n\x05\x62lobs\x18\x01 \x03(\x0b\x32\x10.caffe.BlobProto\"i\n\x05\x44\x61tum\x12\x10\n\x08\x63hannels\x18\x01 \x01(\x05\x12\x0e\n\x06height\x18\x02 \x01(\x05\x12\r\n\x05width\x18\x03 \x01(\x05\x12\x0c\n\x04\x64\x61ta\x18\x04 \x01(\x0c\x12\r\n\x05label\x18\x05 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default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=26, serialized_end=147, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=149, serialized_end=199, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=201, serialized_end=306, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='model_path', full_name='caffe.FillerParameter.model_path', index=6, number=7, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='model_layer_name', full_name='caffe.FillerParameter.model_layer_name', index=7, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=309, serialized_end=479, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='k', full_name='caffe.LayerParameter.k', index=15, number=116, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.LayerParameter.source', index=16, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='root_img_dir', full_name='caffe.LayerParameter.root_img_dir', index=17, number=117, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.LayerParameter.scale', index=18, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.LayerParameter.meanfile', index=19, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_meanfile', full_name='caffe.LayerParameter.crop_meanfile', index=20, number=119, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.LayerParameter.batchsize', index=21, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.LayerParameter.cropsize', index=22, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.LayerParameter.mirror', index=23, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='img_aug_type', full_name='caffe.LayerParameter.img_aug_type', index=24, number=22, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='img_sampling_type', full_name='caffe.LayerParameter.img_sampling_type', index=25, number=23, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top_k', full_name='caffe.LayerParameter.top_k', index=26, number=31, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='vis_label', full_name='caffe.LayerParameter.vis_label', index=27, number=24, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.LayerParameter.channels', index=28, number=25, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='save_dir', full_name='caffe.LayerParameter.save_dir', index=29, number=26, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label_rank', full_name='caffe.LayerParameter.label_rank', index=30, number=30, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='margin', full_name='caffe.LayerParameter.margin', index=31, number=32, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=32, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.LayerParameter.blobs_lr', index=33, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.LayerParameter.weight_decay', index=34, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.LayerParameter.rand_skip', index=35, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=482, serialized_end=1355, ) _LAYERCONNECTION = descriptor.Descriptor( name='LayerConnection', full_name='caffe.LayerConnection', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='layer', full_name='caffe.LayerConnection.layer', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerConnection.bottom', index=1, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerConnection.top', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1357, serialized_end=1441, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=1, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1444, serialized_end=1577, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=5, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=7, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=9, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=10, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=12, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='breakpoint', full_name='caffe.SolverParameter.breakpoint', index=13, number=22, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=14, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=15, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_history_length', full_name='caffe.SolverParameter.snapshot_history_length', index=16, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=17, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=18, number=17, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.SolverParameter.batchsize', index=19, number=19, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display_debug', full_name='caffe.SolverParameter.display_debug', index=20, number=20, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='load_solver_state', full_name='caffe.SolverParameter.load_solver_state', index=21, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1580, serialized_end=2075, ) _EVALHISTORYITER = descriptor.Descriptor( name='EvalHistoryIter', full_name='caffe.EvalHistoryIter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.EvalHistoryIter.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='perf', full_name='caffe.EvalHistoryIter.perf', index=1, number=2, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2077, serialized_end=2122, ) _EVALHISTORY = descriptor.Descriptor( name='EvalHistory', full_name='caffe.EvalHistory', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='measurements', full_name='caffe.EvalHistory.measurements', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2124, serialized_end=2183, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='val_history', full_name='caffe.SolverState.val_history', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2185, serialized_end=2309, ) _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LAYERPARAMETER.fields_by_name['pool'].enum_type = _LAYERPARAMETER_POOLMETHOD _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER_POOLMETHOD.containing_type = _LAYERPARAMETER; _LAYERCONNECTION.fields_by_name['layer'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['layers'].message_type = _LAYERCONNECTION _EVALHISTORY.fields_by_name['measurements'].message_type = _EVALHISTORYITER _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _SOLVERSTATE.fields_by_name['val_history'].message_type = _EVALHISTORY DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['LayerConnection'] = _LAYERCONNECTION DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['EvalHistoryIter'] = _EVALHISTORYITER DESCRIPTOR.message_types_by_name['EvalHistory'] = _EVALHISTORY DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class LayerConnection(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERCONNECTION # @@protoc_insertion_point(class_scope:caffe.LayerConnection) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class EvalHistoryIter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EVALHISTORYITER # @@protoc_insertion_point(class_scope:caffe.EvalHistoryIter) class EvalHistory(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EVALHISTORY # @@protoc_insertion_point(class_scope:caffe.EvalHistory) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) # @@protoc_insertion_point(module_scope)
44,873
42.865103
4,761
py
DRT
DRT-master/external_libs/matconvnet/matconvnet/doc/matdoc.py
# file: matdoc.py # author: Andrea Vedaldi # brief: Extact comments from a MATLAB mfile and generate a Markdown file import sys, os, re, shutil import subprocess, signal import string, fnmatch from matdocparser import * from optparse import OptionParser usage = """usage: %prog [options] <mfile> Extracts the comments from the specified <mfile> and prints a Markdown version of them.""" optparser = OptionParser(usage=usage) optparser.add_option( "-v", "--verbose", dest = "verb", default = False, action = "store_true", help = "print debug information") findFunction = re.compile(r"^\s*(function|classdef).*$", re.MULTILINE) getFunction = re.compile(r"\s*%\s*(\w+)\s*(.*)\n" "((\s*%.*\n)+)") cleanComments = re.compile("^\s*%", re.MULTILINE) # -------------------------------------------------------------------- def readText(path): # -------------------------------------------------------------------- with open (path, "r") as myfile: text=myfile.read() return text # -------------------------------------------------------------------- class MatlabFunction: # -------------------------------------------------------------------- def __init__(self, name, nature, brief, body): self.name = name self.nature = nature self.brief = brief self.body = body def __str__(self): return "%s (%s)" % (self.name, self.nature) # -------------------------------------------------------------------- def findNextFunction(test, pos): # -------------------------------------------------------------------- if pos == 0 and test[0] == '%': # This is an M-file with a MEX implementation return (pos, 'function') m = findFunction.search(test, pos) if m: return (m.end()+1, m.group(1)) else: return (None, None) # -------------------------------------------------------------------- def getFunctionDoc(text, nature, pos): # -------------------------------------------------------------------- m = getFunction.match(text, pos) if m: name = m.group(1) brief = m.group(2).strip() body = clean(m.group(3)) return (MatlabFunction(name, nature, brief, body), m.end()+1) else: return (None, pos) # -------------------------------------------------------------------- def clean(text): # -------------------------------------------------------------------- return cleanComments.sub("", text) # -------------------------------------------------------------------- def extract(text): # -------------------------------------------------------------------- funcs = [] pos = 0 while True: (pos, nature) = findNextFunction(text, pos) if nature is None: break (f, pos) = getFunctionDoc(text, nature, pos) if f: funcs.append(f) return funcs # -------------------------------------------------------------------- class Frame(object): # -------------------------------------------------------------------- prefix = "" before = None def __init__(self, prefix, before = None, hlevel = 0): self.prefix = prefix self.before = before self.hlevel = hlevel # -------------------------------------------------------------------- class Context(object): # -------------------------------------------------------------------- frames = [] def __init__(self, hlevel = 0): self.hlevel = hlevel def __str__(self): text = "" for f in self.frames: if not f.before: text = text + f.prefix else: text = text + f.prefix[:-len(f.before)] + f.before f.before = None return text def pop(self): f = self.frames[-1] del self.frames[-1] return f def push(self, frame): self.frames.append(frame) def render_L(tree, context): print "%s%s" % (context,tree.text) def render_L_from_indent(tree, context, indent): print "%s%s%s" % (context," "*max(0,tree.indent-indent),tree.text) def render_SL(tree, context): print "%s%s %s" % (context, "#"*(context.hlevel+tree.section_level), tree.inner_text) def render_S(tree, context): for n in tree.children: render_SL(n, context) def render_DH(tree, context): if len(tree.inner_text.strip()) > 0: print "%s**%s** [*%s*]" % (context, tree.description.strip(), tree.inner_text.strip()) else: print "%s**%s**" % (context, tree.description.strip()) def render_DI(tree, context): context.push(Frame(" ", "* ")) render_DH(tree.children[0], context) print context if len(tree.children) > 1: render_DIVL(tree.children[1], context) context.pop() def render_DL(tree, context): for n in tree.children: render_DI(n, context) def render_P(tree, context): for n in tree.children: render_L(n, context) print context def render_B(tree, context): print context def render_V(tree, context): context.push(Frame(" ")) for n in tree.children: if n.isa(L): render_L_from_indent(n, context, tree.indent) elif n.isa(B): render_B(n, context) context.pop() def render_BL(tree, context): for n in tree.children: context.push(Frame(" ", "+ ")) render_DIVL(n, context) context.pop() def render_DIVL(tree, context): for n in tree.children: if n.isa(P): render_P(n, context) elif n.isa(BL): render_BL(n, context) elif n.isa(DL): render_DL(n, context) elif n.isa(V): render_V(n, context) elif n.isa(S): render_S(n, context) context.before = "" def render(func, brief, tree, hlevel): print "%s `%s` - %s" % ('#' * hlevel, func.upper(), brief) render_DIVL(tree, Context(hlevel)) if __name__ == '__main__': (opts, args) = optparser.parse_args() if len(args) != 1: optparser.print_help() sys.exit(2) mfilePath = args[0] # Get the function text = readText(mfilePath) funcs = extract(text) if len(funcs) == 0: print >> sys.stderr, "Could not find a MATLAB function" sys.exit(-1) parser = Parser() if funcs[0].nature == 'classdef': # For MATLAB classes, look for other methods outside # the classdef file components = mfilePath.split(os.sep) if len(components)>1 and components[-2][0] == '@': classDir = string.join(components[:-1],os.sep) for x in os.listdir(classDir): if fnmatch.fnmatch(x, '*.m') and not x == components[-1]: text = readText(classDir + os.sep + x) funcs_ = extract(text) if len(funcs_) > 0: funcs.append(funcs_[0]) else: # For MATLAB functions, do not print subfuctions funcs = [funcs[0]] hlevel = 1 for f in funcs: lexer = Lexer(f.body.splitlines()) tree = parser.parse(lexer) if opts.verb: print >> sys.stderr, tree render(f.name, f.brief, tree, hlevel) hlevel = 2
7,192
30.273913
94
py
DRT
DRT-master/external_libs/matconvnet/matconvnet/doc/matdocparser.py
#!/usr/bin/python # file: matdocparser.py # author: Andrea Vedaldi # description: Utility to format MATLAB comments. # Copyright (C) 2014-15 Andrea Vedaldi. # All rights reserved. # # This file is part of the VLFeat library and is made available under # the terms of the BSD license (see the COPYING file). """ MatDocParser is an interpreter for the MatDoc format. This is a simplified and stricter version of Markdown suitable to commenting MATLAB functions. the format is easily understood from an example: A paragraph starts on a new line. And continues on following lines. Indenting with a whitespace introduces a verbatim code section: Like this This continues it Different paragraphs are separated by blank lines. * The *, -, + symbols at the beginning of a line introduce a list. Which can be continued on follwing paragraphs by proper indentation. Multiple paragraphs in a list item are also supported. * This is the second item of the same list. It is also possible to have definition lists such as Term1:: Short description 2 Longer explanation. Behaves like a list item. Term2:: Short description 2 Term3:: Short description 3 Longer explanations are optional. # Lines can begin with # to denote a title ## Is a smaller title """ import sys import os import re __mpname__ = 'MatDocParser' __version__ = '1.0-beta15' __date__ = '2015-09-20' __description__ = 'MatDoc MATLAB inline function description interpreter.' __long_description__ = __doc__ __license__ = 'BSD' __author__ = 'Andrea Vedaldi' # -------------------------------------------------------------------- # Input line types (terminal symbols) # -------------------------------------------------------------------- # Terminal symbols are organized in a hierarchy. Each line in the # input document is mapped to leaf in this hierarchy, representing # the type of line detected. class Symbol(object): indent = None def isa(self, classinfo, indent = None): return isinstance(self, classinfo) and \ (indent is None or self.indent == indent) def __str__(self, indent = 0): if self.indent is not None: x = "%d" % self.indent else: x = "*" return " "*indent + "%s(%s)" % (self.__class__.__name__, x) # Terminal symbols # Note that PL, BH, DH are all subclasses of L; the fields .text and .indent # have the same meaning for all of them. class Terminal(Symbol): pass class EOF (Terminal): pass # end-of-file class B (Terminal): pass # blank linke class L (Terminal): # non-empty line: '<" "*indent><text>' text = "" def __str__(self, indent = 0): return "%s: %s" % (super(L, self).__str__(indent), self.text) class PL (L): pass # regular line class BH (L): # bullet: a line of type ' * <inner_text>' inner_indent = None inner_text = None bullet = None class DH (L): # description: a line of type ' <description>::<inner_text>' inner_text = None description = None def __str__(self, indent = 0): return "%s: '%s' :: '%s'" % (super(L, self).__str__(indent), self.description, self.inner_text) class SL (L): # section: '<#+><text>' section_level = 0 inner_text = None def __str__(self, indent = 0): return "%s: %s" % (super(L, self).__str__(indent), self.inner_text) # A lexer object: parse lines of the input document into terminal symbols class Lexer(object): def __init__(self, lines): self.lines = lines self.pos = -1 def next(self): self.pos = self.pos + 1 # no more if self.pos > len(self.lines)-1: x = EOF() return x line = self.lines[self.pos] # a blank line match = re.match(r"\s*\n?$", line) ; if match: return B() # a line of type ' <#+><inner_text>' match = re.match(r"(\s*)(#+)(.*)\n?$", line) if match: x = SL() x.indent = len(match.group(1)) x.section_level = len(match.group(2)) x.inner_text = match.group(3) #print x.indent, x.section_level, x.inner_text return x # a line of type ' <content>::<inner_text>' match = re.match(r"(\s*)(.*)::(.*)\n?$", line) if match: x = DH() x.indent = len(match.group(1)) x.description = match.group(2) x.inner_text = match.group(3) x.text = x.description + "::" + x.inner_text return x # a line of type ' * <inner_contet>' match = re.match(r"(\s*)([-\*+]\s*)(\S.*)\n?$", line) if match: x = BH() x.indent = len(match.group(1)) x.bullet = match.group(2) x.inner_indent = x.indent + len(x.bullet) x.inner_text = match.group(3) x.text = x.bullet + x.inner_text return x # a line of the type ' <content>' match = re.match(r"(\s*)(\S.*)\n?$", line) if match: x = PL() x.indent = len(match.group(1)) x.text = match.group(2) return x # -------------------------------------------------------------------- # Non-terminal # -------------------------------------------------------------------- # DIVL is a consecutive list of blocks with the same indent and/or blank # lines. # # DIVL(indent) -> (B | SL(indent) | P(indent) | V(indent) | # BL(indent) | DL(indent))+ # # S(indent) -> SL(indent) # # A P(indent) is a paragraph, a list of regular lines indentent by the # same amount. # # P(indent) -> PL(indent)+ # # A V(indent) is a verbatim (code) block. It contains text lines and blank # lines that have indentation strictly larger than `indent`: # # V(indent) -> L(i) (B | L(j), j > indent)+, for all i > indent # # A DL(indent) is a description list: # # DL(indent) -> DH(indent) DIVL(i)*, i > indent # # A BL(indent) is a bullet list. It contains bullet list items, namely # a sequence of special DIVL_BH(indent,inner_indent) whose first block # is a paragaraph P_BH(indent,inner_indent) whose first line is a # bullet header BH(indent,innner_indent). Here the bullet identation # inner_indent is obtained as the inner_indent of the # BH(indent,inner_indent) symbol. Formalising this with grammar rules # is verbose; instead we use the simple `hack' of defining # # BL(indent) -> (DIVL(inner_indent))+ # # where DIVL(inner_indent) are regular DIVL, obtaine after replacing # the bullet header line BH with a standard paragraph line PL. class NonTerminal(Symbol): children = [] def __init__(self, *args): self.children = list(args) def __str__(self, indent = 0): s = " "*indent + super(NonTerminal, self).__str__() + "\n" for c in self.children: s += c.__str__(indent + 2) + "\n" return s[:-1] class S(NonTerminal): pass class DIVL(NonTerminal): pass class DIV(NonTerminal): pass class BL(NonTerminal): pass class DL(NonTerminal): pass class DI(NonTerminal): pass class P(DIV): pass class V(DIV): pass # -------------------------------------------------------------------- class Parser(object): lexer = None stack = [] lookahead = None def shift(self): if self.lookahead: self.stack.append(self.lookahead) self.lookahead = self.lexer.next() def reduce(self, X, n, indent = None): #print "reducing %s with %d" % (S.__name__, n) x = X(*self.stack[-n:]) del self.stack[-n:] x.indent = indent self.stack.append(x) return x def parse(self, lexer): self.lexer = lexer self.stack = [] while True: self.lookahead = self.lexer.next() if not self.lookahead.isa(B): break self.parse_DIVL(self.lookahead.indent) return self.stack[0] def parse_SL(self, indent): self.shift() self.reduce(S, 1, indent) def parse_P(self, indent): i = 0 if indent is None: indent = self.lookahead.indent while self.lookahead.isa(PL, indent): self.shift() i = i + 1 self.reduce(P, i, indent) def parse_V(self, indent): i = 0 while (self.lookahead.isa(L) and self.lookahead.indent > indent) or \ (self.lookahead.isa(B)): self.shift() i = i + 1 self.reduce(V, i, indent) def parse_DIV_helper(self, indent): if self.lookahead.isa(SL, indent): self.parse_SL(indent) elif self.lookahead.isa(PL, indent): self.parse_P(indent) elif self.lookahead.isa(L) and (self.lookahead.indent > indent): self.parse_V(indent) elif self.lookahead.isa(BH, indent): self.parse_BL(indent) elif self.lookahead.isa(DH, indent): self.parse_DL(indent) elif self.lookahead.isa(B): self.shift() else: return False # leaves with B, P(indent), V(indent), BL(indent) or DL(indent) return True def parse_BI_helper(self, indent): x = self.lookahead if not x.isa(BH, indent): return False indent = x.inner_indent self.lookahead = PL() self.lookahead.text = x.inner_text self.lookahead.indent = indent self.parse_DIVL(indent) # leaves with DIVL(inner_indent) where inner_indent was # obtained from the bullet header symbol return True def parse_BL(self, indent): i = 0 while self.parse_BI_helper(indent): i = i + 1 if i == 0: print "Error", sys.exit(1) self.reduce(BL, i, indent) def parse_DI_helper(self, indent): if not self.lookahead.isa(DH, indent): return False self.shift() if self.lookahead.indent > indent: self.parse_DIVL(self.lookahead.indent) self.reduce(DI, 2, indent) else: self.reduce(DI, 1, indent) return True def parse_DL(self, indent): i = 0 while self.parse_DI_helper(indent): i = i + 1 if i == 0: print "Error", sys.exit(1) self.reduce(DL, i, indent) def parse_DIVL(self, indent = None): i = 0 while self.parse_DIV_helper(indent): if indent is None: indent = self.stack[-1].indent i = i + 1 self.reduce(DIVL, i, indent) if __name__ == '__main__': str=""" Some text describing a MATLAB function F(). The function F() does nothing. It has the following options: CarryOn:: True Keep doing nothing for the time being. Stop:: 'here' Stop doing whathever here. Example: % call the function f('stop', 'there') % contemplate the results So in short we conclude that: * This does nothing * It could do something, but still does not. # See also: hope for the best. # Section number one Bla ## More Sect ### Even more blo """ parser = Parser() lexer = Lexer(str.split('\n')) tree = parser.parse(lexer) print tree
11,110
29.275204
80
py
DRT
DRT-master/external_libs/matconvnet/utils/layers.py
# file: layers.py # brief: A number of objects to wrap caffe layers for conversion # author: Andrea Vedaldi from collections import OrderedDict from math import floor, ceil from operator import mul import numpy as np from numpy import array import scipy import scipy.io import scipy.misc import copy import collections # Recent Caffes just pass a string as a type; this is used for legacy support layers_type = {} layers_type[0] = 'none' layers_type[1] = 'accuracy' layers_type[2] = 'bnll' layers_type[3] = 'concat' layers_type[4] = 'conv' layers_type[5] = 'data' layers_type[6] = 'dropout' layers_type[7] = 'euclidean_loss' layers_type[8] = 'flatten' layers_type[9] = 'hdf5_data' layers_type[10] = 'hdf5_output' layers_type[28] = 'hinge_loss' layers_type[11] = 'im2col' layers_type[12] = 'image_data' layers_type[13] = 'infogain_loss' layers_type[14] = 'inner_product' layers_type[15] = 'lrn' layers_type[25] = 'eltwise' layers_type[29] = 'memory_data' layers_type[16] = 'multinomial_logistic_loss' layers_type[17] = 'pool' layers_type[26] = 'power' layers_type[18] = 'relu' layers_type[19] = 'sigmoid' layers_type[27] = 'sigmoid_cross_entropy_loss' layers_type[20] = 'softmax' layers_type[21] = 'softmax_loss' layers_type[22] = 'split' layers_type[23] = 'tanh' layers_type[24] = 'window_data' layers_type[39] = 'deconvolution' layers_type[40] = 'crop' def getFilterOutputSize(size, kernelSize, stride, pad): return [floor((size[0] + pad[0]+pad[1] - kernelSize[0]) / stride[0]) + 1., \ floor((size[1] + pad[2]+pad[3] - kernelSize[1]) / stride[1]) + 1.] def getFilterTransform(ks, stride, pad): y1 = 1. - pad[0] ; y2 = 1. - pad[0] + ks[0] - 1 ; x1 = 1. - pad[2] ; x2 = 1. - pad[2] + ks[1] - 1 ; h = y2 - y1 + 1. ; w = x2 - x1 + 1. ; return CaffeTransform([h, w], stride, [(y1+y2)/2, (x1+x2)/2]) def reorder(aList, order): return [aList[i] for i in order] def row(x): return np.array(x,dtype=float).reshape(1,-1) def rowarray(x): return x.reshape(1,-1) def rowcell(x): return np.array(x,dtype=object).reshape(1,-1) def dictToMatlabStruct(d): if not d: return np.zeros((0,)) dt = [] for x in d.keys(): pair = (x,object) if isinstance(d[x], np.ndarray): pair = (x,type(d[x])) dt.append(pair) y = np.empty((1,),dtype=dt) for x in d.keys(): y[x][0] = d[x] return y # -------------------------------------------------------------------- # MatConvNet in NumPy # -------------------------------------------------------------------- mlayerdt = [('name',object), ('type',object), ('inputs',object), ('outputs',object), ('params',object), ('block',object)] mparamdt = [('name',object), ('value',object)] minputdt = [('name',object), ('size',object)] # -------------------------------------------------------------------- # Vars and params # -------------------------------------------------------------------- class CaffeBlob(object): def __init__(self, name): self.name = name self.shape = None self.value = np.zeros(shape=(0,0), dtype='float32') self.bgrInput = False self.transposable = True # first two dimensions are spatial def transpose(self): if self.shape: self.shape = [self.shape[k] for k in [1,0,2,3]] def toMatlab(self): mparam = np.empty(shape=[1,], dtype=mparamdt) mparam['name'][0] = self.name mparam['value'][0] = self.value return mparam def toMatlabSimpleNN(self): return self.value def hasValue(self): return reduce(mul, self.value.shape, 1) > 0 class CaffeTransform(object): def __init__(self, size, stride, offset): self.shape = size self.stride = stride self.offset = offset def __str__(self): return "<%s %s %s>" % (self.shape, self.stride, self.offset) def composeTransforms(a, b): size = [0.,0.] stride = [0.,0.] offset = [0.,0.] for i in [0,1]: size[i] = a.stride[i] * (b.shape[i] - 1) + a.shape[i] stride[i] = a.stride[i] * b.stride[i] offset[i] = a.stride[i] * (b.offset[i] - 1) + a.offset[i] c = CaffeTransform(size, stride, offset) return c def transposeTransform(a): size = [0.,0.] stride = [0.,0.] offset = [0.,0.] for i in [0,1]: size[i] = (a.shape[i] + a.stride[i] - 1.0) / a.stride[i] stride[i] = 1.0/a.stride[i] offset[i] = (1.0 + a.stride[i] - a.offset[i]) / a.stride[i] c = CaffeTransform(size, stride, offset) return c # -------------------------------------------------------------------- # Errors # -------------------------------------------------------------------- class ConversionError(Exception): def __init__(self, value): self.value = value def __str__(self): return repr(self.value) # -------------------------------------------------------------------- # Basic Layers # -------------------------------------------------------------------- class CaffeLayer(object): def __init__(self, name, inputs, outputs): self.name = name self.inputs = inputs self.outputs = outputs self.params = [] self.model = None def reshape(self, model): pass def display(self): print "Layer \'{}\'".format(self.name) print " +- type: %s" % (self.__class__.__name__) print " +- inputs: %s" % (self.inputs,) print " +- outputs: %s" % (self.outputs,) print " +- params: %s" % (self.params,) def getTransforms(self, model): transforms = [] for i in enumerate(self.inputs): row = [] for j in enumerate(self.outputs): row.append(CaffeTransform([1.,1.], [1.,1.], [1.,1.])) transforms.append(row) return transforms def transpose(self, model): pass def setBlob(self, model, i, blob): assert(False) def toMatlab(self): mlayer = np.empty(shape=[1,],dtype=mlayerdt) mlayer['name'][0] = self.name mlayer['type'][0] = None mlayer['inputs'][0] = rowcell(self.inputs) mlayer['outputs'][0] = rowcell(self.outputs) mlayer['params'][0] = rowcell(self.params) mlayer['block'][0] = dictToMatlabStruct({}) return mlayer def toMatlabSimpleNN(self): mparam = collections.OrderedDict() ; mparam['name'] = self.name mparam['type'] = None return mparam class CaffeElementWise(CaffeLayer): def reshape(self, model): for i in range(len(self.inputs)): model.vars[self.outputs[i]].shape = \ model.vars[self.inputs[i]].shape class CaffeReLU(CaffeElementWise): def __init__(self, name, inputs, outputs): super(CaffeReLU, self).__init__(name, inputs, outputs) def toMatlab(self): mlayer = super(CaffeReLU, self).toMatlab() mlayer['type'][0] = u'dagnn.ReLU' mlayer['block'][0] = dictToMatlabStruct( {'leak': float(0.0) }) # todo: leak factor return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeReLU, self).toMatlabSimpleNN() mlayer['type'] = u'relu' mlayer['leak'] = float(0.0) return mlayer class CaffeLRN(CaffeElementWise): def __init__(self, name, inputs, outputs, local_size, alpha, beta, norm_region, kappa): super(CaffeLRN, self).__init__(name, inputs, outputs) self.local_size = local_size self.alpha = alpha self.beta = beta self.norm_region = norm_region self.kappa = kappa assert(norm_region == 'across_channels') def toMatlab(self): mlayer = super(CaffeLRN, self).toMatlab() mlayer['type'][0] = u'dagnn.LRN' mlayer['block'][0] = dictToMatlabStruct( {'param': row([self.local_size, self.kappa, self.alpha / self.local_size, self.beta])}) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeLRN, self).toMatlabSimpleNN() mlayer['type'] = u'lrn' mlayer['param'] = row([self.local_size, self.kappa, self.alpha / self.local_size, self.beta]) return mlayer class CaffeSoftMax(CaffeElementWise): def __init__(self, name, inputs, outputs): super(CaffeSoftMax, self).__init__(name, inputs, outputs) def toMatlab(self): mlayer = super(CaffeSoftMax, self).toMatlab() mlayer['type'][0] = u'dagnn.SoftMax' return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeSoftMax, self).toMatlabSimpleNN() mlayer['type'] = u'softmax' return mlayer class CaffeSoftMaxLoss(CaffeElementWise): def __init__(self, name, inputs, outputs): super(CaffeSoftMaxLoss, self).__init__(name, inputs, outputs) def toMatlab(self): mlayer = super(CaffeSoftMaxLoss, self).toMatlab() mlayer['type'][0] = u'dagnn.SoftMaxLoss' return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeSoftMaxLoss, self).toMatlabSimpleNN() mlayer['type'] = u'softmax' return mlayer class CaffeDropout(CaffeElementWise): def __init__(self, name, inputs, outputs, ratio): super(CaffeDropout, self).__init__(name, inputs, outputs) self.ratio = ratio def toMatlab(self): mlayer = super(CaffeDropout, self).toMatlab() mlayer['type'][0] = u'dagnn.DropOut' mlayer['block'][0] = dictToMatlabStruct({'rate': float(self.ratio)}) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeDropout, self).toMatlabSimpleNN() mlayer['type'] = u'dropout' mlayer['rate'] = float(self.ratio) return mlayer def display(self): super(CaffeDropout, self).display() print " c- ratio (dropout rate):", self.ratio class CaffeData(CaffeLayer): def __init__(self, name, inputs, outputs): super(CaffeData, self).__init__(name, inputs, outputs) def reshape(self, model): # todo: complete otehr cases shape = [layer.transform_param.crop_size, layer.transform_param.crop_size, 3, layer.batch_size] model.vars[self.outputs[0]].shape = shape def toMatlab(self): return None def toMatlabSimpleNN(self): return None # -------------------------------------------------------------------- # Convolution # -------------------------------------------------------------------- class CaffeConv(CaffeLayer): def __init__(self, name, inputs, outputs, num_output, bias_term, pad, kernel_size, stride, dilation, group): super(CaffeConv, self).__init__(name, inputs, outputs) if len(kernel_size) == 1 : kernel_size = kernel_size * 2 if len(stride) == 1 : stride = stride * 2 if len(pad) == 1 : pad = pad * 4 elif len(pad) == 2 : pad = [pad[0], pad[0], pad[1], pad[1]] self.num_output = num_output self.bias_term = bias_term self.pad = pad self.kernel_size = kernel_size self.stride = stride self.dilation = dilation self.group = group self.params = [name + '_filter'] if bias_term: self.params.append(name + '_bias') self.filter_depth = None def display(self): super(CaffeConv, self).display() print " +- filter dimension:", self.filter_depth print " c- num_output (num filters): %s" % self.num_output print " c- bias_term: %s" % self.bias_term print " c- pad: %s" % (self.pad,) print " c- kernel_size: %s" % self.kernel_size print " c- stride: %s" % (self.stride,) print " c- dilation: %s" % (self.dilation,) print " c- group: %s" % (self.group,) def reshape(self, model): varin = model.vars[self.inputs[0]] varout = model.vars[self.outputs[0]] if not varin.shape: return varout.shape = getFilterOutputSize(varin.shape[0:2], self.kernel_size, self.stride, self.pad) \ + [self.num_output, varin.shape[3]] self.filter_depth = varin.shape[2] / self.group def getTransforms(self, model): return [[getFilterTransform(self.kernel_size, self.stride, self.pad)]] def setBlob(self, model, i, blob): assert(i < 2) if i == 0: assert(blob.shape[0] == self.kernel_size[0]) assert(blob.shape[1] == self.kernel_size[1]) assert(blob.shape[3] == self.num_output) self.filter_depth = blob.shape[2] elif i == 1: assert(blob.shape[0] == self.num_output) model.params[self.params[i]].value = blob model.params[self.params[i]].shape = blob.shape def transpose(self, model): self.kernel_size = reorder(self.kernel_size, [1,0]) self.stride = reorder(self.stride, [1,0]) self.pad = reorder(self.pad, [2,3,0,1]) if model.params[self.params[0]].hasValue(): print "Layer %s: transposing filters" % self.name param = model.params[self.params[0]] param.value = param.value.transpose([1,0,2,3]) if model.vars[self.inputs[0]].bgrInput: print "Layer %s: BGR to RGB conversion" % self.name param.value = param.value[:,:,: : -1,:] def toMatlab(self): size = self.kernel_size + [self.filter_depth, self.num_output] mlayer = super(CaffeConv, self).toMatlab() mlayer['type'][0] = u'dagnn.Conv' mlayer['block'][0] = dictToMatlabStruct( {'hasBias': self.bias_term, 'size': row(size), 'pad': row(self.pad), 'stride': row(self.stride)}) return mlayer def toMatlabSimpleNN(self): size = self.kernel_size + [self.filter_depth, self.num_output] mlayer = super(CaffeConv, self).toMatlabSimpleNN() mlayer['type'] = u'conv' mlayer['weights'] = np.empty([1,len(self.params)], dtype=np.object) mlayer['size'] = row(size) mlayer['pad'] = row(self.pad) mlayer['stride'] = row(self.stride) for p, name in enumerate(self.params): mlayer['weights'][0,p] = self.model.params[name].toMatlabSimpleNN() return mlayer # -------------------------------------------------------------------- # InnerProduct # -------------------------------------------------------------------- # special case: inner product class CaffeInnerProduct(CaffeConv): def __init__(self, name, inputs, outputs, num_output, bias_term, axis): super(CaffeInnerProduct, self).__init__(name, inputs, outputs, num_output = num_output, bias_term = bias_term, pad = [0, 0, 0, 0], kernel_size = [1, 1], stride = [1, 1], dilation = [], group = 1) self.axis = axis assert(axis == 1) def setBlob(self, model, i, blob): assert(i < 1 + self.bias_term) if i == 0: self.filter_depth = blob.shape[0] assert(blob.shape[1] == self.num_output) blob = blob.reshape([1, 1, self.filter_depth, self.num_output]) elif i == 1: assert(blob.shape[0] == self.num_output) model.params[self.params[i]].value = blob model.params[self.params[i]].shape = blob.shape def reshape(self, model): if not model.vars[self.inputs[0]].shape: return s = model.vars[self.inputs[0]].shape self.kernel_size = [s[0], s[1], s[2], self.num_output] print "Layer %s: inner product converted to filter bank of shape %s" \ % (self.name, self.kernel_size) param = model.params[self.params[0]] if param.hasValue(): print "Layer %s: reshaping inner product paramters of shape %s into a filter bank" % (self.name, param.value.shape) param.value = param.value.reshape(self.kernel_size, order='F') super(CaffeInnerProduct, self).reshape(model) # -------------------------------------------------------------------- # Deconvolution # -------------------------------------------------------------------- class CaffeDeconvolution(CaffeConv): def __init__(self, name, inputs, outputs, num_output, bias_term, pad, kernel_size, stride, dilation, group): super(CaffeDeconvolution, self).__init__(name, inputs, outputs, num_output = num_output, bias_term = bias_term, pad = pad, kernel_size = kernel_size, stride = stride, dilation = dilation, group = group) def setBlob(self, model, i, blob): assert(i < 2) if i == 0: assert(blob.shape[0] == self.kernel_size[0]) assert(blob.shape[1] == self.kernel_size[1]) assert(blob.shape[2] == self.num_output) self.filter_depth = blob.shape[3] elif i == 1: assert(blob.shape[0] == self.num_output) model.params[self.params[i]].value = blob model.params[self.params[i]].shape = blob.shape def reshape(self, model): inshape = model.vars[self.inputs[0]].shape if not inshape: return model.vars[self.outputs[0]].shape = \ getFilterOutputSize(inshape[0:2], self.kernel_size, self.stride, self.pad) + \ [self.num_output, inshape[3]] self.filter_depth = inshape[2] def getTransforms(self, model): t = getFilterTransform(self.kernel_size, self.stride, self.pad) t = transposeTransform(t) return [[t]] def transpose(self, model): self.kernel_size = reorder(self.kernel_size, [1,0]) self.stride = reorder(self.stride, [1,0]) self.pad = reorder(self.pad, [2,3,0,1]) if model.params[self.params[0]].hasValue(): print "Layer %s transposing filters" % self.name param = model.params[self.params[0]] param.value = param.value.transpose([1,0,2,3]) if model.vars[self.inputs[0]].bgrInput: print "Layer %s BGR to RGB conversion" % self.name param.value = param.value[:,:,:,: : -1] def toMatlab(self): size = self.kernel_size + [self.num_output, self.filter_depth / self.group] mlayer = super(CaffeDeconvolution, self).toMatlab() mlayer['type'][0] = u'dagnn.ConvTranspose' mlayer['block'][0] = dictToMatlabStruct( {'hasBias': self.bias_term, 'size': row(size), 'upsample': row(self.stride), 'crop': row(self.pad)}) return mlayer def toMatlabSimpleNN(self): size = self.kernel_size + [self.num_output, self.filter_depth / self.group] mlayer = super(CaffeDeconvolution, self).toMatlabSimpleNN() mlayer['type'] = u'convt' mlayer['weights'] = np.empty([1,len(self.params)], dtype=np.object) mlayer['size'] = row(size) mlayer['upsample'] = row(self.stride) mlayer['crop'] = row(self.pad) for p, name in enumerate(self.params): mlayer['weights'][0,p] = self.model.params[name].toMatlabSimpleNN() return mlayer # -------------------------------------------------------------------- # Pooling # -------------------------------------------------------------------- class CaffePooling(CaffeLayer): def __init__(self, name, inputs, outputs, method, pad, kernel_size, stride): super(CaffePooling, self).__init__(name, inputs, outputs) if len(kernel_size) == 1 : kernel_size = kernel_size * 2 if len(stride) == 1 : stride = stride * 2 if len(pad) == 1 : pad = pad * 4 elif len(pad) == 2 : pad = [pad[0], pad[0], pad[1], pad[1]] self.method = method self.pad = pad self.kernel_size = kernel_size self.stride = stride self.pad_corrected = None def display(self): super(CaffePooling, self).display() print " +- pad_corrected: %s" % (self.pad_corrected,) print " c- method: ", self.method print " c- pad: %s" % (self.pad,) print " c- kernel_size: %s" % (self.kernel_size,) print " c- stride: %s" % (self.stride,) def reshape(self, model): shape = model.vars[self.inputs[0]].shape if not shape: return # MatConvNet uses a slighly different definition of padding, which we think # is the correct one (it corresponds to the filters) self.pad_corrected = copy.deepcopy(self.pad) for i in [0, 1]: self.pad_corrected[1 + i*2] = min( self.pad[1 + i*2] + self.stride[i] - 1, self.kernel_size[i] - 1) model.vars[self.outputs[0]].shape = \ getFilterOutputSize(shape[0:2], self.kernel_size, self.stride, self.pad_corrected) + shape[2:5] def getTransforms(self, model): return [[getFilterTransform(self.kernel_size, self.stride, self.pad)]] def transpose(self, model): self.kernel_size = reorder(self.kernel_size, [1,0]) self.stride = reorder(self.stride, [1,0]) self.pad = reorder(self.pad, [2,3,0,1]) if self.pad_corrected: self.pad_corrected = reorder(self.pad_corrected, [2,3,0,1]) def toMatlab(self): mlayer = super(CaffePooling, self).toMatlab() mlayer['type'][0] = u'dagnn.Pooling' mlayer['block'][0] = dictToMatlabStruct( {'method': self.method, 'poolSize': row(self.kernel_size), 'stride': row(self.stride), 'pad': row(self.pad_corrected)}) if not self.pad_corrected: print "Warning: pad correction for layer %s could not be computed because the layer input shape could not be determined" % (self.name) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffePooling, self).toMatlabSimpleNN() mlayer['type'] = u'pool' mlayer['method'] = self.method mlayer['pool'] = row(self.kernel_size) mlayer['stride'] = row(self.stride) mlayer['pad'] = row(self.pad_corrected) if not self.pad_corrected: print "Warning: pad correction for layer %s could not be computed because the layer input shape could not be determined" % (self.name) return mlayer # -------------------------------------------------------------------- # ROIPooling # -------------------------------------------------------------------- class CaffeROIPooling(CaffeLayer): def __init__(self, name, inputs, outputs, pooled_w, pooled_h, spatial_scale): super(CaffeROIPooling, self).__init__(name, inputs, outputs) self.pooled_w = pooled_w self.pooled_h = pooled_h self.spatial_scale = spatial_scale self.flatten = True def display(self): super(CaffeROIPooling, self).display() print " c- pooled_w: %s" % (self.pooled_w,) print " c- pooled_h: %s" % (self.pooled_h,) print " c- spatial_scale: %s" % (self.spatial_scale,) print " c- flatten: %s" % (self.flatten,) def reshape(self, model): shape1 = model.vars[self.inputs[0]].shape shape2 = model.vars[self.inputs[1]].shape if not shape1 or not shape2: return numChannels = shape1[2] numROIs = reduce(mul, shape2, 1) / 5 if self.flatten: oshape = [1, 1, self.pooled_w * self.pooled_h * numChannels, numROIs] else: oshape = [self.pooled_w, self.pooled_h, numChannels, numROIs] model.vars[self.outputs[0]].shape = oshape def getTransforms(self, model): # no transform return [[CaffeTransform([1.,1.], [1.,1.], [1.,1.])]] def transpose(self, model): assert(not self.flatten) tmp = self.pooled_w self.pooled_w = self.pooled_h self.pooled_h = tmp def toMatlab(self): mlayer = super(CaffeROIPooling, self).toMatlab() mlayer['type'][0] = u'dagnn.ROIPooling' mlayer['block'][0] = dictToMatlabStruct( {'subdivisions':row([self.pooled_w, self.pooled_h]), 'transform':self.spatial_scale, 'flatten':self.flatten}) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeROIPooling, self).toMatlabSimpleNN() mlayer['type'] = u'roipool' mlayer['subdivisions'] = row([self.pooled_w, self.pooled_h]) mlayer['transform'] = self.spatial_scale mlayer['flatten'] = self.flatten return mlayer # -------------------------------------------------------------------- # Scale # -------------------------------------------------------------------- class CaffeScale(CaffeLayer): def __init__(self, name, inputs, outputs, axis, num_axes, bias_term): super(CaffeScale, self).__init__(name, inputs, outputs) self.axis = axis self.num_axes = num_axes self.bias_term = bias_term if len(self.inputs) == 1: self.params.append(name + '_mult') if len(self.inputs) < 2 and self.bias_term: self.params.append(name + '_bias') self.mult_size = [0, 0, 0, 0] def display(self): super(CaffeScale, self).display() print " +- mult_size: %s" % (self.mult_size,) print " c- axis: %s" % (self.axis,) print " c- num_axes: %s" % (self.num_axes,) print " c- bias_term: %s" % (self.bias_term,) def reshape(self, model): model.vars[self.outputs[0]].shape = model.vars[self.inputs[0]].shape def setBlob(self, model, i, blob): assert(i < self.bias_term + 1) # Caffe *ends* with WIDTH, we start with it, blobs are already swapped here k = 3 - self.axis # This means that the MULT dimensions are aligned to the INPUT # dimensions such that MULT[end] <-> INPUT[k]. For MatConvNet, # we simply add singletion dimensions at the beginning of MULT # to achieve this effect. BIAS is the same. mshape = tuple([1] * (k - len(blob.shape) + 1) + list(blob.shape)) blob = blob.reshape(mshape) model.params[self.params[i]].value = blob model.params[self.params[i]].shape = blob.shape if i == 0: self.mult_size = blob.shape def getTransforms(self, model): # The second input can be either a variable or a paramter; in # both cases, there is no transform for it return [[CaffeTransform([1.,1.], [1.,1.], [1.,1.])]] def transpose(self, model): if len(self.inputs) == 1: # we only need to transpose if the scale is a parameter, not an input for i in range(1 + self.bias_term): param = model.params[self.params[i]] n = len(param.shape) if n >= 2: order = range(n) order[0] = 1 order[1] = 0 param.value = param.value.transpose(order) def toMatlab(self): mlayer = super(CaffeScale, self).toMatlab() mlayer['type'][0] = u'dagnn.Scale' mlayer['block'][0] = dictToMatlabStruct( {'size': row(self.mult_size), 'hasBias': self.bias_term}) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeScale, self).toMatlabSimpleNN() # SimpleNN works only if the scaling blob is a parameter (and not a variable) mlayer['type'] = u'scale' mlayer['size'] = row(self.mult_size) mlayer['hasBias'] = self.bias_term return mlayer # -------------------------------------------------------------------- # BatchNorm # -------------------------------------------------------------------- class CaffeBatchNorm(CaffeLayer): def __init__(self, name, inputs, outputs, use_global_stats, moving_average_fraction, eps): super(CaffeBatchNorm, self).__init__(name, inputs, outputs) self.use_global_stats = use_global_stats self.moving_average_fraction = moving_average_fraction self.eps = eps self.params = [name + u'_mean', name + u'_variance', name + u'_scale_factor'] def display(self): super(CaffeBatchNorm, self).display() print " c- use_global_stats: %s" % (self.use_global_stats,) print " c- moving_average_fraction: %s" % (self.moving_average_fraction,) print " c- eps: %s" % (self.eps) def setBlob(self, model, i, blob): assert(i < 3) model.params[self.params[i]].value = blob model.params[self.params[i]].shape = blob.shape def reshape(self, model): shape = model.vars[self.inputs[0]].shape mean = model.params[self.params[0]].value variance = model.params[self.params[1]].value scale_factor = model.params[self.params[2]].value for i in range(3): del model.params[self.params[i]] self.params = [self.name + u'_mult', self.name + u'_bias', self.name + u'_moments'] model.addParam(self.params[0]) model.addParam(self.params[1]) model.addParam(self.params[2]) if shape: mult = np.ones((shape[2],),dtype='float32') bias = np.zeros((shape[2],),dtype='float32') model.params[self.params[0]].value = mult model.params[self.params[0]].shape = mult.shape model.params[self.params[1]].value = bias model.params[self.params[1]].shape = bias.shape if mean.size: moments = np.concatenate( (mean.reshape(-1,1) / scale_factor, np.sqrt(variance.reshape(-1,1) / scale_factor + self.eps)), axis=1) model.params[self.params[2]].value = moments model.params[self.params[2]].shape = moments.shape model.vars[self.outputs[0]].shape = shape def toMatlab(self): mlayer = super(CaffeBatchNorm, self).toMatlab() mlayer['type'][0] = u'dagnn.BatchNorm' mlayer['block'][0] = dictToMatlabStruct( {'epsilon': self.eps}) return mlayer def toMatlabSimpleNN(self): mlayer = super(CaffeBatchNorm, self).toMatlabSimpleNN() mlayer['type'] = u'bnorm' mlayer['epsilon'] = self.eps return mlayer # -------------------------------------------------------------------- # Concat # -------------------------------------------------------------------- class CaffeConcat(CaffeLayer): def __init__(self, name, inputs, outputs, concatDim): super(CaffeConcat, self).__init__(name, inputs, outputs) self.concatDim = concatDim def transpose(self, model): self.concatDim = [1, 0, 2, 3][self.concatDim] def reshape(self, model): sizes = [model.vars[x].shape for x in self.inputs] osize = copy.deepcopy(sizes[0]) osize[self.concatDim] = 0 for thisSize in sizes: for i in range(len(thisSize)): if self.concatDim == i: osize[i] = osize[i] + thisSize[i] else: if osize[i] != thisSize[i]: print "Warning: concat layer: inconsistent input dimensions", sizes model.vars[self.outputs[0]].shape = osize def display(self): super(CaffeConcat, self).display() print " Concat Dim: ", self.concatDim def toMatlab(self): mlayer = super(CaffeConcat, self).toMatlab() mlayer['type'][0] = u'dagnn.Concat' mlayer['block'][0] = dictToMatlabStruct({'dim': float(self.concatDim) + 1}) return mlayer def toMatlabSimpleNN(self): raise ConversionError('Concat layers do not work in a SimpleNN network') # -------------------------------------------------------------------- # EltWise (Sum, ...) # -------------------------------------------------------------------- class CaffeEltWise(CaffeElementWise): def __init__(self, name, inputs, outputs, operation, coeff, stable_prod_grad): super(CaffeEltWise, self).__init__(name, inputs, outputs) self.operation = operation self.coeff = coeff self.stable_prod_grad = stable_prod_grad def toMatlab(self): mlayer = super(CaffeEltWise, self).toMatlab() if self.operation == 'sum': mlayer['type'][0] = u'dagnn.Sum' else: # not implemented assert(False) return mlayer def display(self): super(CaffeEltWise, self).display() print " c- operation: ", self.operation print " c- coeff: %s" % self.coeff print " c- stable_prod_grad: %s" % self.stable_prod_grad def reshape(self, model): model.vars[self.outputs[0]].shape = \ model.vars[self.inputs[0]].shape for i in range(1, len(self.inputs)): assert(model.vars[self.inputs[0]].shape == model.vars[self.inputs[i]].shape) def toMatlabSimpleNN(self): raise ConversionError('EltWise (sum, ...) layers do not work in a SimpleNN network') # -------------------------------------------------------------------- # Crop # -------------------------------------------------------------------- class CaffeCrop(CaffeLayer): def __init__(self, name, inputs, outputs): super(CaffeCrop, self).__init__(name, inputs, outputs) self.crop = [] def display(self): super(CaffeCrop, self).display() print " Crop: %s" % self.crop def reshape(self, model): # this is quite complex as we need to compute on the fly # the geometry tfs1 = model.getParentTransforms(self.inputs[0], self.name) tfs2 = model.getParentTransforms(self.inputs[1], self.name) print print self.name, self.inputs[0] for a,x in enumerate(tfs1): print "%10s %s" % (x,tfs1[x]) print self.name, self.inputs[1] for a,x in enumerate(tfs2): print "%10s %s" % (x,tfs2[x]) # the goal is to crop inputs[0] to make it as big as inputs[1] and # aligned to it; so now we find the map from inputs[0] to inputs[1] tf = None for name, tf2 in tfs2.items(): if tfs1.has_key(name): tf1 = tfs1[name] tf = composeTransforms(transposeTransform(tf2), tf1) break if tf is None: print "Error: could not find common ancestor for inputs '%s' and '%s' of the CaffeCrop layer '%s'" % (self.inputs[0], self.inputs[1], self.name) sys.exit(1) print " Transformation %s -> %s = %s" % (self.inputs[0], self.inputs[1], tf) # for this to make sense it shoudl be tf.stride = 1 assert(tf.stride[0] == 1 and tf.stride[1] == 1) # finally we can get the crops! self.crop = [0.,0.] for i in [0,1]: # i' = alpha (i - 1) + beta + crop = 1 for i = 1 # crop = 1 - beta self.crop[i] = round(1 - tf.offset[i]) print " Crop %s" % self.crop # print # print "resolved" # tfs3 = model.getParentTransforms(self.outputs[0]) # for a,x in enumerate(tfs3): print "%10s %s" % (x,tfs3[x]) # now compute output variable size, which will be the size of the second input model.vars[self.outputs[0]].shape = model.vars[self.inputs[1]].shape def getTransforms(self, model): t = CaffeTransform([1.,1.], [1.,1.], [1.+self.crop[0],1.+self.crop[1]]) return [[t],[None]] def toMatlab(self): mlayer = super(CaffeCrop, self).toMatlab() mlayer['type'][0] = u'dagnn.Crop' mlayer['block'][0] = dictToMatlabStruct({'crop': row(self.crop)}) return mlayer def toMatlabSimpleNN(self): # todo: simple 1 input crop layers should be supported though! raise ConversionError('Crop layers do not work in a SimpleNN network') # -------------------------------------------------------------------- # Caffe Model # -------------------------------------------------------------------- class CaffeModel(object): def __init__(self): self.layers = OrderedDict() self.vars = OrderedDict() self.params = OrderedDict() def addLayer(self, layer): ename = layer.name while self.layers.has_key(ename): ename = ename + 'x' if layer.name != ename: print "Warning: a layer with name %s was already found, using %s instead" % \ (layer.name, ename) layer.name = ename for v in layer.inputs: self.addVar(v) for v in layer.outputs: self.addVar(v) for p in layer.params: self.addParam(p) self.layers[layer.name] = layer def addVar(self, name): if not self.vars.has_key(name): self.vars[name] = CaffeBlob(name) def addParam(self, name): if not self.params.has_key(name): self.params[name] = CaffeBlob(name) def renameLayer(self, old, new): self.layers[old].name = new # reinsert layer with new name -- this mess is to preserve the order layers = OrderedDict([(new,v) if k==old else (k,v) for k,v in self.layers.items()]) self.layers = layers def renameVar(self, old, new, afterLayer=None): self.vars[old].name = new if afterLayer is not None: start = self.layers.keys().index(afterLayer) + 1 else: start = 0 # fix all references to the variable for layer in self.layers.values()[start:-1]: layer.inputs = [new if x==old else x for x in layer.inputs] layer.outputs = [new if x==old else x for x in layer.outputs] self.vars[new] = copy.deepcopy(self.vars[old]) # check if we can delete the old one (for afterLayet != None) stillUsed = False for layer in self.layers.values(): stillUsed = stillUsed or old in layer.inputs or old in layer.outputs if not stillUsed: del self.vars[old] def renameParam(self, old, new): self.params[old].name = new # fix all references to the variable for layer in self.layers.itervalues(): layer.params = [new if x==old else x for x in layer.params] var = self.params[old] del self.params[old] self.params[new] = var def removeParam(self, name): del self.params[name] def removeLayer(self, name): # todo: fix this stuff for weight sharing layer = self.layers[name] for paramName in layer.params: self.removeParam(paramName) del self.layers[name] def getLayersWithOutput(self, varName): layerNames = [] for layer in self.layers.itervalues(): if varName in layer.outputs: layerNames.append(layer.name) return layerNames def getLayersWithInput(self, varName): layerNames = [] for layer in self.layers.itervalues(): if varName in layer.inputs: layerNames.append(layer.name) return layerNames def reshape(self): for layer in self.layers.itervalues(): layer.reshape(self) def display(self): for layer in self.layers.itervalues(): layer.display() for var in self.vars.itervalues(): print 'Variable \'{}\''.format(var.name) print ' + shape (computed): %s' % (var.shape,) for par in self.params.itervalues(): print 'Parameter \'{}\''.format(par.name) print ' + data found: %s' % (par.shape is not None) print ' + data shape: %s' % (par.shape,) def transpose(self): for var in self.vars.itervalues(): if var.transposable: var.transpose() for layer in self.layers.itervalues(): layer.transpose(self) def getParentTransforms(self, variableName, topLayerName=None): layerNames = self.layers.keys() if topLayerName: layerIndex = layerNames.index(topLayerName) else: layerIndex = len(self.layers) + 1 transforms = OrderedDict() transforms[variableName] = CaffeTransform([1.,1.], [1.,1.], [1.,1.]) for layerName in reversed(layerNames[0:layerIndex]): layer = self.layers[layerName] layerTfs = layer.getTransforms(self) for i, inputName in enumerate(layer.inputs): tfs = [] if transforms.has_key(inputName): tfs.append(transforms[inputName]) for j, outputName in enumerate(layer.outputs): if layerTfs[i][j] is None: continue if transforms.has_key(outputName): composed = composeTransforms(layerTfs[i][j], transforms[outputName]) tfs.append(composed) if len(tfs) > 0: # should resolve conflicts, not simply pick the first tf transforms[inputName] = tfs[0] return transforms
43,791
36.493151
156
py
DRT
DRT-master/external_libs/matconvnet/utils/import-caffe.py
#! /usr/bin/python # file: import-caffe.py # brief: Caffe importer for DagNN and SimpleNN # author: Karel Lenc and Andrea Vedaldi # Requires Google Protobuf for Python and SciPy import sys import os import argparse import code import re import numpy as np from math import floor, ceil import numpy from numpy import array import scipy import scipy.io import scipy.misc import google.protobuf.text_format from ast import literal_eval as make_tuple from layers import * # -------------------------------------------------------------------- # Check NumPy version # -------------------------------------------------------------------- def versiontuple(version): return tuple(map(int, (version.split(".")))) min_numpy_version = "1.7.0" if versiontuple(numpy.version.version) < versiontuple(min_numpy_version): print 'Unsupported numpy version ({}), must be >= {}'.format(numpy.version.version, min_numpy_version) sys.exit(0) # -------------------------------------------------------------------- # Helper functions # -------------------------------------------------------------------- def find(seq, name): for item in seq: if item.name == name: return item return None def blobproto_to_array(blob): """Convert a Caffe Blob to a numpy array. It also reverses the order of all dimensions to [width, height, channels, instance]. """ dims = [] if hasattr(blob, 'shape'): dims = tolist(blob.shape.dim) if not dims: dims = [blob.num, blob.channels, blob.height, blob.width] return np.array(blob.data,dtype='float32').reshape(dims).transpose() def dict_to_struct_array(d): if not d: return np.zeros((0,)) dt=[(x,object) for x in d.keys()] y = np.empty((1,),dtype=dt) for x in d.keys(): y[x][0] = d[x] return y def tolist(x): "Convert x to a Python list. x can be a Protobuf container, a list or tuple, or scalar" if isinstance(x,google.protobuf.internal.containers.RepeatedScalarFieldContainer): return [z for z in x] elif isinstance(x, (list,tuple)): return [z for z in x] else: return [x] def escape(name): return name.replace('-','_') # -------------------------------------------------------------------- # Parse options # -------------------------------------------------------------------- parser = argparse.ArgumentParser(description='Convert a Caffe CNN into a MATLAB structure.') parser.add_argument('caffe_proto', type=argparse.FileType('rb'), help='The Caffe CNN parameter file (ASCII .proto)') parser.add_argument('--caffe-data', type=argparse.FileType('rb'), help='The Caffe CNN data file (binary .proto)') parser.add_argument('output', type=argparse.FileType('w'), help='Output MATLAB file') parser.add_argument('--full-image-size', type=str, nargs='?', default=None, help='Size of the full image') parser.add_argument('--average-image', type=argparse.FileType('rb'), nargs='?', help='Average image') parser.add_argument('--average-value', type=str, nargs='?', default=None, help='Average image value') parser.add_argument('--synsets', type=argparse.FileType('r'), nargs='?', help='Synset file (ASCII)') parser.add_argument('--class-names', type=str, nargs='?', help='Class names') parser.add_argument('--caffe-variant', type=str, nargs='?', default='caffe', help='Variant of Caffe software (use ? to get a list)') parser.add_argument('--transpose', dest='transpose', action='store_true', help='Transpose CNN in a sane MATLAB format') parser.add_argument('--no-transpose', dest='transpose', action='store_false', help='Do not transpose CNN') parser.add_argument('--color-format', dest='color_format', default='bgr', action='store', help='Set the color format used by the network: ''rgb'' or ''bgr'' (default)') parser.add_argument('--preproc', type=str, nargs='?', default='caffe', help='Variant of image preprocessing to use (use ? to get a list)') parser.add_argument('--simplify', dest='simplify', action='store_true', help='Apply simplifications') parser.add_argument('--no-simplify', dest='simplify', action='store_false', help='Do not apply simplifications') parser.add_argument('--remove-dropout', dest='remove_dropout', action='store_true', help='Remove dropout layers') parser.add_argument('--no-remove-dropout', dest='remove_dropout', action='store_false', help='Do not remove dropout layers') parser.add_argument('--remove-loss', dest='remove_loss', action='store_true', help='Remove loss layers') parser.add_argument('--no-remove-loss', dest='remove_loss', action='store_false', help='Do not remove loss layers') parser.add_argument('--append-softmax', dest='append_softmax', action='append', default=[], help='Add a softmax layer after the specified layer') parser.add_argument('--output-format', dest='output_format', default='dagnn', help='Either ''dagnn'' or ''simplenn''') parser.set_defaults(transpose=True) parser.set_defaults(remove_dropout=False) parser.set_defaults(remove_loss=False) parser.set_defaults(simplify=True) args = parser.parse_args() print 'Caffe varaint set to', args.caffe_variant if args.caffe_variant == 'vgg-caffe': import proto.vgg_caffe_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe-old': import proto.caffe_old_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe': import proto.caffe_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe_0115': import proto.caffe_0115_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe_6e3916': import proto.caffe_6e3916_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe_b590f1d': import proto.caffe_b590f1d_pb2 as caffe_pb2 elif args.caffe_variant == 'caffe_fastrcnn': import proto.caffe_fastrcnn_pb2 as caffe_pb2 elif args.caffe_variant == '?': print 'Supported variants: caffe, vgg-caffe, caffe-old, caffe_0115, caffe_6e3916, caffe_b590f1d, caffe_fastrcnn' sys.exit(0) else: print 'Unknown Caffe variant', args.caffe_variant sys.exit(1) if args.preproc == '?': print 'Preprocessing variants: caffe, vgg, fcn' sys.exit(0) if args.preproc not in ['caffe', 'vgg-caffe', 'fcn']: print 'Unknown preprocessing variant', args.preproc sys.exit(1) # -------------------------------------------------------------------- # Helper functions # -------------------------------------------------------------------- def keyboard(banner=None): ''' Function that mimics the matlab keyboard command ''' # use exception trick to pick up the current frame try: raise None except: frame = sys.exc_info()[2].tb_frame.f_back print "# Use quit() to exit :) Happy debugging!" # evaluate commands in current namespace namespace = frame.f_globals.copy() namespace.update(frame.f_locals) try: code.interact(banner=banner, local=namespace) except SystemExit: return def bilinear_interpolate(im, x, y): x = np.asarray(x) y = np.asarray(y) x0 = np.floor(x).astype(int) x1 = x0 + 1 y0 = np.floor(y).astype(int) y1 = y0 + 1 x0 = np.clip(x0, 0, im.shape[1]-1); x1 = np.clip(x1, 0, im.shape[1]-1); y0 = np.clip(y0, 0, im.shape[0]-1); y1 = np.clip(y1, 0, im.shape[0]-1); Ia = im[ y0, x0 ] Ib = im[ y1, x0 ] Ic = im[ y0, x1 ] Id = im[ y1, x1 ] wa = (1-x+x0) * (1-y+y0) wb = (1-x+x0) * (y-y0) wc = (x-x0) * (1-y+y0) wd = (x-x0) * (y-y0) wa = wa.reshape(x.shape[0], x.shape[1], 1) wb = wb.reshape(x.shape[0], x.shape[1], 1) wc = wc.reshape(x.shape[0], x.shape[1], 1) wd = wd.reshape(x.shape[0], x.shape[1], 1) return wa*Ia + wb*Ib + wc*Ic + wd*Id # Get the parameters for a layer from Caffe's proto entries def getopts(layer, name): if hasattr(layer, name): return getattr(layer, name) else: # Older Caffe proto formats did not have sub-structures for layer # specific parameters but mixed everything up! This falls back to # that situation when fetching the parameters. return layer # -------------------------------------------------------------------- # Load average image # -------------------------------------------------------------------- average_image = None resize_average_image = False if args.average_image: print 'Loading average image from {}'.format(args.average_image.name) resize_average_image = True # in case different from data size avgim_nm, avgim_ext = os.path.splitext(args.average_image.name) if avgim_ext == '.binaryproto': blob=caffe_pb2.BlobProto() blob.MergeFromString(args.average_image.read()) average_image = blobproto_to_array(blob).astype('float32') average_image = np.squeeze(average_image,3) if args.transpose and average_image is not None: average_image = average_image.transpose([1,0,2]) average_image = average_image[:,:,: : -1] # to RGB elif avgim_ext == '.mat': avgim_data = scipy.io.loadmat(args.average_image) average_image = avgim_data['mean_img'] else: print 'Unsupported average image format {}'.format(avgim_ext) if args.average_value: rgb = make_tuple(args.average_value) print 'Using average image value', rgb # this will be resized later to a constant image average_image = np.array(rgb,dtype=float).reshape(1,1,3,order='F') resize_average_image = False # -------------------------------------------------------------------- # Load ImageNet synseths (if any) # -------------------------------------------------------------------- synsets_wnid=None synsets_name=None if args.synsets: print 'Loading synsets from {}'.format(args.synsets.name) r=re.compile('(?P<wnid>n[0-9]{8}?) (?P<name>.*)') synsets_wnid=[] synsets_name=[] for line in args.synsets: match = r.match(line) synsets_wnid.append(match.group('wnid')) synsets_name.append(match.group('name')) if args.class_names: synsets_wnid=list(make_tuple(args.class_names)) synsets_name=synsets_wnid # -------------------------------------------------------------------- # Load layers # -------------------------------------------------------------------- # Caffe stores the network structure and data into two different files # We load them both and merge them into a single MATLAB structure net=caffe_pb2.NetParameter() data=caffe_pb2.NetParameter() print 'Loading Caffe CNN structure from {}'.format(args.caffe_proto.name) google.protobuf.text_format.Merge(args.caffe_proto.read(), net) if args.caffe_data: print 'Loading Caffe CNN parameters from {}'.format(args.caffe_data.name) data.MergeFromString(args.caffe_data.read()) # -------------------------------------------------------------------- # Read layers in a CaffeModel object # -------------------------------------------------------------------- if args.caffe_variant in ['caffe_b590f1d', 'caffe_fastrcnn']: layers_list = net.layer data_layers_list = data.layer else: layers_list = net.layers data_layers_list = data.layers print 'Converting {} layers'.format(len(layers_list)) cmodel = CaffeModel() for layer in layers_list: # Depending on how old the proto-buf, the top and bottom parameters # are found at a different level than the others top = layer.top bottom = layer.bottom if args.caffe_variant in ['vgg-caffe', 'caffe-old']: layer = layer.layer # get the type of layer # depending on the Caffe variant, this is a string or a numeric # ID, which we convert back to a string ltype = layer.type if not isinstance(ltype, basestring): ltype = layers_type[ltype] print 'Added layer \'{}\' ({})'.format(ltype, layer.name) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ if ltype in ['conv', 'deconvolution', 'Convolution', 'Deconvolution']: opts = getopts(layer, 'convolution_param') if hasattr(opts, 'kernelsize'): kernel_size = opts.kernelsize else: kernel_size = opts.kernel_size if hasattr(opts, 'bias_term'): bias_term = opts.bias_term else: bias_term = True if hasattr(opts, 'dilation'): dilation = opts.dilation else: dilation = 1 if ltype in ['conv', 'Convolution']: clayer = CaffeConv(layer.name, bottom, top, kernel_size = tolist(kernel_size), bias_term = bias_term, num_output = opts.num_output, group = opts.group, dilation = dilation, stride = tolist(opts.stride), pad = tolist(opts.pad)) else: clayer = CaffeDeconvolution(layer.name, bottom, top, kernel_size = tolist(kernel_size), bias_term = bias_term, num_output = opts.num_output, group = opts.group, dilation = dilation, stride = tolist(opts.stride), pad = tolist(opts.pad)) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['innerproduct', 'inner_product', 'InnerProduct']: opts = getopts(layer, 'inner_product_param') if hasattr(opts, 'bias_term'): bias_term = opts.bias_term else: bias_term = True if hasattr(opts, 'axis'): axis = opts.axis else: axis = 1 clayer = CaffeInnerProduct(layer.name, bottom, top, num_output = opts.num_output, bias_term = bias_term, axis = axis) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['relu', 'ReLU']: clayer = CaffeReLU(layer.name, bottom, top) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['crop', 'Crop']: clayer = CaffeCrop(layer.name, bottom, top) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['lrn', 'LRN']: opts = getopts(layer, 'lrn_param') local_size = float(opts.local_size) alpha = float(opts.alpha) beta = float(opts.beta) kappa = opts.k if hasattr(opts,'k') else 1. regions = ['across_channels', 'within_channel'] if hasattr(opts, 'norm_region'): norm_region = opts.norm_region else: norm_region = 0 clayer = CaffeLRN(layer.name, bottom, top, local_size = local_size, alpha = alpha, beta = beta, norm_region = regions[norm_region], kappa = kappa) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['pool', 'Pooling']: opts = getopts(layer, 'pooling_param') if hasattr(layer, 'kernelsize'): kernel_size = opts.kernelsize else: kernel_size = opts.kernel_size clayer = CaffePooling(layer.name, bottom, top, method = ['max', 'avg'][opts.pool], pad = tolist(opts.pad), kernel_size = tolist(kernel_size), stride = tolist(opts.stride)) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['dropout', 'Dropout']: opts = getopts(layer, 'dropout_param') clayer = CaffeDropout(layer.name, bottom, top, opts.dropout_ratio) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['softmax', 'Softmax']: clayer = CaffeSoftMax(layer.name, bottom, top) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['softmax_loss', 'SoftmaxLoss']: clayer = CaffeSoftMaxLoss(layer.name, bottom, top) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['concat', 'Concat']: opts = getopts(layer, 'concat_param') clayer = CaffeConcat(layer.name, bottom, top, 3 - opts.concat_dim) # todo: depreceted in recent Caffes # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['Scale']: opts = getopts(layer, 'scale_param') clayer = CaffeScale(layer.name, bottom, top, axis = opts.axis, num_axes = opts.num_axes, bias_term = opts.bias_term) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['BatchNorm']: opts = getopts(layer, 'batch_norm_param') clayer = CaffeBatchNorm(layer.name, bottom, top, use_global_stats = opts.use_global_stats, moving_average_fraction = opts.moving_average_fraction, eps = opts.eps) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['eltwise', 'Eltwise']: opts = getopts(layer, 'eltwise_param') operations = ['prod', 'sum', 'max'] clayer = CaffeEltWise(layer.name, bottom, top, operation = operations[opts.operation], coeff = opts.coeff, stable_prod_grad = opts.stable_prod_grad) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['data', 'Data']: opts = getopts(layer, 'eltwise_param') operations = ['prod', 'sum', 'max'] clayer = CaffeData(layer.name, bottom, top, operation = operations[opts.operation], coeff = opts.coeff, stable_prod_grad = opts.stable_prod_grad) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['roipooling', 'ROIPooling']: opts = getopts(layer, 'roi_pooling_param') clayer = CaffeROIPooling(layer.name, bottom, top, pooled_w = opts.pooled_w, pooled_h = opts.pooled_h, spatial_scale = opts.spatial_scale) # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ elif ltype in ['accuracy', 'Accuracy']: continue # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ else: print 'Warning: unknown layer type', ltype continue if clayer is not None: clayer.model = cmodel cmodel.addLayer(clayer) # Fill parameters for dlayer in data_layers_list: if args.caffe_variant in ['vgg-caffe', 'caffe-old']: dlayer = dlayer.layer if dlayer.name == layer.name: for i, blob in enumerate(dlayer.blobs): blob = blobproto_to_array(blob).astype('float32') print ' + parameter \'%s\' <-- blob%s' % (clayer.params[i], blob.shape) clayer.setBlob(cmodel, i, blob) # -------------------------------------------------------------------- # Get the size of the network variables # -------------------------------------------------------------------- # Get the sizes of the network inputs for i, inputVarName in enumerate(net.input): if hasattr(net, 'input_shape') and net.input_shape: shape = net.input_shape[i].dim._values # ensure that shape is a list of dimensions if isinstance(shape, caffe_pb2.BlobShape): # shape.tolist() may not preserve the order of dimensions shape = shape.dim._values shape.reverse() else: shape = [net.input_dim[k + 4*i] for k in [3,2,1,0]] cmodel.vars[inputVarName].shape = shape print ' c- Input \'{}\' is {}'.format(inputVarName, shape) # -------------------------------------------------------------------- # Sanitize # -------------------------------------------------------------------- # Rename layers, parametrs, and variables if they contain symbols that # are incompatible with MatConvNet. layerNames = cmodel.layers.keys() for name in layerNames: ename = escape(name) if ename == name: continue # ensure unique while cmodel.layers.has_key(ename): ename = ename + 'x' print "Renaming layer {} to {}".format(name, ename) cmodel.renameLayer(name, ename) varNames = cmodel.vars.keys() for name in varNames: ename = escape(name) if ename == name: continue while cmodel.vars.has_key(ename): ename = ename + 'x' print "Renaming variable {} to {}".format(name, ename) cmodel.renameVar(name, ename) parNames = cmodel.params.keys() for name in parNames: ename = escape(name) if ename == name: continue while cmodel.params.has_key(ename): ename = ename + 'x' print "Renaming parameter {} to {}".format(name, ename) cmodel.renameParam(name, ename) # Split in-place layers. MatConvNet handles such optimizations # differently. for layer in cmodel.layers.itervalues(): if len(layer.inputs[0]) >= 1 and \ len(layer.outputs[0]) >= 1 and \ layer.inputs[0] == layer.outputs[0]: name = layer.inputs[0] ename = layer.inputs[0] while cmodel.vars.has_key(ename): ename = ename + 'x' print "Splitting in-place layer: renaming variable {} to {}".format(name, ename) cmodel.addVar(ename) cmodel.renameVar(name, ename, afterLayer=layer.name) layer.inputs[0] = name layer.outputs[0] = ename # -------------------------------------------------------------------- # Get variable sizes # -------------------------------------------------------------------- # Get the size of all other variables. This information is required # for some special layer conversions: # # * For Pooling layers, fix incompatibility between padding in # MatConvNet and Caffe. # # * For Crop layers (in FCNs), determine the amount of crop (in Caffe # this is done at run time). # Unflatten ROIPooling. ROIPooling will produce a H x W array instead # of a stacked version of the same. The reshape operation below will # convert the following InnerProduct layers in corresponding # convolitions. This works well with transposition later. layerNames = cmodel.layers.keys() for name in layerNames: layer = cmodel.layers[name] if type(layer) is CaffeROIPooling: childrenNames = cmodel.getLayersWithInput(layer.outputs[0]) for childName in childrenNames: child = cmodel.layers[childName] if type(child) is not CaffeInnerProduct: print "Error: cannot unflatten ROIPooling if this is not followed only InnerProduct layers" sys.exit(1) layer.flatten = False cmodel.reshape() # -------------------------------------------------------------------- # Edit # -------------------------------------------------------------------- # Remove dropout if args.remove_dropout: layerNames = cmodel.layers.keys() for name in layerNames: layer = cmodel.layers[name] if type(layer) is CaffeDropout: print "Removing dropout layer ", name cmodel.renameVar(layer.outputs[0], layer.inputs[0]) cmodel.removeLayer(name) # Remove loss if args.remove_loss: layerNames = cmodel.layers.keys() for name in layerNames: layer = cmodel.layers[name] if type(layer) is CaffeSoftMaxLoss: print "Removing loss layer ", name cmodel.renameVar(layer.outputs[0], layer.inputs[0]) cmodel.removeLayer(name) # Append softmax for i, name in enumerate(args.append_softmax): # search for the layer to append SoftMax to if not cmodel.layers.has_key(name): print 'Cannot append softmax to layer {} as no such layer could be found'.format(name) sys.exit(1) if len(args.append_softmax) > 1: layerName = 'softmax' + (l + 1) outputs= ['prob' + (l + 1)] else: layerName = 'softmax' outputs = ['prob'] cmodel.addLayer(CaffeSoftMax(layerName, cmodel.layers[name].outputs[0:1], outputs)) # Simplifications if args.simplify: # Merge BatchNorm followed by Scale layerNames = cmodel.layers.keys() for name in layerNames: layer = cmodel.layers[name] if type(layer) is CaffeScale: if len(layer.inputs) > 1: continue # the scaling factor is an input, not a parameter if len(cmodel.getLayersWithInput(layer.inputs[0])) > 1: continue # other layers use the same input parentNames = cmodel.getLayersWithOutput(layer.inputs[0]) if len(parentNames) != 1: continue parent = cmodel.layers[parentNames[0]] if type(parent) is not CaffeBatchNorm: continue smult = cmodel.params[layer.params[0]] sbias = cmodel.params[layer.params[1]] mult = cmodel.params[parent.params[0]] bias = cmodel.params[parent.params[1]] # simplification can only occur if scale layer is 1x1xC if smult.shape[0] != 1 or smult.shape[1] != 1: continue C = smult.shape[2] mult.value = np.reshape(smult.value, (C,)) * mult.value bias.value = np.reshape(smult.value, (C,)) * bias.value + \ np.reshape(sbias.value, (C,)) print "Simplifying scale layer \'{}\'".format(name) cmodel.renameVar(layer.outputs[0], layer.inputs[0]) cmodel.removeLayer(name) # -------------------------------------------------------------------- # Transposition # -------------------------------------------------------------------- # # There are a few different conventions in MATLAB and Caffe: # # * In MATLAB, the frist spatial dimension is Y (vertical) followed by # X (horizontal), whereas in Caffe the opposite is true. # # * In MATLAB, images are stored in RGB format, whereas Caffe uses # BGR. # # * In MatConvNet, the first spatial coordinate is Y, whereas in Caffe # it is X. This affects layers such as ROI pooling. # # These conventions means that, if the network is directly saved in # MCN format, then images and spatial coordinates are transposed as # just described. While this is not a deal breaker, it is # inconvenient. # # Thus we transpose all X,Y spatial dimensions in the network. For now, # this is partially heuristic. In the future, we should add adapter layer to # convert from MCN inputs and outputs to Caffe input and outputs and then # simplity those away using graph transformations. # Mark variables: # - requiring BGR -> RGB conversion # - requiring XY transposition for i, inputVarName in enumerate(net.input): if inputVarName == 'data' or i == 0: if cmodel.vars[inputVarName].shape[2] == 3: cmodel.vars[inputVarName].bgrInput = (args.color_format == 'bgr') if not inputVarName == 'rois': cmodel.vars[inputVarName].transposable = True else: cmodel.vars[inputVarName].transposable = False # Apply transformations if args.transpose: cmodel.transpose() cmodel.display() # -------------------------------------------------------------------- # Normalization # -------------------------------------------------------------------- minputs = np.empty(shape=[0,], dtype=minputdt) # Determine the size of the inputs and input image (dataShape) for i, inputVarName in enumerate(net.input): shape = cmodel.vars[inputVarName].shape # add metadata minput = np.empty(shape=[1,], dtype=minputdt) minput['name'][0] = inputVarName minput['size'][0] = row(shape) minputs = np.append(minputs, minput, axis=0) # heuristic: the first input or 'data' is the input image if i == 0 or inputVarName == 'data': dataShape = shape print "Input image data tensor shape:", dataShape fullImageSize = [256, 256] if args.full_image_size: fullImageSize = list(make_tuple(args.full_image_size)) print "Full input image size:", fullImageSize if average_image is not None: if resize_average_image: x = numpy.linspace(0, average_image.shape[1]-1, dataShape[0]) y = numpy.linspace(0, average_image.shape[0]-1, dataShape[1]) x, y = np.meshgrid(x, y, sparse=False, indexing='xy') average_image = bilinear_interpolate(average_image, x, y) else: average_image = np.zeros((0,),dtype='float') mnormalization = { 'imageSize': row(dataShape), 'averageImage': average_image, 'interpolation': 'bilinear', 'keepAspect': True, 'border': row([0,0]), 'cropSize': 1.0} if len(fullImageSize) == 1: fw = max(fullImageSize[0],dataShape[1]) fh = max(fullImageSize[0],dataShape[0]) mnormalization['border'] = max([float(fw - dataShape[1]), float(fh - dataShape[0])]) mnormalization['cropSize'] = min([float(dataShape[1]) / fw, float(dataShape[0]) / fh]) else: fw = max(fullImageSize[0],dataShape[1]) fh = max(fullImageSize[1],dataShape[0]) mnormalization['border'] = row([float(fw - dataShape[1]), float(fh - dataShape[0])]) mnormalization['cropSize'] = row([float(dataShape[1]) / fw, float(dataShape[0]) / fh]) if args.caffe_variant == 'caffe_fastrcnn': mnormalization['interpolation'] = 'bilinear' if args.preproc == 'caffe': mnormalization['interpolation'] = 'bicubic' mnormalization['keepAspect'] = False print 'Input image border: ', mnormalization['border'] print 'Full input image relative crop size: ', mnormalization['cropSize'] # -------------------------------------------------------------------- # Classes # -------------------------------------------------------------------- mclassnames = np.empty((0,), dtype=np.object) mclassdescriptions = np.array((0,), dtype=np.object) if synsets_wnid: mclassnames = np.array(synsets_wnid, dtype=np.object).reshape(1,-1) if synsets_name: mclassdescriptions = np.array(synsets_name, dtype=np.object).reshape(1,-1) mclasses = dictToMatlabStruct({'name': mclassnames, 'description': mclassdescriptions}) # -------------------------------------------------------------------- # Convert to MATLAB # -------------------------------------------------------------------- # net.meta mmeta = dictToMatlabStruct({'inputs': minputs.reshape(1,-1), 'normalization': mnormalization, 'classes': mclasses}) if args.output_format == 'dagnn': # This object should stay a dictionary and not a NumPy array due to # how NumPy saves to MATLAB mnet = {'layers': np.empty(shape=[0,], dtype=mlayerdt), 'params': np.empty(shape=[0,], dtype=mparamdt), 'meta': mmeta} for layer in cmodel.layers.itervalues(): mnet['layers'] = np.append(mnet['layers'], layer.toMatlab(), axis=0) for param in cmodel.params.itervalues(): mnet['params'] = np.append(mnet['params'], param.toMatlab(), axis=0) # to row mnet['layers'] = mnet['layers'].reshape(1,-1) mnet['params'] = mnet['params'].reshape(1,-1) elif args.output_format == 'simplenn': # This object should stay a dictionary and not a NumPy array due to # how NumPy saves to MATLAB mnet = {'layers': np.empty(shape=[0,], dtype=np.object), 'meta': mmeta} for layer in cmodel.layers.itervalues(): mnet['layers'] = np.append(mnet['layers'], np.object) mnet['layers'][-1] = dictToMatlabStruct(layer.toMatlabSimpleNN()) # to row mnet['layers'] = mnet['layers'].reshape(1,-1) # -------------------------------------------------------------------- # Save output # -------------------------------------------------------------------- print 'Saving network to {}'.format(args.output.name) scipy.io.savemat(args.output, mnet, oned_as='column')
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DRT
DRT-master/external_libs/matconvnet/utils/proto/caffe_0115_pb2.py
# Generated by the protocol buffer compiler. 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descriptor.EnumValueDescriptor( name='NESTEROV', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ADAGRAD', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=1606, serialized_end=1654, ) _LAYERPARAMETER_LAYERTYPE = descriptor.EnumDescriptor( name='LayerType', full_name='caffe.LayerParameter.LayerType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='NONE', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='ABSVAL', index=1, number=35, options=None, type=None), descriptor.EnumValueDescriptor( name='ACCURACY', index=2, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ARGMAX', index=3, number=30, options=None, type=None), descriptor.EnumValueDescriptor( name='BNLL', index=4, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='CONCAT', index=5, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='CONTRASTIVE_LOSS', index=6, number=37, options=None, type=None), descriptor.EnumValueDescriptor( name='CONVOLUTION', index=7, number=4, options=None, type=None), descriptor.EnumValueDescriptor( name='DATA', index=8, number=5, options=None, type=None), descriptor.EnumValueDescriptor( name='DROPOUT', index=9, number=6, options=None, type=None), descriptor.EnumValueDescriptor( name='DUMMY_DATA', index=10, number=32, options=None, type=None), descriptor.EnumValueDescriptor( name='EUCLIDEAN_LOSS', index=11, number=7, options=None, type=None), descriptor.EnumValueDescriptor( name='ELTWISE', index=12, number=25, options=None, type=None), descriptor.EnumValueDescriptor( name='FLATTEN', index=13, number=8, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_DATA', index=14, number=9, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_OUTPUT', index=15, number=10, options=None, type=None), descriptor.EnumValueDescriptor( name='HINGE_LOSS', index=16, number=28, options=None, type=None), descriptor.EnumValueDescriptor( name='IM2COL', index=17, number=11, options=None, type=None), descriptor.EnumValueDescriptor( name='IMAGE_DATA', index=18, number=12, options=None, type=None), descriptor.EnumValueDescriptor( name='INFOGAIN_LOSS', index=19, number=13, options=None, type=None), descriptor.EnumValueDescriptor( name='INNER_PRODUCT', index=20, number=14, options=None, type=None), descriptor.EnumValueDescriptor( name='LRN', index=21, number=15, options=None, type=None), descriptor.EnumValueDescriptor( name='MEMORY_DATA', index=22, number=29, options=None, type=None), descriptor.EnumValueDescriptor( name='MULTINOMIAL_LOGISTIC_LOSS', index=23, number=16, options=None, type=None), descriptor.EnumValueDescriptor( name='MVN', index=24, number=34, options=None, type=None), descriptor.EnumValueDescriptor( name='POOLING', index=25, number=17, options=None, type=None), descriptor.EnumValueDescriptor( name='POWER', index=26, number=26, options=None, type=None), descriptor.EnumValueDescriptor( name='RELU', index=27, number=18, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID', index=28, number=19, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID_CROSS_ENTROPY_LOSS', index=29, number=27, options=None, type=None), descriptor.EnumValueDescriptor( name='SILENCE', index=30, number=36, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX', index=31, number=20, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX_LOSS', index=32, number=21, options=None, type=None), descriptor.EnumValueDescriptor( name='SPLIT', index=33, number=22, options=None, type=None), descriptor.EnumValueDescriptor( name='SLICE', index=34, number=33, options=None, type=None), descriptor.EnumValueDescriptor( name='TANH', index=35, number=23, options=None, type=None), descriptor.EnumValueDescriptor( name='WINDOW_DATA', index=36, number=24, options=None, type=None), descriptor.EnumValueDescriptor( name='THRESHOLD', index=37, number=31, options=None, type=None), ], containing_type=None, options=None, serialized_start=3760, serialized_end=4332, ) _LAYERPARAMETER_DIMCHECKMODE = descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.LayerParameter.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=4334, serialized_end=4376, ) _CONVOLUTIONPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.ConvolutionParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _DATAPARAMETER_DB = descriptor.EnumDescriptor( name='DB', full_name='caffe.DataParameter.DB', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='LEVELDB', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='LMDB', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=5339, serialized_end=5366, ) _ELTWISEPARAMETER_ELTWISEOP = descriptor.EnumDescriptor( name='EltwiseOp', full_name='caffe.EltwiseParameter.EltwiseOp', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='PROD', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='SUM', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='MAX', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5672, serialized_end=5711, ) _HINGELOSSPARAMETER_NORM = descriptor.EnumDescriptor( name='Norm', full_name='caffe.HingeLossParameter.Norm', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='L1', index=0, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='L2', index=1, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5928, serialized_end=5950, ) _LRNPARAMETER_NORMREGION = descriptor.EnumDescriptor( name='NormRegion', full_name='caffe.LRNParameter.NormRegion', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='ACROSS_CHANNELS', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='WITHIN_CHANNEL', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=6536, serialized_end=6589, ) _POOLINGPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.PoolingParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7062, serialized_end=7108, ) _POOLINGPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.PoolingParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _RELUPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.ReLUParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _SIGMOIDPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SigmoidParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _SOFTMAXPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SoftmaxParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _TANHPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.TanHParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5085, serialized_end=5128, ) _V0LAYERPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.V0LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7062, serialized_end=7108, ) _BLOBPROTO = descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=22, serialized_end=143, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=145, serialized_end=195, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=197, serialized_end=302, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sparse', full_name='caffe.FillerParameter.sparse', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=305, serialized_end=449, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=1, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='state', full_name='caffe.NetParameter.state', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=452, serialized_end=616, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='net', full_name='caffe.SolverParameter.net', index=0, number=24, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='net_param', full_name='caffe.SolverParameter.net_param', index=1, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=2, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=3, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net_param', full_name='caffe.SolverParameter.train_net_param', index=4, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net_param', full_name='caffe.SolverParameter.test_net_param', index=5, number=22, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_state', full_name='caffe.SolverParameter.train_state', index=6, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_state', full_name='caffe.SolverParameter.test_state', index=7, number=27, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=8, number=3, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=9, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_compute_loss', full_name='caffe.SolverParameter.test_compute_loss', index=10, number=19, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_initialization', full_name='caffe.SolverParameter.test_initialization', index=11, number=32, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=12, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=13, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='average_loss', full_name='caffe.SolverParameter.average_loss', index=14, number=33, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=15, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=16, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=17, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=18, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=19, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=20, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='regularization_type', full_name='caffe.SolverParameter.regularization_type', index=21, number=29, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("L2", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=22, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepvalue', full_name='caffe.SolverParameter.stepvalue', index=23, number=34, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=24, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=25, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=26, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=27, number=17, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=28, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='random_seed', full_name='caffe.SolverParameter.random_seed', index=29, number=20, type=3, cpp_type=2, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_type', full_name='caffe.SolverParameter.solver_type', index=30, number=30, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='delta', full_name='caffe.SolverParameter.delta', index=31, number=31, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-08, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='debug_info', full_name='caffe.SolverParameter.debug_info', index=32, number=23, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_after_train', full_name='caffe.SolverParameter.snapshot_after_train', index=33, number=28, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOLVERPARAMETER_SOLVERMODE, _SOLVERPARAMETER_SOLVERTYPE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=619, serialized_end=1654, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='current_step', full_name='caffe.SolverState.current_step', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1656, serialized_end=1764, ) _NETSTATE = descriptor.Descriptor( name='NetState', full_name='caffe.NetState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetState.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='level', full_name='caffe.NetState.level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetState.stage', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1766, serialized_end=1844, ) _NETSTATERULE = descriptor.Descriptor( name='NetStateRule', full_name='caffe.NetStateRule', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetStateRule.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min_level', full_name='caffe.NetStateRule.min_level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_level', full_name='caffe.NetStateRule.max_level', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetStateRule.stage', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='not_stage', full_name='caffe.NetStateRule.not_stage', index=4, number=5, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1846, serialized_end=1961, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerParameter.bottom', index=0, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerParameter.top', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=2, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='include', full_name='caffe.LayerParameter.include', index=3, number=32, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exclude', full_name='caffe.LayerParameter.exclude', index=4, number=33, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=5, number=5, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param', full_name='caffe.LayerParameter.param', index=7, number=1001, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blob_share_mode', full_name='caffe.LayerParameter.blob_share_mode', index=8, number=1002, type=14, cpp_type=8, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.LayerParameter.blobs_lr', index=9, number=7, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.LayerParameter.weight_decay', index=10, number=8, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.LayerParameter.loss_weight', index=11, number=35, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.LayerParameter.accuracy_param', index=12, number=27, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.LayerParameter.argmax_param', index=13, number=23, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.LayerParameter.concat_param', index=14, number=9, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.LayerParameter.contrastive_loss_param', index=15, number=40, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.LayerParameter.convolution_param', index=16, number=10, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.LayerParameter.data_param', index=17, number=11, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.LayerParameter.dropout_param', index=18, number=12, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.LayerParameter.dummy_data_param', index=19, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.LayerParameter.eltwise_param', index=20, number=24, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.LayerParameter.hdf5_data_param', index=21, number=13, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.LayerParameter.hdf5_output_param', index=22, number=14, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.LayerParameter.hinge_loss_param', index=23, number=29, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.LayerParameter.image_data_param', index=24, number=15, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.LayerParameter.infogain_loss_param', index=25, number=16, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.LayerParameter.inner_product_param', index=26, number=17, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.LayerParameter.lrn_param', index=27, number=18, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.LayerParameter.memory_data_param', index=28, number=22, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.LayerParameter.mvn_param', index=29, number=34, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.LayerParameter.pooling_param', index=30, number=19, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.LayerParameter.power_param', index=31, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='relu_param', full_name='caffe.LayerParameter.relu_param', index=32, number=30, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.LayerParameter.sigmoid_param', index=33, number=38, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.LayerParameter.softmax_param', index=34, number=39, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_param', full_name='caffe.LayerParameter.slice_param', index=35, number=31, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.LayerParameter.tanh_param', index=36, number=37, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.LayerParameter.threshold_param', index=37, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.LayerParameter.window_data_param', index=38, number=20, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='transform_param', full_name='caffe.LayerParameter.transform_param', index=39, number=36, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.LayerParameter.layer', index=40, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LAYERPARAMETER_LAYERTYPE, _LAYERPARAMETER_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1964, serialized_end=4376, ) _TRANSFORMATIONPARAMETER = descriptor.Descriptor( name='TransformationParameter', full_name='caffe.TransformationParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='scale', full_name='caffe.TransformationParameter.scale', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.TransformationParameter.mirror', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.TransformationParameter.crop_size', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.TransformationParameter.mean_file', index=3, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4378, serialized_end=4485, ) _ACCURACYPARAMETER = descriptor.Descriptor( name='AccuracyParameter', full_name='caffe.AccuracyParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='top_k', full_name='caffe.AccuracyParameter.top_k', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4487, serialized_end=4524, ) _ARGMAXPARAMETER = descriptor.Descriptor( name='ArgMaxParameter', full_name='caffe.ArgMaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='out_max_val', full_name='caffe.ArgMaxParameter.out_max_val', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top_k', full_name='caffe.ArgMaxParameter.top_k', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4526, serialized_end=4589, ) _CONCATPARAMETER = descriptor.Descriptor( name='ConcatParameter', full_name='caffe.ConcatParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.ConcatParameter.concat_dim', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4591, serialized_end=4631, ) _CONTRASTIVELOSSPARAMETER = descriptor.Descriptor( name='ContrastiveLossParameter', full_name='caffe.ContrastiveLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='margin', full_name='caffe.ContrastiveLossParameter.margin', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4633, serialized_end=4678, ) _CONVOLUTIONPARAMETER = descriptor.Descriptor( name='ConvolutionParameter', full_name='caffe.ConvolutionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.ConvolutionParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ConvolutionParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.ConvolutionParameter.pad', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.ConvolutionParameter.pad_h', index=3, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.ConvolutionParameter.pad_w', index=4, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.ConvolutionParameter.kernel_size', index=5, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.ConvolutionParameter.kernel_h', index=6, number=11, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.ConvolutionParameter.kernel_w', index=7, number=12, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.ConvolutionParameter.group', index=8, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.ConvolutionParameter.stride', index=9, number=6, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.ConvolutionParameter.stride_h', index=10, number=13, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.ConvolutionParameter.stride_w', index=11, number=14, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.ConvolutionParameter.weight_filler', index=12, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ConvolutionParameter.bias_filler', index=13, number=8, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ConvolutionParameter.engine', index=14, number=15, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _CONVOLUTIONPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4681, serialized_end=5128, ) _DATAPARAMETER = descriptor.Descriptor( name='DataParameter', full_name='caffe.DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.DataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.DataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='backend', full_name='caffe.DataParameter.backend', index=3, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.DataParameter.scale', index=4, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.DataParameter.mean_file', index=5, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.DataParameter.crop_size', index=6, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.DataParameter.mirror', index=7, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _DATAPARAMETER_DB, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5131, serialized_end=5366, ) _DROPOUTPARAMETER = descriptor.Descriptor( name='DropoutParameter', full_name='caffe.DropoutParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.DropoutParameter.dropout_ratio', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5368, serialized_end=5414, ) _DUMMYDATAPARAMETER = descriptor.Descriptor( name='DummyDataParameter', full_name='caffe.DummyDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='data_filler', full_name='caffe.DummyDataParameter.data_filler', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num', full_name='caffe.DummyDataParameter.num', index=1, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.DummyDataParameter.channels', index=2, number=3, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.DummyDataParameter.height', index=3, number=4, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.DummyDataParameter.width', index=4, number=5, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5416, serialized_end=5543, ) _ELTWISEPARAMETER = descriptor.Descriptor( name='EltwiseParameter', full_name='caffe.EltwiseParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='operation', full_name='caffe.EltwiseParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='coeff', full_name='caffe.EltwiseParameter.coeff', index=1, number=2, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stable_prod_grad', full_name='caffe.EltwiseParameter.stable_prod_grad', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _ELTWISEPARAMETER_ELTWISEOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5546, serialized_end=5711, ) _THRESHOLDPARAMETER = descriptor.Descriptor( name='ThresholdParameter', full_name='caffe.ThresholdParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='threshold', full_name='caffe.ThresholdParameter.threshold', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5713, serialized_end=5755, ) _HDF5DATAPARAMETER = descriptor.Descriptor( name='HDF5DataParameter', full_name='caffe.HDF5DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.HDF5DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.HDF5DataParameter.batch_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5757, serialized_end=5812, ) _HDF5OUTPUTPARAMETER = descriptor.Descriptor( name='HDF5OutputParameter', full_name='caffe.HDF5OutputParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='file_name', full_name='caffe.HDF5OutputParameter.file_name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5814, serialized_end=5854, ) _HINGELOSSPARAMETER = descriptor.Descriptor( name='HingeLossParameter', full_name='caffe.HingeLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='norm', full_name='caffe.HingeLossParameter.norm', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _HINGELOSSPARAMETER_NORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5856, serialized_end=5950, ) _IMAGEDATAPARAMETER = descriptor.Descriptor( name='ImageDataParameter', full_name='caffe.ImageDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.ImageDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.ImageDataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.ImageDataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.ImageDataParameter.shuffle', index=3, number=8, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.ImageDataParameter.new_height', index=4, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.ImageDataParameter.new_width', index=5, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ImageDataParameter.scale', index=6, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.ImageDataParameter.mean_file', index=7, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.ImageDataParameter.crop_size', index=8, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.ImageDataParameter.mirror', index=9, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5953, serialized_end=6182, ) _INFOGAINLOSSPARAMETER = descriptor.Descriptor( name='InfogainLossParameter', full_name='caffe.InfogainLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.InfogainLossParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6184, serialized_end=6223, ) _INNERPRODUCTPARAMETER = descriptor.Descriptor( name='InnerProductParameter', full_name='caffe.InnerProductParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.InnerProductParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.InnerProductParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.InnerProductParameter.weight_filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.InnerProductParameter.bias_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6226, serialized_end=6386, ) _LRNPARAMETER = descriptor.Descriptor( name='LRNParameter', full_name='caffe.LRNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='local_size', full_name='caffe.LRNParameter.local_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LRNParameter.alpha', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LRNParameter.beta', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='norm_region', full_name='caffe.LRNParameter.norm_region', index=3, number=4, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LRNPARAMETER_NORMREGION, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6389, serialized_end=6589, ) _MEMORYDATAPARAMETER = descriptor.Descriptor( name='MemoryDataParameter', full_name='caffe.MemoryDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='batch_size', full_name='caffe.MemoryDataParameter.batch_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.MemoryDataParameter.channels', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.MemoryDataParameter.height', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.MemoryDataParameter.width', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6591, serialized_end=6681, ) _MVNPARAMETER = descriptor.Descriptor( name='MVNParameter', full_name='caffe.MVNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='normalize_variance', full_name='caffe.MVNParameter.normalize_variance', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='across_channels', full_name='caffe.MVNParameter.across_channels', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6683, serialized_end=6763, ) _POOLINGPARAMETER = descriptor.Descriptor( name='PoolingParameter', full_name='caffe.PoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pool', full_name='caffe.PoolingParameter.pool', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.PoolingParameter.pad', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.PoolingParameter.pad_h', index=2, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.PoolingParameter.pad_w', index=3, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.PoolingParameter.kernel_size', index=4, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.PoolingParameter.kernel_h', index=5, number=5, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.PoolingParameter.kernel_w', index=6, number=6, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.PoolingParameter.stride', index=7, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.PoolingParameter.stride_h', index=8, number=7, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.PoolingParameter.stride_w', index=9, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.PoolingParameter.engine', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _POOLINGPARAMETER_POOLMETHOD, _POOLINGPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6766, serialized_end=7153, ) _POWERPARAMETER = descriptor.Descriptor( name='PowerParameter', full_name='caffe.PowerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='power', full_name='caffe.PowerParameter.power', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.PowerParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.PowerParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7155, serialized_end=7225, ) _RELUPARAMETER = descriptor.Descriptor( name='ReLUParameter', full_name='caffe.ReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='negative_slope', full_name='caffe.ReLUParameter.negative_slope', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ReLUParameter.engine', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _RELUPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7228, serialized_end=7369, ) _SIGMOIDPARAMETER = descriptor.Descriptor( name='SigmoidParameter', full_name='caffe.SigmoidParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SigmoidParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SIGMOIDPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7371, serialized_end=7491, ) _SLICEPARAMETER = descriptor.Descriptor( name='SliceParameter', full_name='caffe.SliceParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='slice_dim', full_name='caffe.SliceParameter.slice_dim', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_point', full_name='caffe.SliceParameter.slice_point', index=1, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7493, serialized_end=7552, ) _SOFTMAXPARAMETER = descriptor.Descriptor( name='SoftmaxParameter', full_name='caffe.SoftmaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SoftmaxParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOFTMAXPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7554, serialized_end=7674, ) _TANHPARAMETER = descriptor.Descriptor( name='TanHParameter', full_name='caffe.TanHParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.TanHParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _TANHPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7676, serialized_end=7790, ) _WINDOWDATAPARAMETER = descriptor.Descriptor( name='WindowDataParameter', full_name='caffe.WindowDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.WindowDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.WindowDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.WindowDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.WindowDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.WindowDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.WindowDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_threshold', full_name='caffe.WindowDataParameter.fg_threshold', index=6, number=7, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bg_threshold', full_name='caffe.WindowDataParameter.bg_threshold', index=7, number=8, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_fraction', full_name='caffe.WindowDataParameter.fg_fraction', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='context_pad', full_name='caffe.WindowDataParameter.context_pad', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_mode', full_name='caffe.WindowDataParameter.crop_mode', index=10, number=11, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7793, serialized_end=8062, ) _V0LAYERPARAMETER = descriptor.Descriptor( name='V0LayerParameter', full_name='caffe.V0LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.V0LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V0LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.V0LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.V0LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.V0LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.V0LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.V0LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.V0LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.V0LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.V0LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.V0LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.V0LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.V0LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.V0LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.V0LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.V0LayerParameter.source', index=15, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.V0LayerParameter.scale', index=16, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.V0LayerParameter.meanfile', index=17, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.V0LayerParameter.batchsize', index=18, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.V0LayerParameter.cropsize', index=19, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.V0LayerParameter.mirror', index=20, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V0LayerParameter.blobs', index=21, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V0LayerParameter.blobs_lr', index=22, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V0LayerParameter.weight_decay', index=23, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.V0LayerParameter.rand_skip', index=24, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.V0LayerParameter.det_fg_threshold', index=25, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.V0LayerParameter.det_bg_threshold', index=26, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.V0LayerParameter.det_fg_fraction', index=27, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.V0LayerParameter.det_context_pad', index=28, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.V0LayerParameter.det_crop_mode', index=29, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_num', full_name='caffe.V0LayerParameter.new_num', index=30, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_channels', full_name='caffe.V0LayerParameter.new_channels', index=31, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.V0LayerParameter.new_height', index=32, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.V0LayerParameter.new_width', index=33, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.V0LayerParameter.shuffle_images', index=34, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.V0LayerParameter.concat_dim', index=35, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V0LayerParameter.hdf5_output_param', index=36, number=1001, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V0LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8065, serialized_end=9072, ) _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _NETPARAMETER.fields_by_name['layers'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['test_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['test_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['solver_mode'].enum_type = _SOLVERPARAMETER_SOLVERMODE _SOLVERPARAMETER.fields_by_name['solver_type'].enum_type = _SOLVERPARAMETER_SOLVERTYPE _SOLVERPARAMETER_SOLVERMODE.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERTYPE.containing_type = _SOLVERPARAMETER; _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _NETSTATE.fields_by_name['phase'].enum_type = _PHASE _NETSTATERULE.fields_by_name['phase'].enum_type = _PHASE _LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['type'].enum_type = _LAYERPARAMETER_LAYERTYPE _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['blob_share_mode'].enum_type = _LAYERPARAMETER_DIMCHECKMODE _LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _LAYERPARAMETER.fields_by_name['layer'].message_type = _V0LAYERPARAMETER _LAYERPARAMETER_LAYERTYPE.containing_type = _LAYERPARAMETER; _LAYERPARAMETER_DIMCHECKMODE.containing_type = _LAYERPARAMETER; _CONVOLUTIONPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['engine'].enum_type = _CONVOLUTIONPARAMETER_ENGINE _CONVOLUTIONPARAMETER_ENGINE.containing_type = _CONVOLUTIONPARAMETER; _DATAPARAMETER.fields_by_name['backend'].enum_type = _DATAPARAMETER_DB _DATAPARAMETER_DB.containing_type = _DATAPARAMETER; _DUMMYDATAPARAMETER.fields_by_name['data_filler'].message_type = _FILLERPARAMETER _ELTWISEPARAMETER.fields_by_name['operation'].enum_type = _ELTWISEPARAMETER_ELTWISEOP _ELTWISEPARAMETER_ELTWISEOP.containing_type = _ELTWISEPARAMETER; _HINGELOSSPARAMETER.fields_by_name['norm'].enum_type = _HINGELOSSPARAMETER_NORM _HINGELOSSPARAMETER_NORM.containing_type = _HINGELOSSPARAMETER; _INNERPRODUCTPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LRNPARAMETER.fields_by_name['norm_region'].enum_type = _LRNPARAMETER_NORMREGION _LRNPARAMETER_NORMREGION.containing_type = _LRNPARAMETER; _POOLINGPARAMETER.fields_by_name['pool'].enum_type = _POOLINGPARAMETER_POOLMETHOD _POOLINGPARAMETER.fields_by_name['engine'].enum_type = _POOLINGPARAMETER_ENGINE _POOLINGPARAMETER_POOLMETHOD.containing_type = _POOLINGPARAMETER; _POOLINGPARAMETER_ENGINE.containing_type = _POOLINGPARAMETER; _RELUPARAMETER.fields_by_name['engine'].enum_type = _RELUPARAMETER_ENGINE _RELUPARAMETER_ENGINE.containing_type = _RELUPARAMETER; _SIGMOIDPARAMETER.fields_by_name['engine'].enum_type = _SIGMOIDPARAMETER_ENGINE _SIGMOIDPARAMETER_ENGINE.containing_type = _SIGMOIDPARAMETER; _SOFTMAXPARAMETER.fields_by_name['engine'].enum_type = _SOFTMAXPARAMETER_ENGINE _SOFTMAXPARAMETER_ENGINE.containing_type = _SOFTMAXPARAMETER; _TANHPARAMETER.fields_by_name['engine'].enum_type = _TANHPARAMETER_ENGINE _TANHPARAMETER_ENGINE.containing_type = _TANHPARAMETER; _V0LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['pool'].enum_type = _V0LAYERPARAMETER_POOLMETHOD _V0LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V0LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V0LAYERPARAMETER_POOLMETHOD.containing_type = _V0LAYERPARAMETER; DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE DESCRIPTOR.message_types_by_name['NetState'] = _NETSTATE DESCRIPTOR.message_types_by_name['NetStateRule'] = _NETSTATERULE DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['TransformationParameter'] = _TRANSFORMATIONPARAMETER DESCRIPTOR.message_types_by_name['AccuracyParameter'] = _ACCURACYPARAMETER DESCRIPTOR.message_types_by_name['ArgMaxParameter'] = _ARGMAXPARAMETER DESCRIPTOR.message_types_by_name['ConcatParameter'] = _CONCATPARAMETER DESCRIPTOR.message_types_by_name['ContrastiveLossParameter'] = _CONTRASTIVELOSSPARAMETER DESCRIPTOR.message_types_by_name['ConvolutionParameter'] = _CONVOLUTIONPARAMETER DESCRIPTOR.message_types_by_name['DataParameter'] = _DATAPARAMETER DESCRIPTOR.message_types_by_name['DropoutParameter'] = _DROPOUTPARAMETER DESCRIPTOR.message_types_by_name['DummyDataParameter'] = _DUMMYDATAPARAMETER DESCRIPTOR.message_types_by_name['EltwiseParameter'] = _ELTWISEPARAMETER DESCRIPTOR.message_types_by_name['ThresholdParameter'] = _THRESHOLDPARAMETER DESCRIPTOR.message_types_by_name['HDF5DataParameter'] = _HDF5DATAPARAMETER DESCRIPTOR.message_types_by_name['HDF5OutputParameter'] = _HDF5OUTPUTPARAMETER DESCRIPTOR.message_types_by_name['HingeLossParameter'] = _HINGELOSSPARAMETER DESCRIPTOR.message_types_by_name['ImageDataParameter'] = _IMAGEDATAPARAMETER DESCRIPTOR.message_types_by_name['InfogainLossParameter'] = _INFOGAINLOSSPARAMETER DESCRIPTOR.message_types_by_name['InnerProductParameter'] = _INNERPRODUCTPARAMETER DESCRIPTOR.message_types_by_name['LRNParameter'] = _LRNPARAMETER DESCRIPTOR.message_types_by_name['MemoryDataParameter'] = _MEMORYDATAPARAMETER DESCRIPTOR.message_types_by_name['MVNParameter'] = _MVNPARAMETER DESCRIPTOR.message_types_by_name['PoolingParameter'] = _POOLINGPARAMETER DESCRIPTOR.message_types_by_name['PowerParameter'] = _POWERPARAMETER DESCRIPTOR.message_types_by_name['ReLUParameter'] = _RELUPARAMETER DESCRIPTOR.message_types_by_name['SigmoidParameter'] = _SIGMOIDPARAMETER DESCRIPTOR.message_types_by_name['SliceParameter'] = _SLICEPARAMETER DESCRIPTOR.message_types_by_name['SoftmaxParameter'] = _SOFTMAXPARAMETER DESCRIPTOR.message_types_by_name['TanHParameter'] = _TANHPARAMETER DESCRIPTOR.message_types_by_name['WindowDataParameter'] = _WINDOWDATAPARAMETER DESCRIPTOR.message_types_by_name['V0LayerParameter'] = _V0LAYERPARAMETER class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) class NetState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATE # @@protoc_insertion_point(class_scope:caffe.NetState) class NetStateRule(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATERULE # @@protoc_insertion_point(class_scope:caffe.NetStateRule) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class TransformationParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TRANSFORMATIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.TransformationParameter) class AccuracyParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ACCURACYPARAMETER # @@protoc_insertion_point(class_scope:caffe.AccuracyParameter) class ArgMaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ARGMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.ArgMaxParameter) class ConcatParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONCATPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConcatParameter) class ContrastiveLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONTRASTIVELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.ContrastiveLossParameter) class ConvolutionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONVOLUTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConvolutionParameter) class DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DataParameter) class DropoutParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DROPOUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.DropoutParameter) class DummyDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DUMMYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DummyDataParameter) class EltwiseParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ELTWISEPARAMETER # @@protoc_insertion_point(class_scope:caffe.EltwiseParameter) class ThresholdParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _THRESHOLDPARAMETER # @@protoc_insertion_point(class_scope:caffe.ThresholdParameter) class HDF5DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5DataParameter) class HDF5OutputParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5OUTPUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5OutputParameter) class HingeLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HINGELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.HingeLossParameter) class ImageDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _IMAGEDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.ImageDataParameter) class InfogainLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INFOGAINLOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.InfogainLossParameter) class InnerProductParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INNERPRODUCTPARAMETER # @@protoc_insertion_point(class_scope:caffe.InnerProductParameter) class LRNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LRNPARAMETER # @@protoc_insertion_point(class_scope:caffe.LRNParameter) class MemoryDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MEMORYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.MemoryDataParameter) class MVNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MVNPARAMETER # @@protoc_insertion_point(class_scope:caffe.MVNParameter) class PoolingParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.PoolingParameter) class PowerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POWERPARAMETER # @@protoc_insertion_point(class_scope:caffe.PowerParameter) class ReLUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _RELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReLUParameter) class SigmoidParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SIGMOIDPARAMETER # @@protoc_insertion_point(class_scope:caffe.SigmoidParameter) class SliceParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SLICEPARAMETER # @@protoc_insertion_point(class_scope:caffe.SliceParameter) class SoftmaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOFTMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.SoftmaxParameter) class TanHParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TANHPARAMETER # @@protoc_insertion_point(class_scope:caffe.TanHParameter) class WindowDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _WINDOWDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.WindowDataParameter) class V0LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V0LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V0LayerParameter) # @@protoc_insertion_point(module_scope)
148,708
41.163028
17,413
py
DRT
DRT-master/external_libs/matconvnet/utils/proto/caffe_fastrcnn_pb2.py
# Generated by the protocol buffer compiler. DO NOT EDIT! # source: caffe_fastrcnn.proto from google.protobuf.internal import enum_type_wrapper from google.protobuf import descriptor as _descriptor from google.protobuf import message as _message from google.protobuf import reflection as _reflection from google.protobuf import descriptor_pb2 # @@protoc_insertion_point(imports) DESCRIPTOR = _descriptor.FileDescriptor( name='caffe_fastrcnn.proto', package='caffe', serialized_pb='\n\x14\x63\x61\x66\x66\x65_fastrcnn.proto\x12\x05\x63\x61\x66\x66\x65\"\x1c\n\tBlobShape\x12\x0f\n\x03\x64im\x18\x01 \x03(\x03\x42\x02\x10\x01\"\x9a\x01\n\tBlobProto\x12\x1f\n\x05shape\x18\x07 \x01(\x0b\x32\x10.caffe.BlobShape\x12\x10\n\x04\x64\x61ta\x18\x05 \x03(\x02\x42\x02\x10\x01\x12\x10\n\x04\x64iff\x18\x06 \x03(\x02\x42\x02\x10\x01\x12\x0e\n\x03num\x18\x01 \x01(\x05:\x01\x30\x12\x13\n\x08\x63hannels\x18\x02 \x01(\x05:\x01\x30\x12\x11\n\x06height\x18\x03 \x01(\x05:\x01\x30\x12\x10\n\x05width\x18\x04 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\x01(\x0b\x32\x1a.caffe.HDF5OutputParameter\".\n\nPoolMethod\x12\x07\n\x03MAX\x10\x00\x12\x07\n\x03\x41VE\x10\x01\x12\x0e\n\nSTOCHASTIC\x10\x02\"W\n\x0ePReLUParameter\x12&\n\x06\x66iller\x18\x01 \x01(\x0b\x32\x16.caffe.FillerParameter\x12\x1d\n\x0e\x63hannel_shared\x18\x02 \x01(\x08:\x05\x66\x61lse*\x1c\n\x05Phase\x12\t\n\x05TRAIN\x10\x00\x12\x08\n\x04TEST\x10\x01') _PHASE = _descriptor.EnumDescriptor( name='Phase', full_name='caffe.Phase', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='TRAIN', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='TEST', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=12254, serialized_end=12282, ) Phase = enum_type_wrapper.EnumTypeWrapper(_PHASE) TRAIN = 0 TEST = 1 _SOLVERPARAMETER_SOLVERMODE = _descriptor.EnumDescriptor( name='SolverMode', full_name='caffe.SolverParameter.SolverMode', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='CPU', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='GPU', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=1806, serialized_end=1836, ) _SOLVERPARAMETER_SOLVERTYPE = _descriptor.EnumDescriptor( name='SolverType', full_name='caffe.SolverParameter.SolverType', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='SGD', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='NESTEROV', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='ADAGRAD', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=1838, serialized_end=1886, ) _PARAMSPEC_DIMCHECKMODE = _descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.ParamSpec.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2317, serialized_end=2359, ) _CONVOLUTIONPARAMETER_ENGINE = _descriptor.EnumDescriptor( name='Engine', full_name='caffe.ConvolutionParameter.Engine', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5109, serialized_end=5152, ) _DATAPARAMETER_DB = _descriptor.EnumDescriptor( name='DB', full_name='caffe.DataParameter.DB', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='LEVELDB', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='LMDB', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=5399, serialized_end=5426, ) _ELTWISEPARAMETER_ELTWISEOP = _descriptor.EnumDescriptor( name='EltwiseOp', full_name='caffe.EltwiseParameter.EltwiseOp', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='PROD', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='SUM', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='MAX', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5766, serialized_end=5805, ) _HINGELOSSPARAMETER_NORM = _descriptor.EnumDescriptor( name='Norm', full_name='caffe.HingeLossParameter.Norm', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='L1', index=0, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='L2', index=1, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6072, serialized_end=6094, ) _LRNPARAMETER_NORMREGION = _descriptor.EnumDescriptor( name='NormRegion', full_name='caffe.LRNParameter.NormRegion', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='ACROSS_CHANNELS', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='WITHIN_CHANNEL', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=6758, serialized_end=6811, ) _POOLINGPARAMETER_POOLMETHOD = _descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.PoolingParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7315, serialized_end=7361, ) _POOLINGPARAMETER_ENGINE = _descriptor.EnumDescriptor( name='Engine', full_name='caffe.PoolingParameter.Engine', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5109, serialized_end=5152, ) _RELUPARAMETER_ENGINE = _descriptor.EnumDescriptor( name='Engine', full_name='caffe.ReLUParameter.Engine', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5109, serialized_end=5152, ) _SIGMOIDPARAMETER_ENGINE = _descriptor.EnumDescriptor( name='Engine', full_name='caffe.SigmoidParameter.Engine', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5109, serialized_end=5152, ) _SOFTMAXPARAMETER_ENGINE = _descriptor.EnumDescriptor( name='Engine', full_name='caffe.SoftmaxParameter.Engine', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5109, serialized_end=5152, ) _TANHPARAMETER_ENGINE = _descriptor.EnumDescriptor( name='Engine', full_name='caffe.TanHParameter.Engine', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5109, serialized_end=5152, ) _V1LAYERPARAMETER_LAYERTYPE = _descriptor.EnumDescriptor( name='LayerType', full_name='caffe.V1LayerParameter.LayerType', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='NONE', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='ABSVAL', index=1, number=35, options=None, type=None), _descriptor.EnumValueDescriptor( name='ACCURACY', index=2, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='ARGMAX', index=3, number=30, options=None, type=None), _descriptor.EnumValueDescriptor( name='BNLL', index=4, number=2, options=None, type=None), _descriptor.EnumValueDescriptor( name='CONCAT', index=5, number=3, options=None, type=None), _descriptor.EnumValueDescriptor( name='CONTRASTIVE_LOSS', index=6, number=37, options=None, type=None), _descriptor.EnumValueDescriptor( name='CONVOLUTION', index=7, number=4, options=None, type=None), _descriptor.EnumValueDescriptor( name='DATA', index=8, number=5, options=None, type=None), _descriptor.EnumValueDescriptor( name='DECONVOLUTION', index=9, number=39, options=None, type=None), _descriptor.EnumValueDescriptor( name='DROPOUT', index=10, number=6, options=None, type=None), _descriptor.EnumValueDescriptor( name='DUMMY_DATA', index=11, number=32, options=None, type=None), _descriptor.EnumValueDescriptor( name='EUCLIDEAN_LOSS', index=12, number=7, options=None, type=None), _descriptor.EnumValueDescriptor( name='ELTWISE', index=13, number=25, options=None, type=None), _descriptor.EnumValueDescriptor( name='EXP', index=14, number=38, options=None, type=None), _descriptor.EnumValueDescriptor( name='FLATTEN', index=15, number=8, options=None, type=None), _descriptor.EnumValueDescriptor( name='HDF5_DATA', index=16, number=9, options=None, type=None), _descriptor.EnumValueDescriptor( name='HDF5_OUTPUT', index=17, number=10, options=None, type=None), _descriptor.EnumValueDescriptor( name='HINGE_LOSS', index=18, number=28, options=None, type=None), _descriptor.EnumValueDescriptor( name='IM2COL', index=19, number=11, options=None, type=None), _descriptor.EnumValueDescriptor( name='IMAGE_DATA', index=20, number=12, options=None, type=None), _descriptor.EnumValueDescriptor( name='INFOGAIN_LOSS', index=21, number=13, options=None, type=None), _descriptor.EnumValueDescriptor( name='INNER_PRODUCT', index=22, number=14, options=None, type=None), _descriptor.EnumValueDescriptor( name='LRN', index=23, number=15, options=None, type=None), _descriptor.EnumValueDescriptor( name='MEMORY_DATA', index=24, number=29, options=None, type=None), _descriptor.EnumValueDescriptor( name='MULTINOMIAL_LOGISTIC_LOSS', index=25, number=16, options=None, type=None), _descriptor.EnumValueDescriptor( name='MVN', index=26, number=34, options=None, type=None), _descriptor.EnumValueDescriptor( name='POOLING', index=27, number=17, options=None, type=None), _descriptor.EnumValueDescriptor( name='POWER', index=28, number=26, options=None, type=None), _descriptor.EnumValueDescriptor( name='RELU', index=29, number=18, options=None, type=None), _descriptor.EnumValueDescriptor( name='SIGMOID', index=30, number=19, options=None, type=None), _descriptor.EnumValueDescriptor( name='SIGMOID_CROSS_ENTROPY_LOSS', index=31, number=27, options=None, type=None), _descriptor.EnumValueDescriptor( name='SILENCE', index=32, number=36, options=None, type=None), _descriptor.EnumValueDescriptor( name='SOFTMAX', index=33, number=20, options=None, type=None), _descriptor.EnumValueDescriptor( name='SOFTMAX_LOSS', index=34, number=21, options=None, type=None), _descriptor.EnumValueDescriptor( name='SPLIT', index=35, number=22, options=None, type=None), _descriptor.EnumValueDescriptor( name='SLICE', index=36, number=33, options=None, type=None), _descriptor.EnumValueDescriptor( name='TANH', index=37, number=23, options=None, type=None), _descriptor.EnumValueDescriptor( name='WINDOW_DATA', index=38, number=24, options=None, type=None), _descriptor.EnumValueDescriptor( name='THRESHOLD', index=39, number=31, options=None, type=None), ], containing_type=None, options=None, serialized_start=10495, serialized_end=11095, ) _V1LAYERPARAMETER_DIMCHECKMODE = _descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.V1LayerParameter.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2317, serialized_end=2359, ) _V0LAYERPARAMETER_POOLMETHOD = _descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.V0LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ _descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), _descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), _descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7315, serialized_end=7361, ) _BLOBSHAPE = _descriptor.Descriptor( name='BlobShape', full_name='caffe.BlobShape', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='dim', full_name='caffe.BlobShape.dim', index=0, number=1, type=3, cpp_type=2, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=_descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=31, serialized_end=59, ) _BLOBPROTO = _descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='shape', full_name='caffe.BlobProto.shape', index=0, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=1, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=_descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), _descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=2, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=_descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), _descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=3, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=4, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=5, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=6, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=62, serialized_end=216, ) _BLOBPROTOVECTOR = _descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=218, serialized_end=268, ) _DATUM = _descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='encoded', full_name='caffe.Datum.encoded', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=271, serialized_end=400, ) _FILLERPARAMETER = _descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='sparse', full_name='caffe.FillerParameter.sparse', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=403, serialized_end=547, ) _NETPARAMETER = _descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='input_shape', full_name='caffe.NetParameter.input_shape', index=2, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='state', full_name='caffe.NetParameter.state', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='debug_info', full_name='caffe.NetParameter.debug_info', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='layer', full_name='caffe.NetParameter.layer', index=7, number=100, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=8, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=550, serialized_end=820, ) _SOLVERPARAMETER = _descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='net', full_name='caffe.SolverParameter.net', index=0, number=24, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='net_param', full_name='caffe.SolverParameter.net_param', index=1, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=2, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=3, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='train_net_param', full_name='caffe.SolverParameter.train_net_param', index=4, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_net_param', full_name='caffe.SolverParameter.test_net_param', index=5, number=22, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='train_state', full_name='caffe.SolverParameter.train_state', index=6, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_state', full_name='caffe.SolverParameter.test_state', index=7, number=27, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=8, number=3, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=9, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_compute_loss', full_name='caffe.SolverParameter.test_compute_loss', index=10, number=19, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='test_initialization', full_name='caffe.SolverParameter.test_initialization', index=11, number=32, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=12, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=13, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='average_loss', full_name='caffe.SolverParameter.average_loss', index=14, number=33, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=15, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=16, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=17, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=18, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=19, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=20, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='regularization_type', full_name='caffe.SolverParameter.regularization_type', index=21, number=29, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("L2", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=22, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stepvalue', full_name='caffe.SolverParameter.stepvalue', index=23, number=34, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='clip_gradients', full_name='caffe.SolverParameter.clip_gradients', index=24, number=35, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=25, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=26, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=27, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=28, number=17, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=29, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='random_seed', full_name='caffe.SolverParameter.random_seed', index=30, number=20, type=3, cpp_type=2, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='solver_type', full_name='caffe.SolverParameter.solver_type', index=31, number=30, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='delta', full_name='caffe.SolverParameter.delta', index=32, number=31, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-08, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='debug_info', full_name='caffe.SolverParameter.debug_info', index=33, number=23, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='snapshot_after_train', full_name='caffe.SolverParameter.snapshot_after_train', index=34, number=28, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOLVERPARAMETER_SOLVERMODE, _SOLVERPARAMETER_SOLVERTYPE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=823, serialized_end=1886, ) _SOLVERSTATE = _descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='current_step', full_name='caffe.SolverState.current_step', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1888, serialized_end=1996, ) _NETSTATE = _descriptor.Descriptor( name='NetState', full_name='caffe.NetState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='phase', full_name='caffe.NetState.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='level', full_name='caffe.NetState.level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stage', full_name='caffe.NetState.stage', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1998, serialized_end=2076, ) _NETSTATERULE = _descriptor.Descriptor( name='NetStateRule', full_name='caffe.NetStateRule', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='phase', full_name='caffe.NetStateRule.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='min_level', full_name='caffe.NetStateRule.min_level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='max_level', full_name='caffe.NetStateRule.max_level', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stage', full_name='caffe.NetStateRule.stage', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='not_stage', full_name='caffe.NetStateRule.not_stage', index=4, number=5, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2078, serialized_end=2193, ) _PARAMSPEC = _descriptor.Descriptor( name='ParamSpec', full_name='caffe.ParamSpec', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='name', full_name='caffe.ParamSpec.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='share_mode', full_name='caffe.ParamSpec.share_mode', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='lr_mult', full_name='caffe.ParamSpec.lr_mult', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='decay_mult', full_name='caffe.ParamSpec.decay_mult', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _PARAMSPEC_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2196, serialized_end=2359, ) _LAYERPARAMETER = _descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerParameter.bottom', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='top', full_name='caffe.LayerParameter.top', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='phase', full_name='caffe.LayerParameter.phase', index=4, number=10, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.LayerParameter.loss_weight', index=5, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='param', full_name='caffe.LayerParameter.param', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=7, number=7, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='include', full_name='caffe.LayerParameter.include', index=8, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='exclude', full_name='caffe.LayerParameter.exclude', index=9, number=9, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='transform_param', full_name='caffe.LayerParameter.transform_param', index=10, number=100, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='loss_param', full_name='caffe.LayerParameter.loss_param', index=11, number=101, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.LayerParameter.accuracy_param', index=12, number=102, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.LayerParameter.argmax_param', index=13, number=103, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='concat_param', full_name='caffe.LayerParameter.concat_param', index=14, number=104, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.LayerParameter.contrastive_loss_param', index=15, number=105, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.LayerParameter.convolution_param', index=16, number=106, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='data_param', full_name='caffe.LayerParameter.data_param', index=17, number=107, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.LayerParameter.dropout_param', index=18, number=108, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.LayerParameter.dummy_data_param', index=19, number=109, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.LayerParameter.eltwise_param', index=20, number=110, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='exp_param', full_name='caffe.LayerParameter.exp_param', index=21, number=111, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.LayerParameter.hdf5_data_param', index=22, number=112, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.LayerParameter.hdf5_output_param', index=23, number=113, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.LayerParameter.hinge_loss_param', index=24, number=114, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.LayerParameter.image_data_param', index=25, number=115, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.LayerParameter.infogain_loss_param', index=26, number=116, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.LayerParameter.inner_product_param', index=27, number=117, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.LayerParameter.lrn_param', index=28, number=118, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.LayerParameter.memory_data_param', index=29, number=119, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.LayerParameter.mvn_param', index=30, number=120, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.LayerParameter.pooling_param', index=31, number=121, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='power_param', full_name='caffe.LayerParameter.power_param', index=32, number=122, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='prelu_param', full_name='caffe.LayerParameter.prelu_param', index=33, number=131, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='python_param', full_name='caffe.LayerParameter.python_param', index=34, number=130, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='relu_param', full_name='caffe.LayerParameter.relu_param', index=35, number=123, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='roi_pooling_param', full_name='caffe.LayerParameter.roi_pooling_param', index=36, number=8266711, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.LayerParameter.sigmoid_param', index=37, number=124, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.LayerParameter.softmax_param', index=38, number=125, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='slice_param', full_name='caffe.LayerParameter.slice_param', index=39, number=126, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.LayerParameter.tanh_param', index=40, number=127, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.LayerParameter.threshold_param', index=41, number=128, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.LayerParameter.window_data_param', index=42, number=129, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2362, serialized_end=4260, ) _TRANSFORMATIONPARAMETER = _descriptor.Descriptor( name='TransformationParameter', full_name='caffe.TransformationParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='scale', full_name='caffe.TransformationParameter.scale', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mirror', full_name='caffe.TransformationParameter.mirror', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='crop_size', full_name='caffe.TransformationParameter.crop_size', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean_file', full_name='caffe.TransformationParameter.mean_file', index=3, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean_value', full_name='caffe.TransformationParameter.mean_value', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4262, serialized_end=4389, ) _LOSSPARAMETER = _descriptor.Descriptor( name='LossParameter', full_name='caffe.LossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.LossParameter.ignore_label', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='normalize', full_name='caffe.LossParameter.normalize', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4391, serialized_end=4453, ) _ACCURACYPARAMETER = _descriptor.Descriptor( name='AccuracyParameter', full_name='caffe.AccuracyParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='top_k', full_name='caffe.AccuracyParameter.top_k', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='axis', full_name='caffe.AccuracyParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.AccuracyParameter.ignore_label', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4455, serialized_end=4531, ) _ARGMAXPARAMETER = _descriptor.Descriptor( name='ArgMaxParameter', full_name='caffe.ArgMaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='out_max_val', full_name='caffe.ArgMaxParameter.out_max_val', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='top_k', full_name='caffe.ArgMaxParameter.top_k', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4533, serialized_end=4596, ) _CONCATPARAMETER = _descriptor.Descriptor( name='ConcatParameter', full_name='caffe.ConcatParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='axis', full_name='caffe.ConcatParameter.axis', index=0, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.ConcatParameter.concat_dim', index=1, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4598, serialized_end=4655, ) _CONTRASTIVELOSSPARAMETER = _descriptor.Descriptor( name='ContrastiveLossParameter', full_name='caffe.ContrastiveLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='margin', full_name='caffe.ContrastiveLossParameter.margin', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4657, serialized_end=4702, ) _CONVOLUTIONPARAMETER = _descriptor.Descriptor( name='ConvolutionParameter', full_name='caffe.ConvolutionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='num_output', full_name='caffe.ConvolutionParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ConvolutionParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad', full_name='caffe.ConvolutionParameter.pad', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad_h', full_name='caffe.ConvolutionParameter.pad_h', index=3, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad_w', full_name='caffe.ConvolutionParameter.pad_w', index=4, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.ConvolutionParameter.kernel_size', index=5, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.ConvolutionParameter.kernel_h', index=6, number=11, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.ConvolutionParameter.kernel_w', index=7, number=12, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='group', full_name='caffe.ConvolutionParameter.group', index=8, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride', full_name='caffe.ConvolutionParameter.stride', index=9, number=6, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride_h', full_name='caffe.ConvolutionParameter.stride_h', index=10, number=13, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride_w', full_name='caffe.ConvolutionParameter.stride_w', index=11, number=14, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.ConvolutionParameter.weight_filler', index=12, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ConvolutionParameter.bias_filler', index=13, number=8, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='engine', full_name='caffe.ConvolutionParameter.engine', index=14, number=15, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _CONVOLUTIONPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4705, serialized_end=5152, ) _DATAPARAMETER = _descriptor.Descriptor( name='DataParameter', full_name='caffe.DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='source', full_name='caffe.DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='batch_size', full_name='caffe.DataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.DataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='backend', full_name='caffe.DataParameter.backend', index=3, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.DataParameter.scale', index=4, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean_file', full_name='caffe.DataParameter.mean_file', index=5, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='crop_size', full_name='caffe.DataParameter.crop_size', index=6, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mirror', full_name='caffe.DataParameter.mirror', index=7, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='force_encoded_color', full_name='caffe.DataParameter.force_encoded_color', index=8, number=9, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _DATAPARAMETER_DB, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5155, serialized_end=5426, ) _DROPOUTPARAMETER = _descriptor.Descriptor( name='DropoutParameter', full_name='caffe.DropoutParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.DropoutParameter.dropout_ratio', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5428, serialized_end=5474, ) _DUMMYDATAPARAMETER = _descriptor.Descriptor( name='DummyDataParameter', full_name='caffe.DummyDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='data_filler', full_name='caffe.DummyDataParameter.data_filler', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shape', full_name='caffe.DummyDataParameter.shape', index=1, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='num', full_name='caffe.DummyDataParameter.num', index=2, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='channels', full_name='caffe.DummyDataParameter.channels', index=3, number=3, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='height', full_name='caffe.DummyDataParameter.height', index=4, number=4, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='width', full_name='caffe.DummyDataParameter.width', index=5, number=5, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5477, serialized_end=5637, ) _ELTWISEPARAMETER = _descriptor.Descriptor( name='EltwiseParameter', full_name='caffe.EltwiseParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='operation', full_name='caffe.EltwiseParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='coeff', full_name='caffe.EltwiseParameter.coeff', index=1, number=2, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stable_prod_grad', full_name='caffe.EltwiseParameter.stable_prod_grad', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _ELTWISEPARAMETER_ELTWISEOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5640, serialized_end=5805, ) _EXPPARAMETER = _descriptor.Descriptor( name='ExpParameter', full_name='caffe.ExpParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='base', full_name='caffe.ExpParameter.base', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.ExpParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shift', full_name='caffe.ExpParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5807, serialized_end=5875, ) _HDF5DATAPARAMETER = _descriptor.Descriptor( name='HDF5DataParameter', full_name='caffe.HDF5DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='source', full_name='caffe.HDF5DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='batch_size', full_name='caffe.HDF5DataParameter.batch_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shuffle', full_name='caffe.HDF5DataParameter.shuffle', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5877, serialized_end=5956, ) _HDF5OUTPUTPARAMETER = _descriptor.Descriptor( name='HDF5OutputParameter', full_name='caffe.HDF5OutputParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='file_name', full_name='caffe.HDF5OutputParameter.file_name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5958, serialized_end=5998, ) _HINGELOSSPARAMETER = _descriptor.Descriptor( name='HingeLossParameter', full_name='caffe.HingeLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='norm', full_name='caffe.HingeLossParameter.norm', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _HINGELOSSPARAMETER_NORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6000, serialized_end=6094, ) _IMAGEDATAPARAMETER = _descriptor.Descriptor( name='ImageDataParameter', full_name='caffe.ImageDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='source', full_name='caffe.ImageDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='batch_size', full_name='caffe.ImageDataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.ImageDataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shuffle', full_name='caffe.ImageDataParameter.shuffle', index=3, number=8, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_height', full_name='caffe.ImageDataParameter.new_height', index=4, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_width', full_name='caffe.ImageDataParameter.new_width', index=5, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='is_color', full_name='caffe.ImageDataParameter.is_color', index=6, number=11, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.ImageDataParameter.scale', index=7, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean_file', full_name='caffe.ImageDataParameter.mean_file', index=8, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='crop_size', full_name='caffe.ImageDataParameter.crop_size', index=9, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mirror', full_name='caffe.ImageDataParameter.mirror', index=10, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='root_folder', full_name='caffe.ImageDataParameter.root_folder', index=11, number=12, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6097, serialized_end=6373, ) _INFOGAINLOSSPARAMETER = _descriptor.Descriptor( name='InfogainLossParameter', full_name='caffe.InfogainLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='source', full_name='caffe.InfogainLossParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6375, serialized_end=6414, ) _INNERPRODUCTPARAMETER = _descriptor.Descriptor( name='InnerProductParameter', full_name='caffe.InnerProductParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='num_output', full_name='caffe.InnerProductParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bias_term', full_name='caffe.InnerProductParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.InnerProductParameter.weight_filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.InnerProductParameter.bias_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='axis', full_name='caffe.InnerProductParameter.axis', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6417, serialized_end=6594, ) _LRNPARAMETER = _descriptor.Descriptor( name='LRNParameter', full_name='caffe.LRNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='local_size', full_name='caffe.LRNParameter.local_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='alpha', full_name='caffe.LRNParameter.alpha', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='beta', full_name='caffe.LRNParameter.beta', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='norm_region', full_name='caffe.LRNParameter.norm_region', index=3, number=4, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='k', full_name='caffe.LRNParameter.k', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LRNPARAMETER_NORMREGION, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6597, serialized_end=6811, ) _MEMORYDATAPARAMETER = _descriptor.Descriptor( name='MemoryDataParameter', full_name='caffe.MemoryDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='batch_size', full_name='caffe.MemoryDataParameter.batch_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='channels', full_name='caffe.MemoryDataParameter.channels', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='height', full_name='caffe.MemoryDataParameter.height', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='width', full_name='caffe.MemoryDataParameter.width', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6813, serialized_end=6903, ) _MVNPARAMETER = _descriptor.Descriptor( name='MVNParameter', full_name='caffe.MVNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='normalize_variance', full_name='caffe.MVNParameter.normalize_variance', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='across_channels', full_name='caffe.MVNParameter.across_channels', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6905, serialized_end=6985, ) _POOLINGPARAMETER = _descriptor.Descriptor( name='PoolingParameter', full_name='caffe.PoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='pool', full_name='caffe.PoolingParameter.pool', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad', full_name='caffe.PoolingParameter.pad', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad_h', full_name='caffe.PoolingParameter.pad_h', index=2, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad_w', full_name='caffe.PoolingParameter.pad_w', index=3, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.PoolingParameter.kernel_size', index=4, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.PoolingParameter.kernel_h', index=5, number=5, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.PoolingParameter.kernel_w', index=6, number=6, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride', full_name='caffe.PoolingParameter.stride', index=7, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride_h', full_name='caffe.PoolingParameter.stride_h', index=8, number=7, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride_w', full_name='caffe.PoolingParameter.stride_w', index=9, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='engine', full_name='caffe.PoolingParameter.engine', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='global_pooling', full_name='caffe.PoolingParameter.global_pooling', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _POOLINGPARAMETER_POOLMETHOD, _POOLINGPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6988, serialized_end=7406, ) _POWERPARAMETER = _descriptor.Descriptor( name='PowerParameter', full_name='caffe.PowerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='power', full_name='caffe.PowerParameter.power', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.PowerParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shift', full_name='caffe.PowerParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7408, serialized_end=7478, ) _PYTHONPARAMETER = _descriptor.Descriptor( name='PythonParameter', full_name='caffe.PythonParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='module', full_name='caffe.PythonParameter.module', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='layer', full_name='caffe.PythonParameter.layer', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='param_str', full_name='caffe.PythonParameter.param_str', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7480, serialized_end=7549, ) _RELUPARAMETER = _descriptor.Descriptor( name='ReLUParameter', full_name='caffe.ReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='negative_slope', full_name='caffe.ReLUParameter.negative_slope', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='engine', full_name='caffe.ReLUParameter.engine', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _RELUPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7552, serialized_end=7693, ) _ROIPOOLINGPARAMETER = _descriptor.Descriptor( name='ROIPoolingParameter', full_name='caffe.ROIPoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='pooled_h', full_name='caffe.ROIPoolingParameter.pooled_h', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pooled_w', full_name='caffe.ROIPoolingParameter.pooled_w', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='spatial_scale', full_name='caffe.ROIPoolingParameter.spatial_scale', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7695, serialized_end=7784, ) _SIGMOIDPARAMETER = _descriptor.Descriptor( name='SigmoidParameter', full_name='caffe.SigmoidParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='engine', full_name='caffe.SigmoidParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SIGMOIDPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7786, serialized_end=7906, ) _SLICEPARAMETER = _descriptor.Descriptor( name='SliceParameter', full_name='caffe.SliceParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='axis', full_name='caffe.SliceParameter.axis', index=0, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='slice_point', full_name='caffe.SliceParameter.slice_point', index=1, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='slice_dim', full_name='caffe.SliceParameter.slice_dim', index=2, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7908, serialized_end=7984, ) _SOFTMAXPARAMETER = _descriptor.Descriptor( name='SoftmaxParameter', full_name='caffe.SoftmaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='engine', full_name='caffe.SoftmaxParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='axis', full_name='caffe.SoftmaxParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOFTMAXPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7987, serialized_end=8124, ) _TANHPARAMETER = _descriptor.Descriptor( name='TanHParameter', full_name='caffe.TanHParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='engine', full_name='caffe.TanHParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _TANHPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8126, serialized_end=8240, ) _THRESHOLDPARAMETER = _descriptor.Descriptor( name='ThresholdParameter', full_name='caffe.ThresholdParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='threshold', full_name='caffe.ThresholdParameter.threshold', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8242, serialized_end=8284, ) _WINDOWDATAPARAMETER = _descriptor.Descriptor( name='WindowDataParameter', full_name='caffe.WindowDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='source', full_name='caffe.WindowDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.WindowDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mean_file', full_name='caffe.WindowDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='batch_size', full_name='caffe.WindowDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='crop_size', full_name='caffe.WindowDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mirror', full_name='caffe.WindowDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='fg_threshold', full_name='caffe.WindowDataParameter.fg_threshold', index=6, number=7, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bg_threshold', full_name='caffe.WindowDataParameter.bg_threshold', index=7, number=8, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='fg_fraction', full_name='caffe.WindowDataParameter.fg_fraction', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='context_pad', full_name='caffe.WindowDataParameter.context_pad', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='crop_mode', full_name='caffe.WindowDataParameter.crop_mode', index=10, number=11, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='cache_images', full_name='caffe.WindowDataParameter.cache_images', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='root_folder', full_name='caffe.WindowDataParameter.root_folder', index=12, number=13, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8287, serialized_end=8608, ) _V1LAYERPARAMETER = _descriptor.Descriptor( name='V1LayerParameter', full_name='caffe.V1LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='bottom', full_name='caffe.V1LayerParameter.bottom', index=0, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='top', full_name='caffe.V1LayerParameter.top', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='name', full_name='caffe.V1LayerParameter.name', index=2, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='include', full_name='caffe.V1LayerParameter.include', index=3, number=32, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='exclude', full_name='caffe.V1LayerParameter.exclude', index=4, number=33, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='type', full_name='caffe.V1LayerParameter.type', index=5, number=5, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blobs', full_name='caffe.V1LayerParameter.blobs', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='param', full_name='caffe.V1LayerParameter.param', index=7, number=1001, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blob_share_mode', full_name='caffe.V1LayerParameter.blob_share_mode', index=8, number=1002, type=14, cpp_type=8, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V1LayerParameter.blobs_lr', index=9, number=7, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V1LayerParameter.weight_decay', index=10, number=8, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.V1LayerParameter.loss_weight', index=11, number=35, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.V1LayerParameter.accuracy_param', index=12, number=27, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.V1LayerParameter.argmax_param', index=13, number=23, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='concat_param', full_name='caffe.V1LayerParameter.concat_param', index=14, number=9, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.V1LayerParameter.contrastive_loss_param', index=15, number=40, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.V1LayerParameter.convolution_param', index=16, number=10, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='data_param', full_name='caffe.V1LayerParameter.data_param', index=17, number=11, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.V1LayerParameter.dropout_param', index=18, number=12, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.V1LayerParameter.dummy_data_param', index=19, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.V1LayerParameter.eltwise_param', index=20, number=24, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='exp_param', full_name='caffe.V1LayerParameter.exp_param', index=21, number=41, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.V1LayerParameter.hdf5_data_param', index=22, number=13, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V1LayerParameter.hdf5_output_param', index=23, number=14, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.V1LayerParameter.hinge_loss_param', index=24, number=29, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.V1LayerParameter.image_data_param', index=25, number=15, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.V1LayerParameter.infogain_loss_param', index=26, number=16, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.V1LayerParameter.inner_product_param', index=27, number=17, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.V1LayerParameter.lrn_param', index=28, number=18, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.V1LayerParameter.memory_data_param', index=29, number=22, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.V1LayerParameter.mvn_param', index=30, number=34, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.V1LayerParameter.pooling_param', index=31, number=19, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='power_param', full_name='caffe.V1LayerParameter.power_param', index=32, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='relu_param', full_name='caffe.V1LayerParameter.relu_param', index=33, number=30, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.V1LayerParameter.sigmoid_param', index=34, number=38, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.V1LayerParameter.softmax_param', index=35, number=39, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='slice_param', full_name='caffe.V1LayerParameter.slice_param', index=36, number=31, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.V1LayerParameter.tanh_param', index=37, number=37, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.V1LayerParameter.threshold_param', index=38, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.V1LayerParameter.window_data_param', index=39, number=20, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='transform_param', full_name='caffe.V1LayerParameter.transform_param', index=40, number=36, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='loss_param', full_name='caffe.V1LayerParameter.loss_param', index=41, number=42, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='layer', full_name='caffe.V1LayerParameter.layer', index=42, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V1LAYERPARAMETER_LAYERTYPE, _V1LAYERPARAMETER_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8611, serialized_end=11139, ) _V0LAYERPARAMETER = _descriptor.Descriptor( name='V0LayerParameter', full_name='caffe.V0LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='name', full_name='caffe.V0LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='type', full_name='caffe.V0LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='num_output', full_name='caffe.V0LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='biasterm', full_name='caffe.V0LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.V0LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.V0LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pad', full_name='caffe.V0LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.V0LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='group', full_name='caffe.V0LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='stride', full_name='caffe.V0LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='pool', full_name='caffe.V0LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.V0LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='local_size', full_name='caffe.V0LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='alpha', full_name='caffe.V0LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='beta', full_name='caffe.V0LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='k', full_name='caffe.V0LayerParameter.k', index=15, number=22, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='source', full_name='caffe.V0LayerParameter.source', index=16, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='scale', full_name='caffe.V0LayerParameter.scale', index=17, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='meanfile', full_name='caffe.V0LayerParameter.meanfile', index=18, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='batchsize', full_name='caffe.V0LayerParameter.batchsize', index=19, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='cropsize', full_name='caffe.V0LayerParameter.cropsize', index=20, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='mirror', full_name='caffe.V0LayerParameter.mirror', index=21, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blobs', full_name='caffe.V0LayerParameter.blobs', index=22, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V0LayerParameter.blobs_lr', index=23, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V0LayerParameter.weight_decay', index=24, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.V0LayerParameter.rand_skip', index=25, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.V0LayerParameter.det_fg_threshold', index=26, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.V0LayerParameter.det_bg_threshold', index=27, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.V0LayerParameter.det_fg_fraction', index=28, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.V0LayerParameter.det_context_pad', index=29, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.V0LayerParameter.det_crop_mode', index=30, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_num', full_name='caffe.V0LayerParameter.new_num', index=31, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_channels', full_name='caffe.V0LayerParameter.new_channels', index=32, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_height', full_name='caffe.V0LayerParameter.new_height', index=33, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='new_width', full_name='caffe.V0LayerParameter.new_width', index=34, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.V0LayerParameter.shuffle_images', index=35, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.V0LayerParameter.concat_dim', index=36, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V0LayerParameter.hdf5_output_param', index=37, number=1001, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V0LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=11142, serialized_end=12163, ) _PRELUPARAMETER = _descriptor.Descriptor( name='PReLUParameter', full_name='caffe.PReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ _descriptor.FieldDescriptor( name='filler', full_name='caffe.PReLUParameter.filler', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), _descriptor.FieldDescriptor( name='channel_shared', full_name='caffe.PReLUParameter.channel_shared', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=12165, serialized_end=12252, ) _BLOBPROTO.fields_by_name['shape'].message_type = _BLOBSHAPE _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _NETPARAMETER.fields_by_name['input_shape'].message_type = _BLOBSHAPE _NETPARAMETER.fields_by_name['state'].message_type = _NETSTATE _NETPARAMETER.fields_by_name['layer'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['layers'].message_type = _V1LAYERPARAMETER _SOLVERPARAMETER.fields_by_name['net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['test_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['test_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['solver_mode'].enum_type = _SOLVERPARAMETER_SOLVERMODE _SOLVERPARAMETER.fields_by_name['solver_type'].enum_type = _SOLVERPARAMETER_SOLVERTYPE _SOLVERPARAMETER_SOLVERMODE.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERTYPE.containing_type = _SOLVERPARAMETER; _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _NETSTATE.fields_by_name['phase'].enum_type = _PHASE _NETSTATERULE.fields_by_name['phase'].enum_type = _PHASE _PARAMSPEC.fields_by_name['share_mode'].enum_type = _PARAMSPEC_DIMCHECKMODE _PARAMSPEC_DIMCHECKMODE.containing_type = _PARAMSPEC; _LAYERPARAMETER.fields_by_name['phase'].enum_type = _PHASE _LAYERPARAMETER.fields_by_name['param'].message_type = _PARAMSPEC _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _LAYERPARAMETER.fields_by_name['prelu_param'].message_type = _PRELUPARAMETER _LAYERPARAMETER.fields_by_name['python_param'].message_type = _PYTHONPARAMETER _LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _LAYERPARAMETER.fields_by_name['roi_pooling_param'].message_type = _ROIPOOLINGPARAMETER _LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['engine'].enum_type = _CONVOLUTIONPARAMETER_ENGINE _CONVOLUTIONPARAMETER_ENGINE.containing_type = _CONVOLUTIONPARAMETER; _DATAPARAMETER.fields_by_name['backend'].enum_type = _DATAPARAMETER_DB _DATAPARAMETER_DB.containing_type = _DATAPARAMETER; _DUMMYDATAPARAMETER.fields_by_name['data_filler'].message_type = _FILLERPARAMETER _DUMMYDATAPARAMETER.fields_by_name['shape'].message_type = _BLOBSHAPE _ELTWISEPARAMETER.fields_by_name['operation'].enum_type = _ELTWISEPARAMETER_ELTWISEOP _ELTWISEPARAMETER_ELTWISEOP.containing_type = _ELTWISEPARAMETER; _HINGELOSSPARAMETER.fields_by_name['norm'].enum_type = _HINGELOSSPARAMETER_NORM _HINGELOSSPARAMETER_NORM.containing_type = _HINGELOSSPARAMETER; _INNERPRODUCTPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LRNPARAMETER.fields_by_name['norm_region'].enum_type = _LRNPARAMETER_NORMREGION _LRNPARAMETER_NORMREGION.containing_type = _LRNPARAMETER; _POOLINGPARAMETER.fields_by_name['pool'].enum_type = _POOLINGPARAMETER_POOLMETHOD _POOLINGPARAMETER.fields_by_name['engine'].enum_type = _POOLINGPARAMETER_ENGINE _POOLINGPARAMETER_POOLMETHOD.containing_type = _POOLINGPARAMETER; _POOLINGPARAMETER_ENGINE.containing_type = _POOLINGPARAMETER; _RELUPARAMETER.fields_by_name['engine'].enum_type = _RELUPARAMETER_ENGINE _RELUPARAMETER_ENGINE.containing_type = _RELUPARAMETER; _SIGMOIDPARAMETER.fields_by_name['engine'].enum_type = _SIGMOIDPARAMETER_ENGINE _SIGMOIDPARAMETER_ENGINE.containing_type = _SIGMOIDPARAMETER; _SOFTMAXPARAMETER.fields_by_name['engine'].enum_type = _SOFTMAXPARAMETER_ENGINE _SOFTMAXPARAMETER_ENGINE.containing_type = _SOFTMAXPARAMETER; _TANHPARAMETER.fields_by_name['engine'].enum_type = _TANHPARAMETER_ENGINE _TANHPARAMETER_ENGINE.containing_type = _TANHPARAMETER; _V1LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['type'].enum_type = _V1LAYERPARAMETER_LAYERTYPE _V1LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V1LAYERPARAMETER.fields_by_name['blob_share_mode'].enum_type = _V1LAYERPARAMETER_DIMCHECKMODE _V1LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _V1LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _V1LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _V1LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _V1LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _V1LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V1LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _V1LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _V1LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _V1LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _V1LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _V1LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _V1LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _V1LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _V1LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _V1LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _V1LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _V1LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['layer'].message_type = _V0LAYERPARAMETER _V1LAYERPARAMETER_LAYERTYPE.containing_type = _V1LAYERPARAMETER; _V1LAYERPARAMETER_DIMCHECKMODE.containing_type = _V1LAYERPARAMETER; _V0LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['pool'].enum_type = _V0LAYERPARAMETER_POOLMETHOD _V0LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V0LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V0LAYERPARAMETER_POOLMETHOD.containing_type = _V0LAYERPARAMETER; _PRELUPARAMETER.fields_by_name['filler'].message_type = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['BlobShape'] = _BLOBSHAPE DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE DESCRIPTOR.message_types_by_name['NetState'] = _NETSTATE DESCRIPTOR.message_types_by_name['NetStateRule'] = _NETSTATERULE DESCRIPTOR.message_types_by_name['ParamSpec'] = _PARAMSPEC DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['TransformationParameter'] = _TRANSFORMATIONPARAMETER DESCRIPTOR.message_types_by_name['LossParameter'] = _LOSSPARAMETER DESCRIPTOR.message_types_by_name['AccuracyParameter'] = _ACCURACYPARAMETER DESCRIPTOR.message_types_by_name['ArgMaxParameter'] = _ARGMAXPARAMETER DESCRIPTOR.message_types_by_name['ConcatParameter'] = _CONCATPARAMETER DESCRIPTOR.message_types_by_name['ContrastiveLossParameter'] = _CONTRASTIVELOSSPARAMETER DESCRIPTOR.message_types_by_name['ConvolutionParameter'] = _CONVOLUTIONPARAMETER DESCRIPTOR.message_types_by_name['DataParameter'] = _DATAPARAMETER DESCRIPTOR.message_types_by_name['DropoutParameter'] = _DROPOUTPARAMETER DESCRIPTOR.message_types_by_name['DummyDataParameter'] = _DUMMYDATAPARAMETER DESCRIPTOR.message_types_by_name['EltwiseParameter'] = _ELTWISEPARAMETER DESCRIPTOR.message_types_by_name['ExpParameter'] = _EXPPARAMETER DESCRIPTOR.message_types_by_name['HDF5DataParameter'] = _HDF5DATAPARAMETER DESCRIPTOR.message_types_by_name['HDF5OutputParameter'] = _HDF5OUTPUTPARAMETER DESCRIPTOR.message_types_by_name['HingeLossParameter'] = _HINGELOSSPARAMETER DESCRIPTOR.message_types_by_name['ImageDataParameter'] = _IMAGEDATAPARAMETER DESCRIPTOR.message_types_by_name['InfogainLossParameter'] = _INFOGAINLOSSPARAMETER DESCRIPTOR.message_types_by_name['InnerProductParameter'] = _INNERPRODUCTPARAMETER DESCRIPTOR.message_types_by_name['LRNParameter'] = _LRNPARAMETER DESCRIPTOR.message_types_by_name['MemoryDataParameter'] = _MEMORYDATAPARAMETER DESCRIPTOR.message_types_by_name['MVNParameter'] = _MVNPARAMETER DESCRIPTOR.message_types_by_name['PoolingParameter'] = _POOLINGPARAMETER DESCRIPTOR.message_types_by_name['PowerParameter'] = _POWERPARAMETER DESCRIPTOR.message_types_by_name['PythonParameter'] = _PYTHONPARAMETER DESCRIPTOR.message_types_by_name['ReLUParameter'] = _RELUPARAMETER DESCRIPTOR.message_types_by_name['ROIPoolingParameter'] = _ROIPOOLINGPARAMETER DESCRIPTOR.message_types_by_name['SigmoidParameter'] = _SIGMOIDPARAMETER DESCRIPTOR.message_types_by_name['SliceParameter'] = _SLICEPARAMETER DESCRIPTOR.message_types_by_name['SoftmaxParameter'] = _SOFTMAXPARAMETER DESCRIPTOR.message_types_by_name['TanHParameter'] = _TANHPARAMETER DESCRIPTOR.message_types_by_name['ThresholdParameter'] = _THRESHOLDPARAMETER DESCRIPTOR.message_types_by_name['WindowDataParameter'] = _WINDOWDATAPARAMETER DESCRIPTOR.message_types_by_name['V1LayerParameter'] = _V1LAYERPARAMETER DESCRIPTOR.message_types_by_name['V0LayerParameter'] = _V0LAYERPARAMETER DESCRIPTOR.message_types_by_name['PReLUParameter'] = _PRELUPARAMETER class BlobShape(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBSHAPE # @@protoc_insertion_point(class_scope:caffe.BlobShape) class BlobProto(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class NetParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) class NetState(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATE # @@protoc_insertion_point(class_scope:caffe.NetState) class NetStateRule(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATERULE # @@protoc_insertion_point(class_scope:caffe.NetStateRule) class ParamSpec(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _PARAMSPEC # @@protoc_insertion_point(class_scope:caffe.ParamSpec) class LayerParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class TransformationParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _TRANSFORMATIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.TransformationParameter) class LossParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _LOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.LossParameter) class AccuracyParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _ACCURACYPARAMETER # @@protoc_insertion_point(class_scope:caffe.AccuracyParameter) class ArgMaxParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _ARGMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.ArgMaxParameter) class ConcatParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONCATPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConcatParameter) class ContrastiveLossParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONTRASTIVELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.ContrastiveLossParameter) class ConvolutionParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONVOLUTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConvolutionParameter) class DataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DataParameter) class DropoutParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _DROPOUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.DropoutParameter) class DummyDataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _DUMMYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DummyDataParameter) class EltwiseParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _ELTWISEPARAMETER # @@protoc_insertion_point(class_scope:caffe.EltwiseParameter) class ExpParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _EXPPARAMETER # @@protoc_insertion_point(class_scope:caffe.ExpParameter) class HDF5DataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5DataParameter) class HDF5OutputParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5OUTPUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5OutputParameter) class HingeLossParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _HINGELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.HingeLossParameter) class ImageDataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _IMAGEDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.ImageDataParameter) class InfogainLossParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _INFOGAINLOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.InfogainLossParameter) class InnerProductParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _INNERPRODUCTPARAMETER # @@protoc_insertion_point(class_scope:caffe.InnerProductParameter) class LRNParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _LRNPARAMETER # @@protoc_insertion_point(class_scope:caffe.LRNParameter) class MemoryDataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _MEMORYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.MemoryDataParameter) class MVNParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _MVNPARAMETER # @@protoc_insertion_point(class_scope:caffe.MVNParameter) class PoolingParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _POOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.PoolingParameter) class PowerParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _POWERPARAMETER # @@protoc_insertion_point(class_scope:caffe.PowerParameter) class PythonParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _PYTHONPARAMETER # @@protoc_insertion_point(class_scope:caffe.PythonParameter) class ReLUParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _RELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReLUParameter) class ROIPoolingParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _ROIPOOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.ROIPoolingParameter) class SigmoidParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _SIGMOIDPARAMETER # @@protoc_insertion_point(class_scope:caffe.SigmoidParameter) class SliceParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _SLICEPARAMETER # @@protoc_insertion_point(class_scope:caffe.SliceParameter) class SoftmaxParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOFTMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.SoftmaxParameter) class TanHParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _TANHPARAMETER # @@protoc_insertion_point(class_scope:caffe.TanHParameter) class ThresholdParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _THRESHOLDPARAMETER # @@protoc_insertion_point(class_scope:caffe.ThresholdParameter) class WindowDataParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _WINDOWDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.WindowDataParameter) class V1LayerParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _V1LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V1LayerParameter) class V0LayerParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _V0LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V0LayerParameter) class PReLUParameter(_message.Message): __metaclass__ = _reflection.GeneratedProtocolMessageType DESCRIPTOR = _PRELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.PReLUParameter) _BLOBSHAPE.fields_by_name['dim'].has_options = True _BLOBSHAPE.fields_by_name['dim']._options = _descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001') _BLOBPROTO.fields_by_name['data'].has_options = True _BLOBPROTO.fields_by_name['data']._options = _descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001') _BLOBPROTO.fields_by_name['diff'].has_options = True _BLOBPROTO.fields_by_name['diff']._options = _descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001') # @@protoc_insertion_point(module_scope)
194,370
42.777252
22,943
py
DRT
DRT-master/external_libs/matconvnet/utils/proto/caffe_6e3916_pb2.py
# Generated by the protocol buffer compiler. 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number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='FAN_OUT', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='AVERAGE', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=665, serialized_end=717, ) _SOLVERPARAMETER_SNAPSHOTFORMAT = descriptor.EnumDescriptor( name='SnapshotFormat', full_name='caffe.SolverParameter.SnapshotFormat', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='HDF5', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='BINARYPROTO', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2120, serialized_end=2163, ) _SOLVERPARAMETER_SOLVERMODE = descriptor.EnumDescriptor( name='SolverMode', full_name='caffe.SolverParameter.SolverMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='CPU', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='GPU', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2165, serialized_end=2195, ) _SOLVERPARAMETER_SOLVERTYPE = descriptor.EnumDescriptor( name='SolverType', full_name='caffe.SolverParameter.SolverType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='SGD', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='NESTEROV', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ADAGRAD', index=2, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='RMSPROP', index=3, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='ADADELTA', index=4, number=4, options=None, type=None), descriptor.EnumValueDescriptor( name='ADAM', index=5, number=5, options=None, type=None), ], containing_type=None, options=None, serialized_start=2197, serialized_end=2282, ) _PARAMSPEC_DIMCHECKMODE = descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.ParamSpec.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2713, serialized_end=2755, ) _CONVOLUTIONPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.ConvolutionParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _DATAPARAMETER_DB = descriptor.EnumDescriptor( name='DB', full_name='caffe.DataParameter.DB', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='LEVELDB', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='LMDB', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=6190, serialized_end=6217, ) _ELTWISEPARAMETER_ELTWISEOP = descriptor.EnumDescriptor( name='EltwiseOp', full_name='caffe.EltwiseParameter.EltwiseOp', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='PROD', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='SUM', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='MAX', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6557, serialized_end=6596, ) _HINGELOSSPARAMETER_NORM = descriptor.EnumDescriptor( name='Norm', full_name='caffe.HingeLossParameter.Norm', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='L1', index=0, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='L2', index=1, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7097, serialized_end=7119, ) _LRNPARAMETER_NORMREGION = descriptor.EnumDescriptor( name='NormRegion', full_name='caffe.LRNParameter.NormRegion', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='ACROSS_CHANNELS', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='WITHIN_CHANNEL', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=7856, serialized_end=7909, ) _POOLINGPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.PoolingParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=8433, serialized_end=8479, ) _POOLINGPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.PoolingParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _REDUCTIONPARAMETER_REDUCTIONOP = descriptor.EnumDescriptor( name='ReductionOp', full_name='caffe.ReductionParameter.ReductionOp', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='SUM', index=0, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ASUM', index=1, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='SUMSQ', index=2, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='MEAN', index=3, number=4, options=None, type=None), ], containing_type=None, options=None, serialized_start=8824, serialized_end=8877, ) _RELUPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.ReLUParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _SIGMOIDPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SigmoidParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _SOFTMAXPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SoftmaxParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _TANHPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.TanHParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _SPPPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.SPPParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=8433, serialized_end=8479, ) _SPPPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SPPParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=5879, serialized_end=5922, ) _V1LAYERPARAMETER_LAYERTYPE = descriptor.EnumDescriptor( name='LayerType', full_name='caffe.V1LayerParameter.LayerType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='NONE', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='ABSVAL', index=1, number=35, options=None, type=None), descriptor.EnumValueDescriptor( name='ACCURACY', index=2, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ARGMAX', index=3, number=30, options=None, type=None), descriptor.EnumValueDescriptor( name='BNLL', index=4, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='CONCAT', index=5, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='CONTRASTIVE_LOSS', index=6, number=37, options=None, type=None), descriptor.EnumValueDescriptor( name='CONVOLUTION', index=7, number=4, options=None, type=None), descriptor.EnumValueDescriptor( name='CROP', index=8, number=40, options=None, type=None), descriptor.EnumValueDescriptor( name='DATA', index=9, number=5, options=None, type=None), descriptor.EnumValueDescriptor( name='DECONVOLUTION', index=10, number=39, options=None, type=None), descriptor.EnumValueDescriptor( name='DROPOUT', index=11, number=6, options=None, type=None), descriptor.EnumValueDescriptor( name='DUMMY_DATA', index=12, number=32, options=None, type=None), descriptor.EnumValueDescriptor( name='EUCLIDEAN_LOSS', index=13, number=7, options=None, type=None), descriptor.EnumValueDescriptor( name='ELTWISE', index=14, number=25, options=None, type=None), descriptor.EnumValueDescriptor( name='EXP', index=15, number=38, options=None, type=None), descriptor.EnumValueDescriptor( name='FLATTEN', index=16, number=8, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_DATA', index=17, number=9, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_OUTPUT', index=18, number=10, options=None, type=None), descriptor.EnumValueDescriptor( name='HINGE_LOSS', index=19, number=28, options=None, type=None), descriptor.EnumValueDescriptor( name='IM2COL', index=20, number=11, options=None, type=None), descriptor.EnumValueDescriptor( name='IMAGE_DATA', index=21, number=12, options=None, type=None), descriptor.EnumValueDescriptor( name='INFOGAIN_LOSS', index=22, number=13, options=None, type=None), descriptor.EnumValueDescriptor( name='INNER_PRODUCT', index=23, number=14, options=None, type=None), descriptor.EnumValueDescriptor( name='LRN', index=24, number=15, options=None, type=None), descriptor.EnumValueDescriptor( name='MEMORY_DATA', index=25, number=29, options=None, type=None), descriptor.EnumValueDescriptor( name='MULTINOMIAL_LOGISTIC_LOSS', index=26, number=16, options=None, type=None), descriptor.EnumValueDescriptor( name='MVN', index=27, number=34, options=None, type=None), descriptor.EnumValueDescriptor( name='POOLING', index=28, number=17, options=None, type=None), descriptor.EnumValueDescriptor( name='POWER', index=29, number=26, options=None, type=None), descriptor.EnumValueDescriptor( name='RELU', index=30, number=18, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID', index=31, number=19, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID_CROSS_ENTROPY_LOSS', index=32, number=27, options=None, type=None), descriptor.EnumValueDescriptor( name='SILENCE', index=33, number=36, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX', index=34, number=20, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX_LOSS', index=35, number=21, options=None, type=None), descriptor.EnumValueDescriptor( name='SPLIT', index=36, number=22, options=None, type=None), descriptor.EnumValueDescriptor( name='SLICE', index=37, number=33, options=None, type=None), descriptor.EnumValueDescriptor( name='TANH', index=38, number=23, options=None, type=None), descriptor.EnumValueDescriptor( name='WINDOW_DATA', index=39, number=24, options=None, type=None), descriptor.EnumValueDescriptor( name='THRESHOLD', index=40, number=31, options=None, type=None), ], containing_type=None, options=None, serialized_start=12111, serialized_end=12721, ) _V1LAYERPARAMETER_DIMCHECKMODE = descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.V1LayerParameter.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2713, serialized_end=2755, ) _V0LAYERPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.V0LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=8433, serialized_end=8479, ) _BLOBSHAPE = descriptor.Descriptor( name='BlobShape', full_name='caffe.BlobShape', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dim', full_name='caffe.BlobShape.dim', index=0, number=1, type=3, cpp_type=2, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=29, serialized_end=57, ) _BLOBPROTO = descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='shape', full_name='caffe.BlobProto.shape', index=0, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=1, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=2, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='double_data', full_name='caffe.BlobProto.double_data', index=3, number=8, type=1, cpp_type=5, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='double_diff', full_name='caffe.BlobProto.double_diff', index=4, number=9, type=1, cpp_type=5, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=5, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=6, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=7, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=8, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=60, serialized_end=264, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=266, serialized_end=316, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='encoded', full_name='caffe.Datum.encoded', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=319, serialized_end=448, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sparse', full_name='caffe.FillerParameter.sparse', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='variance_norm', full_name='caffe.FillerParameter.variance_norm', index=7, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _FILLERPARAMETER_VARIANCENORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=451, serialized_end=717, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_shape', full_name='caffe.NetParameter.input_shape', index=2, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='state', full_name='caffe.NetParameter.state', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='debug_info', full_name='caffe.NetParameter.debug_info', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.NetParameter.layer', index=7, number=100, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=8, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=720, serialized_end=990, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='net', full_name='caffe.SolverParameter.net', index=0, number=24, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='net_param', full_name='caffe.SolverParameter.net_param', index=1, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=2, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=3, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net_param', full_name='caffe.SolverParameter.train_net_param', index=4, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net_param', full_name='caffe.SolverParameter.test_net_param', index=5, number=22, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_state', full_name='caffe.SolverParameter.train_state', index=6, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_state', full_name='caffe.SolverParameter.test_state', index=7, number=27, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=8, number=3, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=9, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_compute_loss', full_name='caffe.SolverParameter.test_compute_loss', index=10, number=19, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_initialization', full_name='caffe.SolverParameter.test_initialization', index=11, number=32, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=12, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=13, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='average_loss', full_name='caffe.SolverParameter.average_loss', index=14, number=33, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=15, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='iter_size', full_name='caffe.SolverParameter.iter_size', index=16, number=36, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=17, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=18, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=19, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=20, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=21, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='regularization_type', full_name='caffe.SolverParameter.regularization_type', index=22, number=29, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("L2", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=23, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepvalue', full_name='caffe.SolverParameter.stepvalue', index=24, number=34, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='clip_gradients', full_name='caffe.SolverParameter.clip_gradients', index=25, number=35, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=26, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=27, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=28, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_format', full_name='caffe.SolverParameter.snapshot_format', index=29, number=37, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=30, number=17, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=31, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='random_seed', full_name='caffe.SolverParameter.random_seed', index=32, number=20, type=3, cpp_type=2, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_type', full_name='caffe.SolverParameter.solver_type', index=33, number=30, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='delta', full_name='caffe.SolverParameter.delta', index=34, number=31, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-08, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum2', full_name='caffe.SolverParameter.momentum2', index=35, number=39, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.999, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rms_decay', full_name='caffe.SolverParameter.rms_decay', index=36, number=38, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='debug_info', full_name='caffe.SolverParameter.debug_info', index=37, number=23, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_after_train', full_name='caffe.SolverParameter.snapshot_after_train', index=38, number=28, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOLVERPARAMETER_SNAPSHOTFORMAT, _SOLVERPARAMETER_SOLVERMODE, _SOLVERPARAMETER_SOLVERTYPE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=993, serialized_end=2282, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='current_step', full_name='caffe.SolverState.current_step', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2284, serialized_end=2392, ) _NETSTATE = descriptor.Descriptor( name='NetState', full_name='caffe.NetState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetState.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='level', full_name='caffe.NetState.level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetState.stage', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2394, serialized_end=2472, ) _NETSTATERULE = descriptor.Descriptor( name='NetStateRule', full_name='caffe.NetStateRule', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetStateRule.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min_level', full_name='caffe.NetStateRule.min_level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_level', full_name='caffe.NetStateRule.max_level', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetStateRule.stage', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='not_stage', full_name='caffe.NetStateRule.not_stage', index=4, number=5, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2474, serialized_end=2589, ) _PARAMSPEC = descriptor.Descriptor( name='ParamSpec', full_name='caffe.ParamSpec', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.ParamSpec.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='share_mode', full_name='caffe.ParamSpec.share_mode', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_mult', full_name='caffe.ParamSpec.lr_mult', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='decay_mult', full_name='caffe.ParamSpec.decay_mult', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _PARAMSPEC_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2592, serialized_end=2755, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerParameter.bottom', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerParameter.top', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='phase', full_name='caffe.LayerParameter.phase', index=4, number=10, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.LayerParameter.loss_weight', index=5, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param', full_name='caffe.LayerParameter.param', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=7, number=7, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='propagate_down', full_name='caffe.LayerParameter.propagate_down', index=8, number=11, type=8, cpp_type=7, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='include', full_name='caffe.LayerParameter.include', index=9, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exclude', full_name='caffe.LayerParameter.exclude', index=10, number=9, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='transform_param', full_name='caffe.LayerParameter.transform_param', index=11, number=100, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_param', full_name='caffe.LayerParameter.loss_param', index=12, number=101, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.LayerParameter.accuracy_param', index=13, number=102, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.LayerParameter.argmax_param', index=14, number=103, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.LayerParameter.concat_param', index=15, number=104, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.LayerParameter.contrastive_loss_param', index=16, number=105, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.LayerParameter.convolution_param', index=17, number=106, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.LayerParameter.data_param', index=18, number=107, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.LayerParameter.dropout_param', index=19, number=108, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.LayerParameter.dummy_data_param', index=20, number=109, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.LayerParameter.eltwise_param', index=21, number=110, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='embed_param', full_name='caffe.LayerParameter.embed_param', index=22, number=137, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exp_param', full_name='caffe.LayerParameter.exp_param', index=23, number=111, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='flatten_param', full_name='caffe.LayerParameter.flatten_param', index=24, number=135, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.LayerParameter.hdf5_data_param', index=25, number=112, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.LayerParameter.hdf5_output_param', index=26, number=113, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.LayerParameter.hinge_loss_param', index=27, number=114, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.LayerParameter.image_data_param', index=28, number=115, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.LayerParameter.infogain_loss_param', index=29, number=116, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.LayerParameter.inner_product_param', index=30, number=117, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='log_param', full_name='caffe.LayerParameter.log_param', index=31, number=134, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.LayerParameter.lrn_param', index=32, number=118, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.LayerParameter.memory_data_param', index=33, number=119, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.LayerParameter.mvn_param', index=34, number=120, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.LayerParameter.pooling_param', index=35, number=121, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.LayerParameter.power_param', index=36, number=122, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='prelu_param', full_name='caffe.LayerParameter.prelu_param', index=37, number=131, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='python_param', full_name='caffe.LayerParameter.python_param', index=38, number=130, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='reduction_param', full_name='caffe.LayerParameter.reduction_param', index=39, number=136, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='relu_param', full_name='caffe.LayerParameter.relu_param', index=40, number=123, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='reshape_param', full_name='caffe.LayerParameter.reshape_param', index=41, number=133, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.LayerParameter.sigmoid_param', index=42, number=124, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.LayerParameter.softmax_param', index=43, number=125, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='spp_param', full_name='caffe.LayerParameter.spp_param', index=44, number=132, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_param', full_name='caffe.LayerParameter.slice_param', index=45, number=126, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.LayerParameter.tanh_param', index=46, number=127, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.LayerParameter.threshold_param', index=47, number=128, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tile_param', full_name='caffe.LayerParameter.tile_param', index=48, number=138, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.LayerParameter.window_data_param', index=49, number=129, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2758, serialized_end=4943, ) _TRANSFORMATIONPARAMETER = descriptor.Descriptor( name='TransformationParameter', full_name='caffe.TransformationParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='scale', full_name='caffe.TransformationParameter.scale', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.TransformationParameter.mirror', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.TransformationParameter.crop_size', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.TransformationParameter.mean_file', index=3, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_value', full_name='caffe.TransformationParameter.mean_value', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_color', full_name='caffe.TransformationParameter.force_color', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_gray', full_name='caffe.TransformationParameter.force_gray', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4946, serialized_end=5128, ) _LOSSPARAMETER = descriptor.Descriptor( name='LossParameter', full_name='caffe.LossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.LossParameter.ignore_label', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='normalize', full_name='caffe.LossParameter.normalize', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5130, serialized_end=5192, ) _ACCURACYPARAMETER = descriptor.Descriptor( name='AccuracyParameter', full_name='caffe.AccuracyParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='top_k', full_name='caffe.AccuracyParameter.top_k', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.AccuracyParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.AccuracyParameter.ignore_label', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5194, serialized_end=5270, ) _ARGMAXPARAMETER = descriptor.Descriptor( name='ArgMaxParameter', full_name='caffe.ArgMaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='out_max_val', full_name='caffe.ArgMaxParameter.out_max_val', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top_k', full_name='caffe.ArgMaxParameter.top_k', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5272, serialized_end=5335, ) _CONCATPARAMETER = descriptor.Descriptor( name='ConcatParameter', full_name='caffe.ConcatParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.ConcatParameter.axis', index=0, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.ConcatParameter.concat_dim', index=1, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5337, serialized_end=5394, ) _CONTRASTIVELOSSPARAMETER = descriptor.Descriptor( name='ContrastiveLossParameter', full_name='caffe.ContrastiveLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='margin', full_name='caffe.ContrastiveLossParameter.margin', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='legacy_version', full_name='caffe.ContrastiveLossParameter.legacy_version', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5396, serialized_end=5472, ) _CONVOLUTIONPARAMETER = descriptor.Descriptor( name='ConvolutionParameter', full_name='caffe.ConvolutionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.ConvolutionParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ConvolutionParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.ConvolutionParameter.pad', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.ConvolutionParameter.pad_h', index=3, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.ConvolutionParameter.pad_w', index=4, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.ConvolutionParameter.kernel_size', index=5, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.ConvolutionParameter.kernel_h', index=6, number=11, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.ConvolutionParameter.kernel_w', index=7, number=12, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.ConvolutionParameter.group', index=8, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.ConvolutionParameter.stride', index=9, number=6, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.ConvolutionParameter.stride_h', index=10, number=13, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.ConvolutionParameter.stride_w', index=11, number=14, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.ConvolutionParameter.weight_filler', index=12, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ConvolutionParameter.bias_filler', index=13, number=8, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ConvolutionParameter.engine', index=14, number=15, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _CONVOLUTIONPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5475, serialized_end=5922, ) _DATAPARAMETER = descriptor.Descriptor( name='DataParameter', full_name='caffe.DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.DataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.DataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='backend', full_name='caffe.DataParameter.backend', index=3, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.DataParameter.scale', index=4, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.DataParameter.mean_file', index=5, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.DataParameter.crop_size', index=6, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.DataParameter.mirror', index=7, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_encoded_color', full_name='caffe.DataParameter.force_encoded_color', index=8, number=9, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='prefetch', full_name='caffe.DataParameter.prefetch', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=4, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _DATAPARAMETER_DB, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5925, serialized_end=6217, ) _DROPOUTPARAMETER = descriptor.Descriptor( name='DropoutParameter', full_name='caffe.DropoutParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.DropoutParameter.dropout_ratio', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6219, serialized_end=6265, ) _DUMMYDATAPARAMETER = descriptor.Descriptor( name='DummyDataParameter', full_name='caffe.DummyDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='data_filler', full_name='caffe.DummyDataParameter.data_filler', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shape', full_name='caffe.DummyDataParameter.shape', index=1, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num', full_name='caffe.DummyDataParameter.num', index=2, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.DummyDataParameter.channels', index=3, number=3, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.DummyDataParameter.height', index=4, number=4, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.DummyDataParameter.width', index=5, number=5, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6268, serialized_end=6428, ) _ELTWISEPARAMETER = descriptor.Descriptor( name='EltwiseParameter', full_name='caffe.EltwiseParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='operation', full_name='caffe.EltwiseParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='coeff', full_name='caffe.EltwiseParameter.coeff', index=1, number=2, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stable_prod_grad', full_name='caffe.EltwiseParameter.stable_prod_grad', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _ELTWISEPARAMETER_ELTWISEOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6431, serialized_end=6596, ) _EMBEDPARAMETER = descriptor.Descriptor( name='EmbedParameter', full_name='caffe.EmbedParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.EmbedParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.EmbedParameter.input_dim', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.EmbedParameter.bias_term', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.EmbedParameter.weight_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.EmbedParameter.bias_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6599, serialized_end=6771, ) _EXPPARAMETER = descriptor.Descriptor( name='ExpParameter', full_name='caffe.ExpParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='base', full_name='caffe.ExpParameter.base', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ExpParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.ExpParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6773, serialized_end=6841, ) _FLATTENPARAMETER = descriptor.Descriptor( name='FlattenParameter', full_name='caffe.FlattenParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.FlattenParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='end_axis', full_name='caffe.FlattenParameter.end_axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6843, serialized_end=6900, ) _HDF5DATAPARAMETER = descriptor.Descriptor( name='HDF5DataParameter', full_name='caffe.HDF5DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.HDF5DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.HDF5DataParameter.batch_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.HDF5DataParameter.shuffle', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6902, serialized_end=6981, ) _HDF5OUTPUTPARAMETER = descriptor.Descriptor( name='HDF5OutputParameter', full_name='caffe.HDF5OutputParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='file_name', full_name='caffe.HDF5OutputParameter.file_name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6983, serialized_end=7023, ) _HINGELOSSPARAMETER = descriptor.Descriptor( name='HingeLossParameter', full_name='caffe.HingeLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='norm', full_name='caffe.HingeLossParameter.norm', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _HINGELOSSPARAMETER_NORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7025, serialized_end=7119, ) _IMAGEDATAPARAMETER = descriptor.Descriptor( name='ImageDataParameter', full_name='caffe.ImageDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.ImageDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.ImageDataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.ImageDataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.ImageDataParameter.shuffle', index=3, number=8, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.ImageDataParameter.new_height', index=4, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.ImageDataParameter.new_width', index=5, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='is_color', full_name='caffe.ImageDataParameter.is_color', index=6, number=11, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ImageDataParameter.scale', index=7, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.ImageDataParameter.mean_file', index=8, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.ImageDataParameter.crop_size', index=9, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.ImageDataParameter.mirror', index=10, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='root_folder', full_name='caffe.ImageDataParameter.root_folder', index=11, number=12, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7122, serialized_end=7401, ) _INFOGAINLOSSPARAMETER = descriptor.Descriptor( name='InfogainLossParameter', full_name='caffe.InfogainLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.InfogainLossParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7403, serialized_end=7442, ) _INNERPRODUCTPARAMETER = descriptor.Descriptor( name='InnerProductParameter', full_name='caffe.InnerProductParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.InnerProductParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.InnerProductParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.InnerProductParameter.weight_filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.InnerProductParameter.bias_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.InnerProductParameter.axis', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7445, serialized_end=7622, ) _LOGPARAMETER = descriptor.Descriptor( name='LogParameter', full_name='caffe.LogParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='base', full_name='caffe.LogParameter.base', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.LogParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.LogParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7624, serialized_end=7692, ) _LRNPARAMETER = descriptor.Descriptor( name='LRNParameter', full_name='caffe.LRNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='local_size', full_name='caffe.LRNParameter.local_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LRNParameter.alpha', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LRNParameter.beta', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='norm_region', full_name='caffe.LRNParameter.norm_region', index=3, number=4, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='k', full_name='caffe.LRNParameter.k', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LRNPARAMETER_NORMREGION, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7695, serialized_end=7909, ) _MEMORYDATAPARAMETER = descriptor.Descriptor( name='MemoryDataParameter', full_name='caffe.MemoryDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='batch_size', full_name='caffe.MemoryDataParameter.batch_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.MemoryDataParameter.channels', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.MemoryDataParameter.height', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.MemoryDataParameter.width', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7911, serialized_end=8001, ) _MVNPARAMETER = descriptor.Descriptor( name='MVNParameter', full_name='caffe.MVNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='normalize_variance', full_name='caffe.MVNParameter.normalize_variance', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='across_channels', full_name='caffe.MVNParameter.across_channels', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eps', full_name='caffe.MVNParameter.eps', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-09, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8003, serialized_end=8103, ) _POOLINGPARAMETER = descriptor.Descriptor( name='PoolingParameter', full_name='caffe.PoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pool', full_name='caffe.PoolingParameter.pool', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.PoolingParameter.pad', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.PoolingParameter.pad_h', index=2, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.PoolingParameter.pad_w', index=3, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.PoolingParameter.kernel_size', index=4, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.PoolingParameter.kernel_h', index=5, number=5, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.PoolingParameter.kernel_w', index=6, number=6, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.PoolingParameter.stride', index=7, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.PoolingParameter.stride_h', index=8, number=7, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.PoolingParameter.stride_w', index=9, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.PoolingParameter.engine', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='global_pooling', full_name='caffe.PoolingParameter.global_pooling', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _POOLINGPARAMETER_POOLMETHOD, _POOLINGPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8106, serialized_end=8524, ) _POWERPARAMETER = descriptor.Descriptor( name='PowerParameter', full_name='caffe.PowerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='power', full_name='caffe.PowerParameter.power', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.PowerParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.PowerParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8526, serialized_end=8596, ) _PYTHONPARAMETER = descriptor.Descriptor( name='PythonParameter', full_name='caffe.PythonParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='module', full_name='caffe.PythonParameter.module', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.PythonParameter.layer', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param_str', full_name='caffe.PythonParameter.param_str', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='share_in_parallel', full_name='caffe.PythonParameter.share_in_parallel', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8598, serialized_end=8701, ) _REDUCTIONPARAMETER = descriptor.Descriptor( name='ReductionParameter', full_name='caffe.ReductionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='operation', full_name='caffe.ReductionParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ReductionParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='coeff', full_name='caffe.ReductionParameter.coeff', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _REDUCTIONPARAMETER_REDUCTIONOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8704, serialized_end=8877, ) _RELUPARAMETER = descriptor.Descriptor( name='ReLUParameter', full_name='caffe.ReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='negative_slope', full_name='caffe.ReLUParameter.negative_slope', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ReLUParameter.engine', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _RELUPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8880, serialized_end=9021, ) _RESHAPEPARAMETER = descriptor.Descriptor( name='ReshapeParameter', full_name='caffe.ReshapeParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='shape', full_name='caffe.ReshapeParameter.shape', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ReshapeParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_axes', full_name='caffe.ReshapeParameter.num_axes', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9023, serialized_end=9113, ) _SIGMOIDPARAMETER = descriptor.Descriptor( name='SigmoidParameter', full_name='caffe.SigmoidParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SigmoidParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SIGMOIDPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9115, serialized_end=9235, ) _SLICEPARAMETER = descriptor.Descriptor( name='SliceParameter', full_name='caffe.SliceParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.SliceParameter.axis', index=0, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_point', full_name='caffe.SliceParameter.slice_point', index=1, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_dim', full_name='caffe.SliceParameter.slice_dim', index=2, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9237, serialized_end=9313, ) _SOFTMAXPARAMETER = descriptor.Descriptor( name='SoftmaxParameter', full_name='caffe.SoftmaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SoftmaxParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.SoftmaxParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOFTMAXPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9316, serialized_end=9453, ) _TANHPARAMETER = descriptor.Descriptor( name='TanHParameter', full_name='caffe.TanHParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.TanHParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _TANHPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9455, serialized_end=9569, ) _TILEPARAMETER = descriptor.Descriptor( name='TileParameter', full_name='caffe.TileParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.TileParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tiles', full_name='caffe.TileParameter.tiles', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9571, serialized_end=9618, ) _THRESHOLDPARAMETER = descriptor.Descriptor( name='ThresholdParameter', full_name='caffe.ThresholdParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='threshold', full_name='caffe.ThresholdParameter.threshold', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9620, serialized_end=9662, ) _WINDOWDATAPARAMETER = descriptor.Descriptor( name='WindowDataParameter', full_name='caffe.WindowDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.WindowDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.WindowDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.WindowDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.WindowDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.WindowDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.WindowDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_threshold', full_name='caffe.WindowDataParameter.fg_threshold', index=6, number=7, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bg_threshold', full_name='caffe.WindowDataParameter.bg_threshold', index=7, number=8, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_fraction', full_name='caffe.WindowDataParameter.fg_fraction', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='context_pad', full_name='caffe.WindowDataParameter.context_pad', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_mode', full_name='caffe.WindowDataParameter.crop_mode', index=10, number=11, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cache_images', full_name='caffe.WindowDataParameter.cache_images', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='root_folder', full_name='caffe.WindowDataParameter.root_folder', index=12, number=13, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9665, serialized_end=9986, ) _SPPPARAMETER = descriptor.Descriptor( name='SPPParameter', full_name='caffe.SPPParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pyramid_height', full_name='caffe.SPPParameter.pyramid_height', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.SPPParameter.pool', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.SPPParameter.engine', index=2, number=6, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SPPPARAMETER_POOLMETHOD, _SPPPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9989, serialized_end=10224, ) _V1LAYERPARAMETER = descriptor.Descriptor( name='V1LayerParameter', full_name='caffe.V1LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='bottom', full_name='caffe.V1LayerParameter.bottom', index=0, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.V1LayerParameter.top', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='name', full_name='caffe.V1LayerParameter.name', index=2, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='include', full_name='caffe.V1LayerParameter.include', index=3, number=32, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exclude', full_name='caffe.V1LayerParameter.exclude', index=4, number=33, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V1LayerParameter.type', index=5, number=5, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V1LayerParameter.blobs', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param', full_name='caffe.V1LayerParameter.param', index=7, number=1001, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blob_share_mode', full_name='caffe.V1LayerParameter.blob_share_mode', index=8, number=1002, type=14, cpp_type=8, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V1LayerParameter.blobs_lr', index=9, number=7, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V1LayerParameter.weight_decay', index=10, number=8, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.V1LayerParameter.loss_weight', index=11, number=35, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.V1LayerParameter.accuracy_param', index=12, number=27, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.V1LayerParameter.argmax_param', index=13, number=23, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.V1LayerParameter.concat_param', index=14, number=9, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.V1LayerParameter.contrastive_loss_param', index=15, number=40, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.V1LayerParameter.convolution_param', index=16, number=10, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.V1LayerParameter.data_param', index=17, number=11, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.V1LayerParameter.dropout_param', index=18, number=12, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.V1LayerParameter.dummy_data_param', index=19, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.V1LayerParameter.eltwise_param', index=20, number=24, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exp_param', full_name='caffe.V1LayerParameter.exp_param', index=21, number=41, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.V1LayerParameter.hdf5_data_param', index=22, number=13, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V1LayerParameter.hdf5_output_param', index=23, number=14, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.V1LayerParameter.hinge_loss_param', index=24, number=29, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.V1LayerParameter.image_data_param', index=25, number=15, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.V1LayerParameter.infogain_loss_param', index=26, number=16, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.V1LayerParameter.inner_product_param', index=27, number=17, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.V1LayerParameter.lrn_param', index=28, number=18, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.V1LayerParameter.memory_data_param', index=29, number=22, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.V1LayerParameter.mvn_param', index=30, number=34, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.V1LayerParameter.pooling_param', index=31, number=19, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.V1LayerParameter.power_param', index=32, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='relu_param', full_name='caffe.V1LayerParameter.relu_param', index=33, number=30, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.V1LayerParameter.sigmoid_param', index=34, number=38, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.V1LayerParameter.softmax_param', index=35, number=39, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_param', full_name='caffe.V1LayerParameter.slice_param', index=36, number=31, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.V1LayerParameter.tanh_param', index=37, number=37, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.V1LayerParameter.threshold_param', index=38, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.V1LayerParameter.window_data_param', index=39, number=20, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='transform_param', full_name='caffe.V1LayerParameter.transform_param', index=40, number=36, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_param', full_name='caffe.V1LayerParameter.loss_param', index=41, number=42, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.V1LayerParameter.layer', index=42, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V1LAYERPARAMETER_LAYERTYPE, _V1LAYERPARAMETER_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10227, serialized_end=12765, ) _V0LAYERPARAMETER = descriptor.Descriptor( name='V0LayerParameter', full_name='caffe.V0LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.V0LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V0LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.V0LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.V0LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.V0LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.V0LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.V0LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.V0LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.V0LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.V0LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.V0LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.V0LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.V0LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.V0LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.V0LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='k', full_name='caffe.V0LayerParameter.k', index=15, number=22, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.V0LayerParameter.source', index=16, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.V0LayerParameter.scale', index=17, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.V0LayerParameter.meanfile', index=18, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.V0LayerParameter.batchsize', index=19, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.V0LayerParameter.cropsize', index=20, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.V0LayerParameter.mirror', index=21, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V0LayerParameter.blobs', index=22, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V0LayerParameter.blobs_lr', index=23, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V0LayerParameter.weight_decay', index=24, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.V0LayerParameter.rand_skip', index=25, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.V0LayerParameter.det_fg_threshold', index=26, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.V0LayerParameter.det_bg_threshold', index=27, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.V0LayerParameter.det_fg_fraction', index=28, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.V0LayerParameter.det_context_pad', index=29, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.V0LayerParameter.det_crop_mode', index=30, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_num', full_name='caffe.V0LayerParameter.new_num', index=31, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_channels', full_name='caffe.V0LayerParameter.new_channels', index=32, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.V0LayerParameter.new_height', index=33, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.V0LayerParameter.new_width', index=34, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.V0LayerParameter.shuffle_images', index=35, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.V0LayerParameter.concat_dim', index=36, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V0LayerParameter.hdf5_output_param', index=37, number=1001, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V0LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=12768, serialized_end=13789, ) _PRELUPARAMETER = descriptor.Descriptor( name='PReLUParameter', full_name='caffe.PReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='filler', full_name='caffe.PReLUParameter.filler', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channel_shared', full_name='caffe.PReLUParameter.channel_shared', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=13791, serialized_end=13878, ) _BLOBPROTO.fields_by_name['shape'].message_type = _BLOBSHAPE _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _FILLERPARAMETER.fields_by_name['variance_norm'].enum_type = _FILLERPARAMETER_VARIANCENORM _FILLERPARAMETER_VARIANCENORM.containing_type = _FILLERPARAMETER; _NETPARAMETER.fields_by_name['input_shape'].message_type = _BLOBSHAPE _NETPARAMETER.fields_by_name['state'].message_type = _NETSTATE _NETPARAMETER.fields_by_name['layer'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['layers'].message_type = _V1LAYERPARAMETER _SOLVERPARAMETER.fields_by_name['net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['test_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['test_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['snapshot_format'].enum_type = _SOLVERPARAMETER_SNAPSHOTFORMAT _SOLVERPARAMETER.fields_by_name['solver_mode'].enum_type = _SOLVERPARAMETER_SOLVERMODE _SOLVERPARAMETER.fields_by_name['solver_type'].enum_type = _SOLVERPARAMETER_SOLVERTYPE _SOLVERPARAMETER_SNAPSHOTFORMAT.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERMODE.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERTYPE.containing_type = _SOLVERPARAMETER; _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _NETSTATE.fields_by_name['phase'].enum_type = _PHASE _NETSTATERULE.fields_by_name['phase'].enum_type = _PHASE _PARAMSPEC.fields_by_name['share_mode'].enum_type = _PARAMSPEC_DIMCHECKMODE _PARAMSPEC_DIMCHECKMODE.containing_type = _PARAMSPEC; _LAYERPARAMETER.fields_by_name['phase'].enum_type = _PHASE _LAYERPARAMETER.fields_by_name['param'].message_type = _PARAMSPEC _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _LAYERPARAMETER.fields_by_name['embed_param'].message_type = _EMBEDPARAMETER _LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _LAYERPARAMETER.fields_by_name['flatten_param'].message_type = _FLATTENPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _LAYERPARAMETER.fields_by_name['log_param'].message_type = _LOGPARAMETER _LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _LAYERPARAMETER.fields_by_name['prelu_param'].message_type = _PRELUPARAMETER _LAYERPARAMETER.fields_by_name['python_param'].message_type = _PYTHONPARAMETER _LAYERPARAMETER.fields_by_name['reduction_param'].message_type = _REDUCTIONPARAMETER _LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _LAYERPARAMETER.fields_by_name['reshape_param'].message_type = _RESHAPEPARAMETER _LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _LAYERPARAMETER.fields_by_name['spp_param'].message_type = _SPPPARAMETER _LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _LAYERPARAMETER.fields_by_name['tile_param'].message_type = _TILEPARAMETER _LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['engine'].enum_type = _CONVOLUTIONPARAMETER_ENGINE _CONVOLUTIONPARAMETER_ENGINE.containing_type = _CONVOLUTIONPARAMETER; _DATAPARAMETER.fields_by_name['backend'].enum_type = _DATAPARAMETER_DB _DATAPARAMETER_DB.containing_type = _DATAPARAMETER; _DUMMYDATAPARAMETER.fields_by_name['data_filler'].message_type = _FILLERPARAMETER _DUMMYDATAPARAMETER.fields_by_name['shape'].message_type = _BLOBSHAPE _ELTWISEPARAMETER.fields_by_name['operation'].enum_type = _ELTWISEPARAMETER_ELTWISEOP _ELTWISEPARAMETER_ELTWISEOP.containing_type = _ELTWISEPARAMETER; _EMBEDPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _EMBEDPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _HINGELOSSPARAMETER.fields_by_name['norm'].enum_type = _HINGELOSSPARAMETER_NORM _HINGELOSSPARAMETER_NORM.containing_type = _HINGELOSSPARAMETER; _INNERPRODUCTPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LRNPARAMETER.fields_by_name['norm_region'].enum_type = _LRNPARAMETER_NORMREGION _LRNPARAMETER_NORMREGION.containing_type = _LRNPARAMETER; _POOLINGPARAMETER.fields_by_name['pool'].enum_type = _POOLINGPARAMETER_POOLMETHOD _POOLINGPARAMETER.fields_by_name['engine'].enum_type = _POOLINGPARAMETER_ENGINE _POOLINGPARAMETER_POOLMETHOD.containing_type = _POOLINGPARAMETER; _POOLINGPARAMETER_ENGINE.containing_type = _POOLINGPARAMETER; _REDUCTIONPARAMETER.fields_by_name['operation'].enum_type = _REDUCTIONPARAMETER_REDUCTIONOP _REDUCTIONPARAMETER_REDUCTIONOP.containing_type = _REDUCTIONPARAMETER; _RELUPARAMETER.fields_by_name['engine'].enum_type = _RELUPARAMETER_ENGINE _RELUPARAMETER_ENGINE.containing_type = _RELUPARAMETER; _RESHAPEPARAMETER.fields_by_name['shape'].message_type = _BLOBSHAPE _SIGMOIDPARAMETER.fields_by_name['engine'].enum_type = _SIGMOIDPARAMETER_ENGINE _SIGMOIDPARAMETER_ENGINE.containing_type = _SIGMOIDPARAMETER; _SOFTMAXPARAMETER.fields_by_name['engine'].enum_type = _SOFTMAXPARAMETER_ENGINE _SOFTMAXPARAMETER_ENGINE.containing_type = _SOFTMAXPARAMETER; _TANHPARAMETER.fields_by_name['engine'].enum_type = _TANHPARAMETER_ENGINE _TANHPARAMETER_ENGINE.containing_type = _TANHPARAMETER; _SPPPARAMETER.fields_by_name['pool'].enum_type = _SPPPARAMETER_POOLMETHOD _SPPPARAMETER.fields_by_name['engine'].enum_type = _SPPPARAMETER_ENGINE _SPPPARAMETER_POOLMETHOD.containing_type = _SPPPARAMETER; _SPPPARAMETER_ENGINE.containing_type = _SPPPARAMETER; _V1LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['type'].enum_type = _V1LAYERPARAMETER_LAYERTYPE _V1LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V1LAYERPARAMETER.fields_by_name['blob_share_mode'].enum_type = _V1LAYERPARAMETER_DIMCHECKMODE _V1LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _V1LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _V1LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _V1LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _V1LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _V1LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V1LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _V1LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _V1LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _V1LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _V1LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _V1LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _V1LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _V1LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _V1LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _V1LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _V1LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _V1LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['layer'].message_type = _V0LAYERPARAMETER _V1LAYERPARAMETER_LAYERTYPE.containing_type = _V1LAYERPARAMETER; _V1LAYERPARAMETER_DIMCHECKMODE.containing_type = _V1LAYERPARAMETER; _V0LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['pool'].enum_type = _V0LAYERPARAMETER_POOLMETHOD _V0LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V0LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V0LAYERPARAMETER_POOLMETHOD.containing_type = _V0LAYERPARAMETER; _PRELUPARAMETER.fields_by_name['filler'].message_type = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['BlobShape'] = _BLOBSHAPE DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE DESCRIPTOR.message_types_by_name['NetState'] = _NETSTATE DESCRIPTOR.message_types_by_name['NetStateRule'] = _NETSTATERULE DESCRIPTOR.message_types_by_name['ParamSpec'] = _PARAMSPEC DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['TransformationParameter'] = _TRANSFORMATIONPARAMETER DESCRIPTOR.message_types_by_name['LossParameter'] = _LOSSPARAMETER DESCRIPTOR.message_types_by_name['AccuracyParameter'] = _ACCURACYPARAMETER DESCRIPTOR.message_types_by_name['ArgMaxParameter'] = _ARGMAXPARAMETER DESCRIPTOR.message_types_by_name['ConcatParameter'] = _CONCATPARAMETER DESCRIPTOR.message_types_by_name['ContrastiveLossParameter'] = _CONTRASTIVELOSSPARAMETER DESCRIPTOR.message_types_by_name['ConvolutionParameter'] = _CONVOLUTIONPARAMETER DESCRIPTOR.message_types_by_name['DataParameter'] = _DATAPARAMETER DESCRIPTOR.message_types_by_name['DropoutParameter'] = _DROPOUTPARAMETER DESCRIPTOR.message_types_by_name['DummyDataParameter'] = _DUMMYDATAPARAMETER DESCRIPTOR.message_types_by_name['EltwiseParameter'] = _ELTWISEPARAMETER DESCRIPTOR.message_types_by_name['EmbedParameter'] = _EMBEDPARAMETER DESCRIPTOR.message_types_by_name['ExpParameter'] = _EXPPARAMETER DESCRIPTOR.message_types_by_name['FlattenParameter'] = _FLATTENPARAMETER DESCRIPTOR.message_types_by_name['HDF5DataParameter'] = _HDF5DATAPARAMETER DESCRIPTOR.message_types_by_name['HDF5OutputParameter'] = _HDF5OUTPUTPARAMETER DESCRIPTOR.message_types_by_name['HingeLossParameter'] = _HINGELOSSPARAMETER DESCRIPTOR.message_types_by_name['ImageDataParameter'] = _IMAGEDATAPARAMETER DESCRIPTOR.message_types_by_name['InfogainLossParameter'] = _INFOGAINLOSSPARAMETER DESCRIPTOR.message_types_by_name['InnerProductParameter'] = _INNERPRODUCTPARAMETER DESCRIPTOR.message_types_by_name['LogParameter'] = _LOGPARAMETER DESCRIPTOR.message_types_by_name['LRNParameter'] = _LRNPARAMETER DESCRIPTOR.message_types_by_name['MemoryDataParameter'] = _MEMORYDATAPARAMETER DESCRIPTOR.message_types_by_name['MVNParameter'] = _MVNPARAMETER DESCRIPTOR.message_types_by_name['PoolingParameter'] = _POOLINGPARAMETER DESCRIPTOR.message_types_by_name['PowerParameter'] = _POWERPARAMETER DESCRIPTOR.message_types_by_name['PythonParameter'] = _PYTHONPARAMETER DESCRIPTOR.message_types_by_name['ReductionParameter'] = _REDUCTIONPARAMETER DESCRIPTOR.message_types_by_name['ReLUParameter'] = _RELUPARAMETER DESCRIPTOR.message_types_by_name['ReshapeParameter'] = _RESHAPEPARAMETER DESCRIPTOR.message_types_by_name['SigmoidParameter'] = _SIGMOIDPARAMETER DESCRIPTOR.message_types_by_name['SliceParameter'] = _SLICEPARAMETER DESCRIPTOR.message_types_by_name['SoftmaxParameter'] = _SOFTMAXPARAMETER DESCRIPTOR.message_types_by_name['TanHParameter'] = _TANHPARAMETER DESCRIPTOR.message_types_by_name['TileParameter'] = _TILEPARAMETER DESCRIPTOR.message_types_by_name['ThresholdParameter'] = _THRESHOLDPARAMETER DESCRIPTOR.message_types_by_name['WindowDataParameter'] = _WINDOWDATAPARAMETER DESCRIPTOR.message_types_by_name['SPPParameter'] = _SPPPARAMETER DESCRIPTOR.message_types_by_name['V1LayerParameter'] = _V1LAYERPARAMETER DESCRIPTOR.message_types_by_name['V0LayerParameter'] = _V0LAYERPARAMETER DESCRIPTOR.message_types_by_name['PReLUParameter'] = _PRELUPARAMETER class BlobShape(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBSHAPE # @@protoc_insertion_point(class_scope:caffe.BlobShape) class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) class NetState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATE # @@protoc_insertion_point(class_scope:caffe.NetState) class NetStateRule(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATERULE # @@protoc_insertion_point(class_scope:caffe.NetStateRule) class ParamSpec(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PARAMSPEC # @@protoc_insertion_point(class_scope:caffe.ParamSpec) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class TransformationParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TRANSFORMATIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.TransformationParameter) class LossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.LossParameter) class AccuracyParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ACCURACYPARAMETER # @@protoc_insertion_point(class_scope:caffe.AccuracyParameter) class ArgMaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ARGMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.ArgMaxParameter) class ConcatParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONCATPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConcatParameter) class ContrastiveLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONTRASTIVELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.ContrastiveLossParameter) class ConvolutionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONVOLUTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConvolutionParameter) class DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DataParameter) class DropoutParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DROPOUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.DropoutParameter) class DummyDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DUMMYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DummyDataParameter) class EltwiseParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ELTWISEPARAMETER # @@protoc_insertion_point(class_scope:caffe.EltwiseParameter) class EmbedParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EMBEDPARAMETER # @@protoc_insertion_point(class_scope:caffe.EmbedParameter) class ExpParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EXPPARAMETER # @@protoc_insertion_point(class_scope:caffe.ExpParameter) class FlattenParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FLATTENPARAMETER # @@protoc_insertion_point(class_scope:caffe.FlattenParameter) class HDF5DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5DataParameter) class HDF5OutputParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5OUTPUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5OutputParameter) class HingeLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HINGELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.HingeLossParameter) class ImageDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _IMAGEDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.ImageDataParameter) class InfogainLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INFOGAINLOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.InfogainLossParameter) class InnerProductParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INNERPRODUCTPARAMETER # @@protoc_insertion_point(class_scope:caffe.InnerProductParameter) class LogParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LOGPARAMETER # @@protoc_insertion_point(class_scope:caffe.LogParameter) class LRNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LRNPARAMETER # @@protoc_insertion_point(class_scope:caffe.LRNParameter) class MemoryDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MEMORYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.MemoryDataParameter) class MVNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MVNPARAMETER # @@protoc_insertion_point(class_scope:caffe.MVNParameter) class PoolingParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.PoolingParameter) class PowerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POWERPARAMETER # @@protoc_insertion_point(class_scope:caffe.PowerParameter) class PythonParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PYTHONPARAMETER # @@protoc_insertion_point(class_scope:caffe.PythonParameter) class ReductionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _REDUCTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReductionParameter) class ReLUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _RELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReLUParameter) class ReshapeParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _RESHAPEPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReshapeParameter) class SigmoidParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SIGMOIDPARAMETER # @@protoc_insertion_point(class_scope:caffe.SigmoidParameter) class SliceParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SLICEPARAMETER # @@protoc_insertion_point(class_scope:caffe.SliceParameter) class SoftmaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOFTMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.SoftmaxParameter) class TanHParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TANHPARAMETER # @@protoc_insertion_point(class_scope:caffe.TanHParameter) class TileParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TILEPARAMETER # @@protoc_insertion_point(class_scope:caffe.TileParameter) class ThresholdParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _THRESHOLDPARAMETER # @@protoc_insertion_point(class_scope:caffe.ThresholdParameter) class WindowDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _WINDOWDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.WindowDataParameter) class SPPParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SPPPARAMETER # @@protoc_insertion_point(class_scope:caffe.SPPParameter) class V1LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V1LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V1LayerParameter) class V0LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V0LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V0LayerParameter) class PReLUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PRELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.PReLUParameter) # @@protoc_insertion_point(module_scope)
218,004
42.349572
26,073
py
DRT
DRT-master/external_libs/matconvnet/utils/proto/caffe_old_pb2.py
# Generated by the protocol buffer compiler. DO NOT EDIT! from google.protobuf import descriptor from google.protobuf import message from google.protobuf import reflection from google.protobuf import descriptor_pb2 # @@protoc_insertion_point(imports) DESCRIPTOR = descriptor.FileDescriptor( name='caffe-old.proto', package='caffe', serialized_pb='\n\x0f\x63\x61\x66\x66\x65-old.proto\x12\x05\x63\x61\x66\x66\x65\"y\n\tBlobProto\x12\x0e\n\x03num\x18\x01 \x01(\x05:\x01\x30\x12\x13\n\x08\x63hannels\x18\x02 \x01(\x05:\x01\x30\x12\x11\n\x06height\x18\x03 \x01(\x05:\x01\x30\x12\x10\n\x05width\x18\x04 \x01(\x05:\x01\x30\x12\x10\n\x04\x64\x61ta\x18\x05 \x03(\x02\x42\x02\x10\x01\x12\x10\n\x04\x64iff\x18\x06 \x03(\x02\x42\x02\x10\x01\"2\n\x0f\x42lobProtoVector\x12\x1f\n\x05\x62lobs\x18\x01 \x03(\x0b\x32\x10.caffe.BlobProto\"i\n\x05\x44\x61tum\x12\x10\n\x08\x63hannels\x18\x01 \x01(\x05\x12\x0e\n\x06height\x18\x02 \x01(\x05\x12\r\n\x05width\x18\x03 \x01(\x05\x12\x0c\n\x04\x64\x61ta\x18\x04 \x01(\x0c\x12\r\n\x05label\x18\x05 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number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=1336, serialized_end=1382, ) _BLOBPROTO = descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=26, serialized_end=147, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=149, serialized_end=199, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=201, serialized_end=306, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=308, serialized_end=432, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.LayerParameter.source', index=15, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.LayerParameter.scale', index=16, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.LayerParameter.meanfile', index=17, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.LayerParameter.batchsize', index=18, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.LayerParameter.cropsize', index=19, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.LayerParameter.mirror', index=20, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=21, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.LayerParameter.blobs_lr', index=22, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.LayerParameter.weight_decay', index=23, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.LayerParameter.rand_skip', index=24, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.LayerParameter.det_fg_threshold', index=25, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.LayerParameter.det_bg_threshold', index=26, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.LayerParameter.det_fg_fraction', index=27, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.LayerParameter.det_context_pad', index=28, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.LayerParameter.det_crop_mode', index=29, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_num', full_name='caffe.LayerParameter.new_num', index=30, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_channels', full_name='caffe.LayerParameter.new_channels', index=31, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.LayerParameter.new_height', index=32, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.LayerParameter.new_width', index=33, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.LayerParameter.shuffle_images', index=34, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.LayerParameter.concat_dim', index=35, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=435, serialized_end=1382, ) _LAYERCONNECTION = descriptor.Descriptor( name='LayerConnection', full_name='caffe.LayerConnection', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='layer', full_name='caffe.LayerConnection.layer', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerConnection.bottom', index=1, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerConnection.top', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1384, serialized_end=1468, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=1, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1471, serialized_end=1604, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=5, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=7, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=9, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=10, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=12, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=13, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=14, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=15, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=16, number=17, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=17, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1607, serialized_end=1990, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1992, serialized_end=2075, ) _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LAYERPARAMETER.fields_by_name['pool'].enum_type = _LAYERPARAMETER_POOLMETHOD _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER_POOLMETHOD.containing_type = _LAYERPARAMETER; _LAYERCONNECTION.fields_by_name['layer'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['layers'].message_type = _LAYERCONNECTION _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['LayerConnection'] = _LAYERCONNECTION DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class LayerConnection(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERCONNECTION # @@protoc_insertion_point(class_scope:caffe.LayerConnection) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) # @@protoc_insertion_point(module_scope)
39,691
43.348603
4,364
py
DRT
DRT-master/external_libs/matconvnet/utils/proto/caffe_b590f1d_pb2.py
# Generated by the protocol buffer compiler. DO NOT EDIT! from google.protobuf import descriptor from google.protobuf import message from google.protobuf import reflection from google.protobuf import descriptor_pb2 # @@protoc_insertion_point(imports) DESCRIPTOR = descriptor.FileDescriptor( name='caffe_b590f1d.proto', package='caffe', serialized_pb='\n\x13\x63\x61\x66\x66\x65_b590f1d.proto\x12\x05\x63\x61\x66\x66\x65\"\x1c\n\tBlobShape\x12\x0f\n\x03\x64im\x18\x01 \x03(\x03\x42\x02\x10\x01\"\xcc\x01\n\tBlobProto\x12\x1f\n\x05shape\x18\x07 \x01(\x0b\x32\x10.caffe.BlobShape\x12\x10\n\x04\x64\x61ta\x18\x05 \x03(\x02\x42\x02\x10\x01\x12\x10\n\x04\x64iff\x18\x06 \x03(\x02\x42\x02\x10\x01\x12\x17\n\x0b\x64ouble_data\x18\x08 \x03(\x01\x42\x02\x10\x01\x12\x17\n\x0b\x64ouble_diff\x18\t \x03(\x01\x42\x02\x10\x01\x12\x0e\n\x03num\x18\x01 \x01(\x05:\x01\x30\x12\x13\n\x08\x63hannels\x18\x02 \x01(\x05:\x01\x30\x12\x11\n\x06height\x18\x03 \x01(\x05:\x01\x30\x12\x10\n\x05width\x18\x04 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number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='FAN_OUT', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='AVERAGE', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=666, serialized_end=718, ) _SOLVERPARAMETER_SNAPSHOTFORMAT = descriptor.EnumDescriptor( name='SnapshotFormat', full_name='caffe.SolverParameter.SnapshotFormat', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='HDF5', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='BINARYPROTO', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2140, serialized_end=2183, ) _SOLVERPARAMETER_SOLVERMODE = descriptor.EnumDescriptor( name='SolverMode', full_name='caffe.SolverParameter.SolverMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='CPU', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='GPU', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2185, serialized_end=2215, ) _SOLVERPARAMETER_SOLVERTYPE = descriptor.EnumDescriptor( name='SolverType', full_name='caffe.SolverParameter.SolverType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='SGD', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='NESTEROV', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ADAGRAD', index=2, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='RMSPROP', index=3, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='ADADELTA', index=4, number=4, options=None, type=None), descriptor.EnumValueDescriptor( name='ADAM', index=5, number=5, options=None, type=None), ], containing_type=None, options=None, serialized_start=2217, serialized_end=2302, ) _PARAMSPEC_DIMCHECKMODE = descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.ParamSpec.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2733, serialized_end=2775, ) _LOSSPARAMETER_NORMALIZATIONMODE = descriptor.EnumDescriptor( name='NormalizationMode', full_name='caffe.LossParameter.NormalizationMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='FULL', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='VALID', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='BATCH_SIZE', index=2, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='NONE', index=3, number=3, options=None, type=None), ], containing_type=None, options=None, serialized_start=5462, serialized_end=5528, ) _CONVOLUTIONPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.ConvolutionParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _DATAPARAMETER_DB = descriptor.EnumDescriptor( name='DB', full_name='caffe.DataParameter.DB', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='LEVELDB', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='LMDB', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=6804, serialized_end=6831, ) _ELTWISEPARAMETER_ELTWISEOP = descriptor.EnumDescriptor( name='EltwiseOp', full_name='caffe.EltwiseParameter.EltwiseOp', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='PROD', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='SUM', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='MAX', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7171, serialized_end=7210, ) _HINGELOSSPARAMETER_NORM = descriptor.EnumDescriptor( name='Norm', full_name='caffe.HingeLossParameter.Norm', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='L1', index=0, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='L2', index=1, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=7745, serialized_end=7767, ) _LRNPARAMETER_NORMREGION = descriptor.EnumDescriptor( name='NormRegion', full_name='caffe.LRNParameter.NormRegion', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='ACROSS_CHANNELS', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='WITHIN_CHANNEL', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=8557, serialized_end=8610, ) _LRNPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.LRNParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _POOLINGPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.PoolingParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=9179, serialized_end=9225, ) _POOLINGPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.PoolingParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _REDUCTIONPARAMETER_REDUCTIONOP = descriptor.EnumDescriptor( name='ReductionOp', full_name='caffe.ReductionParameter.ReductionOp', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='SUM', index=0, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ASUM', index=1, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='SUMSQ', index=2, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='MEAN', index=3, number=4, options=None, type=None), ], containing_type=None, options=None, serialized_start=9570, serialized_end=9623, ) _RELUPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.ReLUParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _SIGMOIDPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SigmoidParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _SOFTMAXPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SoftmaxParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _TANHPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.TanHParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _SPPPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.SPPParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=9179, serialized_end=9225, ) _SPPPARAMETER_ENGINE = descriptor.EnumDescriptor( name='Engine', full_name='caffe.SPPParameter.Engine', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='DEFAULT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='CAFFE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='CUDNN', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=6493, serialized_end=6536, ) _V1LAYERPARAMETER_LAYERTYPE = descriptor.EnumDescriptor( name='LayerType', full_name='caffe.V1LayerParameter.LayerType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='NONE', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='ABSVAL', index=1, number=35, options=None, type=None), descriptor.EnumValueDescriptor( name='ACCURACY', index=2, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='ARGMAX', index=3, number=30, options=None, type=None), descriptor.EnumValueDescriptor( name='BNLL', index=4, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='CONCAT', index=5, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='CONTRASTIVE_LOSS', index=6, number=37, options=None, type=None), descriptor.EnumValueDescriptor( name='CONVOLUTION', index=7, number=4, options=None, type=None), descriptor.EnumValueDescriptor( name='DATA', index=8, number=5, options=None, type=None), descriptor.EnumValueDescriptor( name='DECONVOLUTION', index=9, number=39, options=None, type=None), descriptor.EnumValueDescriptor( name='DROPOUT', index=10, number=6, options=None, type=None), descriptor.EnumValueDescriptor( name='DUMMY_DATA', index=11, number=32, options=None, type=None), descriptor.EnumValueDescriptor( name='EUCLIDEAN_LOSS', index=12, number=7, options=None, type=None), descriptor.EnumValueDescriptor( name='ELTWISE', index=13, number=25, options=None, type=None), descriptor.EnumValueDescriptor( name='EXP', index=14, number=38, options=None, type=None), descriptor.EnumValueDescriptor( name='FLATTEN', index=15, number=8, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_DATA', index=16, number=9, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_OUTPUT', index=17, number=10, options=None, type=None), descriptor.EnumValueDescriptor( name='HINGE_LOSS', index=18, number=28, options=None, type=None), descriptor.EnumValueDescriptor( name='IM2COL', index=19, number=11, options=None, type=None), descriptor.EnumValueDescriptor( name='IMAGE_DATA', index=20, number=12, options=None, type=None), descriptor.EnumValueDescriptor( name='INFOGAIN_LOSS', index=21, number=13, options=None, type=None), descriptor.EnumValueDescriptor( name='INNER_PRODUCT', index=22, number=14, options=None, type=None), descriptor.EnumValueDescriptor( name='LRN', index=23, number=15, options=None, type=None), descriptor.EnumValueDescriptor( name='MEMORY_DATA', index=24, number=29, options=None, type=None), descriptor.EnumValueDescriptor( name='MULTINOMIAL_LOGISTIC_LOSS', index=25, number=16, options=None, type=None), descriptor.EnumValueDescriptor( name='MVN', index=26, number=34, options=None, type=None), descriptor.EnumValueDescriptor( name='POOLING', index=27, number=17, options=None, type=None), descriptor.EnumValueDescriptor( name='POWER', index=28, number=26, options=None, type=None), descriptor.EnumValueDescriptor( name='RELU', index=29, number=18, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID', index=30, number=19, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID_CROSS_ENTROPY_LOSS', index=31, number=27, options=None, type=None), descriptor.EnumValueDescriptor( name='SILENCE', index=32, number=36, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX', index=33, number=20, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX_LOSS', index=34, number=21, options=None, type=None), descriptor.EnumValueDescriptor( name='SPLIT', index=35, number=22, options=None, type=None), descriptor.EnumValueDescriptor( name='SLICE', index=36, number=33, options=None, type=None), descriptor.EnumValueDescriptor( name='TANH', index=37, number=23, options=None, type=None), descriptor.EnumValueDescriptor( name='WINDOW_DATA', index=38, number=24, options=None, type=None), descriptor.EnumValueDescriptor( name='THRESHOLD', index=39, number=31, options=None, type=None), ], containing_type=None, options=None, serialized_start=13025, serialized_end=13625, ) _V1LAYERPARAMETER_DIMCHECKMODE = descriptor.EnumDescriptor( name='DimCheckMode', full_name='caffe.V1LayerParameter.DimCheckMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='STRICT', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='PERMISSIVE', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=2733, serialized_end=2775, ) _V0LAYERPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.V0LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=9179, serialized_end=9225, ) _BLOBSHAPE = descriptor.Descriptor( name='BlobShape', full_name='caffe.BlobShape', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dim', full_name='caffe.BlobShape.dim', index=0, number=1, type=3, cpp_type=2, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=30, serialized_end=58, ) _BLOBPROTO = descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='shape', full_name='caffe.BlobProto.shape', index=0, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=1, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=2, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='double_data', full_name='caffe.BlobProto.double_data', index=3, number=8, type=1, cpp_type=5, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='double_diff', full_name='caffe.BlobProto.double_diff', index=4, number=9, type=1, cpp_type=5, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=5, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=6, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=7, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=8, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=61, serialized_end=265, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=267, serialized_end=317, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='encoded', full_name='caffe.Datum.encoded', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=320, serialized_end=449, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sparse', full_name='caffe.FillerParameter.sparse', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='variance_norm', full_name='caffe.FillerParameter.variance_norm', index=7, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _FILLERPARAMETER_VARIANCENORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=452, serialized_end=718, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_shape', full_name='caffe.NetParameter.input_shape', index=2, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='state', full_name='caffe.NetParameter.state', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='debug_info', full_name='caffe.NetParameter.debug_info', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.NetParameter.layer', index=7, number=100, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=8, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=721, serialized_end=991, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='net', full_name='caffe.SolverParameter.net', index=0, number=24, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='net_param', full_name='caffe.SolverParameter.net_param', index=1, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=2, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=3, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_net_param', full_name='caffe.SolverParameter.train_net_param', index=4, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net_param', full_name='caffe.SolverParameter.test_net_param', index=5, number=22, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='train_state', full_name='caffe.SolverParameter.train_state', index=6, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_state', full_name='caffe.SolverParameter.test_state', index=7, number=27, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=8, number=3, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=9, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_compute_loss', full_name='caffe.SolverParameter.test_compute_loss', index=10, number=19, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_initialization', full_name='caffe.SolverParameter.test_initialization', index=11, number=32, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=12, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=13, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='average_loss', full_name='caffe.SolverParameter.average_loss', index=14, number=33, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=15, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='iter_size', full_name='caffe.SolverParameter.iter_size', index=16, number=36, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=17, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=18, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=19, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=20, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=21, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='regularization_type', full_name='caffe.SolverParameter.regularization_type', index=22, number=29, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("L2", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=23, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepvalue', full_name='caffe.SolverParameter.stepvalue', index=24, number=34, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='clip_gradients', full_name='caffe.SolverParameter.clip_gradients', index=25, number=35, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=26, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=27, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=28, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_format', full_name='caffe.SolverParameter.snapshot_format', index=29, number=37, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=30, number=17, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=31, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='random_seed', full_name='caffe.SolverParameter.random_seed', index=32, number=20, type=3, cpp_type=2, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.SolverParameter.type', index=33, number=40, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("SGD", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='delta', full_name='caffe.SolverParameter.delta', index=34, number=31, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-08, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum2', full_name='caffe.SolverParameter.momentum2', index=35, number=39, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.999, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rms_decay', full_name='caffe.SolverParameter.rms_decay', index=36, number=38, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='debug_info', full_name='caffe.SolverParameter.debug_info', index=37, number=23, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_after_train', full_name='caffe.SolverParameter.snapshot_after_train', index=38, number=28, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_type', full_name='caffe.SolverParameter.solver_type', index=39, number=30, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOLVERPARAMETER_SNAPSHOTFORMAT, _SOLVERPARAMETER_SOLVERMODE, _SOLVERPARAMETER_SOLVERTYPE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=994, serialized_end=2302, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='current_step', full_name='caffe.SolverState.current_step', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2304, serialized_end=2412, ) _NETSTATE = descriptor.Descriptor( name='NetState', full_name='caffe.NetState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetState.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='level', full_name='caffe.NetState.level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetState.stage', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2414, serialized_end=2492, ) _NETSTATERULE = descriptor.Descriptor( name='NetStateRule', full_name='caffe.NetStateRule', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='phase', full_name='caffe.NetStateRule.phase', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min_level', full_name='caffe.NetStateRule.min_level', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_level', full_name='caffe.NetStateRule.max_level', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stage', full_name='caffe.NetStateRule.stage', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='not_stage', full_name='caffe.NetStateRule.not_stage', index=4, number=5, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2494, serialized_end=2609, ) _PARAMSPEC = descriptor.Descriptor( name='ParamSpec', full_name='caffe.ParamSpec', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.ParamSpec.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='share_mode', full_name='caffe.ParamSpec.share_mode', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_mult', full_name='caffe.ParamSpec.lr_mult', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='decay_mult', full_name='caffe.ParamSpec.decay_mult', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _PARAMSPEC_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2612, serialized_end=2775, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerParameter.bottom', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerParameter.top', index=3, number=4, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='phase', full_name='caffe.LayerParameter.phase', index=4, number=10, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.LayerParameter.loss_weight', index=5, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param', full_name='caffe.LayerParameter.param', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=7, number=7, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='propagate_down', full_name='caffe.LayerParameter.propagate_down', index=8, number=11, type=8, cpp_type=7, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='include', full_name='caffe.LayerParameter.include', index=9, number=8, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exclude', full_name='caffe.LayerParameter.exclude', index=10, number=9, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='transform_param', full_name='caffe.LayerParameter.transform_param', index=11, number=100, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_param', full_name='caffe.LayerParameter.loss_param', index=12, number=101, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.LayerParameter.accuracy_param', index=13, number=102, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.LayerParameter.argmax_param', index=14, number=103, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_norm_param', full_name='caffe.LayerParameter.batch_norm_param', index=15, number=139, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_param', full_name='caffe.LayerParameter.bias_param', index=16, number=141, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.LayerParameter.concat_param', index=17, number=104, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.LayerParameter.contrastive_loss_param', index=18, number=105, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.LayerParameter.convolution_param', index=19, number=106, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.LayerParameter.data_param', index=20, number=107, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.LayerParameter.dropout_param', index=21, number=108, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.LayerParameter.dummy_data_param', index=22, number=109, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.LayerParameter.eltwise_param', index=23, number=110, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='elu_param', full_name='caffe.LayerParameter.elu_param', index=24, number=140, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='embed_param', full_name='caffe.LayerParameter.embed_param', index=25, number=137, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exp_param', full_name='caffe.LayerParameter.exp_param', index=26, number=111, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='flatten_param', full_name='caffe.LayerParameter.flatten_param', index=27, number=135, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.LayerParameter.hdf5_data_param', index=28, number=112, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.LayerParameter.hdf5_output_param', index=29, number=113, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.LayerParameter.hinge_loss_param', index=30, number=114, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.LayerParameter.image_data_param', index=31, number=115, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.LayerParameter.infogain_loss_param', index=32, number=116, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.LayerParameter.inner_product_param', index=33, number=117, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='log_param', full_name='caffe.LayerParameter.log_param', index=34, number=134, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.LayerParameter.lrn_param', index=35, number=118, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.LayerParameter.memory_data_param', index=36, number=119, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.LayerParameter.mvn_param', index=37, number=120, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.LayerParameter.pooling_param', index=38, number=121, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.LayerParameter.power_param', index=39, number=122, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='prelu_param', full_name='caffe.LayerParameter.prelu_param', index=40, number=131, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='python_param', full_name='caffe.LayerParameter.python_param', index=41, number=130, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='reduction_param', full_name='caffe.LayerParameter.reduction_param', index=42, number=136, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='relu_param', full_name='caffe.LayerParameter.relu_param', index=43, number=123, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='reshape_param', full_name='caffe.LayerParameter.reshape_param', index=44, number=133, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale_param', full_name='caffe.LayerParameter.scale_param', index=45, number=142, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.LayerParameter.sigmoid_param', index=46, number=124, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.LayerParameter.softmax_param', index=47, number=125, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='spp_param', full_name='caffe.LayerParameter.spp_param', index=48, number=132, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_param', full_name='caffe.LayerParameter.slice_param', index=49, number=126, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.LayerParameter.tanh_param', index=50, number=127, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.LayerParameter.threshold_param', index=51, number=128, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tile_param', full_name='caffe.LayerParameter.tile_param', index=52, number=138, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.LayerParameter.window_data_param', index=53, number=129, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2778, serialized_end=5146, ) _TRANSFORMATIONPARAMETER = descriptor.Descriptor( name='TransformationParameter', full_name='caffe.TransformationParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='scale', full_name='caffe.TransformationParameter.scale', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.TransformationParameter.mirror', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.TransformationParameter.crop_size', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.TransformationParameter.mean_file', index=3, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_value', full_name='caffe.TransformationParameter.mean_value', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_color', full_name='caffe.TransformationParameter.force_color', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_gray', full_name='caffe.TransformationParameter.force_gray', index=6, number=7, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5149, serialized_end=5331, ) _LOSSPARAMETER = descriptor.Descriptor( name='LossParameter', full_name='caffe.LossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.LossParameter.ignore_label', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='normalization', full_name='caffe.LossParameter.normalization', index=1, number=3, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='normalize', full_name='caffe.LossParameter.normalize', index=2, number=2, type=8, cpp_type=7, label=1, has_default_value=False, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LOSSPARAMETER_NORMALIZATIONMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5334, serialized_end=5528, ) _ACCURACYPARAMETER = descriptor.Descriptor( name='AccuracyParameter', full_name='caffe.AccuracyParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='top_k', full_name='caffe.AccuracyParameter.top_k', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.AccuracyParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='ignore_label', full_name='caffe.AccuracyParameter.ignore_label', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5530, serialized_end=5606, ) _ARGMAXPARAMETER = descriptor.Descriptor( name='ArgMaxParameter', full_name='caffe.ArgMaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='out_max_val', full_name='caffe.ArgMaxParameter.out_max_val', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top_k', full_name='caffe.ArgMaxParameter.top_k', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ArgMaxParameter.axis', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5608, serialized_end=5685, ) _CONCATPARAMETER = descriptor.Descriptor( name='ConcatParameter', full_name='caffe.ConcatParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.ConcatParameter.axis', index=0, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.ConcatParameter.concat_dim', index=1, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5687, serialized_end=5744, ) _BATCHNORMPARAMETER = descriptor.Descriptor( name='BatchNormParameter', full_name='caffe.BatchNormParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='use_global_stats', full_name='caffe.BatchNormParameter.use_global_stats', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=False, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='moving_average_fraction', full_name='caffe.BatchNormParameter.moving_average_fraction', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.999, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eps', full_name='caffe.BatchNormParameter.eps', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-05, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5746, serialized_end=5852, ) _BIASPARAMETER = descriptor.Descriptor( name='BiasParameter', full_name='caffe.BiasParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.BiasParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_axes', full_name='caffe.BiasParameter.num_axes', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='filler', full_name='caffe.BiasParameter.filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5854, serialized_end=5947, ) _CONTRASTIVELOSSPARAMETER = descriptor.Descriptor( name='ContrastiveLossParameter', full_name='caffe.ContrastiveLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='margin', full_name='caffe.ContrastiveLossParameter.margin', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='legacy_version', full_name='caffe.ContrastiveLossParameter.legacy_version', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=5949, serialized_end=6025, ) _CONVOLUTIONPARAMETER = descriptor.Descriptor( name='ConvolutionParameter', full_name='caffe.ConvolutionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.ConvolutionParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ConvolutionParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.ConvolutionParameter.pad', index=2, number=3, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.ConvolutionParameter.kernel_size', index=3, number=4, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.ConvolutionParameter.stride', index=4, number=6, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dilation', full_name='caffe.ConvolutionParameter.dilation', index=5, number=18, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.ConvolutionParameter.pad_h', index=6, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.ConvolutionParameter.pad_w', index=7, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.ConvolutionParameter.kernel_h', index=8, number=11, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.ConvolutionParameter.kernel_w', index=9, number=12, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.ConvolutionParameter.stride_h', index=10, number=13, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.ConvolutionParameter.stride_w', index=11, number=14, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.ConvolutionParameter.group', index=12, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.ConvolutionParameter.weight_filler', index=13, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ConvolutionParameter.bias_filler', index=14, number=8, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ConvolutionParameter.engine', index=15, number=15, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ConvolutionParameter.axis', index=16, number=16, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_nd_im2col', full_name='caffe.ConvolutionParameter.force_nd_im2col', index=17, number=17, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _CONVOLUTIONPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6028, serialized_end=6536, ) _DATAPARAMETER = descriptor.Descriptor( name='DataParameter', full_name='caffe.DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.DataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.DataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='backend', full_name='caffe.DataParameter.backend', index=3, number=8, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.DataParameter.scale', index=4, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.DataParameter.mean_file', index=5, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.DataParameter.crop_size', index=6, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.DataParameter.mirror', index=7, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_encoded_color', full_name='caffe.DataParameter.force_encoded_color', index=8, number=9, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='prefetch', full_name='caffe.DataParameter.prefetch', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=4, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _DATAPARAMETER_DB, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6539, serialized_end=6831, ) _DROPOUTPARAMETER = descriptor.Descriptor( name='DropoutParameter', full_name='caffe.DropoutParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.DropoutParameter.dropout_ratio', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6833, serialized_end=6879, ) _DUMMYDATAPARAMETER = descriptor.Descriptor( name='DummyDataParameter', full_name='caffe.DummyDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='data_filler', full_name='caffe.DummyDataParameter.data_filler', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shape', full_name='caffe.DummyDataParameter.shape', index=1, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num', full_name='caffe.DummyDataParameter.num', index=2, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.DummyDataParameter.channels', index=3, number=3, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.DummyDataParameter.height', index=4, number=4, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.DummyDataParameter.width', index=5, number=5, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=6882, serialized_end=7042, ) _ELTWISEPARAMETER = descriptor.Descriptor( name='EltwiseParameter', full_name='caffe.EltwiseParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='operation', full_name='caffe.EltwiseParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='coeff', full_name='caffe.EltwiseParameter.coeff', index=1, number=2, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stable_prod_grad', full_name='caffe.EltwiseParameter.stable_prod_grad', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _ELTWISEPARAMETER_ELTWISEOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7045, serialized_end=7210, ) _ELUPARAMETER = descriptor.Descriptor( name='ELUParameter', full_name='caffe.ELUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='alpha', full_name='caffe.ELUParameter.alpha', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7212, serialized_end=7244, ) _EMBEDPARAMETER = descriptor.Descriptor( name='EmbedParameter', full_name='caffe.EmbedParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.EmbedParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.EmbedParameter.input_dim', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.EmbedParameter.bias_term', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.EmbedParameter.weight_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.EmbedParameter.bias_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7247, serialized_end=7419, ) _EXPPARAMETER = descriptor.Descriptor( name='ExpParameter', full_name='caffe.ExpParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='base', full_name='caffe.ExpParameter.base', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ExpParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.ExpParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7421, serialized_end=7489, ) _FLATTENPARAMETER = descriptor.Descriptor( name='FlattenParameter', full_name='caffe.FlattenParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.FlattenParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='end_axis', full_name='caffe.FlattenParameter.end_axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7491, serialized_end=7548, ) _HDF5DATAPARAMETER = descriptor.Descriptor( name='HDF5DataParameter', full_name='caffe.HDF5DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.HDF5DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.HDF5DataParameter.batch_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.HDF5DataParameter.shuffle', index=2, number=3, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7550, serialized_end=7629, ) _HDF5OUTPUTPARAMETER = descriptor.Descriptor( name='HDF5OutputParameter', full_name='caffe.HDF5OutputParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='file_name', full_name='caffe.HDF5OutputParameter.file_name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7631, serialized_end=7671, ) _HINGELOSSPARAMETER = descriptor.Descriptor( name='HingeLossParameter', full_name='caffe.HingeLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='norm', full_name='caffe.HingeLossParameter.norm', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _HINGELOSSPARAMETER_NORM, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7673, serialized_end=7767, ) _IMAGEDATAPARAMETER = descriptor.Descriptor( name='ImageDataParameter', full_name='caffe.ImageDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.ImageDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.ImageDataParameter.batch_size', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.ImageDataParameter.rand_skip', index=2, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.ImageDataParameter.shuffle', index=3, number=8, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.ImageDataParameter.new_height', index=4, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.ImageDataParameter.new_width', index=5, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='is_color', full_name='caffe.ImageDataParameter.is_color', index=6, number=11, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ImageDataParameter.scale', index=7, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.ImageDataParameter.mean_file', index=8, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.ImageDataParameter.crop_size', index=9, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.ImageDataParameter.mirror', index=10, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='root_folder', full_name='caffe.ImageDataParameter.root_folder', index=11, number=12, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=7770, serialized_end=8049, ) _INFOGAINLOSSPARAMETER = descriptor.Descriptor( name='InfogainLossParameter', full_name='caffe.InfogainLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.InfogainLossParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8051, serialized_end=8090, ) _INNERPRODUCTPARAMETER = descriptor.Descriptor( name='InnerProductParameter', full_name='caffe.InnerProductParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.InnerProductParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.InnerProductParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.InnerProductParameter.weight_filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.InnerProductParameter.bias_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.InnerProductParameter.axis', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8093, serialized_end=8270, ) _LOGPARAMETER = descriptor.Descriptor( name='LogParameter', full_name='caffe.LogParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='base', full_name='caffe.LogParameter.base', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.LogParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.LogParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8272, serialized_end=8340, ) _LRNPARAMETER = descriptor.Descriptor( name='LRNParameter', full_name='caffe.LRNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='local_size', full_name='caffe.LRNParameter.local_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LRNParameter.alpha', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LRNParameter.beta', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='norm_region', full_name='caffe.LRNParameter.norm_region', index=3, number=4, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='k', full_name='caffe.LRNParameter.k', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.LRNParameter.engine', index=5, number=6, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LRNPARAMETER_NORMREGION, _LRNPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8343, serialized_end=8655, ) _MEMORYDATAPARAMETER = descriptor.Descriptor( name='MemoryDataParameter', full_name='caffe.MemoryDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='batch_size', full_name='caffe.MemoryDataParameter.batch_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.MemoryDataParameter.channels', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.MemoryDataParameter.height', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.MemoryDataParameter.width', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8657, serialized_end=8747, ) _MVNPARAMETER = descriptor.Descriptor( name='MVNParameter', full_name='caffe.MVNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='normalize_variance', full_name='caffe.MVNParameter.normalize_variance', index=0, number=1, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='across_channels', full_name='caffe.MVNParameter.across_channels', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eps', full_name='caffe.MVNParameter.eps', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1e-09, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8749, serialized_end=8849, ) _POOLINGPARAMETER = descriptor.Descriptor( name='PoolingParameter', full_name='caffe.PoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pool', full_name='caffe.PoolingParameter.pool', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.PoolingParameter.pad', index=1, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_h', full_name='caffe.PoolingParameter.pad_h', index=2, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad_w', full_name='caffe.PoolingParameter.pad_w', index=3, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.PoolingParameter.kernel_size', index=4, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_h', full_name='caffe.PoolingParameter.kernel_h', index=5, number=5, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_w', full_name='caffe.PoolingParameter.kernel_w', index=6, number=6, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.PoolingParameter.stride', index=7, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_h', full_name='caffe.PoolingParameter.stride_h', index=8, number=7, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride_w', full_name='caffe.PoolingParameter.stride_w', index=9, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.PoolingParameter.engine', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='global_pooling', full_name='caffe.PoolingParameter.global_pooling', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _POOLINGPARAMETER_POOLMETHOD, _POOLINGPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=8852, serialized_end=9270, ) _POWERPARAMETER = descriptor.Descriptor( name='PowerParameter', full_name='caffe.PowerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='power', full_name='caffe.PowerParameter.power', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.PowerParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.PowerParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9272, serialized_end=9342, ) _PYTHONPARAMETER = descriptor.Descriptor( name='PythonParameter', full_name='caffe.PythonParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='module', full_name='caffe.PythonParameter.module', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.PythonParameter.layer', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param_str', full_name='caffe.PythonParameter.param_str', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='share_in_parallel', full_name='caffe.PythonParameter.share_in_parallel', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9344, serialized_end=9447, ) _REDUCTIONPARAMETER = descriptor.Descriptor( name='ReductionParameter', full_name='caffe.ReductionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='operation', full_name='caffe.ReductionParameter.operation', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ReductionParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='coeff', full_name='caffe.ReductionParameter.coeff', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _REDUCTIONPARAMETER_REDUCTIONOP, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9450, serialized_end=9623, ) _RELUPARAMETER = descriptor.Descriptor( name='ReLUParameter', full_name='caffe.ReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='negative_slope', full_name='caffe.ReLUParameter.negative_slope', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.ReLUParameter.engine', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _RELUPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9626, serialized_end=9767, ) _RESHAPEPARAMETER = descriptor.Descriptor( name='ReshapeParameter', full_name='caffe.ReshapeParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='shape', full_name='caffe.ReshapeParameter.shape', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.ReshapeParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_axes', full_name='caffe.ReshapeParameter.num_axes', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9769, serialized_end=9859, ) _SCALEPARAMETER = descriptor.Descriptor( name='ScaleParameter', full_name='caffe.ScaleParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.ScaleParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_axes', full_name='caffe.ScaleParameter.num_axes', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='filler', full_name='caffe.ScaleParameter.filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ScaleParameter.bias_term', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ScaleParameter.bias_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=9862, serialized_end=10027, ) _SIGMOIDPARAMETER = descriptor.Descriptor( name='SigmoidParameter', full_name='caffe.SigmoidParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SigmoidParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SIGMOIDPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10029, serialized_end=10149, ) _SLICEPARAMETER = descriptor.Descriptor( name='SliceParameter', full_name='caffe.SliceParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.SliceParameter.axis', index=0, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_point', full_name='caffe.SliceParameter.slice_point', index=1, number=2, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_dim', full_name='caffe.SliceParameter.slice_dim', index=2, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10151, serialized_end=10227, ) _SOFTMAXPARAMETER = descriptor.Descriptor( name='SoftmaxParameter', full_name='caffe.SoftmaxParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.SoftmaxParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='axis', full_name='caffe.SoftmaxParameter.axis', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOFTMAXPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10230, serialized_end=10367, ) _TANHPARAMETER = descriptor.Descriptor( name='TanHParameter', full_name='caffe.TanHParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='engine', full_name='caffe.TanHParameter.engine', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _TANHPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10369, serialized_end=10483, ) _TILEPARAMETER = descriptor.Descriptor( name='TileParameter', full_name='caffe.TileParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='axis', full_name='caffe.TileParameter.axis', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tiles', full_name='caffe.TileParameter.tiles', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10485, serialized_end=10532, ) _THRESHOLDPARAMETER = descriptor.Descriptor( name='ThresholdParameter', full_name='caffe.ThresholdParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='threshold', full_name='caffe.ThresholdParameter.threshold', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10534, serialized_end=10576, ) _WINDOWDATAPARAMETER = descriptor.Descriptor( name='WindowDataParameter', full_name='caffe.WindowDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.WindowDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.WindowDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.WindowDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.WindowDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.WindowDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.WindowDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_threshold', full_name='caffe.WindowDataParameter.fg_threshold', index=6, number=7, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bg_threshold', full_name='caffe.WindowDataParameter.bg_threshold', index=7, number=8, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_fraction', full_name='caffe.WindowDataParameter.fg_fraction', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='context_pad', full_name='caffe.WindowDataParameter.context_pad', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_mode', full_name='caffe.WindowDataParameter.crop_mode', index=10, number=11, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cache_images', full_name='caffe.WindowDataParameter.cache_images', index=11, number=12, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='root_folder', full_name='caffe.WindowDataParameter.root_folder', index=12, number=13, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10579, serialized_end=10900, ) _SPPPARAMETER = descriptor.Descriptor( name='SPPParameter', full_name='caffe.SPPParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pyramid_height', full_name='caffe.SPPParameter.pyramid_height', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.SPPParameter.pool', index=1, number=2, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='engine', full_name='caffe.SPPParameter.engine', index=2, number=6, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SPPPARAMETER_POOLMETHOD, _SPPPARAMETER_ENGINE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=10903, serialized_end=11138, ) _V1LAYERPARAMETER = descriptor.Descriptor( name='V1LayerParameter', full_name='caffe.V1LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='bottom', full_name='caffe.V1LayerParameter.bottom', index=0, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.V1LayerParameter.top', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='name', full_name='caffe.V1LayerParameter.name', index=2, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='include', full_name='caffe.V1LayerParameter.include', index=3, number=32, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exclude', full_name='caffe.V1LayerParameter.exclude', index=4, number=33, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V1LayerParameter.type', index=5, number=5, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V1LayerParameter.blobs', index=6, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='param', full_name='caffe.V1LayerParameter.param', index=7, number=1001, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blob_share_mode', full_name='caffe.V1LayerParameter.blob_share_mode', index=8, number=1002, type=14, cpp_type=8, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V1LayerParameter.blobs_lr', index=9, number=7, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V1LayerParameter.weight_decay', index=10, number=8, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_weight', full_name='caffe.V1LayerParameter.loss_weight', index=11, number=35, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='accuracy_param', full_name='caffe.V1LayerParameter.accuracy_param', index=12, number=27, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='argmax_param', full_name='caffe.V1LayerParameter.argmax_param', index=13, number=23, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.V1LayerParameter.concat_param', index=14, number=9, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='contrastive_loss_param', full_name='caffe.V1LayerParameter.contrastive_loss_param', index=15, number=40, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.V1LayerParameter.convolution_param', index=16, number=10, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.V1LayerParameter.data_param', index=17, number=11, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.V1LayerParameter.dropout_param', index=18, number=12, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dummy_data_param', full_name='caffe.V1LayerParameter.dummy_data_param', index=19, number=26, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='eltwise_param', full_name='caffe.V1LayerParameter.eltwise_param', index=20, number=24, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='exp_param', full_name='caffe.V1LayerParameter.exp_param', index=21, number=41, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.V1LayerParameter.hdf5_data_param', index=22, number=13, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V1LayerParameter.hdf5_output_param', index=23, number=14, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hinge_loss_param', full_name='caffe.V1LayerParameter.hinge_loss_param', index=24, number=29, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.V1LayerParameter.image_data_param', index=25, number=15, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.V1LayerParameter.infogain_loss_param', index=26, number=16, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.V1LayerParameter.inner_product_param', index=27, number=17, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.V1LayerParameter.lrn_param', index=28, number=18, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.V1LayerParameter.memory_data_param', index=29, number=22, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mvn_param', full_name='caffe.V1LayerParameter.mvn_param', index=30, number=34, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.V1LayerParameter.pooling_param', index=31, number=19, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.V1LayerParameter.power_param', index=32, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='relu_param', full_name='caffe.V1LayerParameter.relu_param', index=33, number=30, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sigmoid_param', full_name='caffe.V1LayerParameter.sigmoid_param', index=34, number=38, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='softmax_param', full_name='caffe.V1LayerParameter.softmax_param', index=35, number=39, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='slice_param', full_name='caffe.V1LayerParameter.slice_param', index=36, number=31, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='tanh_param', full_name='caffe.V1LayerParameter.tanh_param', index=37, number=37, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='threshold_param', full_name='caffe.V1LayerParameter.threshold_param', index=38, number=25, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.V1LayerParameter.window_data_param', index=39, number=20, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='transform_param', full_name='caffe.V1LayerParameter.transform_param', index=40, number=36, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='loss_param', full_name='caffe.V1LayerParameter.loss_param', index=41, number=42, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.V1LayerParameter.layer', index=42, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V1LAYERPARAMETER_LAYERTYPE, _V1LAYERPARAMETER_DIMCHECKMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=11141, serialized_end=13669, ) _V0LAYERPARAMETER = descriptor.Descriptor( name='V0LayerParameter', full_name='caffe.V0LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.V0LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V0LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.V0LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.V0LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.V0LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.V0LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.V0LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.V0LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.V0LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.V0LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.V0LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.V0LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.V0LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.V0LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.V0LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='k', full_name='caffe.V0LayerParameter.k', index=15, number=22, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.V0LayerParameter.source', index=16, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.V0LayerParameter.scale', index=17, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.V0LayerParameter.meanfile', index=18, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.V0LayerParameter.batchsize', index=19, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.V0LayerParameter.cropsize', index=20, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.V0LayerParameter.mirror', index=21, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V0LayerParameter.blobs', index=22, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V0LayerParameter.blobs_lr', index=23, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V0LayerParameter.weight_decay', index=24, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.V0LayerParameter.rand_skip', index=25, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.V0LayerParameter.det_fg_threshold', index=26, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.V0LayerParameter.det_bg_threshold', index=27, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.V0LayerParameter.det_fg_fraction', index=28, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.V0LayerParameter.det_context_pad', index=29, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.V0LayerParameter.det_crop_mode', index=30, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_num', full_name='caffe.V0LayerParameter.new_num', index=31, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_channels', full_name='caffe.V0LayerParameter.new_channels', index=32, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.V0LayerParameter.new_height', index=33, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.V0LayerParameter.new_width', index=34, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.V0LayerParameter.shuffle_images', index=35, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.V0LayerParameter.concat_dim', index=36, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V0LayerParameter.hdf5_output_param', index=37, number=1001, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V0LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=13672, serialized_end=14693, ) _PRELUPARAMETER = descriptor.Descriptor( name='PReLUParameter', full_name='caffe.PReLUParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='filler', full_name='caffe.PReLUParameter.filler', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channel_shared', full_name='caffe.PReLUParameter.channel_shared', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=14695, serialized_end=14782, ) _BLOBPROTO.fields_by_name['shape'].message_type = _BLOBSHAPE _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _FILLERPARAMETER.fields_by_name['variance_norm'].enum_type = _FILLERPARAMETER_VARIANCENORM _FILLERPARAMETER_VARIANCENORM.containing_type = _FILLERPARAMETER; _NETPARAMETER.fields_by_name['input_shape'].message_type = _BLOBSHAPE _NETPARAMETER.fields_by_name['state'].message_type = _NETSTATE _NETPARAMETER.fields_by_name['layer'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['layers'].message_type = _V1LAYERPARAMETER _SOLVERPARAMETER.fields_by_name['net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['test_net_param'].message_type = _NETPARAMETER _SOLVERPARAMETER.fields_by_name['train_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['test_state'].message_type = _NETSTATE _SOLVERPARAMETER.fields_by_name['snapshot_format'].enum_type = _SOLVERPARAMETER_SNAPSHOTFORMAT _SOLVERPARAMETER.fields_by_name['solver_mode'].enum_type = _SOLVERPARAMETER_SOLVERMODE _SOLVERPARAMETER.fields_by_name['solver_type'].enum_type = _SOLVERPARAMETER_SOLVERTYPE _SOLVERPARAMETER_SNAPSHOTFORMAT.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERMODE.containing_type = _SOLVERPARAMETER; _SOLVERPARAMETER_SOLVERTYPE.containing_type = _SOLVERPARAMETER; _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _NETSTATE.fields_by_name['phase'].enum_type = _PHASE _NETSTATERULE.fields_by_name['phase'].enum_type = _PHASE _PARAMSPEC.fields_by_name['share_mode'].enum_type = _PARAMSPEC_DIMCHECKMODE _PARAMSPEC_DIMCHECKMODE.containing_type = _PARAMSPEC; _LAYERPARAMETER.fields_by_name['phase'].enum_type = _PHASE _LAYERPARAMETER.fields_by_name['param'].message_type = _PARAMSPEC _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _LAYERPARAMETER.fields_by_name['batch_norm_param'].message_type = _BATCHNORMPARAMETER _LAYERPARAMETER.fields_by_name['bias_param'].message_type = _BIASPARAMETER _LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _LAYERPARAMETER.fields_by_name['elu_param'].message_type = _ELUPARAMETER _LAYERPARAMETER.fields_by_name['embed_param'].message_type = _EMBEDPARAMETER _LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _LAYERPARAMETER.fields_by_name['flatten_param'].message_type = _FLATTENPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _LAYERPARAMETER.fields_by_name['log_param'].message_type = _LOGPARAMETER _LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _LAYERPARAMETER.fields_by_name['prelu_param'].message_type = _PRELUPARAMETER _LAYERPARAMETER.fields_by_name['python_param'].message_type = _PYTHONPARAMETER _LAYERPARAMETER.fields_by_name['reduction_param'].message_type = _REDUCTIONPARAMETER _LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _LAYERPARAMETER.fields_by_name['reshape_param'].message_type = _RESHAPEPARAMETER _LAYERPARAMETER.fields_by_name['scale_param'].message_type = _SCALEPARAMETER _LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _LAYERPARAMETER.fields_by_name['spp_param'].message_type = _SPPPARAMETER _LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _LAYERPARAMETER.fields_by_name['tile_param'].message_type = _TILEPARAMETER _LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _LOSSPARAMETER.fields_by_name['normalization'].enum_type = _LOSSPARAMETER_NORMALIZATIONMODE _LOSSPARAMETER_NORMALIZATIONMODE.containing_type = _LOSSPARAMETER; _BIASPARAMETER.fields_by_name['filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['engine'].enum_type = _CONVOLUTIONPARAMETER_ENGINE _CONVOLUTIONPARAMETER_ENGINE.containing_type = _CONVOLUTIONPARAMETER; _DATAPARAMETER.fields_by_name['backend'].enum_type = _DATAPARAMETER_DB _DATAPARAMETER_DB.containing_type = _DATAPARAMETER; _DUMMYDATAPARAMETER.fields_by_name['data_filler'].message_type = _FILLERPARAMETER _DUMMYDATAPARAMETER.fields_by_name['shape'].message_type = _BLOBSHAPE _ELTWISEPARAMETER.fields_by_name['operation'].enum_type = _ELTWISEPARAMETER_ELTWISEOP _ELTWISEPARAMETER_ELTWISEOP.containing_type = _ELTWISEPARAMETER; _EMBEDPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _EMBEDPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _HINGELOSSPARAMETER.fields_by_name['norm'].enum_type = _HINGELOSSPARAMETER_NORM _HINGELOSSPARAMETER_NORM.containing_type = _HINGELOSSPARAMETER; _INNERPRODUCTPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LRNPARAMETER.fields_by_name['norm_region'].enum_type = _LRNPARAMETER_NORMREGION _LRNPARAMETER.fields_by_name['engine'].enum_type = _LRNPARAMETER_ENGINE _LRNPARAMETER_NORMREGION.containing_type = _LRNPARAMETER; _LRNPARAMETER_ENGINE.containing_type = _LRNPARAMETER; _POOLINGPARAMETER.fields_by_name['pool'].enum_type = _POOLINGPARAMETER_POOLMETHOD _POOLINGPARAMETER.fields_by_name['engine'].enum_type = _POOLINGPARAMETER_ENGINE _POOLINGPARAMETER_POOLMETHOD.containing_type = _POOLINGPARAMETER; _POOLINGPARAMETER_ENGINE.containing_type = _POOLINGPARAMETER; _REDUCTIONPARAMETER.fields_by_name['operation'].enum_type = _REDUCTIONPARAMETER_REDUCTIONOP _REDUCTIONPARAMETER_REDUCTIONOP.containing_type = _REDUCTIONPARAMETER; _RELUPARAMETER.fields_by_name['engine'].enum_type = _RELUPARAMETER_ENGINE _RELUPARAMETER_ENGINE.containing_type = _RELUPARAMETER; _RESHAPEPARAMETER.fields_by_name['shape'].message_type = _BLOBSHAPE _SCALEPARAMETER.fields_by_name['filler'].message_type = _FILLERPARAMETER _SCALEPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _SIGMOIDPARAMETER.fields_by_name['engine'].enum_type = _SIGMOIDPARAMETER_ENGINE _SIGMOIDPARAMETER_ENGINE.containing_type = _SIGMOIDPARAMETER; _SOFTMAXPARAMETER.fields_by_name['engine'].enum_type = _SOFTMAXPARAMETER_ENGINE _SOFTMAXPARAMETER_ENGINE.containing_type = _SOFTMAXPARAMETER; _TANHPARAMETER.fields_by_name['engine'].enum_type = _TANHPARAMETER_ENGINE _TANHPARAMETER_ENGINE.containing_type = _TANHPARAMETER; _SPPPARAMETER.fields_by_name['pool'].enum_type = _SPPPARAMETER_POOLMETHOD _SPPPARAMETER.fields_by_name['engine'].enum_type = _SPPPARAMETER_ENGINE _SPPPARAMETER_POOLMETHOD.containing_type = _SPPPARAMETER; _SPPPARAMETER_ENGINE.containing_type = _SPPPARAMETER; _V1LAYERPARAMETER.fields_by_name['include'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['exclude'].message_type = _NETSTATERULE _V1LAYERPARAMETER.fields_by_name['type'].enum_type = _V1LAYERPARAMETER_LAYERTYPE _V1LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V1LAYERPARAMETER.fields_by_name['blob_share_mode'].enum_type = _V1LAYERPARAMETER_DIMCHECKMODE _V1LAYERPARAMETER.fields_by_name['accuracy_param'].message_type = _ACCURACYPARAMETER _V1LAYERPARAMETER.fields_by_name['argmax_param'].message_type = _ARGMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _V1LAYERPARAMETER.fields_by_name['contrastive_loss_param'].message_type = _CONTRASTIVELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _V1LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _V1LAYERPARAMETER.fields_by_name['dummy_data_param'].message_type = _DUMMYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['eltwise_param'].message_type = _ELTWISEPARAMETER _V1LAYERPARAMETER.fields_by_name['exp_param'].message_type = _EXPPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _V1LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V1LAYERPARAMETER.fields_by_name['hinge_loss_param'].message_type = _HINGELOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _V1LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _V1LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['mvn_param'].message_type = _MVNPARAMETER _V1LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _V1LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _V1LAYERPARAMETER.fields_by_name['relu_param'].message_type = _RELUPARAMETER _V1LAYERPARAMETER.fields_by_name['sigmoid_param'].message_type = _SIGMOIDPARAMETER _V1LAYERPARAMETER.fields_by_name['softmax_param'].message_type = _SOFTMAXPARAMETER _V1LAYERPARAMETER.fields_by_name['slice_param'].message_type = _SLICEPARAMETER _V1LAYERPARAMETER.fields_by_name['tanh_param'].message_type = _TANHPARAMETER _V1LAYERPARAMETER.fields_by_name['threshold_param'].message_type = _THRESHOLDPARAMETER _V1LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _V1LAYERPARAMETER.fields_by_name['transform_param'].message_type = _TRANSFORMATIONPARAMETER _V1LAYERPARAMETER.fields_by_name['loss_param'].message_type = _LOSSPARAMETER _V1LAYERPARAMETER.fields_by_name['layer'].message_type = _V0LAYERPARAMETER _V1LAYERPARAMETER_LAYERTYPE.containing_type = _V1LAYERPARAMETER; _V1LAYERPARAMETER_DIMCHECKMODE.containing_type = _V1LAYERPARAMETER; _V0LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['pool'].enum_type = _V0LAYERPARAMETER_POOLMETHOD _V0LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V0LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V0LAYERPARAMETER_POOLMETHOD.containing_type = _V0LAYERPARAMETER; _PRELUPARAMETER.fields_by_name['filler'].message_type = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['BlobShape'] = _BLOBSHAPE DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE DESCRIPTOR.message_types_by_name['NetState'] = _NETSTATE DESCRIPTOR.message_types_by_name['NetStateRule'] = _NETSTATERULE DESCRIPTOR.message_types_by_name['ParamSpec'] = _PARAMSPEC DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['TransformationParameter'] = _TRANSFORMATIONPARAMETER DESCRIPTOR.message_types_by_name['LossParameter'] = _LOSSPARAMETER DESCRIPTOR.message_types_by_name['AccuracyParameter'] = _ACCURACYPARAMETER DESCRIPTOR.message_types_by_name['ArgMaxParameter'] = _ARGMAXPARAMETER DESCRIPTOR.message_types_by_name['ConcatParameter'] = _CONCATPARAMETER DESCRIPTOR.message_types_by_name['BatchNormParameter'] = _BATCHNORMPARAMETER DESCRIPTOR.message_types_by_name['BiasParameter'] = _BIASPARAMETER DESCRIPTOR.message_types_by_name['ContrastiveLossParameter'] = _CONTRASTIVELOSSPARAMETER DESCRIPTOR.message_types_by_name['ConvolutionParameter'] = _CONVOLUTIONPARAMETER DESCRIPTOR.message_types_by_name['DataParameter'] = _DATAPARAMETER DESCRIPTOR.message_types_by_name['DropoutParameter'] = _DROPOUTPARAMETER DESCRIPTOR.message_types_by_name['DummyDataParameter'] = _DUMMYDATAPARAMETER DESCRIPTOR.message_types_by_name['EltwiseParameter'] = _ELTWISEPARAMETER DESCRIPTOR.message_types_by_name['ELUParameter'] = _ELUPARAMETER DESCRIPTOR.message_types_by_name['EmbedParameter'] = _EMBEDPARAMETER DESCRIPTOR.message_types_by_name['ExpParameter'] = _EXPPARAMETER DESCRIPTOR.message_types_by_name['FlattenParameter'] = _FLATTENPARAMETER DESCRIPTOR.message_types_by_name['HDF5DataParameter'] = _HDF5DATAPARAMETER DESCRIPTOR.message_types_by_name['HDF5OutputParameter'] = _HDF5OUTPUTPARAMETER DESCRIPTOR.message_types_by_name['HingeLossParameter'] = _HINGELOSSPARAMETER DESCRIPTOR.message_types_by_name['ImageDataParameter'] = _IMAGEDATAPARAMETER DESCRIPTOR.message_types_by_name['InfogainLossParameter'] = _INFOGAINLOSSPARAMETER DESCRIPTOR.message_types_by_name['InnerProductParameter'] = _INNERPRODUCTPARAMETER DESCRIPTOR.message_types_by_name['LogParameter'] = _LOGPARAMETER DESCRIPTOR.message_types_by_name['LRNParameter'] = _LRNPARAMETER DESCRIPTOR.message_types_by_name['MemoryDataParameter'] = _MEMORYDATAPARAMETER DESCRIPTOR.message_types_by_name['MVNParameter'] = _MVNPARAMETER DESCRIPTOR.message_types_by_name['PoolingParameter'] = _POOLINGPARAMETER DESCRIPTOR.message_types_by_name['PowerParameter'] = _POWERPARAMETER DESCRIPTOR.message_types_by_name['PythonParameter'] = _PYTHONPARAMETER DESCRIPTOR.message_types_by_name['ReductionParameter'] = _REDUCTIONPARAMETER DESCRIPTOR.message_types_by_name['ReLUParameter'] = _RELUPARAMETER DESCRIPTOR.message_types_by_name['ReshapeParameter'] = _RESHAPEPARAMETER DESCRIPTOR.message_types_by_name['ScaleParameter'] = _SCALEPARAMETER DESCRIPTOR.message_types_by_name['SigmoidParameter'] = _SIGMOIDPARAMETER DESCRIPTOR.message_types_by_name['SliceParameter'] = _SLICEPARAMETER DESCRIPTOR.message_types_by_name['SoftmaxParameter'] = _SOFTMAXPARAMETER DESCRIPTOR.message_types_by_name['TanHParameter'] = _TANHPARAMETER DESCRIPTOR.message_types_by_name['TileParameter'] = _TILEPARAMETER DESCRIPTOR.message_types_by_name['ThresholdParameter'] = _THRESHOLDPARAMETER DESCRIPTOR.message_types_by_name['WindowDataParameter'] = _WINDOWDATAPARAMETER DESCRIPTOR.message_types_by_name['SPPParameter'] = _SPPPARAMETER DESCRIPTOR.message_types_by_name['V1LayerParameter'] = _V1LAYERPARAMETER DESCRIPTOR.message_types_by_name['V0LayerParameter'] = _V0LAYERPARAMETER DESCRIPTOR.message_types_by_name['PReLUParameter'] = _PRELUPARAMETER class BlobShape(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBSHAPE # @@protoc_insertion_point(class_scope:caffe.BlobShape) class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) class NetState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATE # @@protoc_insertion_point(class_scope:caffe.NetState) class NetStateRule(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETSTATERULE # @@protoc_insertion_point(class_scope:caffe.NetStateRule) class ParamSpec(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PARAMSPEC # @@protoc_insertion_point(class_scope:caffe.ParamSpec) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class TransformationParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TRANSFORMATIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.TransformationParameter) class LossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.LossParameter) class AccuracyParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ACCURACYPARAMETER # @@protoc_insertion_point(class_scope:caffe.AccuracyParameter) class ArgMaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ARGMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.ArgMaxParameter) class ConcatParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONCATPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConcatParameter) class BatchNormParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BATCHNORMPARAMETER # @@protoc_insertion_point(class_scope:caffe.BatchNormParameter) class BiasParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BIASPARAMETER # @@protoc_insertion_point(class_scope:caffe.BiasParameter) class ContrastiveLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONTRASTIVELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.ContrastiveLossParameter) class ConvolutionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONVOLUTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConvolutionParameter) class DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DataParameter) class DropoutParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DROPOUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.DropoutParameter) class DummyDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DUMMYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DummyDataParameter) class EltwiseParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ELTWISEPARAMETER # @@protoc_insertion_point(class_scope:caffe.EltwiseParameter) class ELUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _ELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.ELUParameter) class EmbedParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EMBEDPARAMETER # @@protoc_insertion_point(class_scope:caffe.EmbedParameter) class ExpParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EXPPARAMETER # @@protoc_insertion_point(class_scope:caffe.ExpParameter) class FlattenParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FLATTENPARAMETER # @@protoc_insertion_point(class_scope:caffe.FlattenParameter) class HDF5DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5DataParameter) class HDF5OutputParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5OUTPUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5OutputParameter) class HingeLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HINGELOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.HingeLossParameter) class ImageDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _IMAGEDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.ImageDataParameter) class InfogainLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INFOGAINLOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.InfogainLossParameter) class InnerProductParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INNERPRODUCTPARAMETER # @@protoc_insertion_point(class_scope:caffe.InnerProductParameter) class LogParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LOGPARAMETER # @@protoc_insertion_point(class_scope:caffe.LogParameter) class LRNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LRNPARAMETER # @@protoc_insertion_point(class_scope:caffe.LRNParameter) class MemoryDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MEMORYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.MemoryDataParameter) class MVNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MVNPARAMETER # @@protoc_insertion_point(class_scope:caffe.MVNParameter) class PoolingParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.PoolingParameter) class PowerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POWERPARAMETER # @@protoc_insertion_point(class_scope:caffe.PowerParameter) class PythonParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PYTHONPARAMETER # @@protoc_insertion_point(class_scope:caffe.PythonParameter) class ReductionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _REDUCTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReductionParameter) class ReLUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _RELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReLUParameter) class ReshapeParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _RESHAPEPARAMETER # @@protoc_insertion_point(class_scope:caffe.ReshapeParameter) class ScaleParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SCALEPARAMETER # @@protoc_insertion_point(class_scope:caffe.ScaleParameter) class SigmoidParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SIGMOIDPARAMETER # @@protoc_insertion_point(class_scope:caffe.SigmoidParameter) class SliceParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SLICEPARAMETER # @@protoc_insertion_point(class_scope:caffe.SliceParameter) class SoftmaxParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOFTMAXPARAMETER # @@protoc_insertion_point(class_scope:caffe.SoftmaxParameter) class TanHParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TANHPARAMETER # @@protoc_insertion_point(class_scope:caffe.TanHParameter) class TileParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _TILEPARAMETER # @@protoc_insertion_point(class_scope:caffe.TileParameter) class ThresholdParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _THRESHOLDPARAMETER # @@protoc_insertion_point(class_scope:caffe.ThresholdParameter) class WindowDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _WINDOWDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.WindowDataParameter) class SPPParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SPPPARAMETER # @@protoc_insertion_point(class_scope:caffe.SPPParameter) class V1LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V1LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V1LayerParameter) class V0LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V0LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V0LayerParameter) class PReLUParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _PRELUPARAMETER # @@protoc_insertion_point(class_scope:caffe.PReLUParameter) # @@protoc_insertion_point(module_scope)
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DRT-master/external_libs/matconvnet/utils/proto/__init__.py
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py
DRT
DRT-master/external_libs/matconvnet/utils/proto/caffe_pb2.py
# Generated by the protocol buffer compiler. 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\x01(\x02:\x03\x30.5\x12\x1d\n\x0f\x64\x65t_fg_fraction\x18\x38 \x01(\x02:\x04\x30.25\x12\x1a\n\x0f\x64\x65t_context_pad\x18: \x01(\r:\x01\x30\x12\x1b\n\rdet_crop_mode\x18; \x01(\t:\x04warp\x12\x12\n\x07new_num\x18< \x01(\x05:\x01\x30\x12\x17\n\x0cnew_channels\x18= \x01(\x05:\x01\x30\x12\x15\n\nnew_height\x18> \x01(\x05:\x01\x30\x12\x14\n\tnew_width\x18? \x01(\x05:\x01\x30\x12\x1d\n\x0eshuffle_images\x18@ \x01(\x08:\x05\x66\x61lse\x12\x15\n\nconcat_dim\x18\x41 \x01(\r:\x01\x31\x12\x36\n\x11hdf5_output_param\x18\xe9\x07 \x01(\x0b\x32\x1a.caffe.HDF5OutputParameter\".\n\nPoolMethod\x12\x07\n\x03MAX\x10\x00\x12\x07\n\x03\x41VE\x10\x01\x12\x0e\n\nSTOCHASTIC\x10\x02') _SOLVERPARAMETER_SOLVERMODE = descriptor.EnumDescriptor( name='SolverMode', full_name='caffe.SolverParameter.SolverMode', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='CPU', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='GPU', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=1068, serialized_end=1098, ) _LAYERPARAMETER_LAYERTYPE = descriptor.EnumDescriptor( name='LayerType', full_name='caffe.LayerParameter.LayerType', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='NONE', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='ACCURACY', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='BNLL', index=2, number=2, options=None, type=None), descriptor.EnumValueDescriptor( name='CONCAT', index=3, number=3, options=None, type=None), descriptor.EnumValueDescriptor( name='CONVOLUTION', index=4, number=4, options=None, type=None), descriptor.EnumValueDescriptor( name='DATA', index=5, number=5, options=None, type=None), descriptor.EnumValueDescriptor( name='DROPOUT', index=6, number=6, options=None, type=None), descriptor.EnumValueDescriptor( name='EUCLIDEAN_LOSS', index=7, number=7, options=None, type=None), descriptor.EnumValueDescriptor( name='ELTWISE_PRODUCT', index=8, number=25, options=None, type=None), descriptor.EnumValueDescriptor( name='FLATTEN', index=9, number=8, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_DATA', index=10, number=9, options=None, type=None), descriptor.EnumValueDescriptor( name='HDF5_OUTPUT', index=11, number=10, options=None, type=None), descriptor.EnumValueDescriptor( name='HINGE_LOSS', index=12, number=28, options=None, type=None), descriptor.EnumValueDescriptor( name='IM2COL', index=13, number=11, options=None, type=None), descriptor.EnumValueDescriptor( name='IMAGE_DATA', index=14, number=12, options=None, type=None), descriptor.EnumValueDescriptor( name='INFOGAIN_LOSS', index=15, number=13, options=None, type=None), descriptor.EnumValueDescriptor( name='INNER_PRODUCT', index=16, number=14, options=None, type=None), descriptor.EnumValueDescriptor( name='LRN', index=17, number=15, options=None, type=None), descriptor.EnumValueDescriptor( name='MEMORY_DATA', index=18, number=29, options=None, type=None), descriptor.EnumValueDescriptor( name='MULTINOMIAL_LOGISTIC_LOSS', index=19, number=16, options=None, type=None), descriptor.EnumValueDescriptor( name='POOLING', index=20, number=17, options=None, type=None), descriptor.EnumValueDescriptor( name='POWER', index=21, number=26, options=None, type=None), descriptor.EnumValueDescriptor( name='RELU', index=22, number=18, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID', index=23, number=19, options=None, type=None), descriptor.EnumValueDescriptor( name='SIGMOID_CROSS_ENTROPY_LOSS', index=24, number=27, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX', index=25, number=20, options=None, type=None), descriptor.EnumValueDescriptor( name='SOFTMAX_LOSS', index=26, number=21, options=None, type=None), descriptor.EnumValueDescriptor( name='SPLIT', index=27, number=22, options=None, type=None), descriptor.EnumValueDescriptor( name='TANH', index=28, number=23, options=None, type=None), descriptor.EnumValueDescriptor( name='WINDOW_DATA', index=29, number=24, options=None, type=None), ], containing_type=None, options=None, serialized_start=2119, serialized_end=2589, ) _LRNPARAMETER_NORMREGION = descriptor.EnumDescriptor( name='NormRegion', full_name='caffe.LRNParameter.NormRegion', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='ACROSS_CHANNELS', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='WITHIN_CHANNEL', index=1, number=1, options=None, type=None), ], containing_type=None, options=None, serialized_start=3758, serialized_end=3811, ) _POOLINGPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.PoolingParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=4037, serialized_end=4083, ) _V0LAYERPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.V0LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=4037, serialized_end=4083, ) _BLOBPROTO = descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=22, serialized_end=143, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=145, serialized_end=195, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=197, serialized_end=302, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='sparse', full_name='caffe.FillerParameter.sparse', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=305, serialized_end=449, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=1, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=452, serialized_end=584, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_compute_loss', full_name='caffe.SolverParameter.test_compute_loss', index=4, number=19, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=5, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=6, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=7, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=8, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=9, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=10, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=11, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=12, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=13, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=14, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=15, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=16, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=17, number=17, type=14, cpp_type=8, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='device_id', full_name='caffe.SolverParameter.device_id', index=18, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='random_seed', full_name='caffe.SolverParameter.random_seed', index=19, number=20, type=3, cpp_type=2, label=1, has_default_value=True, default_value=-1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _SOLVERPARAMETER_SOLVERMODE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=587, serialized_end=1098, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1100, serialized_end=1183, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerParameter.bottom', index=0, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerParameter.top', index=1, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=2, number=4, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=3, number=5, type=14, cpp_type=8, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=4, number=6, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.LayerParameter.blobs_lr', index=5, number=7, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.LayerParameter.weight_decay', index=6, number=8, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_param', full_name='caffe.LayerParameter.concat_param', index=7, number=9, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='convolution_param', full_name='caffe.LayerParameter.convolution_param', index=8, number=10, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data_param', full_name='caffe.LayerParameter.data_param', index=9, number=11, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_param', full_name='caffe.LayerParameter.dropout_param', index=10, number=12, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_data_param', full_name='caffe.LayerParameter.hdf5_data_param', index=11, number=13, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.LayerParameter.hdf5_output_param', index=12, number=14, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='image_data_param', full_name='caffe.LayerParameter.image_data_param', index=13, number=15, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='infogain_loss_param', full_name='caffe.LayerParameter.infogain_loss_param', index=14, number=16, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='inner_product_param', full_name='caffe.LayerParameter.inner_product_param', index=15, number=17, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lrn_param', full_name='caffe.LayerParameter.lrn_param', index=16, number=18, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='memory_data_param', full_name='caffe.LayerParameter.memory_data_param', index=17, number=22, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pooling_param', full_name='caffe.LayerParameter.pooling_param', index=18, number=19, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power_param', full_name='caffe.LayerParameter.power_param', index=19, number=21, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='window_data_param', full_name='caffe.LayerParameter.window_data_param', index=20, number=20, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layer', full_name='caffe.LayerParameter.layer', index=21, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LAYERPARAMETER_LAYERTYPE, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1186, serialized_end=2589, ) _CONCATPARAMETER = descriptor.Descriptor( name='ConcatParameter', full_name='caffe.ConcatParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.ConcatParameter.concat_dim', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2591, serialized_end=2631, ) _CONVOLUTIONPARAMETER = descriptor.Descriptor( name='ConvolutionParameter', full_name='caffe.ConvolutionParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.ConvolutionParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.ConvolutionParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.ConvolutionParameter.pad', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.ConvolutionParameter.kernel_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.ConvolutionParameter.group', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.ConvolutionParameter.stride', index=5, number=6, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.ConvolutionParameter.weight_filler', index=6, number=7, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.ConvolutionParameter.bias_filler', index=7, number=8, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2634, serialized_end=2867, ) _DATAPARAMETER = descriptor.Descriptor( name='DataParameter', full_name='caffe.DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.DataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.DataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.DataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.DataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.DataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.DataParameter.rand_skip', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2870, serialized_end=3025, ) _DROPOUTPARAMETER = descriptor.Descriptor( name='DropoutParameter', full_name='caffe.DropoutParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.DropoutParameter.dropout_ratio', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3027, serialized_end=3073, ) _HDF5DATAPARAMETER = descriptor.Descriptor( name='HDF5DataParameter', full_name='caffe.HDF5DataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.HDF5DataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.HDF5DataParameter.batch_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3075, serialized_end=3130, ) _HDF5OUTPUTPARAMETER = descriptor.Descriptor( name='HDF5OutputParameter', full_name='caffe.HDF5OutputParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='file_name', full_name='caffe.HDF5OutputParameter.file_name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3132, serialized_end=3172, ) _IMAGEDATAPARAMETER = descriptor.Descriptor( name='ImageDataParameter', full_name='caffe.ImageDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.ImageDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.ImageDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.ImageDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.ImageDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.ImageDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.ImageDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.ImageDataParameter.rand_skip', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle', full_name='caffe.ImageDataParameter.shuffle', index=7, number=8, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.ImageDataParameter.new_height', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.ImageDataParameter.new_width', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3175, serialized_end=3404, ) _INFOGAINLOSSPARAMETER = descriptor.Descriptor( name='InfogainLossParameter', full_name='caffe.InfogainLossParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.InfogainLossParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3406, serialized_end=3445, ) _INNERPRODUCTPARAMETER = descriptor.Descriptor( name='InnerProductParameter', full_name='caffe.InnerProductParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num_output', full_name='caffe.InnerProductParameter.num_output', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_term', full_name='caffe.InnerProductParameter.bias_term', index=1, number=2, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.InnerProductParameter.weight_filler', index=2, number=3, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.InnerProductParameter.bias_filler', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3448, serialized_end=3608, ) _LRNPARAMETER = descriptor.Descriptor( name='LRNParameter', full_name='caffe.LRNParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='local_size', full_name='caffe.LRNParameter.local_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LRNParameter.alpha', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LRNParameter.beta', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='norm_region', full_name='caffe.LRNParameter.norm_region', index=3, number=4, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LRNPARAMETER_NORMREGION, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3611, serialized_end=3811, ) _MEMORYDATAPARAMETER = descriptor.Descriptor( name='MemoryDataParameter', full_name='caffe.MemoryDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='batch_size', full_name='caffe.MemoryDataParameter.batch_size', index=0, number=1, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.MemoryDataParameter.channels', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.MemoryDataParameter.height', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.MemoryDataParameter.width', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3813, serialized_end=3903, ) _POOLINGPARAMETER = descriptor.Descriptor( name='PoolingParameter', full_name='caffe.PoolingParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='pool', full_name='caffe.PoolingParameter.pool', index=0, number=1, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernel_size', full_name='caffe.PoolingParameter.kernel_size', index=1, number=2, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.PoolingParameter.stride', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.PoolingParameter.pad', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _POOLINGPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=3906, serialized_end=4083, ) _POWERPARAMETER = descriptor.Descriptor( name='PowerParameter', full_name='caffe.PowerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='power', full_name='caffe.PowerParameter.power', index=0, number=1, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.PowerParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shift', full_name='caffe.PowerParameter.shift', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4085, serialized_end=4155, ) _WINDOWDATAPARAMETER = descriptor.Descriptor( name='WindowDataParameter', full_name='caffe.WindowDataParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='source', full_name='caffe.WindowDataParameter.source', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.WindowDataParameter.scale', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean_file', full_name='caffe.WindowDataParameter.mean_file', index=2, number=3, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batch_size', full_name='caffe.WindowDataParameter.batch_size', index=3, number=4, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_size', full_name='caffe.WindowDataParameter.crop_size', index=4, number=5, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.WindowDataParameter.mirror', index=5, number=6, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_threshold', full_name='caffe.WindowDataParameter.fg_threshold', index=6, number=7, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bg_threshold', full_name='caffe.WindowDataParameter.bg_threshold', index=7, number=8, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='fg_fraction', full_name='caffe.WindowDataParameter.fg_fraction', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='context_pad', full_name='caffe.WindowDataParameter.context_pad', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_mode', full_name='caffe.WindowDataParameter.crop_mode', index=10, number=11, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4158, serialized_end=4427, ) _V0LAYERPARAMETER = descriptor.Descriptor( name='V0LayerParameter', full_name='caffe.V0LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.V0LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.V0LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.V0LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.V0LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.V0LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.V0LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.V0LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.V0LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.V0LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.V0LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.V0LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.V0LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.V0LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.V0LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.V0LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.V0LayerParameter.source', index=15, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.V0LayerParameter.scale', index=16, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.V0LayerParameter.meanfile', index=17, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.V0LayerParameter.batchsize', index=18, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.V0LayerParameter.cropsize', index=19, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.V0LayerParameter.mirror', index=20, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.V0LayerParameter.blobs', index=21, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.V0LayerParameter.blobs_lr', index=22, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.V0LayerParameter.weight_decay', index=23, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.V0LayerParameter.rand_skip', index=24, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_threshold', full_name='caffe.V0LayerParameter.det_fg_threshold', index=25, number=54, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_bg_threshold', full_name='caffe.V0LayerParameter.det_bg_threshold', index=26, number=55, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_fg_fraction', full_name='caffe.V0LayerParameter.det_fg_fraction', index=27, number=56, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.25, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_context_pad', full_name='caffe.V0LayerParameter.det_context_pad', index=28, number=58, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='det_crop_mode', full_name='caffe.V0LayerParameter.det_crop_mode', index=29, number=59, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("warp", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_num', full_name='caffe.V0LayerParameter.new_num', index=30, number=60, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_channels', full_name='caffe.V0LayerParameter.new_channels', index=31, number=61, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_height', full_name='caffe.V0LayerParameter.new_height', index=32, number=62, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='new_width', full_name='caffe.V0LayerParameter.new_width', index=33, number=63, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='shuffle_images', full_name='caffe.V0LayerParameter.shuffle_images', index=34, number=64, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='concat_dim', full_name='caffe.V0LayerParameter.concat_dim', index=35, number=65, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='hdf5_output_param', full_name='caffe.V0LayerParameter.hdf5_output_param', index=36, number=1001, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _V0LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=4430, serialized_end=5437, ) _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _NETPARAMETER.fields_by_name['layers'].message_type = _LAYERPARAMETER _SOLVERPARAMETER.fields_by_name['solver_mode'].enum_type = _SOLVERPARAMETER_SOLVERMODE _SOLVERPARAMETER_SOLVERMODE.containing_type = _SOLVERPARAMETER; _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['type'].enum_type = _LAYERPARAMETER_LAYERTYPE _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['concat_param'].message_type = _CONCATPARAMETER _LAYERPARAMETER.fields_by_name['convolution_param'].message_type = _CONVOLUTIONPARAMETER _LAYERPARAMETER.fields_by_name['data_param'].message_type = _DATAPARAMETER _LAYERPARAMETER.fields_by_name['dropout_param'].message_type = _DROPOUTPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_data_param'].message_type = _HDF5DATAPARAMETER _LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _LAYERPARAMETER.fields_by_name['image_data_param'].message_type = _IMAGEDATAPARAMETER _LAYERPARAMETER.fields_by_name['infogain_loss_param'].message_type = _INFOGAINLOSSPARAMETER _LAYERPARAMETER.fields_by_name['inner_product_param'].message_type = _INNERPRODUCTPARAMETER _LAYERPARAMETER.fields_by_name['lrn_param'].message_type = _LRNPARAMETER _LAYERPARAMETER.fields_by_name['memory_data_param'].message_type = _MEMORYDATAPARAMETER _LAYERPARAMETER.fields_by_name['pooling_param'].message_type = _POOLINGPARAMETER _LAYERPARAMETER.fields_by_name['power_param'].message_type = _POWERPARAMETER _LAYERPARAMETER.fields_by_name['window_data_param'].message_type = _WINDOWDATAPARAMETER _LAYERPARAMETER.fields_by_name['layer'].message_type = _V0LAYERPARAMETER _LAYERPARAMETER_LAYERTYPE.containing_type = _LAYERPARAMETER; _CONVOLUTIONPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _CONVOLUTIONPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _INNERPRODUCTPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LRNPARAMETER.fields_by_name['norm_region'].enum_type = _LRNPARAMETER_NORMREGION _LRNPARAMETER_NORMREGION.containing_type = _LRNPARAMETER; _POOLINGPARAMETER.fields_by_name['pool'].enum_type = _POOLINGPARAMETER_POOLMETHOD _POOLINGPARAMETER_POOLMETHOD.containing_type = _POOLINGPARAMETER; _V0LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _V0LAYERPARAMETER.fields_by_name['pool'].enum_type = _V0LAYERPARAMETER_POOLMETHOD _V0LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _V0LAYERPARAMETER.fields_by_name['hdf5_output_param'].message_type = _HDF5OUTPUTPARAMETER _V0LAYERPARAMETER_POOLMETHOD.containing_type = _V0LAYERPARAMETER; DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['ConcatParameter'] = _CONCATPARAMETER DESCRIPTOR.message_types_by_name['ConvolutionParameter'] = _CONVOLUTIONPARAMETER DESCRIPTOR.message_types_by_name['DataParameter'] = _DATAPARAMETER DESCRIPTOR.message_types_by_name['DropoutParameter'] = _DROPOUTPARAMETER DESCRIPTOR.message_types_by_name['HDF5DataParameter'] = _HDF5DATAPARAMETER DESCRIPTOR.message_types_by_name['HDF5OutputParameter'] = _HDF5OUTPUTPARAMETER DESCRIPTOR.message_types_by_name['ImageDataParameter'] = _IMAGEDATAPARAMETER DESCRIPTOR.message_types_by_name['InfogainLossParameter'] = _INFOGAINLOSSPARAMETER DESCRIPTOR.message_types_by_name['InnerProductParameter'] = _INNERPRODUCTPARAMETER DESCRIPTOR.message_types_by_name['LRNParameter'] = _LRNPARAMETER DESCRIPTOR.message_types_by_name['MemoryDataParameter'] = _MEMORYDATAPARAMETER DESCRIPTOR.message_types_by_name['PoolingParameter'] = _POOLINGPARAMETER DESCRIPTOR.message_types_by_name['PowerParameter'] = _POWERPARAMETER DESCRIPTOR.message_types_by_name['WindowDataParameter'] = _WINDOWDATAPARAMETER DESCRIPTOR.message_types_by_name['V0LayerParameter'] = _V0LAYERPARAMETER class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class ConcatParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONCATPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConcatParameter) class ConvolutionParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _CONVOLUTIONPARAMETER # @@protoc_insertion_point(class_scope:caffe.ConvolutionParameter) class DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.DataParameter) class DropoutParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DROPOUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.DropoutParameter) class HDF5DataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5DATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5DataParameter) class HDF5OutputParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _HDF5OUTPUTPARAMETER # @@protoc_insertion_point(class_scope:caffe.HDF5OutputParameter) class ImageDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _IMAGEDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.ImageDataParameter) class InfogainLossParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INFOGAINLOSSPARAMETER # @@protoc_insertion_point(class_scope:caffe.InfogainLossParameter) class InnerProductParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _INNERPRODUCTPARAMETER # @@protoc_insertion_point(class_scope:caffe.InnerProductParameter) class LRNParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LRNPARAMETER # @@protoc_insertion_point(class_scope:caffe.LRNParameter) class MemoryDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _MEMORYDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.MemoryDataParameter) class PoolingParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POOLINGPARAMETER # @@protoc_insertion_point(class_scope:caffe.PoolingParameter) class PowerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _POWERPARAMETER # @@protoc_insertion_point(class_scope:caffe.PowerParameter) class WindowDataParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _WINDOWDATAPARAMETER # @@protoc_insertion_point(class_scope:caffe.WindowDataParameter) class V0LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _V0LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.V0LayerParameter) # @@protoc_insertion_point(module_scope)
91,458
42.407214
10,562
py
DRT
DRT-master/external_libs/matconvnet/utils/proto/vgg_caffe_pb2.py
# Generated by the protocol buffer compiler. DO NOT EDIT! from google.protobuf import descriptor from google.protobuf import message from google.protobuf import reflection from google.protobuf import descriptor_pb2 # @@protoc_insertion_point(imports) DESCRIPTOR = descriptor.FileDescriptor( name='vgg_caffe.proto', package='caffe', serialized_pb='\n\x0fvgg_caffe.proto\x12\x05\x63\x61\x66\x66\x65\"y\n\tBlobProto\x12\x0e\n\x03num\x18\x01 \x01(\x05:\x01\x30\x12\x13\n\x08\x63hannels\x18\x02 \x01(\x05:\x01\x30\x12\x11\n\x06height\x18\x03 \x01(\x05:\x01\x30\x12\x10\n\x05width\x18\x04 \x01(\x05:\x01\x30\x12\x10\n\x04\x64\x61ta\x18\x05 \x03(\x02\x42\x02\x10\x01\x12\x10\n\x04\x64iff\x18\x06 \x03(\x02\x42\x02\x10\x01\"2\n\x0f\x42lobProtoVector\x12\x1f\n\x05\x62lobs\x18\x01 \x03(\x0b\x32\x10.caffe.BlobProto\"i\n\x05\x44\x61tum\x12\x10\n\x08\x63hannels\x18\x01 \x01(\x05\x12\x0e\n\x06height\x18\x02 \x01(\x05\x12\r\n\x05width\x18\x03 \x01(\x05\x12\x0c\n\x04\x64\x61ta\x18\x04 \x01(\x0c\x12\r\n\x05label\x18\x05 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\x01(\x05\x12\x10\n\x08max_iter\x18\x07 \x01(\x05\x12\x11\n\tlr_policy\x18\x08 \x01(\t\x12\r\n\x05gamma\x18\t \x01(\x02\x12\r\n\x05power\x18\n \x01(\x02\x12\x10\n\x08momentum\x18\x0b \x01(\x02\x12\x14\n\x0cweight_decay\x18\x0c \x01(\x02\x12\x10\n\x08stepsize\x18\r \x01(\x05\x12\x12\n\nbreakpoint\x18\x16 \x03(\x05\x12\x13\n\x08snapshot\x18\x0e \x01(\x05:\x01\x30\x12\x17\n\x0fsnapshot_prefix\x18\x0f \x01(\t\x12\"\n\x17snapshot_history_length\x18\x12 \x01(\x05:\x01\x30\x12\x1c\n\rsnapshot_diff\x18\x10 \x01(\x08:\x05\x66\x61lse\x12\x16\n\x0bsolver_mode\x18\x11 \x01(\x05:\x01\x31\x12\x11\n\tbatchsize\x18\x13 \x01(\x05\x12\x18\n\rdisplay_debug\x18\x14 \x01(\x05:\x01\x30\x12\x1f\n\x11load_solver_state\x18\x15 \x01(\x08:\x04true\"-\n\x0f\x45valHistoryIter\x12\x0c\n\x04iter\x18\x01 \x01(\x05\x12\x0c\n\x04perf\x18\x02 \x03(\x02\";\n\x0b\x45valHistory\x12,\n\x0cmeasurements\x18\x01 \x03(\x0b\x32\x16.caffe.EvalHistoryIter\"|\n\x0bSolverState\x12\x0c\n\x04iter\x18\x01 \x01(\x05\x12\x13\n\x0blearned_net\x18\x02 \x01(\t\x12!\n\x07history\x18\x03 \x03(\x0b\x32\x10.caffe.BlobProto\x12\'\n\x0bval_history\x18\x04 \x01(\x0b\x32\x12.caffe.EvalHistory') _LAYERPARAMETER_POOLMETHOD = descriptor.EnumDescriptor( name='PoolMethod', full_name='caffe.LayerParameter.PoolMethod', filename=None, file=DESCRIPTOR, values=[ descriptor.EnumValueDescriptor( name='MAX', index=0, number=0, options=None, type=None), descriptor.EnumValueDescriptor( name='AVE', index=1, number=1, options=None, type=None), descriptor.EnumValueDescriptor( name='STOCHASTIC', index=2, number=2, options=None, type=None), ], containing_type=None, options=None, serialized_start=1309, serialized_end=1355, ) _BLOBPROTO = descriptor.Descriptor( name='BlobProto', full_name='caffe.BlobProto', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='num', full_name='caffe.BlobProto.num', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.BlobProto.channels', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.BlobProto.height', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.BlobProto.width', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.BlobProto.data', index=4, number=5, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), descriptor.FieldDescriptor( name='diff', full_name='caffe.BlobProto.diff', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=descriptor._ParseOptions(descriptor_pb2.FieldOptions(), '\020\001')), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=26, serialized_end=147, ) _BLOBPROTOVECTOR = descriptor.Descriptor( name='BlobProtoVector', full_name='caffe.BlobProtoVector', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='blobs', full_name='caffe.BlobProtoVector.blobs', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=149, serialized_end=199, ) _DATUM = descriptor.Descriptor( name='Datum', full_name='caffe.Datum', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='channels', full_name='caffe.Datum.channels', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='height', full_name='caffe.Datum.height', index=1, number=2, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='width', full_name='caffe.Datum.width', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='data', full_name='caffe.Datum.data', index=3, number=4, type=12, cpp_type=9, label=1, has_default_value=False, default_value="", message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label', full_name='caffe.Datum.label', index=4, number=5, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='float_data', full_name='caffe.Datum.float_data', index=5, number=6, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=201, serialized_end=306, ) _FILLERPARAMETER = descriptor.Descriptor( name='FillerParameter', full_name='caffe.FillerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='type', full_name='caffe.FillerParameter.type', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=True, default_value=unicode("constant", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='value', full_name='caffe.FillerParameter.value', index=1, number=2, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='min', full_name='caffe.FillerParameter.min', index=2, number=3, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max', full_name='caffe.FillerParameter.max', index=3, number=4, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mean', full_name='caffe.FillerParameter.mean', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='std', full_name='caffe.FillerParameter.std', index=5, number=6, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='model_path', full_name='caffe.FillerParameter.model_path', index=6, number=7, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='model_layer_name', full_name='caffe.FillerParameter.model_layer_name', index=7, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=309, serialized_end=479, ) _LAYERPARAMETER = descriptor.Descriptor( name='LayerParameter', full_name='caffe.LayerParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.LayerParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='type', full_name='caffe.LayerParameter.type', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='num_output', full_name='caffe.LayerParameter.num_output', index=2, number=3, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='biasterm', full_name='caffe.LayerParameter.biasterm', index=3, number=4, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_filler', full_name='caffe.LayerParameter.weight_filler', index=4, number=5, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bias_filler', full_name='caffe.LayerParameter.bias_filler', index=5, number=6, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pad', full_name='caffe.LayerParameter.pad', index=6, number=7, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='kernelsize', full_name='caffe.LayerParameter.kernelsize', index=7, number=8, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='group', full_name='caffe.LayerParameter.group', index=8, number=9, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stride', full_name='caffe.LayerParameter.stride', index=9, number=10, type=13, cpp_type=3, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='pool', full_name='caffe.LayerParameter.pool', index=10, number=11, type=14, cpp_type=8, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='dropout_ratio', full_name='caffe.LayerParameter.dropout_ratio', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='local_size', full_name='caffe.LayerParameter.local_size', index=12, number=13, type=13, cpp_type=3, label=1, has_default_value=True, default_value=5, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='alpha', full_name='caffe.LayerParameter.alpha', index=13, number=14, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='beta', full_name='caffe.LayerParameter.beta', index=14, number=15, type=2, cpp_type=6, label=1, has_default_value=True, default_value=0.75, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='k', full_name='caffe.LayerParameter.k', index=15, number=116, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='source', full_name='caffe.LayerParameter.source', index=16, number=16, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='root_img_dir', full_name='caffe.LayerParameter.root_img_dir', index=17, number=117, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='scale', full_name='caffe.LayerParameter.scale', index=18, number=17, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='meanfile', full_name='caffe.LayerParameter.meanfile', index=19, number=18, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='crop_meanfile', full_name='caffe.LayerParameter.crop_meanfile', index=20, number=119, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.LayerParameter.batchsize', index=21, number=19, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='cropsize', full_name='caffe.LayerParameter.cropsize', index=22, number=20, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='mirror', full_name='caffe.LayerParameter.mirror', index=23, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='img_aug_type', full_name='caffe.LayerParameter.img_aug_type', index=24, number=22, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='img_sampling_type', full_name='caffe.LayerParameter.img_sampling_type', index=25, number=23, type=13, cpp_type=3, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top_k', full_name='caffe.LayerParameter.top_k', index=26, number=31, type=13, cpp_type=3, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='vis_label', full_name='caffe.LayerParameter.vis_label', index=27, number=24, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='channels', full_name='caffe.LayerParameter.channels', index=28, number=25, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='save_dir', full_name='caffe.LayerParameter.save_dir', index=29, number=26, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='label_rank', full_name='caffe.LayerParameter.label_rank', index=30, number=30, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='margin', full_name='caffe.LayerParameter.margin', index=31, number=32, type=2, cpp_type=6, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs', full_name='caffe.LayerParameter.blobs', index=32, number=50, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='blobs_lr', full_name='caffe.LayerParameter.blobs_lr', index=33, number=51, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.LayerParameter.weight_decay', index=34, number=52, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='rand_skip', full_name='caffe.LayerParameter.rand_skip', index=35, number=53, type=13, cpp_type=3, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ _LAYERPARAMETER_POOLMETHOD, ], options=None, is_extendable=False, extension_ranges=[], serialized_start=482, serialized_end=1355, ) _LAYERCONNECTION = descriptor.Descriptor( name='LayerConnection', full_name='caffe.LayerConnection', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='layer', full_name='caffe.LayerConnection.layer', index=0, number=1, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='bottom', full_name='caffe.LayerConnection.bottom', index=1, number=2, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='top', full_name='caffe.LayerConnection.top', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1357, serialized_end=1441, ) _NETPARAMETER = descriptor.Descriptor( name='NetParameter', full_name='caffe.NetParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='name', full_name='caffe.NetParameter.name', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='layers', full_name='caffe.NetParameter.layers', index=1, number=2, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input', full_name='caffe.NetParameter.input', index=2, number=3, type=9, cpp_type=9, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='input_dim', full_name='caffe.NetParameter.input_dim', index=3, number=4, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='force_backward', full_name='caffe.NetParameter.force_backward', index=4, number=5, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1444, serialized_end=1577, ) _SOLVERPARAMETER = descriptor.Descriptor( name='SolverParameter', full_name='caffe.SolverParameter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='train_net', full_name='caffe.SolverParameter.train_net', index=0, number=1, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_net', full_name='caffe.SolverParameter.test_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_iter', full_name='caffe.SolverParameter.test_iter', index=2, number=3, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='test_interval', full_name='caffe.SolverParameter.test_interval', index=3, number=4, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='base_lr', full_name='caffe.SolverParameter.base_lr', index=4, number=5, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display', full_name='caffe.SolverParameter.display', index=5, number=6, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='max_iter', full_name='caffe.SolverParameter.max_iter', index=6, number=7, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='lr_policy', full_name='caffe.SolverParameter.lr_policy', index=7, number=8, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='gamma', full_name='caffe.SolverParameter.gamma', index=8, number=9, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='power', full_name='caffe.SolverParameter.power', index=9, number=10, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='momentum', full_name='caffe.SolverParameter.momentum', index=10, number=11, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='weight_decay', full_name='caffe.SolverParameter.weight_decay', index=11, number=12, type=2, cpp_type=6, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='stepsize', full_name='caffe.SolverParameter.stepsize', index=12, number=13, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='breakpoint', full_name='caffe.SolverParameter.breakpoint', index=13, number=22, type=5, cpp_type=1, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot', full_name='caffe.SolverParameter.snapshot', index=14, number=14, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_prefix', full_name='caffe.SolverParameter.snapshot_prefix', index=15, number=15, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_history_length', full_name='caffe.SolverParameter.snapshot_history_length', index=16, number=18, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='snapshot_diff', full_name='caffe.SolverParameter.snapshot_diff', index=17, number=16, type=8, cpp_type=7, label=1, has_default_value=True, default_value=False, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='solver_mode', full_name='caffe.SolverParameter.solver_mode', index=18, number=17, type=5, cpp_type=1, label=1, has_default_value=True, default_value=1, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='batchsize', full_name='caffe.SolverParameter.batchsize', index=19, number=19, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='display_debug', full_name='caffe.SolverParameter.display_debug', index=20, number=20, type=5, cpp_type=1, label=1, has_default_value=True, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='load_solver_state', full_name='caffe.SolverParameter.load_solver_state', index=21, number=21, type=8, cpp_type=7, label=1, has_default_value=True, default_value=True, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=1580, serialized_end=2075, ) _EVALHISTORYITER = descriptor.Descriptor( name='EvalHistoryIter', full_name='caffe.EvalHistoryIter', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.EvalHistoryIter.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='perf', full_name='caffe.EvalHistoryIter.perf', index=1, number=2, type=2, cpp_type=6, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2077, serialized_end=2122, ) _EVALHISTORY = descriptor.Descriptor( name='EvalHistory', full_name='caffe.EvalHistory', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='measurements', full_name='caffe.EvalHistory.measurements', index=0, number=1, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2124, serialized_end=2183, ) _SOLVERSTATE = descriptor.Descriptor( name='SolverState', full_name='caffe.SolverState', filename=None, file=DESCRIPTOR, containing_type=None, fields=[ descriptor.FieldDescriptor( name='iter', full_name='caffe.SolverState.iter', index=0, number=1, type=5, cpp_type=1, label=1, has_default_value=False, default_value=0, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='learned_net', full_name='caffe.SolverState.learned_net', index=1, number=2, type=9, cpp_type=9, label=1, has_default_value=False, default_value=unicode("", "utf-8"), message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='history', full_name='caffe.SolverState.history', index=2, number=3, type=11, cpp_type=10, label=3, has_default_value=False, default_value=[], message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), descriptor.FieldDescriptor( name='val_history', full_name='caffe.SolverState.val_history', index=3, number=4, type=11, cpp_type=10, label=1, has_default_value=False, default_value=None, message_type=None, enum_type=None, containing_type=None, is_extension=False, extension_scope=None, options=None), ], extensions=[ ], nested_types=[], enum_types=[ ], options=None, is_extendable=False, extension_ranges=[], serialized_start=2185, serialized_end=2309, ) _BLOBPROTOVECTOR.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER.fields_by_name['weight_filler'].message_type = _FILLERPARAMETER _LAYERPARAMETER.fields_by_name['bias_filler'].message_type = _FILLERPARAMETER _LAYERPARAMETER.fields_by_name['pool'].enum_type = _LAYERPARAMETER_POOLMETHOD _LAYERPARAMETER.fields_by_name['blobs'].message_type = _BLOBPROTO _LAYERPARAMETER_POOLMETHOD.containing_type = _LAYERPARAMETER; _LAYERCONNECTION.fields_by_name['layer'].message_type = _LAYERPARAMETER _NETPARAMETER.fields_by_name['layers'].message_type = _LAYERCONNECTION _EVALHISTORY.fields_by_name['measurements'].message_type = _EVALHISTORYITER _SOLVERSTATE.fields_by_name['history'].message_type = _BLOBPROTO _SOLVERSTATE.fields_by_name['val_history'].message_type = _EVALHISTORY DESCRIPTOR.message_types_by_name['BlobProto'] = _BLOBPROTO DESCRIPTOR.message_types_by_name['BlobProtoVector'] = _BLOBPROTOVECTOR DESCRIPTOR.message_types_by_name['Datum'] = _DATUM DESCRIPTOR.message_types_by_name['FillerParameter'] = _FILLERPARAMETER DESCRIPTOR.message_types_by_name['LayerParameter'] = _LAYERPARAMETER DESCRIPTOR.message_types_by_name['LayerConnection'] = _LAYERCONNECTION DESCRIPTOR.message_types_by_name['NetParameter'] = _NETPARAMETER DESCRIPTOR.message_types_by_name['SolverParameter'] = _SOLVERPARAMETER DESCRIPTOR.message_types_by_name['EvalHistoryIter'] = _EVALHISTORYITER DESCRIPTOR.message_types_by_name['EvalHistory'] = _EVALHISTORY DESCRIPTOR.message_types_by_name['SolverState'] = _SOLVERSTATE class BlobProto(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTO # @@protoc_insertion_point(class_scope:caffe.BlobProto) class BlobProtoVector(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _BLOBPROTOVECTOR # @@protoc_insertion_point(class_scope:caffe.BlobProtoVector) class Datum(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _DATUM # @@protoc_insertion_point(class_scope:caffe.Datum) class FillerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _FILLERPARAMETER # @@protoc_insertion_point(class_scope:caffe.FillerParameter) class LayerParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERPARAMETER # @@protoc_insertion_point(class_scope:caffe.LayerParameter) class LayerConnection(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _LAYERCONNECTION # @@protoc_insertion_point(class_scope:caffe.LayerConnection) class NetParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _NETPARAMETER # @@protoc_insertion_point(class_scope:caffe.NetParameter) class SolverParameter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERPARAMETER # @@protoc_insertion_point(class_scope:caffe.SolverParameter) class EvalHistoryIter(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EVALHISTORYITER # @@protoc_insertion_point(class_scope:caffe.EvalHistoryIter) class EvalHistory(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _EVALHISTORY # @@protoc_insertion_point(class_scope:caffe.EvalHistory) class SolverState(message.Message): __metaclass__ = reflection.GeneratedProtocolMessageType DESCRIPTOR = _SOLVERSTATE # @@protoc_insertion_point(class_scope:caffe.SolverState) # @@protoc_insertion_point(module_scope)
44,873
42.865103
4,761
py
DRT
DRT-master/external_libs/matconvnet/doc/matdoc.py
# file: matdoc.py # author: Andrea Vedaldi # brief: Extact comments from a MATLAB mfile and generate a Markdown file import sys, os, re, shutil import subprocess, signal import string, fnmatch from matdocparser import * from optparse import OptionParser usage = """usage: %prog [options] <mfile> Extracts the comments from the specified <mfile> and prints a Markdown version of them.""" optparser = OptionParser(usage=usage) optparser.add_option( "-v", "--verbose", dest = "verb", default = False, action = "store_true", help = "print debug information") findFunction = re.compile(r"^\s*(function|classdef).*$", re.MULTILINE) getFunction = re.compile(r"\s*%\s*(\w+)\s*(.*)\n" "((\s*%.*\n)+)") cleanComments = re.compile("^\s*%", re.MULTILINE) # -------------------------------------------------------------------- def readText(path): # -------------------------------------------------------------------- with open (path, "r") as myfile: text=myfile.read() return text # -------------------------------------------------------------------- class MatlabFunction: # -------------------------------------------------------------------- def __init__(self, name, nature, brief, body): self.name = name self.nature = nature self.brief = brief self.body = body def __str__(self): return "%s (%s)" % (self.name, self.nature) # -------------------------------------------------------------------- def findNextFunction(test, pos): # -------------------------------------------------------------------- if pos == 0 and test[0] == '%': # This is an M-file with a MEX implementation return (pos, 'function') m = findFunction.search(test, pos) if m: return (m.end()+1, m.group(1)) else: return (None, None) # -------------------------------------------------------------------- def getFunctionDoc(text, nature, pos): # -------------------------------------------------------------------- m = getFunction.match(text, pos) if m: name = m.group(1) brief = m.group(2).strip() body = clean(m.group(3)) return (MatlabFunction(name, nature, brief, body), m.end()+1) else: return (None, pos) # -------------------------------------------------------------------- def clean(text): # -------------------------------------------------------------------- return cleanComments.sub("", text) # -------------------------------------------------------------------- def extract(text): # -------------------------------------------------------------------- funcs = [] pos = 0 while True: (pos, nature) = findNextFunction(text, pos) if nature is None: break (f, pos) = getFunctionDoc(text, nature, pos) if f: funcs.append(f) return funcs # -------------------------------------------------------------------- class Frame(object): # -------------------------------------------------------------------- prefix = "" before = None def __init__(self, prefix, before = None, hlevel = 0): self.prefix = prefix self.before = before self.hlevel = hlevel # -------------------------------------------------------------------- class Context(object): # -------------------------------------------------------------------- frames = [] def __init__(self, hlevel = 0): self.hlevel = hlevel def __str__(self): text = "" for f in self.frames: if not f.before: text = text + f.prefix else: text = text + f.prefix[:-len(f.before)] + f.before f.before = None return text def pop(self): f = self.frames[-1] del self.frames[-1] return f def push(self, frame): self.frames.append(frame) def render_L(tree, context): print "%s%s" % (context,tree.text) def render_L_from_indent(tree, context, indent): print "%s%s%s" % (context," "*max(0,tree.indent-indent),tree.text) def render_SL(tree, context): print "%s%s %s" % (context, "#"*(context.hlevel+tree.section_level), tree.inner_text) def render_S(tree, context): for n in tree.children: render_SL(n, context) def render_DH(tree, context): if len(tree.inner_text.strip()) > 0: print "%s**%s** [*%s*]" % (context, tree.description.strip(), tree.inner_text.strip()) else: print "%s**%s**" % (context, tree.description.strip()) def render_DI(tree, context): context.push(Frame(" ", "* ")) render_DH(tree.children[0], context) print context if len(tree.children) > 1: render_DIVL(tree.children[1], context) context.pop() def render_DL(tree, context): for n in tree.children: render_DI(n, context) def render_P(tree, context): for n in tree.children: render_L(n, context) print context def render_B(tree, context): print context def render_V(tree, context): context.push(Frame(" ")) for n in tree.children: if n.isa(L): render_L_from_indent(n, context, tree.indent) elif n.isa(B): render_B(n, context) context.pop() def render_BL(tree, context): for n in tree.children: context.push(Frame(" ", "+ ")) render_DIVL(n, context) context.pop() def render_DIVL(tree, context): for n in tree.children: if n.isa(P): render_P(n, context) elif n.isa(BL): render_BL(n, context) elif n.isa(DL): render_DL(n, context) elif n.isa(V): render_V(n, context) elif n.isa(S): render_S(n, context) context.before = "" def render(func, brief, tree, hlevel): print "%s `%s` - %s" % ('#' * hlevel, func.upper(), brief) render_DIVL(tree, Context(hlevel)) if __name__ == '__main__': (opts, args) = optparser.parse_args() if len(args) != 1: optparser.print_help() sys.exit(2) mfilePath = args[0] # Get the function text = readText(mfilePath) funcs = extract(text) if len(funcs) == 0: print >> sys.stderr, "Could not find a MATLAB function" sys.exit(-1) parser = Parser() if funcs[0].nature == 'classdef': # For MATLAB classes, look for other methods outside # the classdef file components = mfilePath.split(os.sep) if len(components)>1 and components[-2][0] == '@': classDir = string.join(components[:-1],os.sep) for x in os.listdir(classDir): if fnmatch.fnmatch(x, '*.m') and not x == components[-1]: text = readText(classDir + os.sep + x) funcs_ = extract(text) if len(funcs_) > 0: funcs.append(funcs_[0]) else: # For MATLAB functions, do not print subfuctions funcs = [funcs[0]] hlevel = 1 for f in funcs: lexer = Lexer(f.body.splitlines()) tree = parser.parse(lexer) if opts.verb: print >> sys.stderr, tree render(f.name, f.brief, tree, hlevel) hlevel = 2
7,192
30.273913
94
py
DRT
DRT-master/external_libs/matconvnet/doc/matdocparser.py
#!/usr/bin/python # file: matdocparser.py # author: Andrea Vedaldi # description: Utility to format MATLAB comments. # Copyright (C) 2014-15 Andrea Vedaldi. # All rights reserved. # # This file is part of the VLFeat library and is made available under # the terms of the BSD license (see the COPYING file). """ MatDocParser is an interpreter for the MatDoc format. This is a simplified and stricter version of Markdown suitable to commenting MATLAB functions. the format is easily understood from an example: A paragraph starts on a new line. And continues on following lines. Indenting with a whitespace introduces a verbatim code section: Like this This continues it Different paragraphs are separated by blank lines. * The *, -, + symbols at the beginning of a line introduce a list. Which can be continued on follwing paragraphs by proper indentation. Multiple paragraphs in a list item are also supported. * This is the second item of the same list. It is also possible to have definition lists such as Term1:: Short description 2 Longer explanation. Behaves like a list item. Term2:: Short description 2 Term3:: Short description 3 Longer explanations are optional. # Lines can begin with # to denote a title ## Is a smaller title """ import sys import os import re __mpname__ = 'MatDocParser' __version__ = '1.0-beta15' __date__ = '2015-09-20' __description__ = 'MatDoc MATLAB inline function description interpreter.' __long_description__ = __doc__ __license__ = 'BSD' __author__ = 'Andrea Vedaldi' # -------------------------------------------------------------------- # Input line types (terminal symbols) # -------------------------------------------------------------------- # Terminal symbols are organized in a hierarchy. Each line in the # input document is mapped to leaf in this hierarchy, representing # the type of line detected. class Symbol(object): indent = None def isa(self, classinfo, indent = None): return isinstance(self, classinfo) and \ (indent is None or self.indent == indent) def __str__(self, indent = 0): if self.indent is not None: x = "%d" % self.indent else: x = "*" return " "*indent + "%s(%s)" % (self.__class__.__name__, x) # Terminal symbols # Note that PL, BH, DH are all subclasses of L; the fields .text and .indent # have the same meaning for all of them. class Terminal(Symbol): pass class EOF (Terminal): pass # end-of-file class B (Terminal): pass # blank linke class L (Terminal): # non-empty line: '<" "*indent><text>' text = "" def __str__(self, indent = 0): return "%s: %s" % (super(L, self).__str__(indent), self.text) class PL (L): pass # regular line class BH (L): # bullet: a line of type ' * <inner_text>' inner_indent = None inner_text = None bullet = None class DH (L): # description: a line of type ' <description>::<inner_text>' inner_text = None description = None def __str__(self, indent = 0): return "%s: '%s' :: '%s'" % (super(L, self).__str__(indent), self.description, self.inner_text) class SL (L): # section: '<#+><text>' section_level = 0 inner_text = None def __str__(self, indent = 0): return "%s: %s" % (super(L, self).__str__(indent), self.inner_text) # A lexer object: parse lines of the input document into terminal symbols class Lexer(object): def __init__(self, lines): self.lines = lines self.pos = -1 def next(self): self.pos = self.pos + 1 # no more if self.pos > len(self.lines)-1: x = EOF() return x line = self.lines[self.pos] # a blank line match = re.match(r"\s*\n?$", line) ; if match: return B() # a line of type ' <#+><inner_text>' match = re.match(r"(\s*)(#+)(.*)\n?$", line) if match: x = SL() x.indent = len(match.group(1)) x.section_level = len(match.group(2)) x.inner_text = match.group(3) #print x.indent, x.section_level, x.inner_text return x # a line of type ' <content>::<inner_text>' match = re.match(r"(\s*)(.*)::(.*)\n?$", line) if match: x = DH() x.indent = len(match.group(1)) x.description = match.group(2) x.inner_text = match.group(3) x.text = x.description + "::" + x.inner_text return x # a line of type ' * <inner_contet>' match = re.match(r"(\s*)([-\*+]\s*)(\S.*)\n?$", line) if match: x = BH() x.indent = len(match.group(1)) x.bullet = match.group(2) x.inner_indent = x.indent + len(x.bullet) x.inner_text = match.group(3) x.text = x.bullet + x.inner_text return x # a line of the type ' <content>' match = re.match(r"(\s*)(\S.*)\n?$", line) if match: x = PL() x.indent = len(match.group(1)) x.text = match.group(2) return x # -------------------------------------------------------------------- # Non-terminal # -------------------------------------------------------------------- # DIVL is a consecutive list of blocks with the same indent and/or blank # lines. # # DIVL(indent) -> (B | SL(indent) | P(indent) | V(indent) | # BL(indent) | DL(indent))+ # # S(indent) -> SL(indent) # # A P(indent) is a paragraph, a list of regular lines indentent by the # same amount. # # P(indent) -> PL(indent)+ # # A V(indent) is a verbatim (code) block. It contains text lines and blank # lines that have indentation strictly larger than `indent`: # # V(indent) -> L(i) (B | L(j), j > indent)+, for all i > indent # # A DL(indent) is a description list: # # DL(indent) -> DH(indent) DIVL(i)*, i > indent # # A BL(indent) is a bullet list. It contains bullet list items, namely # a sequence of special DIVL_BH(indent,inner_indent) whose first block # is a paragaraph P_BH(indent,inner_indent) whose first line is a # bullet header BH(indent,innner_indent). Here the bullet identation # inner_indent is obtained as the inner_indent of the # BH(indent,inner_indent) symbol. Formalising this with grammar rules # is verbose; instead we use the simple `hack' of defining # # BL(indent) -> (DIVL(inner_indent))+ # # where DIVL(inner_indent) are regular DIVL, obtaine after replacing # the bullet header line BH with a standard paragraph line PL. class NonTerminal(Symbol): children = [] def __init__(self, *args): self.children = list(args) def __str__(self, indent = 0): s = " "*indent + super(NonTerminal, self).__str__() + "\n" for c in self.children: s += c.__str__(indent + 2) + "\n" return s[:-1] class S(NonTerminal): pass class DIVL(NonTerminal): pass class DIV(NonTerminal): pass class BL(NonTerminal): pass class DL(NonTerminal): pass class DI(NonTerminal): pass class P(DIV): pass class V(DIV): pass # -------------------------------------------------------------------- class Parser(object): lexer = None stack = [] lookahead = None def shift(self): if self.lookahead: self.stack.append(self.lookahead) self.lookahead = self.lexer.next() def reduce(self, X, n, indent = None): #print "reducing %s with %d" % (S.__name__, n) x = X(*self.stack[-n:]) del self.stack[-n:] x.indent = indent self.stack.append(x) return x def parse(self, lexer): self.lexer = lexer self.stack = [] while True: self.lookahead = self.lexer.next() if not self.lookahead.isa(B): break self.parse_DIVL(self.lookahead.indent) return self.stack[0] def parse_SL(self, indent): self.shift() self.reduce(S, 1, indent) def parse_P(self, indent): i = 0 if indent is None: indent = self.lookahead.indent while self.lookahead.isa(PL, indent): self.shift() i = i + 1 self.reduce(P, i, indent) def parse_V(self, indent): i = 0 while (self.lookahead.isa(L) and self.lookahead.indent > indent) or \ (self.lookahead.isa(B)): self.shift() i = i + 1 self.reduce(V, i, indent) def parse_DIV_helper(self, indent): if self.lookahead.isa(SL, indent): self.parse_SL(indent) elif self.lookahead.isa(PL, indent): self.parse_P(indent) elif self.lookahead.isa(L) and (self.lookahead.indent > indent): self.parse_V(indent) elif self.lookahead.isa(BH, indent): self.parse_BL(indent) elif self.lookahead.isa(DH, indent): self.parse_DL(indent) elif self.lookahead.isa(B): self.shift() else: return False # leaves with B, P(indent), V(indent), BL(indent) or DL(indent) return True def parse_BI_helper(self, indent): x = self.lookahead if not x.isa(BH, indent): return False indent = x.inner_indent self.lookahead = PL() self.lookahead.text = x.inner_text self.lookahead.indent = indent self.parse_DIVL(indent) # leaves with DIVL(inner_indent) where inner_indent was # obtained from the bullet header symbol return True def parse_BL(self, indent): i = 0 while self.parse_BI_helper(indent): i = i + 1 if i == 0: print "Error", sys.exit(1) self.reduce(BL, i, indent) def parse_DI_helper(self, indent): if not self.lookahead.isa(DH, indent): return False self.shift() if self.lookahead.indent > indent: self.parse_DIVL(self.lookahead.indent) self.reduce(DI, 2, indent) else: self.reduce(DI, 1, indent) return True def parse_DL(self, indent): i = 0 while self.parse_DI_helper(indent): i = i + 1 if i == 0: print "Error", sys.exit(1) self.reduce(DL, i, indent) def parse_DIVL(self, indent = None): i = 0 while self.parse_DIV_helper(indent): if indent is None: indent = self.stack[-1].indent i = i + 1 self.reduce(DIVL, i, indent) if __name__ == '__main__': str=""" Some text describing a MATLAB function F(). The function F() does nothing. It has the following options: CarryOn:: True Keep doing nothing for the time being. Stop:: 'here' Stop doing whathever here. Example: % call the function f('stop', 'there') % contemplate the results So in short we conclude that: * This does nothing * It could do something, but still does not. # See also: hope for the best. # Section number one Bla ## More Sect ### Even more blo """ parser = Parser() lexer = Lexer(str.split('\n')) tree = parser.parse(lexer) print tree
11,110
29.275204
80
py
DRT
DRT-master/caffe/tools/extra/extract_seconds.py
#!/usr/bin/env python import datetime import os import sys def extract_datetime_from_line(line, year): # Expected format: I0210 13:39:22.381027 25210 solver.cpp:204] Iteration 100, lr = 0.00992565 line = line.strip().split() month = int(line[0][1:3]) day = int(line[0][3:]) timestamp = line[1] pos = timestamp.rfind('.') ts = [int(x) for x in timestamp[:pos].split(':')] hour = ts[0] minute = ts[1] second = ts[2] microsecond = int(timestamp[pos + 1:]) dt = datetime.datetime(year, month, day, hour, minute, second, microsecond) return dt def get_log_created_year(input_file): """Get year from log file system timestamp """ log_created_time = os.path.getctime(input_file) log_created_year = datetime.datetime.fromtimestamp(log_created_time).year return log_created_year def get_start_time(line_iterable, year): """Find start time from group of lines """ start_datetime = None for line in line_iterable: line = line.strip() if line.find('Solving') != -1: start_datetime = extract_datetime_from_line(line, year) break return start_datetime def extract_seconds(input_file, output_file): with open(input_file, 'r') as f: lines = f.readlines() log_created_year = get_log_created_year(input_file) start_datetime = get_start_time(lines, log_created_year) assert start_datetime, 'Start time not found' out = open(output_file, 'w') for line in lines: line = line.strip() if line.find('Iteration') != -1: dt = extract_datetime_from_line(line, log_created_year) elapsed_seconds = (dt - start_datetime).total_seconds() out.write('%f\n' % elapsed_seconds) out.close() if __name__ == '__main__': if len(sys.argv) < 3: print('Usage: ./extract_seconds input_file output_file') exit(1) extract_seconds(sys.argv[1], sys.argv[2])
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DRT-master/caffe/tools/extra/resize_and_crop_images.py
#!/usr/bin/env python from mincepie import mapreducer, launcher import gflags import os import cv2 from PIL import Image # gflags gflags.DEFINE_string('image_lib', 'opencv', 'OpenCV or PIL, case insensitive. The default value is the faster OpenCV.') gflags.DEFINE_string('input_folder', '', 'The folder that contains all input images, organized in synsets.') gflags.DEFINE_integer('output_side_length', 256, 'Expected side length of the output image.') gflags.DEFINE_string('output_folder', '', 'The folder that we write output resized and cropped images to') FLAGS = gflags.FLAGS class OpenCVResizeCrop: def resize_and_crop_image(self, input_file, output_file, output_side_length = 256): '''Takes an image name, resize it and crop the center square ''' img = cv2.imread(input_file) height, width, depth = img.shape new_height = output_side_length new_width = output_side_length if height > width: new_height = output_side_length * height / width else: new_width = output_side_length * width / height resized_img = cv2.resize(img, (new_width, new_height)) height_offset = (new_height - output_side_length) / 2 width_offset = (new_width - output_side_length) / 2 cropped_img = resized_img[height_offset:height_offset + output_side_length, width_offset:width_offset + output_side_length] cv2.imwrite(output_file, cropped_img) class PILResizeCrop: ## http://united-coders.com/christian-harms/image-resizing-tips-every-coder-should-know/ def resize_and_crop_image(self, input_file, output_file, output_side_length = 256, fit = True): '''Downsample the image. ''' img = Image.open(input_file) box = (output_side_length, output_side_length) #preresize image with factor 2, 4, 8 and fast algorithm factor = 1 while img.size[0]/factor > 2*box[0] and img.size[1]*2/factor > 2*box[1]: factor *=2 if factor > 1: img.thumbnail((img.size[0]/factor, img.size[1]/factor), Image.NEAREST) #calculate the cropping box and get the cropped part if fit: x1 = y1 = 0 x2, y2 = img.size wRatio = 1.0 * x2/box[0] hRatio = 1.0 * y2/box[1] if hRatio > wRatio: y1 = int(y2/2-box[1]*wRatio/2) y2 = int(y2/2+box[1]*wRatio/2) else: x1 = int(x2/2-box[0]*hRatio/2) x2 = int(x2/2+box[0]*hRatio/2) img = img.crop((x1,y1,x2,y2)) #Resize the image with best quality algorithm ANTI-ALIAS img.thumbnail(box, Image.ANTIALIAS) #save it into a file-like object with open(output_file, 'wb') as out: img.save(out, 'JPEG', quality=75) class ResizeCropImagesMapper(mapreducer.BasicMapper): '''The ImageNet Compute mapper. The input value would be the file listing images' paths relative to input_folder. ''' def map(self, key, value): if type(value) is not str: value = str(value) files = [value] image_lib = FLAGS.image_lib.lower() if image_lib == 'pil': resize_crop = PILResizeCrop() else: resize_crop = OpenCVResizeCrop() for i, line in enumerate(files): try: line = line.replace(FLAGS.input_folder, '').strip() line = line.split() image_file_name = line[0] input_file = os.path.join(FLAGS.input_folder, image_file_name) output_file = os.path.join(FLAGS.output_folder, image_file_name) output_dir = output_file[:output_file.rfind('/')] if not os.path.exists(output_dir): os.makedirs(output_dir) feat = resize_crop.resize_and_crop_image(input_file, output_file, FLAGS.output_side_length) except Exception, e: # we ignore the exception (maybe the image is corrupted?) print line, Exception, e yield value, FLAGS.output_folder mapreducer.REGISTER_DEFAULT_MAPPER(ResizeCropImagesMapper) mapreducer.REGISTER_DEFAULT_READER(mapreducer.FileReader) mapreducer.REGISTER_DEFAULT_WRITER(mapreducer.FileWriter) if __name__ == '__main__': launcher.launch()
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DRT-master/caffe/tools/extra/parse_log.py
#!/usr/bin/env python """ Parse training log Evolved from parse_log.sh """ import os import re import extract_seconds import argparse import csv from collections import OrderedDict def parse_log(path_to_log): """Parse log file Returns (train_dict_list, train_dict_names, test_dict_list, test_dict_names) train_dict_list and test_dict_list are lists of dicts that define the table rows train_dict_names and test_dict_names are ordered tuples of the column names for the two dict_lists """ regex_iteration = re.compile('Iteration (\d+)') regex_train_output = re.compile('Train net output #(\d+): (\S+) = ([\.\deE+-]+)') regex_test_output = re.compile('Test net output #(\d+): (\S+) = ([\.\deE+-]+)') regex_learning_rate = re.compile('lr = ([-+]?[0-9]*\.?[0-9]+([eE]?[-+]?[0-9]+)?)') # Pick out lines of interest iteration = -1 learning_rate = float('NaN') train_dict_list = [] test_dict_list = [] train_row = None test_row = None logfile_year = extract_seconds.get_log_created_year(path_to_log) with open(path_to_log) as f: start_time = extract_seconds.get_start_time(f, logfile_year) for line in f: iteration_match = regex_iteration.search(line) if iteration_match: iteration = float(iteration_match.group(1)) if iteration == -1: # Only start parsing for other stuff if we've found the first # iteration continue time = extract_seconds.extract_datetime_from_line(line, logfile_year) seconds = (time - start_time).total_seconds() learning_rate_match = regex_learning_rate.search(line) if learning_rate_match: learning_rate = float(learning_rate_match.group(1)) train_dict_list, train_row = parse_line_for_net_output( regex_train_output, train_row, train_dict_list, line, iteration, seconds, learning_rate ) test_dict_list, test_row = parse_line_for_net_output( regex_test_output, test_row, test_dict_list, line, iteration, seconds, learning_rate ) fix_initial_nan_learning_rate(train_dict_list) fix_initial_nan_learning_rate(test_dict_list) return train_dict_list, test_dict_list def parse_line_for_net_output(regex_obj, row, row_dict_list, line, iteration, seconds, learning_rate): """Parse a single line for training or test output Returns a a tuple with (row_dict_list, row) row: may be either a new row or an augmented version of the current row row_dict_list: may be either the current row_dict_list or an augmented version of the current row_dict_list """ output_match = regex_obj.search(line) if output_match: if not row or row['NumIters'] != iteration: # Push the last row and start a new one if row: # If we're on a new iteration, push the last row # This will probably only happen for the first row; otherwise # the full row checking logic below will push and clear full # rows row_dict_list.append(row) row = OrderedDict([ ('NumIters', iteration), ('Seconds', seconds), ('LearningRate', learning_rate) ]) # output_num is not used; may be used in the future # output_num = output_match.group(1) output_name = output_match.group(2) output_val = output_match.group(3) row[output_name] = float(output_val) if row and len(row_dict_list) >= 1 and len(row) == len(row_dict_list[0]): # The row is full, based on the fact that it has the same number of # columns as the first row; append it to the list row_dict_list.append(row) row = None return row_dict_list, row def fix_initial_nan_learning_rate(dict_list): """Correct initial value of learning rate Learning rate is normally not printed until after the initial test and training step, which means the initial testing and training rows have LearningRate = NaN. Fix this by copying over the LearningRate from the second row, if it exists. """ if len(dict_list) > 1: dict_list[0]['LearningRate'] = dict_list[1]['LearningRate'] def save_csv_files(logfile_path, output_dir, train_dict_list, test_dict_list, delimiter=',', verbose=False): """Save CSV files to output_dir If the input log file is, e.g., caffe.INFO, the names will be caffe.INFO.train and caffe.INFO.test """ log_basename = os.path.basename(logfile_path) train_filename = os.path.join(output_dir, log_basename + '.train') write_csv(train_filename, train_dict_list, delimiter, verbose) test_filename = os.path.join(output_dir, log_basename + '.test') write_csv(test_filename, test_dict_list, delimiter, verbose) def write_csv(output_filename, dict_list, delimiter, verbose=False): """Write a CSV file """ dialect = csv.excel dialect.delimiter = delimiter with open(output_filename, 'w') as f: dict_writer = csv.DictWriter(f, fieldnames=dict_list[0].keys(), dialect=dialect) dict_writer.writeheader() dict_writer.writerows(dict_list) if verbose: print 'Wrote %s' % output_filename def parse_args(): description = ('Parse a Caffe training log into two CSV files ' 'containing training and testing information') parser = argparse.ArgumentParser(description=description) parser.add_argument('logfile_path', help='Path to log file') parser.add_argument('output_dir', help='Directory in which to place output CSV files') parser.add_argument('--verbose', action='store_true', help='Print some extra info (e.g., output filenames)') parser.add_argument('--delimiter', default=',', help=('Column delimiter in output files ' '(default: \'%(default)s\')')) args = parser.parse_args() return args def main(): args = parse_args() train_dict_list, test_dict_list = parse_log(args.logfile_path) save_csv_files(args.logfile_path, args.output_dir, train_dict_list, test_dict_list, delimiter=args.delimiter) if __name__ == '__main__': main()
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DRT-master/caffe/examples/web_demo/app.py
import os import time import cPickle import datetime import logging import flask import werkzeug import optparse import tornado.wsgi import tornado.httpserver import numpy as np import pandas as pd from PIL import Image import cStringIO as StringIO import urllib import exifutil import caffe REPO_DIRNAME = os.path.abspath(os.path.dirname(os.path.abspath(__file__)) + '/../..') UPLOAD_FOLDER = '/tmp/caffe_demos_uploads' ALLOWED_IMAGE_EXTENSIONS = set(['png', 'bmp', 'jpg', 'jpe', 'jpeg', 'gif']) # Obtain the flask app object app = flask.Flask(__name__) @app.route('/') def index(): return flask.render_template('index.html', has_result=False) @app.route('/classify_url', methods=['GET']) def classify_url(): imageurl = flask.request.args.get('imageurl', '') try: string_buffer = StringIO.StringIO( urllib.urlopen(imageurl).read()) image = caffe.io.load_image(string_buffer) except Exception as err: # For any exception we encounter in reading the image, we will just # not continue. logging.info('URL Image open error: %s', err) return flask.render_template( 'index.html', has_result=True, result=(False, 'Cannot open image from URL.') ) logging.info('Image: %s', imageurl) result = app.clf.classify_image(image) return flask.render_template( 'index.html', has_result=True, result=result, imagesrc=imageurl) @app.route('/classify_upload', methods=['POST']) def classify_upload(): try: # We will save the file to disk for possible data collection. imagefile = flask.request.files['imagefile'] filename_ = str(datetime.datetime.now()).replace(' ', '_') + \ werkzeug.secure_filename(imagefile.filename) filename = os.path.join(UPLOAD_FOLDER, filename_) imagefile.save(filename) logging.info('Saving to %s.', filename) image = exifutil.open_oriented_im(filename) except Exception as err: logging.info('Uploaded image open error: %s', err) return flask.render_template( 'index.html', has_result=True, result=(False, 'Cannot open uploaded image.') ) result = app.clf.classify_image(image) return flask.render_template( 'index.html', has_result=True, result=result, imagesrc=embed_image_html(image) ) def embed_image_html(image): """Creates an image embedded in HTML base64 format.""" image_pil = Image.fromarray((255 * image).astype('uint8')) image_pil = image_pil.resize((256, 256)) string_buf = StringIO.StringIO() image_pil.save(string_buf, format='png') data = string_buf.getvalue().encode('base64').replace('\n', '') return 'data:image/png;base64,' + data def allowed_file(filename): return ( '.' in filename and filename.rsplit('.', 1)[1] in ALLOWED_IMAGE_EXTENSIONS ) class ImagenetClassifier(object): default_args = { 'model_def_file': ( '{}/models/bvlc_reference_caffenet/deploy.prototxt'.format(REPO_DIRNAME)), 'pretrained_model_file': ( '{}/models/bvlc_reference_caffenet/bvlc_reference_caffenet.caffemodel'.format(REPO_DIRNAME)), 'mean_file': ( '{}/python/caffe/imagenet/ilsvrc_2012_mean.npy'.format(REPO_DIRNAME)), 'class_labels_file': ( '{}/data/ilsvrc12/synset_words.txt'.format(REPO_DIRNAME)), 'bet_file': ( '{}/data/ilsvrc12/imagenet.bet.pickle'.format(REPO_DIRNAME)), } for key, val in default_args.iteritems(): if not os.path.exists(val): raise Exception( "File for {} is missing. Should be at: {}".format(key, val)) default_args['image_dim'] = 256 default_args['raw_scale'] = 255. def __init__(self, model_def_file, pretrained_model_file, mean_file, raw_scale, class_labels_file, bet_file, image_dim, gpu_mode): logging.info('Loading net and associated files...') if gpu_mode: caffe.set_mode_gpu() else: caffe.set_mode_cpu() self.net = caffe.Classifier( model_def_file, pretrained_model_file, image_dims=(image_dim, image_dim), raw_scale=raw_scale, mean=np.load(mean_file).mean(1).mean(1), channel_swap=(2, 1, 0) ) with open(class_labels_file) as f: labels_df = pd.DataFrame([ { 'synset_id': l.strip().split(' ')[0], 'name': ' '.join(l.strip().split(' ')[1:]).split(',')[0] } for l in f.readlines() ]) self.labels = labels_df.sort('synset_id')['name'].values self.bet = cPickle.load(open(bet_file)) # A bias to prefer children nodes in single-chain paths # I am setting the value to 0.1 as a quick, simple model. # We could use better psychological models here... self.bet['infogain'] -= np.array(self.bet['preferences']) * 0.1 def classify_image(self, image): try: starttime = time.time() scores = self.net.predict([image], oversample=True).flatten() endtime = time.time() indices = (-scores).argsort()[:5] predictions = self.labels[indices] # In addition to the prediction text, we will also produce # the length for the progress bar visualization. meta = [ (p, '%.5f' % scores[i]) for i, p in zip(indices, predictions) ] logging.info('result: %s', str(meta)) # Compute expected information gain expected_infogain = np.dot( self.bet['probmat'], scores[self.bet['idmapping']]) expected_infogain *= self.bet['infogain'] # sort the scores infogain_sort = expected_infogain.argsort()[::-1] bet_result = [(self.bet['words'][v], '%.5f' % expected_infogain[v]) for v in infogain_sort[:5]] logging.info('bet result: %s', str(bet_result)) return (True, meta, bet_result, '%.3f' % (endtime - starttime)) except Exception as err: logging.info('Classification error: %s', err) return (False, 'Something went wrong when classifying the ' 'image. Maybe try another one?') def start_tornado(app, port=5000): http_server = tornado.httpserver.HTTPServer( tornado.wsgi.WSGIContainer(app)) http_server.listen(port) print("Tornado server starting on port {}".format(port)) tornado.ioloop.IOLoop.instance().start() def start_from_terminal(app): """ Parse command line options and start the server. """ parser = optparse.OptionParser() parser.add_option( '-d', '--debug', help="enable debug mode", action="store_true", default=False) parser.add_option( '-p', '--port', help="which port to serve content on", type='int', default=5000) parser.add_option( '-g', '--gpu', help="use gpu mode", action='store_true', default=False) opts, args = parser.parse_args() ImagenetClassifier.default_args.update({'gpu_mode': opts.gpu}) # Initialize classifier + warm start by forward for allocation app.clf = ImagenetClassifier(**ImagenetClassifier.default_args) app.clf.net.forward() if opts.debug: app.run(debug=True, host='0.0.0.0', port=opts.port) else: start_tornado(app, opts.port) if __name__ == '__main__': logging.getLogger().setLevel(logging.INFO) if not os.path.exists(UPLOAD_FOLDER): os.makedirs(UPLOAD_FOLDER) start_from_terminal(app)
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DRT-master/caffe/examples/web_demo/exifutil.py
""" This script handles the skimage exif problem. """ from PIL import Image import numpy as np ORIENTATIONS = { # used in apply_orientation 2: (Image.FLIP_LEFT_RIGHT,), 3: (Image.ROTATE_180,), 4: (Image.FLIP_TOP_BOTTOM,), 5: (Image.FLIP_LEFT_RIGHT, Image.ROTATE_90), 6: (Image.ROTATE_270,), 7: (Image.FLIP_LEFT_RIGHT, Image.ROTATE_270), 8: (Image.ROTATE_90,) } def open_oriented_im(im_path): im = Image.open(im_path) if hasattr(im, '_getexif'): exif = im._getexif() if exif is not None and 274 in exif: orientation = exif[274] im = apply_orientation(im, orientation) img = np.asarray(im).astype(np.float32) / 255. if img.ndim == 2: img = img[:, :, np.newaxis] img = np.tile(img, (1, 1, 3)) elif img.shape[2] == 4: img = img[:, :, :3] return img def apply_orientation(im, orientation): if orientation in ORIENTATIONS: for method in ORIENTATIONS[orientation]: im = im.transpose(method) return im
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DRT-master/caffe/examples/pycaffe/caffenet.py
from __future__ import print_function from caffe import layers as L, params as P, to_proto from caffe.proto import caffe_pb2 # helper function for common structures def conv_relu(bottom, ks, nout, stride=1, pad=0, group=1): conv = L.Convolution(bottom, kernel_size=ks, stride=stride, num_output=nout, pad=pad, group=group) return conv, L.ReLU(conv, in_place=True) def fc_relu(bottom, nout): fc = L.InnerProduct(bottom, num_output=nout) return fc, L.ReLU(fc, in_place=True) def max_pool(bottom, ks, stride=1): return L.Pooling(bottom, pool=P.Pooling.MAX, kernel_size=ks, stride=stride) def caffenet(lmdb, batch_size=256, include_acc=False): data, label = L.Data(source=lmdb, backend=P.Data.LMDB, batch_size=batch_size, ntop=2, transform_param=dict(crop_size=227, mean_value=[104, 117, 123], mirror=True)) # the net itself conv1, relu1 = conv_relu(data, 11, 96, stride=4) pool1 = max_pool(relu1, 3, stride=2) norm1 = L.LRN(pool1, local_size=5, alpha=1e-4, beta=0.75) conv2, relu2 = conv_relu(norm1, 5, 256, pad=2, group=2) pool2 = max_pool(relu2, 3, stride=2) norm2 = L.LRN(pool2, local_size=5, alpha=1e-4, beta=0.75) conv3, relu3 = conv_relu(norm2, 3, 384, pad=1) conv4, relu4 = conv_relu(relu3, 3, 384, pad=1, group=2) conv5, relu5 = conv_relu(relu4, 3, 256, pad=1, group=2) pool5 = max_pool(relu5, 3, stride=2) fc6, relu6 = fc_relu(pool5, 4096) drop6 = L.Dropout(relu6, in_place=True) fc7, relu7 = fc_relu(drop6, 4096) drop7 = L.Dropout(relu7, in_place=True) fc8 = L.InnerProduct(drop7, num_output=1000) loss = L.SoftmaxWithLoss(fc8, label) if include_acc: acc = L.Accuracy(fc8, label) return to_proto(loss, acc) else: return to_proto(loss) def make_net(): with open('train.prototxt', 'w') as f: print(caffenet('/path/to/caffe-train-lmdb'), file=f) with open('test.prototxt', 'w') as f: print(caffenet('/path/to/caffe-val-lmdb', batch_size=50, include_acc=True), file=f) if __name__ == '__main__': make_net()
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DRT-master/caffe/examples/pycaffe/layers/pyloss.py
import caffe import numpy as np class EuclideanLossLayer(caffe.Layer): """ Compute the Euclidean Loss in the same manner as the C++ EuclideanLossLayer to demonstrate the class interface for developing layers in Python. """ def setup(self, bottom, top): # check input pair if len(bottom) != 2: raise Exception("Need two inputs to compute distance.") def reshape(self, bottom, top): # check input dimensions match if bottom[0].count != bottom[1].count: raise Exception("Inputs must have the same dimension.") # difference is shape of inputs self.diff = np.zeros_like(bottom[0].data, dtype=np.float32) # loss output is scalar top[0].reshape(1) def forward(self, bottom, top): self.diff[...] = bottom[0].data - bottom[1].data top[0].data[...] = np.sum(self.diff**2) / bottom[0].num / 2. def backward(self, top, propagate_down, bottom): for i in range(2): if not propagate_down[i]: continue if i == 0: sign = 1 else: sign = -1 bottom[i].diff[...] = sign * self.diff / bottom[i].num
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DRT-master/caffe/examples/finetune_flickr_style/assemble_data.py
#!/usr/bin/env python """ Form a subset of the Flickr Style data, download images to dirname, and write Caffe ImagesDataLayer training file. """ import os import urllib import hashlib import argparse import numpy as np import pandas as pd from skimage import io import multiprocessing # Flickr returns a special image if the request is unavailable. MISSING_IMAGE_SHA1 = '6a92790b1c2a301c6e7ddef645dca1f53ea97ac2' example_dirname = os.path.abspath(os.path.dirname(__file__)) caffe_dirname = os.path.abspath(os.path.join(example_dirname, '../..')) training_dirname = os.path.join(caffe_dirname, 'data/flickr_style') def download_image(args_tuple): "For use with multiprocessing map. Returns filename on fail." try: url, filename = args_tuple if not os.path.exists(filename): urllib.urlretrieve(url, filename) with open(filename) as f: assert hashlib.sha1(f.read()).hexdigest() != MISSING_IMAGE_SHA1 test_read_image = io.imread(filename) return True except KeyboardInterrupt: raise Exception() # multiprocessing doesn't catch keyboard exceptions except: return False if __name__ == '__main__': parser = argparse.ArgumentParser( description='Download a subset of Flickr Style to a directory') parser.add_argument( '-s', '--seed', type=int, default=0, help="random seed") parser.add_argument( '-i', '--images', type=int, default=-1, help="number of images to use (-1 for all [default])", ) parser.add_argument( '-w', '--workers', type=int, default=-1, help="num workers used to download images. -x uses (all - x) cores [-1 default]." ) parser.add_argument( '-l', '--labels', type=int, default=0, help="if set to a positive value, only sample images from the first number of labels." ) args = parser.parse_args() np.random.seed(args.seed) # Read data, shuffle order, and subsample. csv_filename = os.path.join(example_dirname, 'flickr_style.csv.gz') df = pd.read_csv(csv_filename, index_col=0, compression='gzip') df = df.iloc[np.random.permutation(df.shape[0])] if args.labels > 0: df = df.loc[df['label'] < args.labels] if args.images > 0 and args.images < df.shape[0]: df = df.iloc[:args.images] # Make directory for images and get local filenames. if training_dirname is None: training_dirname = os.path.join(caffe_dirname, 'data/flickr_style') images_dirname = os.path.join(training_dirname, 'images') if not os.path.exists(images_dirname): os.makedirs(images_dirname) df['image_filename'] = [ os.path.join(images_dirname, _.split('/')[-1]) for _ in df['image_url'] ] # Download images. num_workers = args.workers if num_workers <= 0: num_workers = multiprocessing.cpu_count() + num_workers print('Downloading {} images with {} workers...'.format( df.shape[0], num_workers)) pool = multiprocessing.Pool(processes=num_workers) map_args = zip(df['image_url'], df['image_filename']) results = pool.map(download_image, map_args) # Only keep rows with valid images, and write out training file lists. df = df[results] for split in ['train', 'test']: split_df = df[df['_split'] == split] filename = os.path.join(training_dirname, '{}.txt'.format(split)) split_df[['image_filename', 'label']].to_csv( filename, sep=' ', header=None, index=None) print('Writing train/val for {} successfully downloaded images.'.format( df.shape[0]))
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DRT
DRT-master/caffe/examples/coco_caption/hdf5_sequence_generator.py
#!/usr/bin/env python import h5py import numpy as np import os import random import sys class SequenceGenerator(): def __init__(self): self.dimension = 10 self.batch_stream_length = 2000 self.batch_num_streams = 8 self.min_stream_length = 13 self.max_stream_length = 17 self.substream_names = None self.streams_initialized = False def streams_exhausted(self): return False def init_streams(self): self.streams = [None] * self.batch_num_streams self.stream_indices = [0] * self.batch_num_streams self.reset_stream(0) self.streams_initialized = True def reset_stream(self, stream_index): streams = self.get_streams() stream_names = sorted(streams.keys()) if self.substream_names is None: assert len(stream_names) > 0 self.substream_names = stream_names assert self.substream_names == stream_names if self.streams[stream_index] is None: self.streams[stream_index] = {} stream_length = len(streams[stream_names[0]]) for k, v in streams.iteritems(): assert stream_length == len(v) self.streams[stream_index][k] = v self.stream_indices[stream_index] = 0 # Pad with zeroes by default -- override this to pad with soemthing else # for a particular stream def get_pad_value(self, stream_name): return 0 def get_next_batch(self, truncate_at_exhaustion=True): if not self.streams_initialized: self.init_streams() batch_size = self.batch_num_streams * self.batch_stream_length batch = {} batch_indicators = np.zeros((self.batch_stream_length, self.batch_num_streams)) for name in self.substream_names: batch[name] = self.get_pad_value(name) * np.ones_like(batch_indicators) exhausted = [False] * self.batch_num_streams all_exhausted = False reached_exhaustion = False num_completed_streams = 0 for t in range(self.batch_stream_length): all_exhausted = True for i in range(self.batch_num_streams): if not exhausted[i]: if self.streams[i] is None or \ self.stream_indices[i] == len(self.streams[i][self.substream_names[0]]): self.stream_indices[i] = 0 reached_exhaustion = reached_exhaustion or self.streams_exhausted() if reached_exhaustion: exhausted[i] = True if not reached_exhaustion or not truncate_at_exhaustion: self.reset_stream(i) else: continue for name in self.substream_names: batch[name][t, i] = self.streams[i][name][self.stream_indices[i]] batch_indicators[t, i] = 0 if self.stream_indices[i] == 0 else 1 self.stream_indices[i] += 1 if self.stream_indices[i] == len(self.streams[i][self.substream_names[0]]): num_completed_streams += 1 if not exhausted[i]: all_exhausted = False if all_exhausted and truncate_at_exhaustion: print ('Exhausted all data; cutting off batch at timestep %d ' + 'with %d streams completed') % (t, num_completed_streams) for name in self.substream_names: batch[name] = batch[name][:t, :] batch_indicators = batch_indicators[:t, :] break return batch, batch_indicators def get_streams(self): raise Exception('get_streams should be overridden to return a dict ' + 'of equal-length iterables.') class HDF5SequenceWriter(): def __init__(self, sequence_generator, output_dir=None, verbose=False): self.generator = sequence_generator assert output_dir is not None # required self.output_dir = output_dir if os.path.exists(output_dir): raise Exception('Output directory already exists: ' + output_dir) os.makedirs(output_dir) self.verbose = verbose self.filenames = [] def write_batch(self, stop_at_exhaustion=False): batch_comps, cont_indicators = self.generator.get_next_batch() batch_index = len(self.filenames) filename = '%s/batch_%d.h5' % (self.output_dir, batch_index) self.filenames.append(filename) h5file = h5py.File(filename, 'w') dataset = h5file.create_dataset('cont', shape=cont_indicators.shape, dtype=cont_indicators.dtype) dataset[:] = cont_indicators dataset = h5file.create_dataset('buffer_size', shape=(1,), dtype=np.int) dataset[:] = self.generator.batch_num_streams for key, batch in batch_comps.iteritems(): if self.verbose: for s in range(self.generator.batch_num_streams): stream = np.array(self.generator.streams[s][key]) print 'batch %d, stream %s, index %d: ' % (batch_index, key, s), stream h5dataset = h5file.create_dataset(key, shape=batch.shape, dtype=batch.dtype) h5dataset[:] = batch h5file.close() def write_to_exhaustion(self): while not self.generator.streams_exhausted(): self.write_batch(stop_at_exhaustion=True) def write_filelists(self): assert self.filenames is not None filelist_filename = '%s/hdf5_chunk_list.txt' % self.output_dir with open(filelist_filename, 'w') as listfile: for filename in self.filenames: listfile.write('%s\n' % filename)
5,170
37.879699
101
py
DRT
DRT-master/caffe/examples/coco_caption/captioner.py
#!/usr/bin/env python from collections import OrderedDict import h5py import math import matplotlib.pyplot as plt import numpy as np import os import random import sys sys.path.append('./python/') import caffe class Captioner(): def __init__(self, weights_path, image_net_proto, lstm_net_proto, vocab_path, device_id=-1): if device_id >= 0: caffe.set_mode_gpu() caffe.set_device(device_id) else: caffe.set_mode_cpu() # Setup image processing net. phase = caffe.TEST self.image_net = caffe.Net(image_net_proto, weights_path, phase) image_data_shape = self.image_net.blobs['data'].data.shape self.transformer = caffe.io.Transformer({'data': image_data_shape}) channel_mean = np.zeros(image_data_shape[1:]) channel_mean_values = [104, 117, 123] assert channel_mean.shape[0] == len(channel_mean_values) for channel_index, mean_val in enumerate(channel_mean_values): channel_mean[channel_index, ...] = mean_val self.transformer.set_mean('data', channel_mean) self.transformer.set_channel_swap('data', (2, 1, 0)) self.transformer.set_transpose('data', (2, 0, 1)) # Setup sentence prediction net. self.lstm_net = caffe.Net(lstm_net_proto, weights_path, phase) self.vocab = ['<EOS>'] with open(vocab_path, 'r') as vocab_file: self.vocab += [word.strip() for word in vocab_file.readlines()] net_vocab_size = self.lstm_net.blobs['predict'].data.shape[2] if len(self.vocab) != net_vocab_size: raise Exception('Invalid vocab file: contains %d words; ' 'net expects vocab with %d words' % (len(self.vocab), net_vocab_size)) def set_image_batch_size(self, batch_size): self.image_net.blobs['data'].reshape(batch_size, *self.image_net.blobs['data'].data.shape[1:]) def caption_batch_size(self): return self.lstm_net.blobs['cont_sentence'].data.shape[1] def set_caption_batch_size(self, batch_size): self.lstm_net.blobs['cont_sentence'].reshape(1, batch_size) self.lstm_net.blobs['input_sentence'].reshape(1, batch_size) self.lstm_net.blobs['image_features'].reshape(batch_size, *self.lstm_net.blobs['image_features'].data.shape[1:]) self.lstm_net.reshape() def preprocess_image(self, image, verbose=False): if type(image) in (str, unicode): image = plt.imread(image) crop_edge_ratio = (256. - 227.) / 256. / 2 ch = int(image.shape[0] * crop_edge_ratio + 0.5) cw = int(image.shape[1] * crop_edge_ratio + 0.5) cropped_image = image[ch:-ch, cw:-cw] if len(cropped_image.shape) == 2: cropped_image = np.tile(cropped_image[:, :, np.newaxis], (1, 1, 3)) preprocessed_image = self.transformer.preprocess('data', cropped_image) if verbose: print 'Preprocessed image has shape %s, range (%f, %f)' % \ (preprocessed_image.shape, preprocessed_image.min(), preprocessed_image.max()) return preprocessed_image def preprocessed_image_to_descriptor(self, image, output_name='fc8'): net = self.image_net if net.blobs['data'].data.shape[0] > 1: batch = np.zeros_like(net.blobs['data'].data) batch[0] = image[0] else: batch = image net.forward(data=batch) descriptor = net.blobs[output_name].data[0].copy() return descriptor def image_to_descriptor(self, image, output_name='fc8'): return self.preprocessed_image_to_descriptor(self.preprocess_image(image)) def predict_single_word(self, descriptor, previous_word, output='probs'): net = self.lstm_net cont = 0 if previous_word == 0 else 1 cont_input = np.array([cont]) word_input = np.array([previous_word]) image_features = np.zeros_like(net.blobs['image_features'].data) image_features[:] = descriptor net.forward(image_features=image_features, cont_sentence=cont_input, input_sentence=word_input) output_preds = net.blobs[output].data[0, 0, :] return output_preds def predict_single_word_from_all_previous(self, descriptor, previous_words): for word in [0] + previous_words: probs = self.predict_single_word(descriptor, word) return probs # Strategy must be either 'beam' or 'sample'. # If 'beam', do a max likelihood beam search with beam size num_samples. # Otherwise, sample with temperature temp. def predict_caption(self, descriptor, strategy={'type': 'beam'}): assert 'type' in strategy assert strategy['type'] in ('beam', 'sample') if strategy['type'] == 'beam': return self.predict_caption_beam_search(descriptor, strategy) num_samples = strategy['num'] if 'num' in strategy else 1 samples = [] sample_probs = [] for _ in range(num_samples): sample, sample_prob = self.sample_caption(descriptor, strategy) samples.append(sample) sample_probs.append(sample_prob) return samples, sample_probs def sample_caption(self, descriptor, strategy, net_output='predict', max_length=50): sentence = [] probs = [] eps_prob = 1e-8 temp = strategy['temp'] if 'temp' in strategy else 1.0 if max_length < 0: max_length = float('inf') while len(sentence) < max_length and (not sentence or sentence[-1] != 0): previous_word = sentence[-1] if sentence else 0 softmax_inputs = self.predict_single_word(descriptor, previous_word, output=net_output) word = random_choice_from_probs(softmax_inputs, temp) sentence.append(word) probs.append(softmax(softmax_inputs, 1.0)[word]) return sentence, probs def predict_caption_beam_search(self, descriptor, strategy, max_length=50): orig_batch_size = self.caption_batch_size() if orig_batch_size != 1: self.set_caption_batch_size(1) beam_size = strategy['beam_size'] if 'beam_size' in strategy else 1 assert beam_size >= 1 beams = [[]] beams_complete = 0 beam_probs = [[]] beam_log_probs = [0.] while beams_complete < len(beams): expansions = [] for beam_index, beam_log_prob, beam in \ zip(range(len(beams)), beam_log_probs, beams): if beam: previous_word = beam[-1] if len(beam) >= max_length or previous_word == 0: exp = {'prefix_beam_index': beam_index, 'extension': [], 'prob_extension': [], 'log_prob': beam_log_prob} expansions.append(exp) # Don't expand this beam; it was already ended with an EOS, # or is the max length. continue else: previous_word = 0 # EOS is first word if beam_size == 1: probs = self.predict_single_word(descriptor, previous_word) else: probs = self.predict_single_word_from_all_previous(descriptor, beam) assert len(probs.shape) == 1 assert probs.shape[0] == len(self.vocab) expansion_inds = probs.argsort()[-beam_size:] for ind in expansion_inds: prob = probs[ind] extended_beam_log_prob = beam_log_prob + math.log(prob) exp = {'prefix_beam_index': beam_index, 'extension': [ind], 'prob_extension': [prob], 'log_prob': extended_beam_log_prob} expansions.append(exp) # Sort expansions in decreasing order of probability. expansions.sort(key=lambda expansion: -1 * expansion['log_prob']) expansions = expansions[:beam_size] new_beams = \ [beams[e['prefix_beam_index']] + e['extension'] for e in expansions] new_beam_probs = \ [beam_probs[e['prefix_beam_index']] + e['prob_extension'] for e in expansions] beam_log_probs = [e['log_prob'] for e in expansions] beams_complete = 0 for beam in new_beams: if beam[-1] == 0 or len(beam) >= max_length: beams_complete += 1 beams, beam_probs = new_beams, new_beam_probs if orig_batch_size != 1: self.set_caption_batch_size(orig_batch_size) return beams, beam_probs def score_caption(self, descriptor, caption, is_gt=True, caption_source='gt'): output = {} output['caption'] = caption output['gt'] = is_gt output['source'] = caption_source output['prob'] = [] probs = self.predict_single_word(descriptor, 0) for word in caption: output['prob'].append(probs[word]) probs = self.predict_single_word(descriptor, word) return output def compute_descriptors(self, image_list, output_name='fc8'): batch = np.zeros_like(self.image_net.blobs['data'].data) batch_shape = batch.shape batch_size = batch_shape[0] descriptors_shape = (len(image_list), ) + \ self.image_net.blobs[output_name].data.shape[1:] descriptors = np.zeros(descriptors_shape) for batch_start_index in range(0, len(image_list), batch_size): batch_list = image_list[batch_start_index:(batch_start_index + batch_size)] for batch_index, image_path in enumerate(batch_list): batch[batch_index:(batch_index + 1)] = self.preprocess_image(image_path) current_batch_size = min(batch_size, len(image_list) - batch_start_index) print 'Computing descriptors for images %d-%d of %d' % \ (batch_start_index, batch_start_index + current_batch_size - 1, len(image_list)) self.image_net.forward(data=batch) descriptors[batch_start_index:(batch_start_index + current_batch_size)] = \ self.image_net.blobs[output_name].data[:current_batch_size] return descriptors def score_captions(self, descriptor, captions, output_name='probs', caption_source='gt', verbose=True): net = self.lstm_net cont_input = np.zeros_like(net.blobs['cont_sentence'].data) word_input = np.zeros_like(net.blobs['input_sentence'].data) image_features = np.zeros_like(net.blobs['image_features'].data) batch_size = image_features.shape[0] assert descriptor.shape == image_features.shape[1:] for index in range(batch_size): image_features[index] = descriptor outputs = [] input_data_initialized = False for batch_start_index in range(0, len(captions), batch_size): caption_batch = captions[batch_start_index:(batch_start_index + batch_size)] current_batch_size = len(caption_batch) caption_index = 0 probs_batch = [[] for b in range(current_batch_size)] num_done = 0 while num_done < current_batch_size: if caption_index == 0: cont_input[:] = 0 elif caption_index == 1: cont_input[:] = 1 for index, caption in enumerate(caption_batch): word_input[0, index] = \ caption['caption'][caption_index - 1] if \ 0 < caption_index < len(caption['caption']) else 0 if input_data_initialized: net.forward(start="embedding", input_sentence=word_input, cont_sentence=cont_input, image_features=image_features) else: net.forward(input_sentence=word_input, cont_sentence=cont_input, image_features=image_features) input_data_initialized = True output_probs = net.blobs[output_name].data for index, probs, caption in \ zip(range(current_batch_size), probs_batch, caption_batch): if caption_index == len(caption['caption']) - 1: num_done += 1 if caption_index < len(caption['caption']): word = caption['caption'][caption_index] probs.append(output_probs[0, index, word].reshape(-1)[0]) if verbose: print 'Computed probs for word %d of captions %d-%d (%d done)' % \ (caption_index, batch_start_index, batch_start_index + current_batch_size - 1, num_done) caption_index += 1 for prob, caption in zip(probs_batch, caption_batch): output = {} output['caption'] = caption['caption'] output['prob'] = prob output['gt'] = True output['source'] = caption_source outputs.append(output) return outputs def sample_captions(self, descriptor, prob_output_name='probs', pred_output_name='predict', temp=1, max_length=50): descriptor = np.array(descriptor) batch_size = descriptor.shape[0] self.set_caption_batch_size(batch_size) net = self.lstm_net cont_input = np.zeros_like(net.blobs['cont_sentence'].data) word_input = np.zeros_like(net.blobs['input_sentence'].data) image_features = np.zeros_like(net.blobs['image_features'].data) image_features[:] = descriptor outputs = [] output_captions = [[] for b in range(batch_size)] output_probs = [[] for b in range(batch_size)] caption_index = 0 num_done = 0 while num_done < batch_size and caption_index < max_length: if caption_index == 0: cont_input[:] = 0 elif caption_index == 1: cont_input[:] = 1 if caption_index == 0: word_input[:] = 0 else: for index in range(batch_size): word_input[0, index] = \ output_captions[index][caption_index - 1] if \ caption_index <= len(output_captions[index]) else 0 net.forward(image_features=image_features, cont_sentence=cont_input, input_sentence=word_input) if temp == 1.0 or temp == float('inf'): net_output_probs = net.blobs[prob_output_name].data[0] samples = [ random_choice_from_probs(dist, temp=temp, already_softmaxed=True) for dist in net_output_probs ] else: net_output_preds = net.blobs[pred_output_name].data[0] samples = [ random_choice_from_probs(preds, temp=temp, already_softmaxed=False) for preds in net_output_preds ] for index, next_word_sample in enumerate(samples): # If the caption is empty, or non-empty but the last word isn't EOS, # predict another word. if not output_captions[index] or output_captions[index][-1] != 0: output_captions[index].append(next_word_sample) output_probs[index].append(net_output_probs[index, next_word_sample]) if next_word_sample == 0: num_done += 1 sys.stdout.write('\r%d/%d done after word %d' % (num_done, batch_size, caption_index)) sys.stdout.flush() caption_index += 1 sys.stdout.write('\n') return output_captions, output_probs def sentence(self, vocab_indices): sentence = ' '.join([self.vocab[i] for i in vocab_indices]) if not sentence: return sentence sentence = sentence[0].upper() + sentence[1:] # If sentence ends with ' <EOS>', remove and replace with '.' # Otherwise (doesn't end with '<EOS>' -- maybe was the max length?): # append '...' suffix = ' ' + self.vocab[0] if sentence.endswith(suffix): sentence = sentence[:-len(suffix)] + '.' else: sentence += '...' return sentence def softmax(softmax_inputs, temp): shifted_inputs = softmax_inputs - softmax_inputs.max() exp_outputs = np.exp(temp * shifted_inputs) exp_outputs_sum = exp_outputs.sum() if math.isnan(exp_outputs_sum): return exp_outputs * float('nan') assert exp_outputs_sum > 0 if math.isinf(exp_outputs_sum): return np.zeros_like(exp_outputs) eps_sum = 1e-20 return exp_outputs / max(exp_outputs_sum, eps_sum) def random_choice_from_probs(softmax_inputs, temp=1, already_softmaxed=False): # temperature of infinity == take the max if temp == float('inf'): return np.argmax(softmax_inputs) if already_softmaxed: probs = softmax_inputs assert temp == 1 else: probs = softmax(softmax_inputs, temp) r = random.random() cum_sum = 0. for i, p in enumerate(probs): cum_sum += p if cum_sum >= r: return i return 1 # return UNK? def gen_stats(prob, normalizer=None): stats = {} stats['length'] = len(prob) stats['log_p'] = 0.0 eps = 1e-12 for p in prob: assert 0.0 <= p <= 1.0 stats['log_p'] += math.log(max(eps, p)) stats['log_p_word'] = stats['log_p'] / stats['length'] stats['p'] = math.exp(stats['log_p']) stats['p_word'] = math.exp(stats['log_p']) try: stats['perplex'] = math.exp(-stats['log_p']) except OverflowError: stats['perplex'] = float('inf') try: stats['perplex_word'] = math.exp(-stats['log_p_word']) except OverflowError: stats['perplex_word'] = float('inf') if normalizer is not None: norm_stats = gen_stats(normalizer) stats['normed_perplex'] = stats['perplex'] / norm_stats['perplex'] stats['normed_perplex_word'] = \ stats['perplex_word'] / norm_stats['perplex_word'] return stats
16,658
40.337469
88
py
DRT
DRT-master/caffe/examples/coco_caption/coco_to_hdf5_data.py
#!/usr/bin/env python from hashlib import sha1 import os import random random.seed(3) import re import sys sys.path.append('./examples/coco_caption/') COCO_PATH = './data/coco/coco' COCO_TOOL_PATH = '%s/PythonAPI/build/lib/pycocotools' % COCO_PATH COCO_IMAGE_ROOT = '%s/images' % COCO_PATH MAX_HASH = 100000 sys.path.append(COCO_TOOL_PATH) from coco import COCO from hdf5_sequence_generator import SequenceGenerator, HDF5SequenceWriter # UNK_IDENTIFIER is the word used to identify unknown words UNK_IDENTIFIER = '<unk>' SENTENCE_SPLIT_REGEX = re.compile(r'(\W+)') def split_sentence(sentence): # break sentence into a list of words and punctuation sentence = [s.lower() for s in SENTENCE_SPLIT_REGEX.split(sentence.strip()) if len(s.strip()) > 0] # remove the '.' from the end of the sentence if sentence[-1] != '.': # print "Warning: sentence doesn't end with '.'; ends with: %s" % sentence[-1] return sentence return sentence[:-1] MAX_WORDS = 20 class CocoSequenceGenerator(SequenceGenerator): def __init__(self, coco, batch_num_streams, image_root, vocab=None, max_words=MAX_WORDS, align=True, shuffle=True, gt_captions=True, pad=True, truncate=True, split_ids=None): self.max_words = max_words num_empty_lines = 0 self.images = [] num_total = 0 num_missing = 0 num_captions = 0 known_images = {} self.coco = coco if split_ids is None: split_ids = coco.imgs.keys() self.image_path_to_id = {} for image_id in split_ids: image_info = coco.imgs[image_id] image_path = '%s/%s' % (image_root, image_info['file_name']) self.image_path_to_id[image_path] = image_id if os.path.isfile(image_path): assert image_id not in known_images # no duplicates allowed known_images[image_id] = {} known_images[image_id]['path'] = image_path if gt_captions: known_images[image_id]['sentences'] = [split_sentence(anno['caption']) for anno in coco.imgToAnns[image_id]] num_captions += len(known_images[image_id]['sentences']) else: known_images[image_id]['sentences'] = [] else: num_missing += 1 print 'Warning (#%d): image not found: %s' % (num_missing, image_path) num_total += 1 print '%d/%d images missing' % (num_missing, num_total) if vocab is None: self.init_vocabulary(known_images) else: self.vocabulary_inverted = vocab self.vocabulary = {} for index, word in enumerate(self.vocabulary_inverted): self.vocabulary[word] = index self.image_sentence_pairs = [] num_no_sentences = 0 for image_filename, metadata in known_images.iteritems(): if not metadata['sentences']: num_no_sentences += 1 print 'Warning (#%d): image with no sentences: %s' % (num_no_sentences, image_filename) for sentence in metadata['sentences']: self.image_sentence_pairs.append((metadata['path'], sentence)) self.index = 0 self.num_resets = 0 self.num_truncates = 0 self.num_pads = 0 self.num_outs = 0 self.image_list = [] SequenceGenerator.__init__(self) self.batch_num_streams = batch_num_streams # make the number of image/sentence pairs a multiple of the buffer size # so each timestep of each batch is useful and we can align the images if align: num_pairs = len(self.image_sentence_pairs) remainder = num_pairs % batch_num_streams if remainder > 0: num_needed = batch_num_streams - remainder for i in range(num_needed): choice = random.randint(0, num_pairs - 1) self.image_sentence_pairs.append(self.image_sentence_pairs[choice]) assert len(self.image_sentence_pairs) % batch_num_streams == 0 if shuffle: random.shuffle(self.image_sentence_pairs) self.pad = pad self.truncate = truncate self.negative_one_padded_streams = frozenset(('input_sentence', 'target_sentence')) def streams_exhausted(self): return self.num_resets > 0 def init_vocabulary(self, image_annotations, min_count=5): words_to_count = {} for image_id, annotations in image_annotations.iteritems(): for annotation in annotations['sentences']: for word in annotation: word = word.strip() if word not in words_to_count: words_to_count[word] = 0 words_to_count[word] += 1 # Sort words by count, then alphabetically words_by_count = sorted(words_to_count.keys(), key=lambda w: (-words_to_count[w], w)) print 'Initialized vocabulary with %d words; top 10 words:' % len(words_by_count) for word in words_by_count[:10]: print '\t%s (%d)' % (word, words_to_count[word]) # Add words to vocabulary self.vocabulary = {UNK_IDENTIFIER: 0} self.vocabulary_inverted = [UNK_IDENTIFIER] for index, word in enumerate(words_by_count): word = word.strip() if words_to_count[word] < min_count: break self.vocabulary_inverted.append(word) self.vocabulary[word] = index + 1 print 'Final vocabulary (restricted to words with counts of %d+) has %d words' % \ (min_count, len(self.vocabulary)) def dump_vocabulary(self, vocab_filename): print 'Dumping vocabulary to file: %s' % vocab_filename with open(vocab_filename, 'wb') as vocab_file: for word in self.vocabulary_inverted: vocab_file.write('%s\n' % word) print 'Done.' def dump_image_file(self, image_filename, dummy_image_filename=None): print 'Dumping image list to file: %s' % image_filename with open(image_filename, 'wb') as image_file: for image_path, _ in self.image_list: image_file.write('%s\n' % image_path) if dummy_image_filename is not None: print 'Dumping image list with dummy labels to file: %s' % dummy_image_filename with open(dummy_image_filename, 'wb') as image_file: for path_and_hash in self.image_list: image_file.write('%s %d\n' % path_and_hash) print 'Done.' def next_line(self): num_lines = float(len(self.image_sentence_pairs)) self.index += 1 if self.index == 1 or self.index == num_lines or self.index % 10000 == 0: print 'Processed %d/%d (%f%%) lines' % (self.index, num_lines, 100 * self.index / num_lines) if self.index == num_lines: self.index = 0 self.num_resets += 1 def line_to_stream(self, sentence): stream = [] for word in sentence: word = word.strip() if word in self.vocabulary: stream.append(self.vocabulary[word]) else: # unknown word; append UNK stream.append(self.vocabulary[UNK_IDENTIFIER]) # increment the stream -- 0 will be the EOS character stream = [s + 1 for s in stream] return stream def get_pad_value(self, stream_name): return -1 if stream_name in self.negative_one_padded_streams else 0 def get_streams(self): image_filename, line = self.image_sentence_pairs[self.index] stream = self.line_to_stream(line) pad = self.max_words - (len(stream) + 1) if self.pad else 0 if pad > 0: self.num_pads += 1 self.num_outs += 1 out = {} out['stage_indicators'] = [1] * (len(stream) + 1) + [0] * pad out['cont_sentence'] = [0] + [1] * len(stream) + [0] * pad out['input_sentence'] = [0] + stream + [-1] * pad out['target_sentence'] = stream + [0] + [-1] * pad truncated = False if self.truncate: for key, val in out.iteritems(): if len(val) > self.max_words: out[key] = val[:self.max_words] truncated = True self.num_truncates += truncated image_hash = self.image_hash(image_filename) out['hashed_image_path'] = [image_hash] * len(out['input_sentence']) self.image_list.append((image_filename, image_hash)) self.next_line() return out def image_hash(self, filename): image_hash = int(sha1(filename).hexdigest(), 16) % MAX_HASH assert image_hash == float(image_hash) return image_hash COCO_ANNO_PATH = '%s/annotations/captions_%%s2014.json' % COCO_PATH COCO_IMAGE_PATTERN = '%s/images/%%s2014' % COCO_PATH COCO_IMAGE_ID_PATTERN = 'COCO_%s2014_%%012d.jpg' BUFFER_SIZE = 100 OUTPUT_DIR = './examples/coco_caption/h5_data/buffer_%d' % BUFFER_SIZE SPLITS_PATTERN = './data/coco/coco2014_cocoid.%s.txt' OUTPUT_DIR_PATTERN = '%s/%%s_batches' % OUTPUT_DIR def process_dataset(split_name, coco_split_name, batch_stream_length, vocab=None, aligned=True): with open(SPLITS_PATTERN % split_name, 'r') as split_file: split_image_ids = [int(line) for line in split_file.readlines()] output_dataset_name = split_name if aligned: output_dataset_name += '_aligned_%d' % MAX_WORDS else: output_dataset_name += '_unaligned' output_path = OUTPUT_DIR_PATTERN % output_dataset_name coco = COCO(COCO_ANNO_PATH % coco_split_name) image_root = COCO_IMAGE_PATTERN % coco_split_name sg = CocoSequenceGenerator(coco, BUFFER_SIZE, image_root, split_ids=split_image_ids, vocab=vocab, align=aligned, pad=aligned, truncate=aligned) sg.batch_stream_length = batch_stream_length writer = HDF5SequenceWriter(sg, output_dir=output_path) writer.write_to_exhaustion() writer.write_filelists() if vocab is None: vocab_out_path = '%s/vocabulary.txt' % OUTPUT_DIR sg.dump_vocabulary(vocab_out_path) image_out_path = '%s/image_list.txt' % output_path image_dummy_labels_out_path = '%s/image_list.with_dummy_labels.txt' % output_path sg.dump_image_file(image_out_path, image_dummy_labels_out_path) num_outs = sg.num_outs num_pads = sg.num_pads num_truncates = sg.num_truncates print 'Padded %d/%d sequences; truncated %d/%d sequences' % \ (num_pads, num_outs, num_truncates, num_outs) return sg.vocabulary_inverted def process_coco(include_trainval=False): vocab = None datasets = [ ('train', 'train', 100000, True), ('val', 'val', 100000, True), ('test', 'val', 100000, True), # Write unaligned datasets as well: ('train', 'train', 100000, False), ('val', 'val', 100000, False), ('test', 'val', 100000, False), ] # Also create a 'trainval' set if include_trainval is set. # ./data/coco/make_trainval.py must have been run for this to work. if include_trainval: datasets += [ ('trainval', 'trainval', 100000, True), ('trainval', 'trainval', 100000, False), ] for split_name, coco_split_name, batch_stream_length, aligned in datasets: vocab = process_dataset(split_name, coco_split_name, batch_stream_length, vocab=vocab, aligned=aligned) if __name__ == "__main__": process_coco(include_trainval=False)
10,769
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DRT
DRT-master/caffe/examples/coco_caption/retrieval_experiment.py
#!/usr/bin/env python from collections import OrderedDict import json import numpy as np import pprint import cPickle as pickle import string import sys # seed the RNG so we evaluate on the same subset each time np.random.seed(seed=0) from coco_to_hdf5_data import * from captioner import Captioner COCO_EVAL_PATH = './data/coco/coco-caption-eval' sys.path.append(COCO_EVAL_PATH) from pycocoevalcap.eval import COCOEvalCap class CaptionExperiment(): # captioner is an initialized Captioner (captioner.py) # dataset is a dict: image path -> [caption1, caption2, ...] def __init__(self, captioner, dataset, dataset_cache_dir, cache_dir, sg): self.captioner = captioner self.sg = sg self.dataset_cache_dir = dataset_cache_dir self.cache_dir = cache_dir for d in [dataset_cache_dir, cache_dir]: if not os.path.exists(d): os.makedirs(d) self.dataset = dataset self.images = dataset.keys() self.init_caption_list(dataset) self.caption_scores = [None] * len(self.images) print 'Initialized caption experiment: %d images, %d captions' % \ (len(self.images), len(self.captions)) def init_caption_list(self, dataset): self.captions = [] for image, captions in dataset.iteritems(): for caption, _ in captions: self.captions.append({'source_image': image, 'caption': caption}) # Sort by length for performance. self.captions.sort(key=lambda c: len(c['caption'])) def compute_descriptors(self): descriptor_filename = '%s/descriptors.npz' % self.dataset_cache_dir if os.path.exists(descriptor_filename): self.descriptors = np.load(descriptor_filename)['descriptors'] else: self.descriptors = self.captioner.compute_descriptors(self.images) np.savez_compressed(descriptor_filename, descriptors=self.descriptors) def score_captions(self, image_index, output_name='probs'): assert image_index < len(self.images) caption_scores_dir = '%s/caption_scores' % self.cache_dir if not os.path.exists(caption_scores_dir): os.makedirs(caption_scores_dir) caption_scores_filename = '%s/scores_image_%06d.pkl' % \ (caption_scores_dir, image_index) if os.path.exists(caption_scores_filename): with open(caption_scores_filename, 'rb') as caption_scores_file: outputs = pickle.load(caption_scores_file) else: outputs = self.captioner.score_captions(self.descriptors[image_index], self.captions, output_name=output_name, caption_source='gt', verbose=False) self.caption_stats(image_index, outputs) with open(caption_scores_filename, 'wb') as caption_scores_file: pickle.dump(outputs, caption_scores_file) self.caption_scores[image_index] = outputs def caption_stats(self, image_index, caption_scores): image_path = self.images[image_index] for caption, score in zip(self.captions, caption_scores): assert caption['caption'] == score['caption'] score['stats'] = gen_stats(score['prob']) score['correct'] = (image_path == caption['source_image']) def eval_image_to_caption(self, image_index, methods=None): scores = self.caption_scores[image_index] return self.eval_recall(scores, methods=methods) def eval_caption_to_image(self, caption_index, methods=None): scores = [s[caption_index] for s in self.caption_scores] return self.eval_recall(scores, methods=methods) def normalize_caption_scores(self, caption_index, stats=['log_p', 'log_p_word']): scores = [s[caption_index] for s in self.caption_scores] for stat in stats: log_stat_scores = np.array([score['stats'][stat] for score in scores]) stat_scores = np.exp(log_stat_scores) mean_stat_score = np.mean(stat_scores) log_mean_stat_score = np.log(mean_stat_score) for log_stat_score, score in zip(log_stat_scores, scores): score['stats']['normalized_' + stat] = log_stat_score - log_mean_stat_score def eval_recall(self, scores, methods=None, neg_prefix='negative_'): if methods is None: # rank on all stats, and all their inverses methods = scores[0]['stats'].keys() methods += [neg_prefix + method for method in methods] correct_ranks = {} for method in methods: if method.startswith(neg_prefix): multiplier = -1 method_key = method[len(neg_prefix):] else: multiplier = 1 method_key = method sort_key = lambda s: multiplier * s['stats'][method_key] ranked_scores = sorted(scores, key=sort_key) for index, score in enumerate(ranked_scores): if score['correct']: correct_ranks[method] = index break return correct_ranks def recall_results(self, correct_ranks, recall_ranks=[]): num_instances = float(len(correct_ranks)) assert num_instances > 0 methods = correct_ranks[0].keys() results = {} for method in methods: method_correct_ranks = \ np.array([correct_rank[method] for correct_rank in correct_ranks]) r = OrderedDict() r['mean'] = np.mean(method_correct_ranks) r['median'] = np.median(method_correct_ranks) r['mean (1-indexed)'] = r['mean'] + 1 r['median (1-indexed)'] = r['median'] + 1 for recall_rank in recall_ranks: r['R@%d' % recall_rank] = \ np.where(method_correct_ranks < recall_rank)[0].shape[0] / num_instances results[method] = r return results def print_recall_results(self, results): for method, result in results.iteritems(): print 'Ranking method:', method for metric_name_and_value in result.iteritems(): print ' %s: %f' % metric_name_and_value def retrieval_experiment(self): # Compute image descriptors. print 'Computing image descriptors' self.compute_descriptors() num_images, num_captions = len(self.images), len(self.captions) # For each image, score all captions. for image_index in xrange(num_images): sys.stdout.write("\rScoring captions for image %d/%d" % (image_index, num_images)) sys.stdout.flush() self.score_captions(image_index) sys.stdout.write('\n') # Compute global caption statistics for normalization. for caption_index in xrange(num_captions): self.normalize_caption_scores(caption_index) recall_ranks = [1, 5, 10, 50] eval_methods = ['negative_normalized_log_p'] # Evaluate caption-to-image retrieval task. self.caption_to_image_ranks = [None] * num_captions for caption_index in xrange(num_captions): sys.stdout.write("\rCaption-to-image evaluation: " "computing recall for caption %d/%d" % (caption_index, num_captions)) sys.stdout.flush() self.caption_to_image_ranks[caption_index] = \ self.eval_caption_to_image(caption_index, methods=eval_methods) sys.stdout.write('\n') self.caption_to_image_recall = \ self.recall_results(self.caption_to_image_ranks, recall_ranks) print 'Caption-to-image retrieval results:' self.print_recall_results(self.caption_to_image_recall) # Evaluate image-to-caption retrieval task. self.image_to_caption_ranks = [None] * num_images for image_index in xrange(num_images): sys.stdout.write("\rImage-to-caption evaluation: " "computing recall for image %d/%d" % (image_index, num_images)) sys.stdout.flush() self.image_to_caption_ranks[image_index] = \ self.eval_image_to_caption(image_index, methods=eval_methods) sys.stdout.write('\n') self.image_to_caption_recall = \ self.recall_results(self.image_to_caption_ranks, recall_ranks) print 'Image-to-caption retrieval results:' self.print_recall_results(self.image_to_caption_recall) def generation_experiment(self, strategy, max_batch_size=1000): # Compute image descriptors. print 'Computing image descriptors' self.compute_descriptors() do_batches = (strategy['type'] == 'beam' and strategy['beam_size'] == 1) or \ (strategy['type'] == 'sample' and ('temp' not in strategy or strategy['temp'] in (1, float('inf'))) and ('num' not in strategy or strategy['num'] == 1)) num_images = len(self.images) batch_size = min(max_batch_size, num_images) if do_batches else 1 # Generate captions for all images. all_captions = [None] * num_images for image_index in xrange(0, num_images, batch_size): batch_end_index = min(image_index + batch_size, num_images) sys.stdout.write("\rGenerating captions for image %d/%d" % (image_index, num_images)) sys.stdout.flush() if do_batches: if strategy['type'] == 'beam' or \ ('temp' in strategy and strategy['temp'] == float('inf')): temp = float('inf') else: temp = strategy['temp'] if 'temp' in strategy else 1 output_captions, output_probs = self.captioner.sample_captions( self.descriptors[image_index:batch_end_index], temp=temp) for batch_index, output in zip(range(image_index, batch_end_index), output_captions): all_captions[batch_index] = output else: for batch_image_index in xrange(image_index, batch_end_index): captions, caption_probs = self.captioner.predict_caption( self.descriptors[batch_image_index], strategy=strategy) best_caption, max_log_prob = None, None for caption, probs in zip(captions, caption_probs): log_prob = gen_stats(probs)['log_p'] if best_caption is None or \ (best_caption is not None and log_prob > max_log_prob): best_caption, max_log_prob = caption, log_prob all_captions[batch_image_index] = best_caption sys.stdout.write('\n') # Compute the number of reference files as the maximum number of ground # truth captions of any image in the dataset. num_reference_files = 0 for captions in self.dataset.values(): if len(captions) > num_reference_files: num_reference_files = len(captions) if num_reference_files <= 0: raise Exception('No reference captions.') # Collect model/reference captions, formatting the model's captions and # each set of reference captions as a list of len(self.images) strings. exp_dir = '%s/generation' % self.cache_dir if not os.path.exists(exp_dir): os.makedirs(exp_dir) # For each image, write out the highest probability caption. model_captions = [''] * len(self.images) reference_captions = [([''] * len(self.images)) for _ in xrange(num_reference_files)] for image_index, image in enumerate(self.images): caption = self.captioner.sentence(all_captions[image_index]) model_captions[image_index] = caption for reference_index, (_, caption) in enumerate(self.dataset[image]): caption = ' '.join(caption) reference_captions[reference_index][image_index] = caption coco_image_ids = [self.sg.image_path_to_id[image_path] for image_path in self.images] generation_result = [{ 'image_id': self.sg.image_path_to_id[image_path], 'caption': model_captions[image_index] } for (image_index, image_path) in enumerate(self.images)] json_filename = '%s/generation_result.json' % self.cache_dir print 'Dumping result to file: %s' % json_filename with open(json_filename, 'w') as json_file: json.dump(generation_result, json_file) generation_result = self.sg.coco.loadRes(json_filename) coco_evaluator = COCOEvalCap(self.sg.coco, generation_result) coco_evaluator.params['image_id'] = coco_image_ids coco_evaluator.evaluate() def gen_stats(prob): stats = {} stats['length'] = len(prob) stats['log_p'] = 0.0 eps = 1e-12 for p in prob: assert 0.0 <= p <= 1.0 stats['log_p'] += np.log(max(eps, p)) stats['log_p_word'] = stats['log_p'] / stats['length'] try: stats['perplex'] = np.exp(-stats['log_p']) except OverflowError: stats['perplex'] = float('inf') try: stats['perplex_word'] = np.exp(-stats['log_p_word']) except OverflowError: stats['perplex_word'] = float('inf') return stats def main(): MAX_IMAGES = -1 # -1 to use all images TAG = 'coco_2layer_factored' if MAX_IMAGES >= 0: TAG += '_%dimages' % MAX_IMAGES eval_on_test = False if eval_on_test: ITER = 100000 MODEL_FILENAME = 'lrcn_finetune_trainval_stepsize40k_iter_%d' % ITER DATASET_NAME = 'test' else: # eval on val ITER = 50000 MODEL_FILENAME = 'lrcn_finetune_iter_%d' % ITER DATASET_NAME = 'val' TAG += '_%s' % DATASET_NAME MODEL_DIR = './examples/coco_caption' MODEL_FILE = '%s/%s.caffemodel' % (MODEL_DIR, MODEL_FILENAME) IMAGE_NET_FILE = './models/bvlc_reference_caffenet/deploy.prototxt' LSTM_NET_FILE = './examples/coco_caption/lrcn_word_to_preds.deploy.prototxt' NET_TAG = '%s_%s' % (TAG, MODEL_FILENAME) DATASET_SUBDIR = '%s/%s_ims' % (DATASET_NAME, str(MAX_IMAGES) if MAX_IMAGES >= 0 else 'all') DATASET_CACHE_DIR = './retrieval_cache/%s/%s' % (DATASET_SUBDIR, MODEL_FILENAME) VOCAB_FILE = './examples/coco_caption/h5_data/buffer_100/vocabulary.txt' DEVICE_ID = 0 with open(VOCAB_FILE, 'r') as vocab_file: vocab = [line.strip() for line in vocab_file.readlines()] coco = COCO(COCO_ANNO_PATH % DATASET_NAME) image_root = COCO_IMAGE_PATTERN % DATASET_NAME sg = CocoSequenceGenerator(coco, BUFFER_SIZE, image_root, vocab=vocab, align=False, shuffle=False) dataset = {} for image_path, sentence in sg.image_sentence_pairs: if image_path not in dataset: dataset[image_path] = [] dataset[image_path].append((sg.line_to_stream(sentence), sentence)) print 'Original dataset contains %d images' % len(dataset.keys()) if 0 <= MAX_IMAGES < len(dataset.keys()): all_keys = dataset.keys() perm = np.random.permutation(len(all_keys))[:MAX_IMAGES] chosen_keys = set([all_keys[p] for p in perm]) for key in all_keys: if key not in chosen_keys: del dataset[key] print 'Reduced dataset to %d images' % len(dataset.keys()) if MAX_IMAGES < 0: MAX_IMAGES = len(dataset.keys()) captioner = Captioner(MODEL_FILE, IMAGE_NET_FILE, LSTM_NET_FILE, VOCAB_FILE, device_id=DEVICE_ID) beam_size = 1 generation_strategy = {'type': 'beam', 'beam_size': beam_size} if generation_strategy['type'] == 'beam': strategy_name = 'beam%d' % generation_strategy['beam_size'] elif generation_strategy['type'] == 'sample': strategy_name = 'sample%f' % generation_strategy['temp'] else: raise Exception('Unknown generation strategy type: %s' % generation_strategy['type']) CACHE_DIR = '%s/%s' % (DATASET_CACHE_DIR, strategy_name) experimenter = CaptionExperiment(captioner, dataset, DATASET_CACHE_DIR, CACHE_DIR, sg) captioner.set_image_batch_size(min(100, MAX_IMAGES)) experimenter.generation_experiment(generation_strategy) captioner.set_caption_batch_size(min(MAX_IMAGES * 5, 1000)) experimenter.retrieval_experiment() if __name__ == "__main__": main()
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89
py
DRT
DRT-master/caffe/src/caffe/test/test_data/generate_sample_data.py
""" Generate data used in the HDF5DataLayer and GradientBasedSolver tests. """ import os import numpy as np import h5py script_dir = os.path.dirname(os.path.abspath(__file__)) # Generate HDF5DataLayer sample_data.h5 num_cols = 8 num_rows = 10 height = 6 width = 5 total_size = num_cols * num_rows * height * width data = np.arange(total_size) data = data.reshape(num_rows, num_cols, height, width) data = data.astype('float32') # We had a bug where data was copied into label, but the tests weren't # catching it, so let's make label 1-indexed. label = 1 + np.arange(num_rows)[:, np.newaxis] label = label.astype('float32') # We add an extra label2 dataset to test HDF5 layer's ability # to handle arbitrary number of output ("top") Blobs. label2 = label + 1 print data print label with h5py.File(script_dir + '/sample_data.h5', 'w') as f: f['data'] = data f['label'] = label f['label2'] = label2 with h5py.File(script_dir + '/sample_data_2_gzip.h5', 'w') as f: f.create_dataset( 'data', data=data + total_size, compression='gzip', compression_opts=1 ) f.create_dataset( 'label', data=label, compression='gzip', compression_opts=1 ) f.create_dataset( 'label2', data=label2, compression='gzip', compression_opts=1 ) with open(script_dir + '/sample_data_list.txt', 'w') as f: f.write(script_dir + '/sample_data.h5\n') f.write(script_dir + '/sample_data_2_gzip.h5\n') # Generate GradientBasedSolver solver_data.h5 num_cols = 3 num_rows = 8 height = 10 width = 10 data = np.random.randn(num_rows, num_cols, height, width) data = data.reshape(num_rows, num_cols, height, width) data = data.astype('float32') targets = np.random.randn(num_rows, 1) targets = targets.astype('float32') print data print targets with h5py.File(script_dir + '/solver_data.h5', 'w') as f: f['data'] = data f['targets'] = targets with open(script_dir + '/solver_data_list.txt', 'w') as f: f.write(script_dir + '/solver_data.h5\n')
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DRT-master/caffe/python/draw_net.py
#!/usr/bin/env python """ Draw a graph of the net architecture. """ from argparse import ArgumentParser, ArgumentDefaultsHelpFormatter from google.protobuf import text_format import caffe import caffe.draw from caffe.proto import caffe_pb2 def parse_args(): """Parse input arguments """ parser = ArgumentParser(description=__doc__, formatter_class=ArgumentDefaultsHelpFormatter) parser.add_argument('input_net_proto_file', help='Input network prototxt file') parser.add_argument('output_image_file', help='Output image file') parser.add_argument('--rankdir', help=('One of TB (top-bottom, i.e., vertical), ' 'RL (right-left, i.e., horizontal), or another ' 'valid dot option; see ' 'http://www.graphviz.org/doc/info/' 'attrs.html#k:rankdir'), default='LR') args = parser.parse_args() return args def main(): args = parse_args() net = caffe_pb2.NetParameter() text_format.Merge(open(args.input_net_proto_file).read(), net) print('Drawing net to %s' % args.output_image_file) caffe.draw.draw_net_to_file(net, args.output_image_file, args.rankdir) if __name__ == '__main__': main()
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DRT-master/caffe/python/detect.py
#!/usr/bin/env python """ detector.py is an out-of-the-box windowed detector callable from the command line. By default it configures and runs the Caffe reference ImageNet model. Note that this model was trained for image classification and not detection, and finetuning for detection can be expected to improve results. The selective_search_ijcv_with_python code required for the selective search proposal mode is available at https://github.com/sergeyk/selective_search_ijcv_with_python TODO: - batch up image filenames as well: don't want to load all of them into memory - come up with a batching scheme that preserved order / keeps a unique ID """ import numpy as np import pandas as pd import os import argparse import time import caffe CROP_MODES = ['list', 'selective_search'] COORD_COLS = ['ymin', 'xmin', 'ymax', 'xmax'] def main(argv): pycaffe_dir = os.path.dirname(__file__) parser = argparse.ArgumentParser() # Required arguments: input and output. parser.add_argument( "input_file", help="Input txt/csv filename. If .txt, must be list of filenames.\ If .csv, must be comma-separated file with header\ 'filename, xmin, ymin, xmax, ymax'" ) parser.add_argument( "output_file", help="Output h5/csv filename. Format depends on extension." ) # Optional arguments. parser.add_argument( "--model_def", default=os.path.join(pycaffe_dir, "../models/bvlc_reference_caffenet/deploy.prototxt.prototxt"), help="Model definition file." ) parser.add_argument( "--pretrained_model", default=os.path.join(pycaffe_dir, "../models/bvlc_reference_caffenet/bvlc_reference_caffenet.caffemodel"), help="Trained model weights file." ) parser.add_argument( "--crop_mode", default="selective_search", choices=CROP_MODES, help="How to generate windows for detection." ) parser.add_argument( "--gpu", action='store_true', help="Switch for gpu computation." ) parser.add_argument( "--mean_file", default=os.path.join(pycaffe_dir, 'caffe/imagenet/ilsvrc_2012_mean.npy'), help="Data set image mean of H x W x K dimensions (numpy array). " + "Set to '' for no mean subtraction." ) parser.add_argument( "--input_scale", type=float, help="Multiply input features by this scale to finish preprocessing." ) parser.add_argument( "--raw_scale", type=float, default=255.0, help="Multiply raw input by this scale before preprocessing." ) parser.add_argument( "--channel_swap", default='2,1,0', help="Order to permute input channels. The default converts " + "RGB -> BGR since BGR is the Caffe default by way of OpenCV." ) parser.add_argument( "--context_pad", type=int, default='16', help="Amount of surrounding context to collect in input window." ) args = parser.parse_args() mean, channel_swap = None, None if args.mean_file: mean = np.load(args.mean_file) if mean.shape[1:] != (1, 1): mean = mean.mean(1).mean(1) if args.channel_swap: channel_swap = [int(s) for s in args.channel_swap.split(',')] if args.gpu: caffe.set_mode_gpu() print("GPU mode") else: caffe.set_mode_cpu() print("CPU mode") # Make detector. detector = caffe.Detector(args.model_def, args.pretrained_model, mean=mean, input_scale=args.input_scale, raw_scale=args.raw_scale, channel_swap=channel_swap, context_pad=args.context_pad) # Load input. t = time.time() print("Loading input...") if args.input_file.lower().endswith('txt'): with open(args.input_file) as f: inputs = [_.strip() for _ in f.readlines()] elif args.input_file.lower().endswith('csv'): inputs = pd.read_csv(args.input_file, sep=',', dtype={'filename': str}) inputs.set_index('filename', inplace=True) else: raise Exception("Unknown input file type: not in txt or csv.") # Detect. if args.crop_mode == 'list': # Unpack sequence of (image filename, windows). images_windows = [ (ix, inputs.iloc[np.where(inputs.index == ix)][COORD_COLS].values) for ix in inputs.index.unique() ] detections = detector.detect_windows(images_windows) else: detections = detector.detect_selective_search(inputs) print("Processed {} windows in {:.3f} s.".format(len(detections), time.time() - t)) # Collect into dataframe with labeled fields. df = pd.DataFrame(detections) df.set_index('filename', inplace=True) df[COORD_COLS] = pd.DataFrame( data=np.vstack(df['window']), index=df.index, columns=COORD_COLS) del(df['window']) # Save results. t = time.time() if args.output_file.lower().endswith('csv'): # csv # Enumerate the class probabilities. class_cols = ['class{}'.format(x) for x in range(NUM_OUTPUT)] df[class_cols] = pd.DataFrame( data=np.vstack(df['feat']), index=df.index, columns=class_cols) df.to_csv(args.output_file, cols=COORD_COLS + class_cols) else: # h5 df.to_hdf(args.output_file, 'df', mode='w') print("Saved to {} in {:.3f} s.".format(args.output_file, time.time() - t)) if __name__ == "__main__": import sys main(sys.argv)
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DRT-master/caffe/python/classify.py
#!/usr/bin/env python """ classify.py is an out-of-the-box image classifer callable from the command line. By default it configures and runs the Caffe reference ImageNet model. """ import numpy as np import os import sys import argparse import glob import time import caffe def main(argv): pycaffe_dir = os.path.dirname(__file__) parser = argparse.ArgumentParser() # Required arguments: input and output files. parser.add_argument( "input_file", help="Input image, directory, or npy." ) parser.add_argument( "output_file", help="Output npy filename." ) # Optional arguments. parser.add_argument( "--model_def", default=os.path.join(pycaffe_dir, "../models/bvlc_reference_caffenet/deploy.prototxt"), help="Model definition file." ) parser.add_argument( "--pretrained_model", default=os.path.join(pycaffe_dir, "../models/bvlc_reference_caffenet/bvlc_reference_caffenet.caffemodel"), help="Trained model weights file." ) parser.add_argument( "--gpu", action='store_true', help="Switch for gpu computation." ) parser.add_argument( "--center_only", action='store_true', help="Switch for prediction from center crop alone instead of " + "averaging predictions across crops (default)." ) parser.add_argument( "--images_dim", default='256,256', help="Canonical 'height,width' dimensions of input images." ) parser.add_argument( "--mean_file", default=os.path.join(pycaffe_dir, 'caffe/imagenet/ilsvrc_2012_mean.npy'), help="Data set image mean of [Channels x Height x Width] dimensions " + "(numpy array). Set to '' for no mean subtraction." ) parser.add_argument( "--input_scale", type=float, help="Multiply input features by this scale to finish preprocessing." ) parser.add_argument( "--raw_scale", type=float, default=255.0, help="Multiply raw input by this scale before preprocessing." ) parser.add_argument( "--channel_swap", default='2,1,0', help="Order to permute input channels. The default converts " + "RGB -> BGR since BGR is the Caffe default by way of OpenCV." ) parser.add_argument( "--ext", default='jpg', help="Image file extension to take as input when a directory " + "is given as the input file." ) args = parser.parse_args() image_dims = [int(s) for s in args.images_dim.split(',')] mean, channel_swap = None, None if args.mean_file: mean = np.load(args.mean_file) if args.channel_swap: channel_swap = [int(s) for s in args.channel_swap.split(',')] if args.gpu: caffe.set_mode_gpu() print("GPU mode") else: caffe.set_mode_cpu() print("CPU mode") # Make classifier. classifier = caffe.Classifier(args.model_def, args.pretrained_model, image_dims=image_dims, mean=mean, input_scale=args.input_scale, raw_scale=args.raw_scale, channel_swap=channel_swap) # Load numpy array (.npy), directory glob (*.jpg), or image file. args.input_file = os.path.expanduser(args.input_file) if args.input_file.endswith('npy'): print("Loading file: %s" % args.input_file) inputs = np.load(args.input_file) elif os.path.isdir(args.input_file): print("Loading folder: %s" % args.input_file) inputs =[caffe.io.load_image(im_f) for im_f in glob.glob(args.input_file + '/*.' + args.ext)] else: print("Loading file: %s" % args.input_file) inputs = [caffe.io.load_image(args.input_file)] print("Classifying %d inputs." % len(inputs)) # Classify. start = time.time() predictions = classifier.predict(inputs, not args.center_only) print("Done in %.2f s." % (time.time() - start)) # Save print("Saving results into %s" % args.output_file) np.save(args.output_file, predictions) if __name__ == '__main__': main(sys.argv)
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DRT-master/caffe/python/caffe/net_spec.py
"""Python net specification. This module provides a way to write nets directly in Python, using a natural, functional style. See examples/pycaffe/caffenet.py for an example. Currently this works as a thin wrapper around the Python protobuf interface, with layers and parameters automatically generated for the "layers" and "params" pseudo-modules, which are actually objects using __getattr__ magic to generate protobuf messages. Note that when using to_proto or Top.to_proto, names of intermediate blobs will be automatically generated. To explicitly specify blob names, use the NetSpec class -- assign to its attributes directly to name layers, and call NetSpec.to_proto to serialize all assigned layers. This interface is expected to continue to evolve as Caffe gains new capabilities for specifying nets. In particular, the automatically generated layer names are not guaranteed to be forward-compatible. """ from collections import OrderedDict, Counter from .proto import caffe_pb2 from google import protobuf import six def param_name_dict(): """Find out the correspondence between layer names and parameter names.""" layer = caffe_pb2.LayerParameter() # get all parameter names (typically underscore case) and corresponding # type names (typically camel case), which contain the layer names # (note that not all parameters correspond to layers, but we'll ignore that) param_names = [s for s in dir(layer) if s.endswith('_param')] param_type_names = [type(getattr(layer, s)).__name__ for s in param_names] # strip the final '_param' or 'Parameter' param_names = [s[:-len('_param')] for s in param_names] param_type_names = [s[:-len('Parameter')] for s in param_type_names] return dict(zip(param_type_names, param_names)) def to_proto(*tops): """Generate a NetParameter that contains all layers needed to compute all arguments.""" layers = OrderedDict() autonames = Counter() for top in tops: top.fn._to_proto(layers, {}, autonames) net = caffe_pb2.NetParameter() net.layer.extend(layers.values()) return net def assign_proto(proto, name, val): """Assign a Python object to a protobuf message, based on the Python type (in recursive fashion). Lists become repeated fields/messages, dicts become messages, and other types are assigned directly. For convenience, repeated fields whose values are not lists are converted to single-element lists; e.g., `my_repeated_int_field=3` is converted to `my_repeated_int_field=[3]`.""" is_repeated_field = hasattr(getattr(proto, name), 'extend') if is_repeated_field and not isinstance(val, list): val = [val] if isinstance(val, list): if isinstance(val[0], dict): for item in val: proto_item = getattr(proto, name).add() for k, v in six.iteritems(item): assign_proto(proto_item, k, v) else: getattr(proto, name).extend(val) elif isinstance(val, dict): for k, v in six.iteritems(val): assign_proto(getattr(proto, name), k, v) else: setattr(proto, name, val) class Top(object): """A Top specifies a single output blob (which could be one of several produced by a layer.)""" def __init__(self, fn, n): self.fn = fn self.n = n def to_proto(self): """Generate a NetParameter that contains all layers needed to compute this top.""" return to_proto(self) def _to_proto(self, layers, names, autonames): return self.fn._to_proto(layers, names, autonames) class Function(object): """A Function specifies a layer, its parameters, and its inputs (which are Tops from other layers).""" def __init__(self, type_name, inputs, params): self.type_name = type_name self.inputs = inputs self.params = params self.ntop = self.params.get('ntop', 1) # use del to make sure kwargs are not double-processed as layer params if 'ntop' in self.params: del self.params['ntop'] self.in_place = self.params.get('in_place', False) if 'in_place' in self.params: del self.params['in_place'] self.tops = tuple(Top(self, n) for n in range(self.ntop)) def _get_name(self, names, autonames): if self not in names and self.ntop > 0: names[self] = self._get_top_name(self.tops[0], names, autonames) elif self not in names: autonames[self.type_name] += 1 names[self] = self.type_name + str(autonames[self.type_name]) return names[self] def _get_top_name(self, top, names, autonames): if top not in names: autonames[top.fn.type_name] += 1 names[top] = top.fn.type_name + str(autonames[top.fn.type_name]) return names[top] def _to_proto(self, layers, names, autonames): if self in layers: return bottom_names = [] for inp in self.inputs: inp._to_proto(layers, names, autonames) bottom_names.append(layers[inp.fn].top[inp.n]) layer = caffe_pb2.LayerParameter() layer.type = self.type_name layer.bottom.extend(bottom_names) if self.in_place: layer.top.extend(layer.bottom) else: for top in self.tops: layer.top.append(self._get_top_name(top, names, autonames)) layer.name = self._get_name(names, autonames) for k, v in six.iteritems(self.params): # special case to handle generic *params if k.endswith('param'): assign_proto(layer, k, v) else: try: assign_proto(getattr(layer, _param_names[self.type_name] + '_param'), k, v) except (AttributeError, KeyError): assign_proto(layer, k, v) layers[self] = layer class NetSpec(object): """A NetSpec contains a set of Tops (assigned directly as attributes). Calling NetSpec.to_proto generates a NetParameter containing all of the layers needed to produce all of the assigned Tops, using the assigned names.""" def __init__(self): super(NetSpec, self).__setattr__('tops', OrderedDict()) def __setattr__(self, name, value): self.tops[name] = value def __getattr__(self, name): return self.tops[name] def to_proto(self): names = {v: k for k, v in six.iteritems(self.tops)} autonames = Counter() layers = OrderedDict() for name, top in six.iteritems(self.tops): top._to_proto(layers, names, autonames) net = caffe_pb2.NetParameter() net.layer.extend(layers.values()) return net class Layers(object): """A Layers object is a pseudo-module which generates functions that specify layers; e.g., Layers().Convolution(bottom, kernel_size=3) will produce a Top specifying a 3x3 convolution applied to bottom.""" def __getattr__(self, name): def layer_fn(*args, **kwargs): fn = Function(name, args, kwargs) if fn.ntop == 0: return fn elif fn.ntop == 1: return fn.tops[0] else: return fn.tops return layer_fn class Parameters(object): """A Parameters object is a pseudo-module which generates constants used in layer parameters; e.g., Parameters().Pooling.MAX is the value used to specify max pooling.""" def __getattr__(self, name): class Param: def __getattr__(self, param_name): return getattr(getattr(caffe_pb2, name + 'Parameter'), param_name) return Param() _param_names = param_name_dict() layers = Layers() params = Parameters()
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DRT-master/caffe/python/caffe/classifier.py
#!/usr/bin/env python """ Classifier is an image classifier specialization of Net. """ import numpy as np import caffe class Classifier(caffe.Net): """ Classifier extends Net for image class prediction by scaling, center cropping, or oversampling. Parameters ---------- image_dims : dimensions to scale input for cropping/sampling. Default is to scale to net input size for whole-image crop. mean, input_scale, raw_scale, channel_swap: params for preprocessing options. """ def __init__(self, model_file, pretrained_file, image_dims=None, mean=None, input_scale=None, raw_scale=None, channel_swap=None): caffe.Net.__init__(self, model_file, pretrained_file, caffe.TEST) # configure pre-processing in_ = self.inputs[0] self.transformer = caffe.io.Transformer( {in_: self.blobs[in_].data.shape}) self.transformer.set_transpose(in_, (2, 0, 1)) if mean is not None: self.transformer.set_mean(in_, mean) if input_scale is not None: self.transformer.set_input_scale(in_, input_scale) if raw_scale is not None: self.transformer.set_raw_scale(in_, raw_scale) if channel_swap is not None: self.transformer.set_channel_swap(in_, channel_swap) self.crop_dims = np.array(self.blobs[in_].data.shape[2:]) if not image_dims: image_dims = self.crop_dims self.image_dims = image_dims def predict(self, inputs, oversample=True): """ Predict classification probabilities of inputs. Parameters ---------- inputs : iterable of (H x W x K) input ndarrays. oversample : boolean average predictions across center, corners, and mirrors when True (default). Center-only prediction when False. Returns ------- predictions: (N x C) ndarray of class probabilities for N images and C classes. """ # Scale to standardize input dimensions. input_ = np.zeros((len(inputs), self.image_dims[0], self.image_dims[1], inputs[0].shape[2]), dtype=np.float32) for ix, in_ in enumerate(inputs): input_[ix] = caffe.io.resize_image(in_, self.image_dims) if oversample: # Generate center, corner, and mirrored crops. input_ = caffe.io.oversample(input_, self.crop_dims) else: # Take center crop. center = np.array(self.image_dims) / 2.0 crop = np.tile(center, (1, 2))[0] + np.concatenate([ -self.crop_dims / 2.0, self.crop_dims / 2.0 ]) input_ = input_[:, crop[0]:crop[2], crop[1]:crop[3], :] # Classify caffe_in = np.zeros(np.array(input_.shape)[[0, 3, 1, 2]], dtype=np.float32) for ix, in_ in enumerate(input_): caffe_in[ix] = self.transformer.preprocess(self.inputs[0], in_) out = self.forward_all(**{self.inputs[0]: caffe_in}) predictions = out[self.outputs[0]] # For oversampling, average predictions across crops. if oversample: predictions = predictions.reshape((len(predictions) / 10, 10, -1)) predictions = predictions.mean(1) return predictions
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DRT-master/caffe/python/caffe/detector.py
#!/usr/bin/env python """ Do windowed detection by classifying a number of images/crops at once, optionally using the selective search window proposal method. This implementation follows ideas in Ross Girshick, Jeff Donahue, Trevor Darrell, Jitendra Malik. Rich feature hierarchies for accurate object detection and semantic segmentation. http://arxiv.org/abs/1311.2524 The selective_search_ijcv_with_python code required for the selective search proposal mode is available at https://github.com/sergeyk/selective_search_ijcv_with_python """ import numpy as np import os import caffe class Detector(caffe.Net): """ Detector extends Net for windowed detection by a list of crops or selective search proposals. Parameters ---------- mean, input_scale, raw_scale, channel_swap : params for preprocessing options. context_pad : amount of surrounding context to take s.t. a `context_pad` sized border of pixels in the network input image is context, as in R-CNN feature extraction. """ def __init__(self, model_file, pretrained_file, mean=None, input_scale=None, raw_scale=None, channel_swap=None, context_pad=None): caffe.Net.__init__(self, model_file, pretrained_file, caffe.TEST) # configure pre-processing in_ = self.inputs[0] self.transformer = caffe.io.Transformer( {in_: self.blobs[in_].data.shape}) self.transformer.set_transpose(in_, (2, 0, 1)) if mean is not None: self.transformer.set_mean(in_, mean) if input_scale is not None: self.transformer.set_input_scale(in_, input_scale) if raw_scale is not None: self.transformer.set_raw_scale(in_, raw_scale) if channel_swap is not None: self.transformer.set_channel_swap(in_, channel_swap) self.configure_crop(context_pad) def detect_windows(self, images_windows): """ Do windowed detection over given images and windows. Windows are extracted then warped to the input dimensions of the net. Parameters ---------- images_windows: (image filename, window list) iterable. context_crop: size of context border to crop in pixels. Returns ------- detections: list of {filename: image filename, window: crop coordinates, predictions: prediction vector} dicts. """ # Extract windows. window_inputs = [] for image_fname, windows in images_windows: image = caffe.io.load_image(image_fname).astype(np.float32) for window in windows: window_inputs.append(self.crop(image, window)) # Run through the net (warping windows to input dimensions). in_ = self.inputs[0] caffe_in = np.zeros((len(window_inputs), window_inputs[0].shape[2]) + self.blobs[in_].data.shape[2:], dtype=np.float32) for ix, window_in in enumerate(window_inputs): caffe_in[ix] = self.transformer.preprocess(in_, window_in) out = self.forward_all(**{in_: caffe_in}) predictions = out[self.outputs[0]].squeeze(axis=(2, 3)) # Package predictions with images and windows. detections = [] ix = 0 for image_fname, windows in images_windows: for window in windows: detections.append({ 'window': window, 'prediction': predictions[ix], 'filename': image_fname }) ix += 1 return detections def detect_selective_search(self, image_fnames): """ Do windowed detection over Selective Search proposals by extracting the crop and warping to the input dimensions of the net. Parameters ---------- image_fnames: list Returns ------- detections: list of {filename: image filename, window: crop coordinates, predictions: prediction vector} dicts. """ import selective_search_ijcv_with_python as selective_search # Make absolute paths so MATLAB can find the files. image_fnames = [os.path.abspath(f) for f in image_fnames] windows_list = selective_search.get_windows( image_fnames, cmd='selective_search_rcnn' ) # Run windowed detection on the selective search list. return self.detect_windows(zip(image_fnames, windows_list)) def crop(self, im, window): """ Crop a window from the image for detection. Include surrounding context according to the `context_pad` configuration. Parameters ---------- im: H x W x K image ndarray to crop. window: bounding box coordinates as ymin, xmin, ymax, xmax. Returns ------- crop: cropped window. """ # Crop window from the image. crop = im[window[0]:window[2], window[1]:window[3]] if self.context_pad: box = window.copy() crop_size = self.blobs[self.inputs[0]].width # assumes square scale = crop_size / (1. * crop_size - self.context_pad * 2) # Crop a box + surrounding context. half_h = (box[2] - box[0] + 1) / 2. half_w = (box[3] - box[1] + 1) / 2. center = (box[0] + half_h, box[1] + half_w) scaled_dims = scale * np.array((-half_h, -half_w, half_h, half_w)) box = np.round(np.tile(center, 2) + scaled_dims) full_h = box[2] - box[0] + 1 full_w = box[3] - box[1] + 1 scale_h = crop_size / full_h scale_w = crop_size / full_w pad_y = round(max(0, -box[0]) * scale_h) # amount out-of-bounds pad_x = round(max(0, -box[1]) * scale_w) # Clip box to image dimensions. im_h, im_w = im.shape[:2] box = np.clip(box, 0., [im_h, im_w, im_h, im_w]) clip_h = box[2] - box[0] + 1 clip_w = box[3] - box[1] + 1 assert(clip_h > 0 and clip_w > 0) crop_h = round(clip_h * scale_h) crop_w = round(clip_w * scale_w) if pad_y + crop_h > crop_size: crop_h = crop_size - pad_y if pad_x + crop_w > crop_size: crop_w = crop_size - pad_x # collect with context padding and place in input # with mean padding context_crop = im[box[0]:box[2], box[1]:box[3]] context_crop = caffe.io.resize_image(context_crop, (crop_h, crop_w)) crop = np.ones(self.crop_dims, dtype=np.float32) * self.crop_mean crop[pad_y:(pad_y + crop_h), pad_x:(pad_x + crop_w)] = context_crop return crop def configure_crop(self, context_pad): """ Configure crop dimensions and amount of context for cropping. If context is included, make the special input mean for context padding. Parameters ---------- context_pad : amount of context for cropping. """ # crop dimensions in_ = self.inputs[0] tpose = self.transformer.transpose[in_] inv_tpose = [tpose[t] for t in tpose] self.crop_dims = np.array(self.blobs[in_].data.shape[1:])[inv_tpose] #.transpose(inv_tpose) # context padding self.context_pad = context_pad if self.context_pad: in_ = self.inputs[0] transpose = self.transformer.transpose.get(in_) channel_order = self.transformer.channel_swap.get(in_) raw_scale = self.transformer.raw_scale.get(in_) # Padding context crops needs the mean in unprocessed input space. mean = self.transformer.mean.get(in_) if mean is not None: inv_transpose = [transpose[t] for t in transpose] crop_mean = mean.copy().transpose(inv_transpose) if channel_order is not None: channel_order_inverse = [channel_order.index(i) for i in range(crop_mean.shape[2])] crop_mean = crop_mean[:, :, channel_order_inverse] if raw_scale is not None: crop_mean /= raw_scale self.crop_mean = crop_mean else: self.crop_mean = np.zeros(self.crop_dims, dtype=np.float32)
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DRT-master/caffe/python/caffe/__init__.py
from .pycaffe import Net, SGDSolver, NesterovSolver, AdaGradSolver, RMSPropSolver, AdaDeltaSolver, AdamSolver from ._caffe import set_mode_cpu, set_mode_gpu, set_device, Layer, get_solver, layer_type_list from .proto.caffe_pb2 import TRAIN, TEST from .classifier import Classifier from .detector import Detector from . import io from .net_spec import layers, params, NetSpec, to_proto
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DRT-master/caffe/python/caffe/pycaffe.py
""" Wrap the internal caffe C++ module (_caffe.so) with a clean, Pythonic interface. """ from collections import OrderedDict try: from itertools import izip_longest except: from itertools import zip_longest as izip_longest import numpy as np from ._caffe import Net, SGDSolver, NesterovSolver, AdaGradSolver, \ RMSPropSolver, AdaDeltaSolver, AdamSolver import caffe.io # We directly update methods from Net here (rather than using composition or # inheritance) so that nets created by caffe (e.g., by SGDSolver) will # automatically have the improved interface. @property def _Net_blobs(self): """ An OrderedDict (bottom to top, i.e., input to output) of network blobs indexed by name """ return OrderedDict(zip(self._blob_names, self._blobs)) @property def _Net_blob_loss_weights(self): """ An OrderedDict (bottom to top, i.e., input to output) of network blob loss weights indexed by name """ return OrderedDict(zip(self._blob_names, self._blob_loss_weights)) @property def _Net_params(self): """ An OrderedDict (bottom to top, i.e., input to output) of network parameters indexed by name; each is a list of multiple blobs (e.g., weights and biases) """ return OrderedDict([(name, lr.blobs) for name, lr in zip(self._layer_names, self.layers) if len(lr.blobs) > 0]) @property def _Net_inputs(self): return [list(self.blobs.keys())[i] for i in self._inputs] @property def _Net_outputs(self): return [list(self.blobs.keys())[i] for i in self._outputs] def _Net_forward(self, blobs=None, start=None, end=None, **kwargs): """ Forward pass: prepare inputs and run the net forward. Parameters ---------- blobs : list of blobs to return in addition to output blobs. kwargs : Keys are input blob names and values are blob ndarrays. For formatting inputs for Caffe, see Net.preprocess(). If None, input is taken from data layers. start : optional name of layer at which to begin the forward pass end : optional name of layer at which to finish the forward pass (inclusive) Returns ------- outs : {blob name: blob ndarray} dict. """ if blobs is None: blobs = [] if start is not None: start_ind = list(self._layer_names).index(start) else: start_ind = 0 if end is not None: end_ind = list(self._layer_names).index(end) outputs = set([end] + blobs) else: end_ind = len(self.layers) - 1 outputs = set(self.outputs + blobs) if kwargs: if set(kwargs.keys()) != set(self.inputs): raise Exception('Input blob arguments do not match net inputs.') # Set input according to defined shapes and make arrays single and # C-contiguous as Caffe expects. for in_, blob in kwargs.iteritems(): if blob.shape[0] != self.blobs[in_].num: raise Exception('Input is not batch sized') self.blobs[in_].data[...] = blob self._forward(start_ind, end_ind) # Unpack blobs to extract return {out: self.blobs[out].data for out in outputs} def _Net_backward(self, diffs=None, start=None, end=None, **kwargs): """ Backward pass: prepare diffs and run the net backward. Parameters ---------- diffs : list of diffs to return in addition to bottom diffs. kwargs : Keys are output blob names and values are diff ndarrays. If None, top diffs are taken from forward loss. start : optional name of layer at which to begin the backward pass end : optional name of layer at which to finish the backward pass (inclusive) Returns ------- outs: {blob name: diff ndarray} dict. """ if diffs is None: diffs = [] if start is not None: start_ind = list(self._layer_names).index(start) else: start_ind = len(self.layers) - 1 if end is not None: end_ind = list(self._layer_names).index(end) outputs = set([end] + diffs) else: end_ind = 0 outputs = set(self.inputs + diffs) if kwargs: if set(kwargs.keys()) != set(self.outputs): raise Exception('Top diff arguments do not match net outputs.') # Set top diffs according to defined shapes and make arrays single and # C-contiguous as Caffe expects. for top, diff in kwargs.iteritems(): if diff.ndim != 4: raise Exception('{} diff is not 4-d'.format(top)) if diff.shape[0] != self.blobs[top].num: raise Exception('Diff is not batch sized') self.blobs[top].diff[...] = diff self._backward(start_ind, end_ind) # Unpack diffs to extract return {out: self.blobs[out].diff for out in outputs} def _Net_forward_all(self, blobs=None, **kwargs): """ Run net forward in batches. Parameters ---------- blobs : list of blobs to extract as in forward() kwargs : Keys are input blob names and values are blob ndarrays. Refer to forward(). Returns ------- all_outs : {blob name: list of blobs} dict. """ # Collect outputs from batches all_outs = {out: [] for out in set(self.outputs + (blobs or []))} for batch in self._batch(kwargs): outs = self.forward(blobs=blobs, **batch) for out, out_blob in outs.iteritems(): all_outs[out].extend(out_blob.copy()) # Package in ndarray. for out in all_outs: all_outs[out] = np.asarray(all_outs[out]) # Discard padding. pad = len(all_outs.itervalues().next()) - len(kwargs.itervalues().next()) if pad: for out in all_outs: all_outs[out] = all_outs[out][:-pad] return all_outs def _Net_forward_backward_all(self, blobs=None, diffs=None, **kwargs): """ Run net forward + backward in batches. Parameters ---------- blobs: list of blobs to extract as in forward() diffs: list of diffs to extract as in backward() kwargs: Keys are input (for forward) and output (for backward) blob names and values are ndarrays. Refer to forward() and backward(). Prefilled variants are called for lack of input or output blobs. Returns ------- all_blobs: {blob name: blob ndarray} dict. all_diffs: {blob name: diff ndarray} dict. """ # Batch blobs and diffs. all_outs = {out: [] for out in set(self.outputs + (blobs or []))} all_diffs = {diff: [] for diff in set(self.inputs + (diffs or []))} forward_batches = self._batch({in_: kwargs[in_] for in_ in self.inputs if in_ in kwargs}) backward_batches = self._batch({out: kwargs[out] for out in self.outputs if out in kwargs}) # Collect outputs from batches (and heed lack of forward/backward batches). for fb, bb in izip_longest(forward_batches, backward_batches, fillvalue={}): batch_blobs = self.forward(blobs=blobs, **fb) batch_diffs = self.backward(diffs=diffs, **bb) for out, out_blobs in batch_blobs.iteritems(): all_outs[out].extend(out_blobs) for diff, out_diffs in batch_diffs.iteritems(): all_diffs[diff].extend(out_diffs) # Package in ndarray. for out, diff in zip(all_outs, all_diffs): all_outs[out] = np.asarray(all_outs[out]) all_diffs[diff] = np.asarray(all_diffs[diff]) # Discard padding at the end and package in ndarray. pad = len(all_outs.itervalues().next()) - len(kwargs.itervalues().next()) if pad: for out, diff in zip(all_outs, all_diffs): all_outs[out] = all_outs[out][:-pad] all_diffs[diff] = all_diffs[diff][:-pad] return all_outs, all_diffs def _Net_set_input_arrays(self, data, labels): """ Set input arrays of the in-memory MemoryDataLayer. (Note: this is only for networks declared with the memory data layer.) """ if labels.ndim == 1: labels = np.ascontiguousarray(labels[:, np.newaxis, np.newaxis, np.newaxis]) return self._set_input_arrays(data, labels) def _Net_batch(self, blobs): """ Batch blob lists according to net's batch size. Parameters ---------- blobs: Keys blob names and values are lists of blobs (of any length). Naturally, all the lists should have the same length. Yields ------ batch: {blob name: list of blobs} dict for a single batch. """ num = len(blobs.itervalues().next()) batch_size = self.blobs.itervalues().next().num remainder = num % batch_size num_batches = num / batch_size # Yield full batches. for b in range(num_batches): i = b * batch_size yield {name: blobs[name][i:i + batch_size] for name in blobs} # Yield last padded batch, if any. if remainder > 0: padded_batch = {} for name in blobs: padding = np.zeros((batch_size - remainder,) + blobs[name].shape[1:]) padded_batch[name] = np.concatenate([blobs[name][-remainder:], padding]) yield padded_batch # Attach methods to Net. Net.blobs = _Net_blobs Net.blob_loss_weights = _Net_blob_loss_weights Net.params = _Net_params Net.forward = _Net_forward Net.backward = _Net_backward Net.forward_all = _Net_forward_all Net.forward_backward_all = _Net_forward_backward_all Net.set_input_arrays = _Net_set_input_arrays Net._batch = _Net_batch Net.inputs = _Net_inputs Net.outputs = _Net_outputs
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DRT
DRT-master/caffe/python/caffe/draw.py
""" Caffe network visualization: draw the NetParameter protobuffer. .. note:: This requires pydot>=1.0.2, which is not included in requirements.txt since it requires graphviz and other prerequisites outside the scope of the Caffe. """ from caffe.proto import caffe_pb2 import pydot # Internal layer and blob styles. LAYER_STYLE_DEFAULT = {'shape': 'record', 'fillcolor': '#6495ED', 'style': 'filled'} NEURON_LAYER_STYLE = {'shape': 'record', 'fillcolor': '#90EE90', 'style': 'filled'} BLOB_STYLE = {'shape': 'octagon', 'fillcolor': '#E0E0E0', 'style': 'filled'} def get_pooling_types_dict(): """Get dictionary mapping pooling type number to type name """ desc = caffe_pb2.PoolingParameter.PoolMethod.DESCRIPTOR d = {} for k, v in desc.values_by_name.items(): d[v.number] = k return d def get_edge_label(layer): """Define edge label based on layer type. """ if layer.type == 'Data': edge_label = 'Batch ' + str(layer.data_param.batch_size) elif layer.type == 'Convolution' or layer.type == 'Deconvolution': edge_label = str(layer.convolution_param.num_output) elif layer.type == 'InnerProduct': edge_label = str(layer.inner_product_param.num_output) else: edge_label = '""' return edge_label def get_layer_label(layer, rankdir): """Define node label based on layer type. Parameters ---------- layer : ? rankdir : {'LR', 'TB', 'BT'} Direction of graph layout. Returns ------- string : A label for the current layer """ if rankdir in ('TB', 'BT'): # If graph orientation is vertical, horizontal space is free and # vertical space is not; separate words with spaces separator = ' ' else: # If graph orientation is horizontal, vertical space is free and # horizontal space is not; separate words with newlines separator = '\\n' if layer.type == 'Convolution' or layer.type == 'Deconvolution': # Outer double quotes needed or else colon characters don't parse # properly node_label = '"%s%s(%s)%skernel size: %d%sstride: %d%spad: %d"' %\ (layer.name, separator, layer.type, separator, layer.convolution_param.kernel_size, separator, layer.convolution_param.stride, separator, layer.convolution_param.pad) elif layer.type == 'Pooling': pooling_types_dict = get_pooling_types_dict() node_label = '"%s%s(%s %s)%skernel size: %d%sstride: %d%spad: %d"' %\ (layer.name, separator, pooling_types_dict[layer.pooling_param.pool], layer.type, separator, layer.pooling_param.kernel_size, separator, layer.pooling_param.stride, separator, layer.pooling_param.pad) else: node_label = '"%s%s(%s)"' % (layer.name, separator, layer.type) return node_label def choose_color_by_layertype(layertype): """Define colors for nodes based on the layer type. """ color = '#6495ED' # Default if layertype == 'Convolution' or layertype == 'Deconvolution': color = '#FF5050' elif layertype == 'Pooling': color = '#FF9900' elif layertype == 'InnerProduct': color = '#CC33FF' return color def get_pydot_graph(caffe_net, rankdir, label_edges=True): """Create a data structure which represents the `caffe_net`. Parameters ---------- caffe_net : object rankdir : {'LR', 'TB', 'BT'} Direction of graph layout. label_edges : boolean, optional Label the edges (default is True). Returns ------- pydot graph object """ pydot_graph = pydot.Dot(caffe_net.name, graph_type='digraph', rankdir=rankdir) pydot_nodes = {} pydot_edges = [] for layer in caffe_net.layer: node_label = get_layer_label(layer, rankdir) node_name = "%s_%s" % (layer.name, layer.type) if (len(layer.bottom) == 1 and len(layer.top) == 1 and layer.bottom[0] == layer.top[0]): # We have an in-place neuron layer. pydot_nodes[node_name] = pydot.Node(node_label, **NEURON_LAYER_STYLE) else: layer_style = LAYER_STYLE_DEFAULT layer_style['fillcolor'] = choose_color_by_layertype(layer.type) pydot_nodes[node_name] = pydot.Node(node_label, **layer_style) for bottom_blob in layer.bottom: pydot_nodes[bottom_blob + '_blob'] = pydot.Node('%s' % bottom_blob, **BLOB_STYLE) edge_label = '""' pydot_edges.append({'src': bottom_blob + '_blob', 'dst': node_name, 'label': edge_label}) for top_blob in layer.top: pydot_nodes[top_blob + '_blob'] = pydot.Node('%s' % (top_blob)) if label_edges: edge_label = get_edge_label(layer) else: edge_label = '""' pydot_edges.append({'src': node_name, 'dst': top_blob + '_blob', 'label': edge_label}) # Now, add the nodes and edges to the graph. for node in pydot_nodes.values(): pydot_graph.add_node(node) for edge in pydot_edges: pydot_graph.add_edge( pydot.Edge(pydot_nodes[edge['src']], pydot_nodes[edge['dst']], label=edge['label'])) return pydot_graph def draw_net(caffe_net, rankdir, ext='png'): """Draws a caffe net and returns the image string encoded using the given extension. Parameters ---------- caffe_net : a caffe.proto.caffe_pb2.NetParameter protocol buffer. ext : string, optional The image extension (the default is 'png'). Returns ------- string : Postscript representation of the graph. """ return get_pydot_graph(caffe_net, rankdir).create(format=ext) def draw_net_to_file(caffe_net, filename, rankdir='LR'): """Draws a caffe net, and saves it to file using the format given as the file extension. Use '.raw' to output raw text that you can manually feed to graphviz to draw graphs. Parameters ---------- caffe_net : a caffe.proto.caffe_pb2.NetParameter protocol buffer. filename : string The path to a file where the networks visualization will be stored. rankdir : {'LR', 'TB', 'BT'} Direction of graph layout. """ ext = filename[filename.rfind('.')+1:] with open(filename, 'wb') as fid: fid.write(draw_net(caffe_net, rankdir, ext))
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DRT-master/caffe/python/caffe/io.py
import numpy as np import skimage.io from scipy.ndimage import zoom from skimage.transform import resize try: # Python3 will most likely not be able to load protobuf from caffe.proto import caffe_pb2 except: import sys if sys.version_info >= (3, 0): print("Failed to include caffe_pb2, things might go wrong!") else: raise ## proto / datum / ndarray conversion def blobproto_to_array(blob, return_diff=False): """ Convert a blob proto to an array. In default, we will just return the data, unless return_diff is True, in which case we will return the diff. """ if return_diff: return np.array(blob.diff).reshape( blob.num, blob.channels, blob.height, blob.width) else: return np.array(blob.data).reshape( blob.num, blob.channels, blob.height, blob.width) def array_to_blobproto(arr, diff=None): """Converts a 4-dimensional array to blob proto. If diff is given, also convert the diff. You need to make sure that arr and diff have the same shape, and this function does not do sanity check. """ if arr.ndim != 4: raise ValueError('Incorrect array shape.') blob = caffe_pb2.BlobProto() blob.num, blob.channels, blob.height, blob.width = arr.shape blob.data.extend(arr.astype(float).flat) if diff is not None: blob.diff.extend(diff.astype(float).flat) return blob def arraylist_to_blobprotovecor_str(arraylist): """Converts a list of arrays to a serialized blobprotovec, which could be then passed to a network for processing. """ vec = caffe_pb2.BlobProtoVector() vec.blobs.extend([array_to_blobproto(arr) for arr in arraylist]) return vec.SerializeToString() def blobprotovector_str_to_arraylist(str): """Converts a serialized blobprotovec to a list of arrays. """ vec = caffe_pb2.BlobProtoVector() vec.ParseFromString(str) return [blobproto_to_array(blob) for blob in vec.blobs] def array_to_datum(arr, label=0): """Converts a 3-dimensional array to datum. If the array has dtype uint8, the output data will be encoded as a string. Otherwise, the output data will be stored in float format. """ if arr.ndim != 3: raise ValueError('Incorrect array shape.') datum = caffe_pb2.Datum() datum.channels, datum.height, datum.width = arr.shape if arr.dtype == np.uint8: datum.data = arr.tostring() else: datum.float_data.extend(arr.flat) datum.label = label return datum def datum_to_array(datum): """Converts a datum to an array. Note that the label is not returned, as one can easily get it by calling datum.label. """ if len(datum.data): return np.fromstring(datum.data, dtype=np.uint8).reshape( datum.channels, datum.height, datum.width) else: return np.array(datum.float_data).astype(float).reshape( datum.channels, datum.height, datum.width) ## Pre-processing class Transformer: """ Transform input for feeding into a Net. Note: this is mostly for illustrative purposes and it is likely better to define your own input preprocessing routine for your needs. Parameters ---------- net : a Net for which the input should be prepared """ def __init__(self, inputs): self.inputs = inputs self.transpose = {} self.channel_swap = {} self.raw_scale = {} self.mean = {} self.input_scale = {} def __check_input(self, in_): if in_ not in self.inputs: raise Exception('{} is not one of the net inputs: {}'.format( in_, self.inputs)) def preprocess(self, in_, data): """ Format input for Caffe: - convert to single - resize to input dimensions (preserving number of channels) - transpose dimensions to K x H x W - reorder channels (for instance color to BGR) - scale raw input (e.g. from [0, 1] to [0, 255] for ImageNet models) - subtract mean - scale feature Parameters ---------- in_ : name of input blob to preprocess for data : (H' x W' x K) ndarray Returns ------- caffe_in : (K x H x W) ndarray for input to a Net """ self.__check_input(in_) caffe_in = data.astype(np.float32, copy=False) transpose = self.transpose.get(in_) channel_swap = self.channel_swap.get(in_) raw_scale = self.raw_scale.get(in_) mean = self.mean.get(in_) input_scale = self.input_scale.get(in_) in_dims = self.inputs[in_][2:] if caffe_in.shape[:2] != in_dims: caffe_in = resize_image(caffe_in, in_dims) if transpose is not None: caffe_in = caffe_in.transpose(transpose) if channel_swap is not None: caffe_in = caffe_in[channel_swap, :, :] if raw_scale is not None: caffe_in *= raw_scale if mean is not None: caffe_in -= mean if input_scale is not None: caffe_in *= input_scale return caffe_in def deprocess(self, in_, data): """ Invert Caffe formatting; see preprocess(). """ self.__check_input(in_) decaf_in = data.copy().squeeze() transpose = self.transpose.get(in_) channel_swap = self.channel_swap.get(in_) raw_scale = self.raw_scale.get(in_) mean = self.mean.get(in_) input_scale = self.input_scale.get(in_) if input_scale is not None: decaf_in /= input_scale if mean is not None: decaf_in += mean if raw_scale is not None: decaf_in /= raw_scale if channel_swap is not None: decaf_in = decaf_in[channel_swap, :, :] if transpose is not None: decaf_in = decaf_in.transpose([transpose[t] for t in transpose]) return decaf_in def set_transpose(self, in_, order): """ Set the input channel order for e.g. RGB to BGR conversion as needed for the reference ImageNet model. Parameters ---------- in_ : which input to assign this channel order order : the order to transpose the dimensions """ self.__check_input(in_) if len(order) != len(self.inputs[in_]) - 1: raise Exception('Transpose order needs to have the same number of ' 'dimensions as the input.') self.transpose[in_] = order def set_channel_swap(self, in_, order): """ Set the input channel order for e.g. RGB to BGR conversion as needed for the reference ImageNet model. N.B. this assumes the channels are the first dimension AFTER transpose. Parameters ---------- in_ : which input to assign this channel order order : the order to take the channels. (2,1,0) maps RGB to BGR for example. """ self.__check_input(in_) if len(order) != self.inputs[in_][1]: raise Exception('Channel swap needs to have the same number of ' 'dimensions as the input channels.') self.channel_swap[in_] = order def set_raw_scale(self, in_, scale): """ Set the scale of raw features s.t. the input blob = input * scale. While Python represents images in [0, 1], certain Caffe models like CaffeNet and AlexNet represent images in [0, 255] so the raw_scale of these models must be 255. Parameters ---------- in_ : which input to assign this scale factor scale : scale coefficient """ self.__check_input(in_) self.raw_scale[in_] = scale def set_mean(self, in_, mean): """ Set the mean to subtract for centering the data. Parameters ---------- in_ : which input to assign this mean. mean : mean ndarray (input dimensional or broadcastable) """ self.__check_input(in_) ms = mean.shape if mean.ndim == 1: # broadcast channels if ms[0] != self.inputs[in_][1]: raise ValueError('Mean channels incompatible with input.') mean = mean[:, np.newaxis, np.newaxis] else: # elementwise mean if len(ms) == 2: ms = (1,) + ms if len(ms) != 3: raise ValueError('Mean shape invalid') if ms != self.inputs[in_][1:]: raise ValueError('Mean shape incompatible with input shape.') self.mean[in_] = mean def set_input_scale(self, in_, scale): """ Set the scale of preprocessed inputs s.t. the blob = blob * scale. N.B. input_scale is done AFTER mean subtraction and other preprocessing while raw_scale is done BEFORE. Parameters ---------- in_ : which input to assign this scale factor scale : scale coefficient """ self.__check_input(in_) self.input_scale[in_] = scale ## Image IO def load_image(filename, color=True): """ Load an image converting from grayscale or alpha as needed. Parameters ---------- filename : string color : boolean flag for color format. True (default) loads as RGB while False loads as intensity (if image is already grayscale). Returns ------- image : an image with type np.float32 in range [0, 1] of size (H x W x 3) in RGB or of size (H x W x 1) in grayscale. """ img = skimage.img_as_float(skimage.io.imread(filename)).astype(np.float32) if img.ndim == 2: img = img[:, :, np.newaxis] if color: img = np.tile(img, (1, 1, 3)) elif img.shape[2] == 4: img = img[:, :, :3] return img def resize_image(im, new_dims, interp_order=1): """ Resize an image array with interpolation. Parameters ---------- im : (H x W x K) ndarray new_dims : (height, width) tuple of new dimensions. interp_order : interpolation order, default is linear. Returns ------- im : resized ndarray with shape (new_dims[0], new_dims[1], K) """ if im.shape[-1] == 1 or im.shape[-1] == 3: im_min, im_max = im.min(), im.max() if im_max > im_min: # skimage is fast but only understands {1,3} channel images # in [0, 1]. im_std = (im - im_min) / (im_max - im_min) resized_std = resize(im_std, new_dims, order=interp_order) resized_im = resized_std * (im_max - im_min) + im_min else: # the image is a constant -- avoid divide by 0 ret = np.empty((new_dims[0], new_dims[1], im.shape[-1]), dtype=np.float32) ret.fill(im_min) return ret else: # ndimage interpolates anything but more slowly. scale = tuple(np.array(new_dims) / np.array(im.shape[:2])) resized_im = zoom(im, scale + (1,), order=interp_order) return resized_im.astype(np.float32) def oversample(images, crop_dims): """ Crop images into the four corners, center, and their mirrored versions. Parameters ---------- image : iterable of (H x W x K) ndarrays crop_dims : (height, width) tuple for the crops. Returns ------- crops : (10*N x H x W x K) ndarray of crops for number of inputs N. """ # Dimensions and center. im_shape = np.array(images[0].shape) crop_dims = np.array(crop_dims) im_center = im_shape[:2] / 2.0 # Make crop coordinates h_indices = (0, im_shape[0] - crop_dims[0]) w_indices = (0, im_shape[1] - crop_dims[1]) crops_ix = np.empty((5, 4), dtype=int) curr = 0 for i in h_indices: for j in w_indices: crops_ix[curr] = (i, j, i + crop_dims[0], j + crop_dims[1]) curr += 1 crops_ix[4] = np.tile(im_center, (1, 2)) + np.concatenate([ -crop_dims / 2.0, crop_dims / 2.0 ]) crops_ix = np.tile(crops_ix, (2, 1)) # Extract crops crops = np.empty((10 * len(images), crop_dims[0], crop_dims[1], im_shape[-1]), dtype=np.float32) ix = 0 for im in images: for crop in crops_ix: crops[ix] = im[crop[0]:crop[2], crop[1]:crop[3], :] ix += 1 crops[ix-5:ix] = crops[ix-5:ix, :, ::-1, :] # flip for mirrors return crops
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DRT-master/caffe/python/caffe/test/test_python_layer_with_param_str.py
import unittest import tempfile import os import six import caffe class SimpleParamLayer(caffe.Layer): """A layer that just multiplies by the numeric value of its param string""" def setup(self, bottom, top): try: self.value = float(self.param_str) except ValueError: raise ValueError("Parameter string must be a legible float") def reshape(self, bottom, top): top[0].reshape(*bottom[0].data.shape) def forward(self, bottom, top): top[0].data[...] = self.value * bottom[0].data def backward(self, top, propagate_down, bottom): bottom[0].diff[...] = self.value * top[0].diff def python_param_net_file(): with tempfile.NamedTemporaryFile(mode='w+', delete=False) as f: f.write("""name: 'pythonnet' force_backward: true input: 'data' input_shape { dim: 10 dim: 9 dim: 8 } layer { type: 'Python' name: 'mul10' bottom: 'data' top: 'mul10' python_param { module: 'test_python_layer_with_param_str' layer: 'SimpleParamLayer' param_str: '10' } } layer { type: 'Python' name: 'mul2' bottom: 'mul10' top: 'mul2' python_param { module: 'test_python_layer_with_param_str' layer: 'SimpleParamLayer' param_str: '2' } }""") return f.name class TestLayerWithParam(unittest.TestCase): def setUp(self): net_file = python_param_net_file() self.net = caffe.Net(net_file, caffe.TRAIN) os.remove(net_file) def test_forward(self): x = 8 self.net.blobs['data'].data[...] = x self.net.forward() for y in self.net.blobs['mul2'].data.flat: self.assertEqual(y, 2 * 10 * x) def test_backward(self): x = 7 self.net.blobs['mul2'].diff[...] = x self.net.backward() for y in self.net.blobs['data'].diff.flat: self.assertEqual(y, 2 * 10 * x)
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DRT-master/caffe/python/caffe/test/test_solver.py
import unittest import tempfile import os import numpy as np import six import caffe from test_net import simple_net_file class TestSolver(unittest.TestCase): def setUp(self): self.num_output = 13 net_f = simple_net_file(self.num_output) f = tempfile.NamedTemporaryFile(mode='w+', delete=False) f.write("""net: '""" + net_f + """' test_iter: 10 test_interval: 10 base_lr: 0.01 momentum: 0.9 weight_decay: 0.0005 lr_policy: 'inv' gamma: 0.0001 power: 0.75 display: 100 max_iter: 100 snapshot_after_train: false""") f.close() self.solver = caffe.SGDSolver(f.name) # also make sure get_solver runs caffe.get_solver(f.name) caffe.set_mode_cpu() # fill in valid labels self.solver.net.blobs['label'].data[...] = \ np.random.randint(self.num_output, size=self.solver.net.blobs['label'].data.shape) self.solver.test_nets[0].blobs['label'].data[...] = \ np.random.randint(self.num_output, size=self.solver.test_nets[0].blobs['label'].data.shape) os.remove(f.name) os.remove(net_f) def test_solve(self): self.assertEqual(self.solver.iter, 0) self.solver.solve() self.assertEqual(self.solver.iter, 100) def test_net_memory(self): """Check that nets survive after the solver is destroyed.""" nets = [self.solver.net] + list(self.solver.test_nets) self.assertEqual(len(nets), 2) del self.solver total = 0 for net in nets: for ps in six.itervalues(net.params): for p in ps: total += p.data.sum() + p.diff.sum() for bl in six.itervalues(net.blobs): total += bl.data.sum() + bl.diff.sum()
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DRT-master/caffe/python/caffe/test/test_layer_type_list.py
import unittest import caffe class TestLayerTypeList(unittest.TestCase): def test_standard_types(self): for type_name in ['Data', 'Convolution', 'InnerProduct']: self.assertIn(type_name, caffe.layer_type_list(), '%s not in layer_type_list()' % type_name)
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DRT-master/caffe/python/caffe/test/test_net.py
import unittest import tempfile import os import numpy as np import six import caffe def simple_net_file(num_output): """Make a simple net prototxt, based on test_net.cpp, returning the name of the (temporary) file.""" f = tempfile.NamedTemporaryFile(mode='w+', delete=False) f.write("""name: 'testnet' force_backward: true layer { type: 'DummyData' name: 'data' top: 'data' top: 'label' dummy_data_param { num: 5 channels: 2 height: 3 width: 4 num: 5 channels: 1 height: 1 width: 1 data_filler { type: 'gaussian' std: 1 } data_filler { type: 'constant' } } } layer { type: 'Convolution' name: 'conv' bottom: 'data' top: 'conv' convolution_param { num_output: 11 kernel_size: 2 pad: 3 weight_filler { type: 'gaussian' std: 1 } bias_filler { type: 'constant' value: 2 } } param { decay_mult: 1 } param { decay_mult: 0 } } layer { type: 'InnerProduct' name: 'ip' bottom: 'conv' top: 'ip' inner_product_param { num_output: """ + str(num_output) + """ weight_filler { type: 'gaussian' std: 2.5 } bias_filler { type: 'constant' value: -3 } } } layer { type: 'SoftmaxWithLoss' name: 'loss' bottom: 'ip' bottom: 'label' top: 'loss' }""") f.close() return f.name class TestNet(unittest.TestCase): def setUp(self): self.num_output = 13 net_file = simple_net_file(self.num_output) self.net = caffe.Net(net_file, caffe.TRAIN) # fill in valid labels self.net.blobs['label'].data[...] = \ np.random.randint(self.num_output, size=self.net.blobs['label'].data.shape) os.remove(net_file) def test_memory(self): """Check that holding onto blob data beyond the life of a Net is OK""" params = sum(map(list, six.itervalues(self.net.params)), []) blobs = self.net.blobs.values() del self.net # now sum everything (forcing all memory to be read) total = 0 for p in params: total += p.data.sum() + p.diff.sum() for bl in blobs: total += bl.data.sum() + bl.diff.sum() def test_forward_backward(self): self.net.forward() self.net.backward() def test_inputs_outputs(self): self.assertEqual(self.net.inputs, []) self.assertEqual(self.net.outputs, ['loss']) def test_save_and_read(self): f = tempfile.NamedTemporaryFile(mode='w+', delete=False) f.close() self.net.save(f.name) net_file = simple_net_file(self.num_output) net2 = caffe.Net(net_file, f.name, caffe.TRAIN) os.remove(net_file) os.remove(f.name) for name in self.net.params: for i in range(len(self.net.params[name])): self.assertEqual(abs(self.net.params[name][i].data - net2.params[name][i].data).sum(), 0)
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DRT-master/caffe/python/caffe/test/test_net_spec.py
import unittest import tempfile import caffe from caffe import layers as L from caffe import params as P def lenet(batch_size): n = caffe.NetSpec() n.data, n.label = L.DummyData(shape=[dict(dim=[batch_size, 1, 28, 28]), dict(dim=[batch_size, 1, 1, 1])], transform_param=dict(scale=1./255), ntop=2) n.conv1 = L.Convolution(n.data, kernel_size=5, num_output=20, weight_filler=dict(type='xavier')) n.pool1 = L.Pooling(n.conv1, kernel_size=2, stride=2, pool=P.Pooling.MAX) n.conv2 = L.Convolution(n.pool1, kernel_size=5, num_output=50, weight_filler=dict(type='xavier')) n.pool2 = L.Pooling(n.conv2, kernel_size=2, stride=2, pool=P.Pooling.MAX) n.ip1 = L.InnerProduct(n.pool2, num_output=500, weight_filler=dict(type='xavier')) n.relu1 = L.ReLU(n.ip1, in_place=True) n.ip2 = L.InnerProduct(n.relu1, num_output=10, weight_filler=dict(type='xavier')) n.loss = L.SoftmaxWithLoss(n.ip2, n.label) return n.to_proto() def anon_lenet(batch_size): data, label = L.DummyData(shape=[dict(dim=[batch_size, 1, 28, 28]), dict(dim=[batch_size, 1, 1, 1])], transform_param=dict(scale=1./255), ntop=2) conv1 = L.Convolution(data, kernel_size=5, num_output=20, weight_filler=dict(type='xavier')) pool1 = L.Pooling(conv1, kernel_size=2, stride=2, pool=P.Pooling.MAX) conv2 = L.Convolution(pool1, kernel_size=5, num_output=50, weight_filler=dict(type='xavier')) pool2 = L.Pooling(conv2, kernel_size=2, stride=2, pool=P.Pooling.MAX) ip1 = L.InnerProduct(pool2, num_output=500, weight_filler=dict(type='xavier')) relu1 = L.ReLU(ip1, in_place=True) ip2 = L.InnerProduct(relu1, num_output=10, weight_filler=dict(type='xavier')) loss = L.SoftmaxWithLoss(ip2, label) return loss.to_proto() def silent_net(): n = caffe.NetSpec() n.data, n.data2 = L.DummyData(shape=dict(dim=3), ntop=2) n.silence_data = L.Silence(n.data, ntop=0) n.silence_data2 = L.Silence(n.data2, ntop=0) return n.to_proto() class TestNetSpec(unittest.TestCase): def load_net(self, net_proto): f = tempfile.NamedTemporaryFile(mode='w+', delete=False) f.write(str(net_proto)) f.close() return caffe.Net(f.name, caffe.TEST) def test_lenet(self): """Construct and build the Caffe version of LeNet.""" net_proto = lenet(50) # check that relu is in-place self.assertEqual(net_proto.layer[6].bottom, net_proto.layer[6].top) net = self.load_net(net_proto) # check that all layers are present self.assertEqual(len(net.layers), 9) # now the check the version with automatically-generated layer names net_proto = anon_lenet(50) self.assertEqual(net_proto.layer[6].bottom, net_proto.layer[6].top) net = self.load_net(net_proto) self.assertEqual(len(net.layers), 9) def test_zero_tops(self): """Test net construction for top-less layers.""" net_proto = silent_net() net = self.load_net(net_proto) self.assertEqual(len(net.forward()), 0)
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DRT-master/caffe/python/caffe/test/test_python_layer.py
import unittest import tempfile import os import six import caffe class SimpleLayer(caffe.Layer): """A layer that just multiplies by ten""" def setup(self, bottom, top): pass def reshape(self, bottom, top): top[0].reshape(*bottom[0].data.shape) def forward(self, bottom, top): top[0].data[...] = 10 * bottom[0].data def backward(self, top, propagate_down, bottom): bottom[0].diff[...] = 10 * top[0].diff class ExceptionLayer(caffe.Layer): """A layer for checking exceptions from Python""" def setup(self, bottom, top): raise RuntimeError class ParameterLayer(caffe.Layer): """A layer that just multiplies by ten""" def setup(self, bottom, top): self.blobs.add_blob(1) self.blobs[0].data[0] = 0 def reshape(self, bottom, top): top[0].reshape(*bottom[0].data.shape) def forward(self, bottom, top): pass def backward(self, top, propagate_down, bottom): self.blobs[0].diff[0] = 1 def python_net_file(): with tempfile.NamedTemporaryFile(mode='w+', delete=False) as f: f.write("""name: 'pythonnet' force_backward: true input: 'data' input_shape { dim: 10 dim: 9 dim: 8 } layer { type: 'Python' name: 'one' bottom: 'data' top: 'one' python_param { module: 'test_python_layer' layer: 'SimpleLayer' } } layer { type: 'Python' name: 'two' bottom: 'one' top: 'two' python_param { module: 'test_python_layer' layer: 'SimpleLayer' } } layer { type: 'Python' name: 'three' bottom: 'two' top: 'three' python_param { module: 'test_python_layer' layer: 'SimpleLayer' } }""") return f.name def exception_net_file(): with tempfile.NamedTemporaryFile(mode='w+', delete=False) as f: f.write("""name: 'pythonnet' force_backward: true input: 'data' input_shape { dim: 10 dim: 9 dim: 8 } layer { type: 'Python' name: 'layer' bottom: 'data' top: 'top' python_param { module: 'test_python_layer' layer: 'ExceptionLayer' } } """) return f.name def parameter_net_file(): with tempfile.NamedTemporaryFile(mode='w+', delete=False) as f: f.write("""name: 'pythonnet' force_backward: true input: 'data' input_shape { dim: 10 dim: 9 dim: 8 } layer { type: 'Python' name: 'layer' bottom: 'data' top: 'top' python_param { module: 'test_python_layer' layer: 'ParameterLayer' } } """) return f.name class TestPythonLayer(unittest.TestCase): def setUp(self): net_file = python_net_file() self.net = caffe.Net(net_file, caffe.TRAIN) os.remove(net_file) def test_forward(self): x = 8 self.net.blobs['data'].data[...] = x self.net.forward() for y in self.net.blobs['three'].data.flat: self.assertEqual(y, 10**3 * x) def test_backward(self): x = 7 self.net.blobs['three'].diff[...] = x self.net.backward() for y in self.net.blobs['data'].diff.flat: self.assertEqual(y, 10**3 * x) def test_reshape(self): s = 4 self.net.blobs['data'].reshape(s, s, s, s) self.net.forward() for blob in six.itervalues(self.net.blobs): for d in blob.data.shape: self.assertEqual(s, d) def test_exception(self): net_file = exception_net_file() self.assertRaises(RuntimeError, caffe.Net, net_file, caffe.TEST) os.remove(net_file) def test_parameter(self): net_file = parameter_net_file() net = caffe.Net(net_file, caffe.TRAIN) # Test forward and backward net.forward() net.backward() layer = net.layers[list(net._layer_names).index('layer')] self.assertEqual(layer.blobs[0].data[0], 0) self.assertEqual(layer.blobs[0].diff[0], 1) layer.blobs[0].data[0] += layer.blobs[0].diff[0] self.assertEqual(layer.blobs[0].data[0], 1) # Test saving and loading h, caffemodel_file = tempfile.mkstemp() net.save(caffemodel_file) layer.blobs[0].data[0] = -1 self.assertEqual(layer.blobs[0].data[0], -1) net.copy_from(caffemodel_file) self.assertEqual(layer.blobs[0].data[0], 1) os.remove(caffemodel_file) # Test weight sharing net2 = caffe.Net(net_file, caffe.TRAIN) net2.share_with(net) layer = net.layers[list(net2._layer_names).index('layer')] self.assertEqual(layer.blobs[0].data[0], 1) os.remove(net_file)
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DRT
DRT-master/caffe/scripts/cpp_lint.py
#!/usr/bin/python2 # # Copyright (c) 2009 Google Inc. All rights reserved. # # Redistribution and use in source and binary forms, with or without # modification, are permitted provided that the following conditions are # met: # # * Redistributions of source code must retain the above copyright # notice, this list of conditions and the following disclaimer. # * Redistributions in binary form must reproduce the above # copyright notice, this list of conditions and the following disclaimer # in the documentation and/or other materials provided with the # distribution. # * Neither the name of Google Inc. nor the names of its # contributors may be used to endorse or promote products derived from # this software without specific prior written permission. # # THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS # "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT # LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR # A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT # OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, # SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT # LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, # DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY # THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT # (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE # OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. """Does google-lint on c++ files. The goal of this script is to identify places in the code that *may* be in non-compliance with google style. It does not attempt to fix up these problems -- the point is to educate. It does also not attempt to find all problems, or to ensure that everything it does find is legitimately a problem. In particular, we can get very confused by /* and // inside strings! We do a small hack, which is to ignore //'s with "'s after them on the same line, but it is far from perfect (in either direction). """ import codecs import copy import getopt import math # for log import os import re import sre_compile import string import sys import unicodedata _USAGE = """ Syntax: cpp_lint.py [--verbose=#] [--output=vs7] [--filter=-x,+y,...] [--counting=total|toplevel|detailed] [--root=subdir] [--linelength=digits] <file> [file] ... The style guidelines this tries to follow are those in http://google-styleguide.googlecode.com/svn/trunk/cppguide.xml Every problem is given a confidence score from 1-5, with 5 meaning we are certain of the problem, and 1 meaning it could be a legitimate construct. This will miss some errors, and is not a substitute for a code review. To suppress false-positive errors of a certain category, add a 'NOLINT(category)' comment to the line. NOLINT or NOLINT(*) suppresses errors of all categories on that line. The files passed in will be linted; at least one file must be provided. Default linted extensions are .cc, .cpp, .cu, .cuh and .h. Change the extensions with the --extensions flag. Flags: output=vs7 By default, the output is formatted to ease emacs parsing. Visual Studio compatible output (vs7) may also be used. Other formats are unsupported. verbose=# Specify a number 0-5 to restrict errors to certain verbosity levels. filter=-x,+y,... Specify a comma-separated list of category-filters to apply: only error messages whose category names pass the filters will be printed. (Category names are printed with the message and look like "[whitespace/indent]".) Filters are evaluated left to right. "-FOO" and "FOO" means "do not print categories that start with FOO". "+FOO" means "do print categories that start with FOO". Examples: --filter=-whitespace,+whitespace/braces --filter=whitespace,runtime/printf,+runtime/printf_format --filter=-,+build/include_what_you_use To see a list of all the categories used in cpplint, pass no arg: --filter= counting=total|toplevel|detailed The total number of errors found is always printed. If 'toplevel' is provided, then the count of errors in each of the top-level categories like 'build' and 'whitespace' will also be printed. If 'detailed' is provided, then a count is provided for each category like 'build/class'. root=subdir The root directory used for deriving header guard CPP variable. By default, the header guard CPP variable is calculated as the relative path to the directory that contains .git, .hg, or .svn. When this flag is specified, the relative path is calculated from the specified directory. If the specified directory does not exist, this flag is ignored. Examples: Assuing that src/.git exists, the header guard CPP variables for src/chrome/browser/ui/browser.h are: No flag => CHROME_BROWSER_UI_BROWSER_H_ --root=chrome => BROWSER_UI_BROWSER_H_ --root=chrome/browser => UI_BROWSER_H_ linelength=digits This is the allowed line length for the project. The default value is 80 characters. Examples: --linelength=120 extensions=extension,extension,... The allowed file extensions that cpplint will check Examples: --extensions=hpp,cpp """ # We categorize each error message we print. Here are the categories. # We want an explicit list so we can list them all in cpplint --filter=. # If you add a new error message with a new category, add it to the list # here! cpplint_unittest.py should tell you if you forget to do this. _ERROR_CATEGORIES = [ 'build/class', 'build/deprecated', 'build/endif_comment', 'build/explicit_make_pair', 'build/forward_decl', 'build/header_guard', 'build/include', 'build/include_alpha', 'build/include_dir', 'build/include_order', 'build/include_what_you_use', 'build/namespaces', 'build/printf_format', 'build/storage_class', 'caffe/alt_fn', 'caffe/data_layer_setup', 'caffe/random_fn', 'legal/copyright', 'readability/alt_tokens', 'readability/braces', 'readability/casting', 'readability/check', 'readability/constructors', 'readability/fn_size', 'readability/function', 'readability/multiline_comment', 'readability/multiline_string', 'readability/namespace', 'readability/nolint', 'readability/nul', 'readability/streams', 'readability/todo', 'readability/utf8', 'runtime/arrays', 'runtime/casting', 'runtime/explicit', 'runtime/int', 'runtime/init', 'runtime/invalid_increment', 'runtime/member_string_references', 'runtime/memset', 'runtime/operator', 'runtime/printf', 'runtime/printf_format', 'runtime/references', 'runtime/string', 'runtime/threadsafe_fn', 'runtime/vlog', 'whitespace/blank_line', 'whitespace/braces', 'whitespace/comma', 'whitespace/comments', 'whitespace/empty_conditional_body', 'whitespace/empty_loop_body', 'whitespace/end_of_line', 'whitespace/ending_newline', 'whitespace/forcolon', 'whitespace/indent', 'whitespace/line_length', 'whitespace/newline', 'whitespace/operators', 'whitespace/parens', 'whitespace/semicolon', 'whitespace/tab', 'whitespace/todo' ] # The default state of the category filter. This is overrided by the --filter= # flag. By default all errors are on, so only add here categories that should be # off by default (i.e., categories that must be enabled by the --filter= flags). # All entries here should start with a '-' or '+', as in the --filter= flag. _DEFAULT_FILTERS = [ '-build/include_dir', '-readability/todo', ] # We used to check for high-bit characters, but after much discussion we # decided those were OK, as long as they were in UTF-8 and didn't represent # hard-coded international strings, which belong in a separate i18n file. # C++ headers _CPP_HEADERS = frozenset([ # Legacy 'algobase.h', 'algo.h', 'alloc.h', 'builtinbuf.h', 'bvector.h', 'complex.h', 'defalloc.h', 'deque.h', 'editbuf.h', 'fstream.h', 'function.h', 'hash_map', 'hash_map.h', 'hash_set', 'hash_set.h', 'hashtable.h', 'heap.h', 'indstream.h', 'iomanip.h', 'iostream.h', 'istream.h', 'iterator.h', 'list.h', 'map.h', 'multimap.h', 'multiset.h', 'ostream.h', 'pair.h', 'parsestream.h', 'pfstream.h', 'procbuf.h', 'pthread_alloc', 'pthread_alloc.h', 'rope', 'rope.h', 'ropeimpl.h', 'set.h', 'slist', 'slist.h', 'stack.h', 'stdiostream.h', 'stl_alloc.h', 'stl_relops.h', 'streambuf.h', 'stream.h', 'strfile.h', 'strstream.h', 'tempbuf.h', 'tree.h', 'type_traits.h', 'vector.h', # 17.6.1.2 C++ library headers 'algorithm', 'array', 'atomic', 'bitset', 'chrono', 'codecvt', 'complex', 'condition_variable', 'deque', 'exception', 'forward_list', 'fstream', 'functional', 'future', 'initializer_list', 'iomanip', 'ios', 'iosfwd', 'iostream', 'istream', 'iterator', 'limits', 'list', 'locale', 'map', 'memory', 'mutex', 'new', 'numeric', 'ostream', 'queue', 'random', 'ratio', 'regex', 'set', 'sstream', 'stack', 'stdexcept', 'streambuf', 'string', 'strstream', 'system_error', 'thread', 'tuple', 'typeindex', 'typeinfo', 'type_traits', 'unordered_map', 'unordered_set', 'utility', 'valarray', 'vector', # 17.6.1.2 C++ headers for C library facilities 'cassert', 'ccomplex', 'cctype', 'cerrno', 'cfenv', 'cfloat', 'cinttypes', 'ciso646', 'climits', 'clocale', 'cmath', 'csetjmp', 'csignal', 'cstdalign', 'cstdarg', 'cstdbool', 'cstddef', 'cstdint', 'cstdio', 'cstdlib', 'cstring', 'ctgmath', 'ctime', 'cuchar', 'cwchar', 'cwctype', ]) # Assertion macros. These are defined in base/logging.h and # testing/base/gunit.h. Note that the _M versions need to come first # for substring matching to work. _CHECK_MACROS = [ 'DCHECK', 'CHECK', 'EXPECT_TRUE_M', 'EXPECT_TRUE', 'ASSERT_TRUE_M', 'ASSERT_TRUE', 'EXPECT_FALSE_M', 'EXPECT_FALSE', 'ASSERT_FALSE_M', 'ASSERT_FALSE', ] # Replacement macros for CHECK/DCHECK/EXPECT_TRUE/EXPECT_FALSE _CHECK_REPLACEMENT = dict([(m, {}) for m in _CHECK_MACROS]) for op, replacement in [('==', 'EQ'), ('!=', 'NE'), ('>=', 'GE'), ('>', 'GT'), ('<=', 'LE'), ('<', 'LT')]: _CHECK_REPLACEMENT['DCHECK'][op] = 'DCHECK_%s' % replacement _CHECK_REPLACEMENT['CHECK'][op] = 'CHECK_%s' % replacement _CHECK_REPLACEMENT['EXPECT_TRUE'][op] = 'EXPECT_%s' % replacement _CHECK_REPLACEMENT['ASSERT_TRUE'][op] = 'ASSERT_%s' % replacement _CHECK_REPLACEMENT['EXPECT_TRUE_M'][op] = 'EXPECT_%s_M' % replacement _CHECK_REPLACEMENT['ASSERT_TRUE_M'][op] = 'ASSERT_%s_M' % replacement for op, inv_replacement in [('==', 'NE'), ('!=', 'EQ'), ('>=', 'LT'), ('>', 'LE'), ('<=', 'GT'), ('<', 'GE')]: _CHECK_REPLACEMENT['EXPECT_FALSE'][op] = 'EXPECT_%s' % inv_replacement _CHECK_REPLACEMENT['ASSERT_FALSE'][op] = 'ASSERT_%s' % inv_replacement _CHECK_REPLACEMENT['EXPECT_FALSE_M'][op] = 'EXPECT_%s_M' % inv_replacement _CHECK_REPLACEMENT['ASSERT_FALSE_M'][op] = 'ASSERT_%s_M' % inv_replacement # Alternative tokens and their replacements. For full list, see section 2.5 # Alternative tokens [lex.digraph] in the C++ standard. # # Digraphs (such as '%:') are not included here since it's a mess to # match those on a word boundary. _ALT_TOKEN_REPLACEMENT = { 'and': '&&', 'bitor': '|', 'or': '||', 'xor': '^', 'compl': '~', 'bitand': '&', 'and_eq': '&=', 'or_eq': '|=', 'xor_eq': '^=', 'not': '!', 'not_eq': '!=' } # Compile regular expression that matches all the above keywords. The "[ =()]" # bit is meant to avoid matching these keywords outside of boolean expressions. # # False positives include C-style multi-line comments and multi-line strings # but those have always been troublesome for cpplint. _ALT_TOKEN_REPLACEMENT_PATTERN = re.compile( r'[ =()](' + ('|'.join(_ALT_TOKEN_REPLACEMENT.keys())) + r')(?=[ (]|$)') # These constants define types of headers for use with # _IncludeState.CheckNextIncludeOrder(). _C_SYS_HEADER = 1 _CPP_SYS_HEADER = 2 _LIKELY_MY_HEADER = 3 _POSSIBLE_MY_HEADER = 4 _OTHER_HEADER = 5 # These constants define the current inline assembly state _NO_ASM = 0 # Outside of inline assembly block _INSIDE_ASM = 1 # Inside inline assembly block _END_ASM = 2 # Last line of inline assembly block _BLOCK_ASM = 3 # The whole block is an inline assembly block # Match start of assembly blocks _MATCH_ASM = re.compile(r'^\s*(?:asm|_asm|__asm|__asm__)' r'(?:\s+(volatile|__volatile__))?' r'\s*[{(]') _regexp_compile_cache = {} # Finds occurrences of NOLINT[_NEXT_LINE] or NOLINT[_NEXT_LINE](...). _RE_SUPPRESSION = re.compile(r'\bNOLINT(_NEXT_LINE)?\b(\([^)]*\))?') # {str, set(int)}: a map from error categories to sets of linenumbers # on which those errors are expected and should be suppressed. _error_suppressions = {} # Finds Copyright. _RE_COPYRIGHT = re.compile(r'Copyright') # The root directory used for deriving header guard CPP variable. # This is set by --root flag. _root = None # The allowed line length of files. # This is set by --linelength flag. _line_length = 80 # The allowed extensions for file names # This is set by --extensions flag. _valid_extensions = set(['cc', 'h', 'cpp', 'hpp', 'cu', 'cuh']) def ParseNolintSuppressions(filename, raw_line, linenum, error): """Updates the global list of error-suppressions. Parses any NOLINT comments on the current line, updating the global error_suppressions store. Reports an error if the NOLINT comment was malformed. Args: filename: str, the name of the input file. raw_line: str, the line of input text, with comments. linenum: int, the number of the current line. error: function, an error handler. """ # FIXME(adonovan): "NOLINT(" is misparsed as NOLINT(*). matched = _RE_SUPPRESSION.search(raw_line) if matched: if matched.group(1) == '_NEXT_LINE': linenum += 1 category = matched.group(2) if category in (None, '(*)'): # => "suppress all" _error_suppressions.setdefault(None, set()).add(linenum) else: if category.startswith('(') and category.endswith(')'): category = category[1:-1] if category in _ERROR_CATEGORIES: _error_suppressions.setdefault(category, set()).add(linenum) else: error(filename, linenum, 'readability/nolint', 5, 'Unknown NOLINT error category: %s' % category) def ResetNolintSuppressions(): "Resets the set of NOLINT suppressions to empty." _error_suppressions.clear() def IsErrorSuppressedByNolint(category, linenum): """Returns true if the specified error category is suppressed on this line. Consults the global error_suppressions map populated by ParseNolintSuppressions/ResetNolintSuppressions. Args: category: str, the category of the error. linenum: int, the current line number. Returns: bool, True iff the error should be suppressed due to a NOLINT comment. """ return (linenum in _error_suppressions.get(category, set()) or linenum in _error_suppressions.get(None, set())) def Match(pattern, s): """Matches the string with the pattern, caching the compiled regexp.""" # The regexp compilation caching is inlined in both Match and Search for # performance reasons; factoring it out into a separate function turns out # to be noticeably expensive. if pattern not in _regexp_compile_cache: _regexp_compile_cache[pattern] = sre_compile.compile(pattern) return _regexp_compile_cache[pattern].match(s) def ReplaceAll(pattern, rep, s): """Replaces instances of pattern in a string with a replacement. The compiled regex is kept in a cache shared by Match and Search. Args: pattern: regex pattern rep: replacement text s: search string Returns: string with replacements made (or original string if no replacements) """ if pattern not in _regexp_compile_cache: _regexp_compile_cache[pattern] = sre_compile.compile(pattern) return _regexp_compile_cache[pattern].sub(rep, s) def Search(pattern, s): """Searches the string for the pattern, caching the compiled regexp.""" if pattern not in _regexp_compile_cache: _regexp_compile_cache[pattern] = sre_compile.compile(pattern) return _regexp_compile_cache[pattern].search(s) class _IncludeState(dict): """Tracks line numbers for includes, and the order in which includes appear. As a dict, an _IncludeState object serves as a mapping between include filename and line number on which that file was included. Call CheckNextIncludeOrder() once for each header in the file, passing in the type constants defined above. Calls in an illegal order will raise an _IncludeError with an appropriate error message. """ # self._section will move monotonically through this set. If it ever # needs to move backwards, CheckNextIncludeOrder will raise an error. _INITIAL_SECTION = 0 _MY_H_SECTION = 1 _C_SECTION = 2 _CPP_SECTION = 3 _OTHER_H_SECTION = 4 _TYPE_NAMES = { _C_SYS_HEADER: 'C system header', _CPP_SYS_HEADER: 'C++ system header', _LIKELY_MY_HEADER: 'header this file implements', _POSSIBLE_MY_HEADER: 'header this file may implement', _OTHER_HEADER: 'other header', } _SECTION_NAMES = { _INITIAL_SECTION: "... nothing. (This can't be an error.)", _MY_H_SECTION: 'a header this file implements', _C_SECTION: 'C system header', _CPP_SECTION: 'C++ system header', _OTHER_H_SECTION: 'other header', } def __init__(self): dict.__init__(self) self.ResetSection() def ResetSection(self): # The name of the current section. self._section = self._INITIAL_SECTION # The path of last found header. self._last_header = '' def SetLastHeader(self, header_path): self._last_header = header_path def CanonicalizeAlphabeticalOrder(self, header_path): """Returns a path canonicalized for alphabetical comparison. - replaces "-" with "_" so they both cmp the same. - removes '-inl' since we don't require them to be after the main header. - lowercase everything, just in case. Args: header_path: Path to be canonicalized. Returns: Canonicalized path. """ return header_path.replace('-inl.h', '.h').replace('-', '_').lower() def IsInAlphabeticalOrder(self, clean_lines, linenum, header_path): """Check if a header is in alphabetical order with the previous header. Args: clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. header_path: Canonicalized header to be checked. Returns: Returns true if the header is in alphabetical order. """ # If previous section is different from current section, _last_header will # be reset to empty string, so it's always less than current header. # # If previous line was a blank line, assume that the headers are # intentionally sorted the way they are. if (self._last_header > header_path and not Match(r'^\s*$', clean_lines.elided[linenum - 1])): return False return True def CheckNextIncludeOrder(self, header_type): """Returns a non-empty error message if the next header is out of order. This function also updates the internal state to be ready to check the next include. Args: header_type: One of the _XXX_HEADER constants defined above. Returns: The empty string if the header is in the right order, or an error message describing what's wrong. """ error_message = ('Found %s after %s' % (self._TYPE_NAMES[header_type], self._SECTION_NAMES[self._section])) last_section = self._section if header_type == _C_SYS_HEADER: if self._section <= self._C_SECTION: self._section = self._C_SECTION else: self._last_header = '' return error_message elif header_type == _CPP_SYS_HEADER: if self._section <= self._CPP_SECTION: self._section = self._CPP_SECTION else: self._last_header = '' return error_message elif header_type == _LIKELY_MY_HEADER: if self._section <= self._MY_H_SECTION: self._section = self._MY_H_SECTION else: self._section = self._OTHER_H_SECTION elif header_type == _POSSIBLE_MY_HEADER: if self._section <= self._MY_H_SECTION: self._section = self._MY_H_SECTION else: # This will always be the fallback because we're not sure # enough that the header is associated with this file. self._section = self._OTHER_H_SECTION else: assert header_type == _OTHER_HEADER self._section = self._OTHER_H_SECTION if last_section != self._section: self._last_header = '' return '' class _CppLintState(object): """Maintains module-wide state..""" def __init__(self): self.verbose_level = 1 # global setting. self.error_count = 0 # global count of reported errors # filters to apply when emitting error messages self.filters = _DEFAULT_FILTERS[:] self.counting = 'total' # In what way are we counting errors? self.errors_by_category = {} # string to int dict storing error counts # output format: # "emacs" - format that emacs can parse (default) # "vs7" - format that Microsoft Visual Studio 7 can parse self.output_format = 'emacs' def SetOutputFormat(self, output_format): """Sets the output format for errors.""" self.output_format = output_format def SetVerboseLevel(self, level): """Sets the module's verbosity, and returns the previous setting.""" last_verbose_level = self.verbose_level self.verbose_level = level return last_verbose_level def SetCountingStyle(self, counting_style): """Sets the module's counting options.""" self.counting = counting_style def SetFilters(self, filters): """Sets the error-message filters. These filters are applied when deciding whether to emit a given error message. Args: filters: A string of comma-separated filters (eg "+whitespace/indent"). Each filter should start with + or -; else we die. Raises: ValueError: The comma-separated filters did not all start with '+' or '-'. E.g. "-,+whitespace,-whitespace/indent,whitespace/badfilter" """ # Default filters always have less priority than the flag ones. self.filters = _DEFAULT_FILTERS[:] for filt in filters.split(','): clean_filt = filt.strip() if clean_filt: self.filters.append(clean_filt) for filt in self.filters: if not (filt.startswith('+') or filt.startswith('-')): raise ValueError('Every filter in --filters must start with + or -' ' (%s does not)' % filt) def ResetErrorCounts(self): """Sets the module's error statistic back to zero.""" self.error_count = 0 self.errors_by_category = {} def IncrementErrorCount(self, category): """Bumps the module's error statistic.""" self.error_count += 1 if self.counting in ('toplevel', 'detailed'): if self.counting != 'detailed': category = category.split('/')[0] if category not in self.errors_by_category: self.errors_by_category[category] = 0 self.errors_by_category[category] += 1 def PrintErrorCounts(self): """Print a summary of errors by category, and the total.""" for category, count in self.errors_by_category.iteritems(): sys.stderr.write('Category \'%s\' errors found: %d\n' % (category, count)) sys.stderr.write('Total errors found: %d\n' % self.error_count) _cpplint_state = _CppLintState() def _OutputFormat(): """Gets the module's output format.""" return _cpplint_state.output_format def _SetOutputFormat(output_format): """Sets the module's output format.""" _cpplint_state.SetOutputFormat(output_format) def _VerboseLevel(): """Returns the module's verbosity setting.""" return _cpplint_state.verbose_level def _SetVerboseLevel(level): """Sets the module's verbosity, and returns the previous setting.""" return _cpplint_state.SetVerboseLevel(level) def _SetCountingStyle(level): """Sets the module's counting options.""" _cpplint_state.SetCountingStyle(level) def _Filters(): """Returns the module's list of output filters, as a list.""" return _cpplint_state.filters def _SetFilters(filters): """Sets the module's error-message filters. These filters are applied when deciding whether to emit a given error message. Args: filters: A string of comma-separated filters (eg "whitespace/indent"). Each filter should start with + or -; else we die. """ _cpplint_state.SetFilters(filters) class _FunctionState(object): """Tracks current function name and the number of lines in its body.""" _NORMAL_TRIGGER = 250 # for --v=0, 500 for --v=1, etc. _TEST_TRIGGER = 400 # about 50% more than _NORMAL_TRIGGER. def __init__(self): self.in_a_function = False self.lines_in_function = 0 self.current_function = '' def Begin(self, function_name): """Start analyzing function body. Args: function_name: The name of the function being tracked. """ self.in_a_function = True self.lines_in_function = 0 self.current_function = function_name def Count(self): """Count line in current function body.""" if self.in_a_function: self.lines_in_function += 1 def Check(self, error, filename, linenum): """Report if too many lines in function body. Args: error: The function to call with any errors found. filename: The name of the current file. linenum: The number of the line to check. """ if Match(r'T(EST|est)', self.current_function): base_trigger = self._TEST_TRIGGER else: base_trigger = self._NORMAL_TRIGGER trigger = base_trigger * 2**_VerboseLevel() if self.lines_in_function > trigger: error_level = int(math.log(self.lines_in_function / base_trigger, 2)) # 50 => 0, 100 => 1, 200 => 2, 400 => 3, 800 => 4, 1600 => 5, ... if error_level > 5: error_level = 5 error(filename, linenum, 'readability/fn_size', error_level, 'Small and focused functions are preferred:' ' %s has %d non-comment lines' ' (error triggered by exceeding %d lines).' % ( self.current_function, self.lines_in_function, trigger)) def End(self): """Stop analyzing function body.""" self.in_a_function = False class _IncludeError(Exception): """Indicates a problem with the include order in a file.""" pass class FileInfo: """Provides utility functions for filenames. FileInfo provides easy access to the components of a file's path relative to the project root. """ def __init__(self, filename): self._filename = filename def FullName(self): """Make Windows paths like Unix.""" return os.path.abspath(self._filename).replace('\\', '/') def RepositoryName(self): """FullName after removing the local path to the repository. If we have a real absolute path name here we can try to do something smart: detecting the root of the checkout and truncating /path/to/checkout from the name so that we get header guards that don't include things like "C:\Documents and Settings\..." or "/home/username/..." in them and thus people on different computers who have checked the source out to different locations won't see bogus errors. """ fullname = self.FullName() if os.path.exists(fullname): project_dir = os.path.dirname(fullname) if os.path.exists(os.path.join(project_dir, ".svn")): # If there's a .svn file in the current directory, we recursively look # up the directory tree for the top of the SVN checkout root_dir = project_dir one_up_dir = os.path.dirname(root_dir) while os.path.exists(os.path.join(one_up_dir, ".svn")): root_dir = os.path.dirname(root_dir) one_up_dir = os.path.dirname(one_up_dir) prefix = os.path.commonprefix([root_dir, project_dir]) return fullname[len(prefix) + 1:] # Not SVN <= 1.6? Try to find a git, hg, or svn top level directory by # searching up from the current path. root_dir = os.path.dirname(fullname) while (root_dir != os.path.dirname(root_dir) and not os.path.exists(os.path.join(root_dir, ".git")) and not os.path.exists(os.path.join(root_dir, ".hg")) and not os.path.exists(os.path.join(root_dir, ".svn"))): root_dir = os.path.dirname(root_dir) if (os.path.exists(os.path.join(root_dir, ".git")) or os.path.exists(os.path.join(root_dir, ".hg")) or os.path.exists(os.path.join(root_dir, ".svn"))): prefix = os.path.commonprefix([root_dir, project_dir]) return fullname[len(prefix) + 1:] # Don't know what to do; header guard warnings may be wrong... return fullname def Split(self): """Splits the file into the directory, basename, and extension. For 'chrome/browser/browser.cc', Split() would return ('chrome/browser', 'browser', '.cc') Returns: A tuple of (directory, basename, extension). """ googlename = self.RepositoryName() project, rest = os.path.split(googlename) return (project,) + os.path.splitext(rest) def BaseName(self): """File base name - text after the final slash, before the final period.""" return self.Split()[1] def Extension(self): """File extension - text following the final period.""" return self.Split()[2] def NoExtension(self): """File has no source file extension.""" return '/'.join(self.Split()[0:2]) def IsSource(self): """File has a source file extension.""" return self.Extension()[1:] in ('c', 'cc', 'cpp', 'cxx') def _ShouldPrintError(category, confidence, linenum): """If confidence >= verbose, category passes filter and is not suppressed.""" # There are three ways we might decide not to print an error message: # a "NOLINT(category)" comment appears in the source, # the verbosity level isn't high enough, or the filters filter it out. if IsErrorSuppressedByNolint(category, linenum): return False if confidence < _cpplint_state.verbose_level: return False is_filtered = False for one_filter in _Filters(): if one_filter.startswith('-'): if category.startswith(one_filter[1:]): is_filtered = True elif one_filter.startswith('+'): if category.startswith(one_filter[1:]): is_filtered = False else: assert False # should have been checked for in SetFilter. if is_filtered: return False return True def Error(filename, linenum, category, confidence, message): """Logs the fact we've found a lint error. We log where the error was found, and also our confidence in the error, that is, how certain we are this is a legitimate style regression, and not a misidentification or a use that's sometimes justified. False positives can be suppressed by the use of "cpplint(category)" comments on the offending line. These are parsed into _error_suppressions. Args: filename: The name of the file containing the error. linenum: The number of the line containing the error. category: A string used to describe the "category" this bug falls under: "whitespace", say, or "runtime". Categories may have a hierarchy separated by slashes: "whitespace/indent". confidence: A number from 1-5 representing a confidence score for the error, with 5 meaning that we are certain of the problem, and 1 meaning that it could be a legitimate construct. message: The error message. """ if _ShouldPrintError(category, confidence, linenum): _cpplint_state.IncrementErrorCount(category) if _cpplint_state.output_format == 'vs7': sys.stderr.write('%s(%s): %s [%s] [%d]\n' % ( filename, linenum, message, category, confidence)) elif _cpplint_state.output_format == 'eclipse': sys.stderr.write('%s:%s: warning: %s [%s] [%d]\n' % ( filename, linenum, message, category, confidence)) else: sys.stderr.write('%s:%s: %s [%s] [%d]\n' % ( filename, linenum, message, category, confidence)) # Matches standard C++ escape sequences per 2.13.2.3 of the C++ standard. _RE_PATTERN_CLEANSE_LINE_ESCAPES = re.compile( r'\\([abfnrtv?"\\\']|\d+|x[0-9a-fA-F]+)') # Matches strings. Escape codes should already be removed by ESCAPES. _RE_PATTERN_CLEANSE_LINE_DOUBLE_QUOTES = re.compile(r'"[^"]*"') # Matches characters. Escape codes should already be removed by ESCAPES. _RE_PATTERN_CLEANSE_LINE_SINGLE_QUOTES = re.compile(r"'.'") # Matches multi-line C++ comments. # This RE is a little bit more complicated than one might expect, because we # have to take care of space removals tools so we can handle comments inside # statements better. # The current rule is: We only clear spaces from both sides when we're at the # end of the line. Otherwise, we try to remove spaces from the right side, # if this doesn't work we try on left side but only if there's a non-character # on the right. _RE_PATTERN_CLEANSE_LINE_C_COMMENTS = re.compile( r"""(\s*/\*.*\*/\s*$| /\*.*\*/\s+| \s+/\*.*\*/(?=\W)| /\*.*\*/)""", re.VERBOSE) def IsCppString(line): """Does line terminate so, that the next symbol is in string constant. This function does not consider single-line nor multi-line comments. Args: line: is a partial line of code starting from the 0..n. Returns: True, if next character appended to 'line' is inside a string constant. """ line = line.replace(r'\\', 'XX') # after this, \\" does not match to \" return ((line.count('"') - line.count(r'\"') - line.count("'\"'")) & 1) == 1 def CleanseRawStrings(raw_lines): """Removes C++11 raw strings from lines. Before: static const char kData[] = R"( multi-line string )"; After: static const char kData[] = "" (replaced by blank line) ""; Args: raw_lines: list of raw lines. Returns: list of lines with C++11 raw strings replaced by empty strings. """ delimiter = None lines_without_raw_strings = [] for line in raw_lines: if delimiter: # Inside a raw string, look for the end end = line.find(delimiter) if end >= 0: # Found the end of the string, match leading space for this # line and resume copying the original lines, and also insert # a "" on the last line. leading_space = Match(r'^(\s*)\S', line) line = leading_space.group(1) + '""' + line[end + len(delimiter):] delimiter = None else: # Haven't found the end yet, append a blank line. line = '' else: # Look for beginning of a raw string. # See 2.14.15 [lex.string] for syntax. matched = Match(r'^(.*)\b(?:R|u8R|uR|UR|LR)"([^\s\\()]*)\((.*)$', line) if matched: delimiter = ')' + matched.group(2) + '"' end = matched.group(3).find(delimiter) if end >= 0: # Raw string ended on same line line = (matched.group(1) + '""' + matched.group(3)[end + len(delimiter):]) delimiter = None else: # Start of a multi-line raw string line = matched.group(1) + '""' lines_without_raw_strings.append(line) # TODO(unknown): if delimiter is not None here, we might want to # emit a warning for unterminated string. return lines_without_raw_strings def FindNextMultiLineCommentStart(lines, lineix): """Find the beginning marker for a multiline comment.""" while lineix < len(lines): if lines[lineix].strip().startswith('/*'): # Only return this marker if the comment goes beyond this line if lines[lineix].strip().find('*/', 2) < 0: return lineix lineix += 1 return len(lines) def FindNextMultiLineCommentEnd(lines, lineix): """We are inside a comment, find the end marker.""" while lineix < len(lines): if lines[lineix].strip().endswith('*/'): return lineix lineix += 1 return len(lines) def RemoveMultiLineCommentsFromRange(lines, begin, end): """Clears a range of lines for multi-line comments.""" # Having // dummy comments makes the lines non-empty, so we will not get # unnecessary blank line warnings later in the code. for i in range(begin, end): lines[i] = '// dummy' def RemoveMultiLineComments(filename, lines, error): """Removes multiline (c-style) comments from lines.""" lineix = 0 while lineix < len(lines): lineix_begin = FindNextMultiLineCommentStart(lines, lineix) if lineix_begin >= len(lines): return lineix_end = FindNextMultiLineCommentEnd(lines, lineix_begin) if lineix_end >= len(lines): error(filename, lineix_begin + 1, 'readability/multiline_comment', 5, 'Could not find end of multi-line comment') return RemoveMultiLineCommentsFromRange(lines, lineix_begin, lineix_end + 1) lineix = lineix_end + 1 def CleanseComments(line): """Removes //-comments and single-line C-style /* */ comments. Args: line: A line of C++ source. Returns: The line with single-line comments removed. """ commentpos = line.find('//') if commentpos != -1 and not IsCppString(line[:commentpos]): line = line[:commentpos].rstrip() # get rid of /* ... */ return _RE_PATTERN_CLEANSE_LINE_C_COMMENTS.sub('', line) class CleansedLines(object): """Holds 3 copies of all lines with different preprocessing applied to them. 1) elided member contains lines without strings and comments, 2) lines member contains lines without comments, and 3) raw_lines member contains all the lines without processing. All these three members are of <type 'list'>, and of the same length. """ def __init__(self, lines): self.elided = [] self.lines = [] self.raw_lines = lines self.num_lines = len(lines) self.lines_without_raw_strings = CleanseRawStrings(lines) for linenum in range(len(self.lines_without_raw_strings)): self.lines.append(CleanseComments( self.lines_without_raw_strings[linenum])) elided = self._CollapseStrings(self.lines_without_raw_strings[linenum]) self.elided.append(CleanseComments(elided)) def NumLines(self): """Returns the number of lines represented.""" return self.num_lines @staticmethod def _CollapseStrings(elided): """Collapses strings and chars on a line to simple "" or '' blocks. We nix strings first so we're not fooled by text like '"http://"' Args: elided: The line being processed. Returns: The line with collapsed strings. """ if not _RE_PATTERN_INCLUDE.match(elided): # Remove escaped characters first to make quote/single quote collapsing # basic. Things that look like escaped characters shouldn't occur # outside of strings and chars. elided = _RE_PATTERN_CLEANSE_LINE_ESCAPES.sub('', elided) elided = _RE_PATTERN_CLEANSE_LINE_SINGLE_QUOTES.sub("''", elided) elided = _RE_PATTERN_CLEANSE_LINE_DOUBLE_QUOTES.sub('""', elided) return elided def FindEndOfExpressionInLine(line, startpos, depth, startchar, endchar): """Find the position just after the matching endchar. Args: line: a CleansedLines line. startpos: start searching at this position. depth: nesting level at startpos. startchar: expression opening character. endchar: expression closing character. Returns: On finding matching endchar: (index just after matching endchar, 0) Otherwise: (-1, new depth at end of this line) """ for i in xrange(startpos, len(line)): if line[i] == startchar: depth += 1 elif line[i] == endchar: depth -= 1 if depth == 0: return (i + 1, 0) return (-1, depth) def CloseExpression(clean_lines, linenum, pos): """If input points to ( or { or [ or <, finds the position that closes it. If lines[linenum][pos] points to a '(' or '{' or '[' or '<', finds the linenum/pos that correspond to the closing of the expression. Args: clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. pos: A position on the line. Returns: A tuple (line, linenum, pos) pointer *past* the closing brace, or (line, len(lines), -1) if we never find a close. Note we ignore strings and comments when matching; and the line we return is the 'cleansed' line at linenum. """ line = clean_lines.elided[linenum] startchar = line[pos] if startchar not in '({[<': return (line, clean_lines.NumLines(), -1) if startchar == '(': endchar = ')' if startchar == '[': endchar = ']' if startchar == '{': endchar = '}' if startchar == '<': endchar = '>' # Check first line (end_pos, num_open) = FindEndOfExpressionInLine( line, pos, 0, startchar, endchar) if end_pos > -1: return (line, linenum, end_pos) # Continue scanning forward while linenum < clean_lines.NumLines() - 1: linenum += 1 line = clean_lines.elided[linenum] (end_pos, num_open) = FindEndOfExpressionInLine( line, 0, num_open, startchar, endchar) if end_pos > -1: return (line, linenum, end_pos) # Did not find endchar before end of file, give up return (line, clean_lines.NumLines(), -1) def FindStartOfExpressionInLine(line, endpos, depth, startchar, endchar): """Find position at the matching startchar. This is almost the reverse of FindEndOfExpressionInLine, but note that the input position and returned position differs by 1. Args: line: a CleansedLines line. endpos: start searching at this position. depth: nesting level at endpos. startchar: expression opening character. endchar: expression closing character. Returns: On finding matching startchar: (index at matching startchar, 0) Otherwise: (-1, new depth at beginning of this line) """ for i in xrange(endpos, -1, -1): if line[i] == endchar: depth += 1 elif line[i] == startchar: depth -= 1 if depth == 0: return (i, 0) return (-1, depth) def ReverseCloseExpression(clean_lines, linenum, pos): """If input points to ) or } or ] or >, finds the position that opens it. If lines[linenum][pos] points to a ')' or '}' or ']' or '>', finds the linenum/pos that correspond to the opening of the expression. Args: clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. pos: A position on the line. Returns: A tuple (line, linenum, pos) pointer *at* the opening brace, or (line, 0, -1) if we never find the matching opening brace. Note we ignore strings and comments when matching; and the line we return is the 'cleansed' line at linenum. """ line = clean_lines.elided[linenum] endchar = line[pos] if endchar not in ')}]>': return (line, 0, -1) if endchar == ')': startchar = '(' if endchar == ']': startchar = '[' if endchar == '}': startchar = '{' if endchar == '>': startchar = '<' # Check last line (start_pos, num_open) = FindStartOfExpressionInLine( line, pos, 0, startchar, endchar) if start_pos > -1: return (line, linenum, start_pos) # Continue scanning backward while linenum > 0: linenum -= 1 line = clean_lines.elided[linenum] (start_pos, num_open) = FindStartOfExpressionInLine( line, len(line) - 1, num_open, startchar, endchar) if start_pos > -1: return (line, linenum, start_pos) # Did not find startchar before beginning of file, give up return (line, 0, -1) def CheckForCopyright(filename, lines, error): """Logs an error if a Copyright message appears at the top of the file.""" # We'll check up to line 10. Don't forget there's a # dummy line at the front. for line in xrange(1, min(len(lines), 11)): if _RE_COPYRIGHT.search(lines[line], re.I): error(filename, 0, 'legal/copyright', 5, 'Copyright message found. ' 'You should not include a copyright line.') def GetHeaderGuardCPPVariable(filename): """Returns the CPP variable that should be used as a header guard. Args: filename: The name of a C++ header file. Returns: The CPP variable that should be used as a header guard in the named file. """ # Restores original filename in case that cpplint is invoked from Emacs's # flymake. filename = re.sub(r'_flymake\.h$', '.h', filename) filename = re.sub(r'/\.flymake/([^/]*)$', r'/\1', filename) fileinfo = FileInfo(filename) file_path_from_root = fileinfo.RepositoryName() if _root: file_path_from_root = re.sub('^' + _root + os.sep, '', file_path_from_root) return re.sub(r'[-./\s]', '_', file_path_from_root).upper() + '_' def CheckForHeaderGuard(filename, lines, error): """Checks that the file contains a header guard. Logs an error if no #ifndef header guard is present. For other headers, checks that the full pathname is used. Args: filename: The name of the C++ header file. lines: An array of strings, each representing a line of the file. error: The function to call with any errors found. """ cppvar = GetHeaderGuardCPPVariable(filename) ifndef = None ifndef_linenum = 0 define = None endif = None endif_linenum = 0 for linenum, line in enumerate(lines): linesplit = line.split() if len(linesplit) >= 2: # find the first occurrence of #ifndef and #define, save arg if not ifndef and linesplit[0] == '#ifndef': # set ifndef to the header guard presented on the #ifndef line. ifndef = linesplit[1] ifndef_linenum = linenum if not define and linesplit[0] == '#define': define = linesplit[1] # find the last occurrence of #endif, save entire line if line.startswith('#endif'): endif = line endif_linenum = linenum if not ifndef: error(filename, 0, 'build/header_guard', 5, 'No #ifndef header guard found, suggested CPP variable is: %s' % cppvar) return if not define: error(filename, 0, 'build/header_guard', 5, 'No #define header guard found, suggested CPP variable is: %s' % cppvar) return # The guard should be PATH_FILE_H_, but we also allow PATH_FILE_H__ # for backward compatibility. if ifndef != cppvar: error_level = 0 if ifndef != cppvar + '_': error_level = 5 ParseNolintSuppressions(filename, lines[ifndef_linenum], ifndef_linenum, error) error(filename, ifndef_linenum, 'build/header_guard', error_level, '#ifndef header guard has wrong style, please use: %s' % cppvar) if define != ifndef: error(filename, 0, 'build/header_guard', 5, '#ifndef and #define don\'t match, suggested CPP variable is: %s' % cppvar) return if endif != ('#endif // %s' % cppvar): error_level = 0 if endif != ('#endif // %s' % (cppvar + '_')): error_level = 5 ParseNolintSuppressions(filename, lines[endif_linenum], endif_linenum, error) error(filename, endif_linenum, 'build/header_guard', error_level, '#endif line should be "#endif // %s"' % cppvar) def CheckForBadCharacters(filename, lines, error): """Logs an error for each line containing bad characters. Two kinds of bad characters: 1. Unicode replacement characters: These indicate that either the file contained invalid UTF-8 (likely) or Unicode replacement characters (which it shouldn't). Note that it's possible for this to throw off line numbering if the invalid UTF-8 occurred adjacent to a newline. 2. NUL bytes. These are problematic for some tools. Args: filename: The name of the current file. lines: An array of strings, each representing a line of the file. error: The function to call with any errors found. """ for linenum, line in enumerate(lines): if u'\ufffd' in line: error(filename, linenum, 'readability/utf8', 5, 'Line contains invalid UTF-8 (or Unicode replacement character).') if '\0' in line: error(filename, linenum, 'readability/nul', 5, 'Line contains NUL byte.') def CheckForNewlineAtEOF(filename, lines, error): """Logs an error if there is no newline char at the end of the file. Args: filename: The name of the current file. lines: An array of strings, each representing a line of the file. error: The function to call with any errors found. """ # The array lines() was created by adding two newlines to the # original file (go figure), then splitting on \n. # To verify that the file ends in \n, we just have to make sure the # last-but-two element of lines() exists and is empty. if len(lines) < 3 or lines[-2]: error(filename, len(lines) - 2, 'whitespace/ending_newline', 5, 'Could not find a newline character at the end of the file.') def CheckForMultilineCommentsAndStrings(filename, clean_lines, linenum, error): """Logs an error if we see /* ... */ or "..." that extend past one line. /* ... */ comments are legit inside macros, for one line. Otherwise, we prefer // comments, so it's ok to warn about the other. Likewise, it's ok for strings to extend across multiple lines, as long as a line continuation character (backslash) terminates each line. Although not currently prohibited by the C++ style guide, it's ugly and unnecessary. We don't do well with either in this lint program, so we warn about both. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] # Remove all \\ (escaped backslashes) from the line. They are OK, and the # second (escaped) slash may trigger later \" detection erroneously. line = line.replace('\\\\', '') if line.count('/*') > line.count('*/'): error(filename, linenum, 'readability/multiline_comment', 5, 'Complex multi-line /*...*/-style comment found. ' 'Lint may give bogus warnings. ' 'Consider replacing these with //-style comments, ' 'with #if 0...#endif, ' 'or with more clearly structured multi-line comments.') if (line.count('"') - line.count('\\"')) % 2: error(filename, linenum, 'readability/multiline_string', 5, 'Multi-line string ("...") found. This lint script doesn\'t ' 'do well with such strings, and may give bogus warnings. ' 'Use C++11 raw strings or concatenation instead.') caffe_alt_function_list = ( ('memset', ['caffe_set', 'caffe_memset']), ('cudaMemset', ['caffe_gpu_set', 'caffe_gpu_memset']), ('memcpy', ['caffe_copy', 'caffe_memcpy']), ('cudaMemcpy', ['caffe_copy', 'caffe_gpu_memcpy']), ) def CheckCaffeAlternatives(filename, clean_lines, linenum, error): """Checks for C(++) functions for which a Caffe substitute should be used. For certain native C functions (memset, memcpy), there is a Caffe alternative which should be used instead. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] for function, alts in caffe_alt_function_list: ix = line.find(function + '(') if ix >= 0 and (ix == 0 or (not line[ix - 1].isalnum() and line[ix - 1] not in ('_', '.', '>'))): disp_alts = ['%s(...)' % alt for alt in alts] error(filename, linenum, 'caffe/alt_fn', 2, 'Use Caffe function %s instead of %s(...).' % (' or '.join(disp_alts), function)) def CheckCaffeDataLayerSetUp(filename, clean_lines, linenum, error): """Except the base classes, Caffe DataLayer should define DataLayerSetUp instead of LayerSetUp. The base DataLayers define common SetUp steps, the subclasses should not override them. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] ix = line.find('DataLayer<Dtype>::LayerSetUp') if ix >= 0 and ( line.find('void DataLayer<Dtype>::LayerSetUp') != -1 or line.find('void ImageDataLayer<Dtype>::LayerSetUp') != -1 or line.find('void MemoryDataLayer<Dtype>::LayerSetUp') != -1 or line.find('void WindowDataLayer<Dtype>::LayerSetUp') != -1): error(filename, linenum, 'caffe/data_layer_setup', 2, 'Except the base classes, Caffe DataLayer should define' + ' DataLayerSetUp instead of LayerSetUp. The base DataLayers' + ' define common SetUp steps, the subclasses should' + ' not override them.') ix = line.find('DataLayer<Dtype>::DataLayerSetUp') if ix >= 0 and ( line.find('void Base') == -1 and line.find('void DataLayer<Dtype>::DataLayerSetUp') == -1 and line.find('void ImageDataLayer<Dtype>::DataLayerSetUp') == -1 and line.find('void MemoryDataLayer<Dtype>::DataLayerSetUp') == -1 and line.find('void WindowDataLayer<Dtype>::DataLayerSetUp') == -1): error(filename, linenum, 'caffe/data_layer_setup', 2, 'Except the base classes, Caffe DataLayer should define' + ' DataLayerSetUp instead of LayerSetUp. The base DataLayers' + ' define common SetUp steps, the subclasses should' + ' not override them.') c_random_function_list = ( 'rand(', 'rand_r(', 'random(', ) def CheckCaffeRandom(filename, clean_lines, linenum, error): """Checks for calls to C random functions (rand, rand_r, random, ...). Caffe code should (almost) always use the caffe_rng_* functions rather than these, as the internal state of these C functions is independent of the native Caffe RNG system which should produce deterministic results for a fixed Caffe seed set using Caffe::set_random_seed(...). Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] for function in c_random_function_list: ix = line.find(function) # Comparisons made explicit for clarity -- pylint: disable=g-explicit-bool-comparison if ix >= 0 and (ix == 0 or (not line[ix - 1].isalnum() and line[ix - 1] not in ('_', '.', '>'))): error(filename, linenum, 'caffe/random_fn', 2, 'Use caffe_rng_rand() (or other caffe_rng_* function) instead of ' + function + ') to ensure results are deterministic for a fixed Caffe seed.') threading_list = ( ('asctime(', 'asctime_r('), ('ctime(', 'ctime_r('), ('getgrgid(', 'getgrgid_r('), ('getgrnam(', 'getgrnam_r('), ('getlogin(', 'getlogin_r('), ('getpwnam(', 'getpwnam_r('), ('getpwuid(', 'getpwuid_r('), ('gmtime(', 'gmtime_r('), ('localtime(', 'localtime_r('), ('strtok(', 'strtok_r('), ('ttyname(', 'ttyname_r('), ) def CheckPosixThreading(filename, clean_lines, linenum, error): """Checks for calls to thread-unsafe functions. Much code has been originally written without consideration of multi-threading. Also, engineers are relying on their old experience; they have learned posix before threading extensions were added. These tests guide the engineers to use thread-safe functions (when using posix directly). Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] for single_thread_function, multithread_safe_function in threading_list: ix = line.find(single_thread_function) # Comparisons made explicit for clarity -- pylint: disable=g-explicit-bool-comparison if ix >= 0 and (ix == 0 or (not line[ix - 1].isalnum() and line[ix - 1] not in ('_', '.', '>'))): error(filename, linenum, 'runtime/threadsafe_fn', 2, 'Consider using ' + multithread_safe_function + '...) instead of ' + single_thread_function + '...) for improved thread safety.') def CheckVlogArguments(filename, clean_lines, linenum, error): """Checks that VLOG() is only used for defining a logging level. For example, VLOG(2) is correct. VLOG(INFO), VLOG(WARNING), VLOG(ERROR), and VLOG(FATAL) are not. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] if Search(r'\bVLOG\((INFO|ERROR|WARNING|DFATAL|FATAL)\)', line): error(filename, linenum, 'runtime/vlog', 5, 'VLOG() should be used with numeric verbosity level. ' 'Use LOG() if you want symbolic severity levels.') # Matches invalid increment: *count++, which moves pointer instead of # incrementing a value. _RE_PATTERN_INVALID_INCREMENT = re.compile( r'^\s*\*\w+(\+\+|--);') def CheckInvalidIncrement(filename, clean_lines, linenum, error): """Checks for invalid increment *count++. For example following function: void increment_counter(int* count) { *count++; } is invalid, because it effectively does count++, moving pointer, and should be replaced with ++*count, (*count)++ or *count += 1. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] if _RE_PATTERN_INVALID_INCREMENT.match(line): error(filename, linenum, 'runtime/invalid_increment', 5, 'Changing pointer instead of value (or unused value of operator*).') class _BlockInfo(object): """Stores information about a generic block of code.""" def __init__(self, seen_open_brace): self.seen_open_brace = seen_open_brace self.open_parentheses = 0 self.inline_asm = _NO_ASM def CheckBegin(self, filename, clean_lines, linenum, error): """Run checks that applies to text up to the opening brace. This is mostly for checking the text after the class identifier and the "{", usually where the base class is specified. For other blocks, there isn't much to check, so we always pass. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ pass def CheckEnd(self, filename, clean_lines, linenum, error): """Run checks that applies to text after the closing brace. This is mostly used for checking end of namespace comments. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ pass class _ClassInfo(_BlockInfo): """Stores information about a class.""" def __init__(self, name, class_or_struct, clean_lines, linenum): _BlockInfo.__init__(self, False) self.name = name self.starting_linenum = linenum self.is_derived = False if class_or_struct == 'struct': self.access = 'public' self.is_struct = True else: self.access = 'private' self.is_struct = False # Remember initial indentation level for this class. Using raw_lines here # instead of elided to account for leading comments. initial_indent = Match(r'^( *)\S', clean_lines.raw_lines[linenum]) if initial_indent: self.class_indent = len(initial_indent.group(1)) else: self.class_indent = 0 # Try to find the end of the class. This will be confused by things like: # class A { # } *x = { ... # # But it's still good enough for CheckSectionSpacing. self.last_line = 0 depth = 0 for i in range(linenum, clean_lines.NumLines()): line = clean_lines.elided[i] depth += line.count('{') - line.count('}') if not depth: self.last_line = i break def CheckBegin(self, filename, clean_lines, linenum, error): # Look for a bare ':' if Search('(^|[^:]):($|[^:])', clean_lines.elided[linenum]): self.is_derived = True def CheckEnd(self, filename, clean_lines, linenum, error): # Check that closing brace is aligned with beginning of the class. # Only do this if the closing brace is indented by only whitespaces. # This means we will not check single-line class definitions. indent = Match(r'^( *)\}', clean_lines.elided[linenum]) if indent and len(indent.group(1)) != self.class_indent: if self.is_struct: parent = 'struct ' + self.name else: parent = 'class ' + self.name error(filename, linenum, 'whitespace/indent', 3, 'Closing brace should be aligned with beginning of %s' % parent) class _NamespaceInfo(_BlockInfo): """Stores information about a namespace.""" def __init__(self, name, linenum): _BlockInfo.__init__(self, False) self.name = name or '' self.starting_linenum = linenum def CheckEnd(self, filename, clean_lines, linenum, error): """Check end of namespace comments.""" line = clean_lines.raw_lines[linenum] # Check how many lines is enclosed in this namespace. Don't issue # warning for missing namespace comments if there aren't enough # lines. However, do apply checks if there is already an end of # namespace comment and it's incorrect. # # TODO(unknown): We always want to check end of namespace comments # if a namespace is large, but sometimes we also want to apply the # check if a short namespace contained nontrivial things (something # other than forward declarations). There is currently no logic on # deciding what these nontrivial things are, so this check is # triggered by namespace size only, which works most of the time. if (linenum - self.starting_linenum < 10 and not Match(r'};*\s*(//|/\*).*\bnamespace\b', line)): return # Look for matching comment at end of namespace. # # Note that we accept C style "/* */" comments for terminating # namespaces, so that code that terminate namespaces inside # preprocessor macros can be cpplint clean. # # We also accept stuff like "// end of namespace <name>." with the # period at the end. # # Besides these, we don't accept anything else, otherwise we might # get false negatives when existing comment is a substring of the # expected namespace. if self.name: # Named namespace if not Match((r'};*\s*(//|/\*).*\bnamespace\s+' + re.escape(self.name) + r'[\*/\.\\\s]*$'), line): error(filename, linenum, 'readability/namespace', 5, 'Namespace should be terminated with "// namespace %s"' % self.name) else: # Anonymous namespace if not Match(r'};*\s*(//|/\*).*\bnamespace[\*/\.\\\s]*$', line): error(filename, linenum, 'readability/namespace', 5, 'Namespace should be terminated with "// namespace"') class _PreprocessorInfo(object): """Stores checkpoints of nesting stacks when #if/#else is seen.""" def __init__(self, stack_before_if): # The entire nesting stack before #if self.stack_before_if = stack_before_if # The entire nesting stack up to #else self.stack_before_else = [] # Whether we have already seen #else or #elif self.seen_else = False class _NestingState(object): """Holds states related to parsing braces.""" def __init__(self): # Stack for tracking all braces. An object is pushed whenever we # see a "{", and popped when we see a "}". Only 3 types of # objects are possible: # - _ClassInfo: a class or struct. # - _NamespaceInfo: a namespace. # - _BlockInfo: some other type of block. self.stack = [] # Stack of _PreprocessorInfo objects. self.pp_stack = [] def SeenOpenBrace(self): """Check if we have seen the opening brace for the innermost block. Returns: True if we have seen the opening brace, False if the innermost block is still expecting an opening brace. """ return (not self.stack) or self.stack[-1].seen_open_brace def InNamespaceBody(self): """Check if we are currently one level inside a namespace body. Returns: True if top of the stack is a namespace block, False otherwise. """ return self.stack and isinstance(self.stack[-1], _NamespaceInfo) def UpdatePreprocessor(self, line): """Update preprocessor stack. We need to handle preprocessors due to classes like this: #ifdef SWIG struct ResultDetailsPageElementExtensionPoint { #else struct ResultDetailsPageElementExtensionPoint : public Extension { #endif We make the following assumptions (good enough for most files): - Preprocessor condition evaluates to true from #if up to first #else/#elif/#endif. - Preprocessor condition evaluates to false from #else/#elif up to #endif. We still perform lint checks on these lines, but these do not affect nesting stack. Args: line: current line to check. """ if Match(r'^\s*#\s*(if|ifdef|ifndef)\b', line): # Beginning of #if block, save the nesting stack here. The saved # stack will allow us to restore the parsing state in the #else case. self.pp_stack.append(_PreprocessorInfo(copy.deepcopy(self.stack))) elif Match(r'^\s*#\s*(else|elif)\b', line): # Beginning of #else block if self.pp_stack: if not self.pp_stack[-1].seen_else: # This is the first #else or #elif block. Remember the # whole nesting stack up to this point. This is what we # keep after the #endif. self.pp_stack[-1].seen_else = True self.pp_stack[-1].stack_before_else = copy.deepcopy(self.stack) # Restore the stack to how it was before the #if self.stack = copy.deepcopy(self.pp_stack[-1].stack_before_if) else: # TODO(unknown): unexpected #else, issue warning? pass elif Match(r'^\s*#\s*endif\b', line): # End of #if or #else blocks. if self.pp_stack: # If we saw an #else, we will need to restore the nesting # stack to its former state before the #else, otherwise we # will just continue from where we left off. if self.pp_stack[-1].seen_else: # Here we can just use a shallow copy since we are the last # reference to it. self.stack = self.pp_stack[-1].stack_before_else # Drop the corresponding #if self.pp_stack.pop() else: # TODO(unknown): unexpected #endif, issue warning? pass def Update(self, filename, clean_lines, linenum, error): """Update nesting state with current line. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] # Update pp_stack first self.UpdatePreprocessor(line) # Count parentheses. This is to avoid adding struct arguments to # the nesting stack. if self.stack: inner_block = self.stack[-1] depth_change = line.count('(') - line.count(')') inner_block.open_parentheses += depth_change # Also check if we are starting or ending an inline assembly block. if inner_block.inline_asm in (_NO_ASM, _END_ASM): if (depth_change != 0 and inner_block.open_parentheses == 1 and _MATCH_ASM.match(line)): # Enter assembly block inner_block.inline_asm = _INSIDE_ASM else: # Not entering assembly block. If previous line was _END_ASM, # we will now shift to _NO_ASM state. inner_block.inline_asm = _NO_ASM elif (inner_block.inline_asm == _INSIDE_ASM and inner_block.open_parentheses == 0): # Exit assembly block inner_block.inline_asm = _END_ASM # Consume namespace declaration at the beginning of the line. Do # this in a loop so that we catch same line declarations like this: # namespace proto2 { namespace bridge { class MessageSet; } } while True: # Match start of namespace. The "\b\s*" below catches namespace # declarations even if it weren't followed by a whitespace, this # is so that we don't confuse our namespace checker. The # missing spaces will be flagged by CheckSpacing. namespace_decl_match = Match(r'^\s*namespace\b\s*([:\w]+)?(.*)$', line) if not namespace_decl_match: break new_namespace = _NamespaceInfo(namespace_decl_match.group(1), linenum) self.stack.append(new_namespace) line = namespace_decl_match.group(2) if line.find('{') != -1: new_namespace.seen_open_brace = True line = line[line.find('{') + 1:] # Look for a class declaration in whatever is left of the line # after parsing namespaces. The regexp accounts for decorated classes # such as in: # class LOCKABLE API Object { # }; # # Templates with class arguments may confuse the parser, for example: # template <class T # class Comparator = less<T>, # class Vector = vector<T> > # class HeapQueue { # # Because this parser has no nesting state about templates, by the # time it saw "class Comparator", it may think that it's a new class. # Nested templates have a similar problem: # template < # typename ExportedType, # typename TupleType, # template <typename, typename> class ImplTemplate> # # To avoid these cases, we ignore classes that are followed by '=' or '>' class_decl_match = Match( r'\s*(template\s*<[\w\s<>,:]*>\s*)?' r'(class|struct)\s+([A-Z_]+\s+)*(\w+(?:::\w+)*)' r'(([^=>]|<[^<>]*>|<[^<>]*<[^<>]*>\s*>)*)$', line) if (class_decl_match and (not self.stack or self.stack[-1].open_parentheses == 0)): self.stack.append(_ClassInfo( class_decl_match.group(4), class_decl_match.group(2), clean_lines, linenum)) line = class_decl_match.group(5) # If we have not yet seen the opening brace for the innermost block, # run checks here. if not self.SeenOpenBrace(): self.stack[-1].CheckBegin(filename, clean_lines, linenum, error) # Update access control if we are inside a class/struct if self.stack and isinstance(self.stack[-1], _ClassInfo): classinfo = self.stack[-1] access_match = Match( r'^(.*)\b(public|private|protected|signals)(\s+(?:slots\s*)?)?' r':(?:[^:]|$)', line) if access_match: classinfo.access = access_match.group(2) # Check that access keywords are indented +1 space. Skip this # check if the keywords are not preceded by whitespaces. indent = access_match.group(1) if (len(indent) != classinfo.class_indent + 1 and Match(r'^\s*$', indent)): if classinfo.is_struct: parent = 'struct ' + classinfo.name else: parent = 'class ' + classinfo.name slots = '' if access_match.group(3): slots = access_match.group(3) error(filename, linenum, 'whitespace/indent', 3, '%s%s: should be indented +1 space inside %s' % ( access_match.group(2), slots, parent)) # Consume braces or semicolons from what's left of the line while True: # Match first brace, semicolon, or closed parenthesis. matched = Match(r'^[^{;)}]*([{;)}])(.*)$', line) if not matched: break token = matched.group(1) if token == '{': # If namespace or class hasn't seen a opening brace yet, mark # namespace/class head as complete. Push a new block onto the # stack otherwise. if not self.SeenOpenBrace(): self.stack[-1].seen_open_brace = True else: self.stack.append(_BlockInfo(True)) if _MATCH_ASM.match(line): self.stack[-1].inline_asm = _BLOCK_ASM elif token == ';' or token == ')': # If we haven't seen an opening brace yet, but we already saw # a semicolon, this is probably a forward declaration. Pop # the stack for these. # # Similarly, if we haven't seen an opening brace yet, but we # already saw a closing parenthesis, then these are probably # function arguments with extra "class" or "struct" keywords. # Also pop these stack for these. if not self.SeenOpenBrace(): self.stack.pop() else: # token == '}' # Perform end of block checks and pop the stack. if self.stack: self.stack[-1].CheckEnd(filename, clean_lines, linenum, error) self.stack.pop() line = matched.group(2) def InnermostClass(self): """Get class info on the top of the stack. Returns: A _ClassInfo object if we are inside a class, or None otherwise. """ for i in range(len(self.stack), 0, -1): classinfo = self.stack[i - 1] if isinstance(classinfo, _ClassInfo): return classinfo return None def CheckCompletedBlocks(self, filename, error): """Checks that all classes and namespaces have been completely parsed. Call this when all lines in a file have been processed. Args: filename: The name of the current file. error: The function to call with any errors found. """ # Note: This test can result in false positives if #ifdef constructs # get in the way of brace matching. See the testBuildClass test in # cpplint_unittest.py for an example of this. for obj in self.stack: if isinstance(obj, _ClassInfo): error(filename, obj.starting_linenum, 'build/class', 5, 'Failed to find complete declaration of class %s' % obj.name) elif isinstance(obj, _NamespaceInfo): error(filename, obj.starting_linenum, 'build/namespaces', 5, 'Failed to find complete declaration of namespace %s' % obj.name) def CheckForNonStandardConstructs(filename, clean_lines, linenum, nesting_state, error): r"""Logs an error if we see certain non-ANSI constructs ignored by gcc-2. Complain about several constructs which gcc-2 accepts, but which are not standard C++. Warning about these in lint is one way to ease the transition to new compilers. - put storage class first (e.g. "static const" instead of "const static"). - "%lld" instead of %qd" in printf-type functions. - "%1$d" is non-standard in printf-type functions. - "\%" is an undefined character escape sequence. - text after #endif is not allowed. - invalid inner-style forward declaration. - >? and <? operators, and their >?= and <?= cousins. Additionally, check for constructor/destructor style violations and reference members, as it is very convenient to do so while checking for gcc-2 compliance. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. nesting_state: A _NestingState instance which maintains information about the current stack of nested blocks being parsed. error: A callable to which errors are reported, which takes 4 arguments: filename, line number, error level, and message """ # Remove comments from the line, but leave in strings for now. line = clean_lines.lines[linenum] if Search(r'printf\s*\(.*".*%[-+ ]?\d*q', line): error(filename, linenum, 'runtime/printf_format', 3, '%q in format strings is deprecated. Use %ll instead.') if Search(r'printf\s*\(.*".*%\d+\$', line): error(filename, linenum, 'runtime/printf_format', 2, '%N$ formats are unconventional. Try rewriting to avoid them.') # Remove escaped backslashes before looking for undefined escapes. line = line.replace('\\\\', '') if Search(r'("|\').*\\(%|\[|\(|{)', line): error(filename, linenum, 'build/printf_format', 3, '%, [, (, and { are undefined character escapes. Unescape them.') # For the rest, work with both comments and strings removed. line = clean_lines.elided[linenum] if Search(r'\b(const|volatile|void|char|short|int|long' r'|float|double|signed|unsigned' r'|schar|u?int8|u?int16|u?int32|u?int64)' r'\s+(register|static|extern|typedef)\b', line): error(filename, linenum, 'build/storage_class', 5, 'Storage class (static, extern, typedef, etc) should be first.') if Match(r'\s*#\s*endif\s*[^/\s]+', line): error(filename, linenum, 'build/endif_comment', 5, 'Uncommented text after #endif is non-standard. Use a comment.') if Match(r'\s*class\s+(\w+\s*::\s*)+\w+\s*;', line): error(filename, linenum, 'build/forward_decl', 5, 'Inner-style forward declarations are invalid. Remove this line.') if Search(r'(\w+|[+-]?\d+(\.\d*)?)\s*(<|>)\?=?\s*(\w+|[+-]?\d+)(\.\d*)?', line): error(filename, linenum, 'build/deprecated', 3, '>? and <? (max and min) operators are non-standard and deprecated.') if Search(r'^\s*const\s*string\s*&\s*\w+\s*;', line): # TODO(unknown): Could it be expanded safely to arbitrary references, # without triggering too many false positives? The first # attempt triggered 5 warnings for mostly benign code in the regtest, hence # the restriction. # Here's the original regexp, for the reference: # type_name = r'\w+((\s*::\s*\w+)|(\s*<\s*\w+?\s*>))?' # r'\s*const\s*' + type_name + '\s*&\s*\w+\s*;' error(filename, linenum, 'runtime/member_string_references', 2, 'const string& members are dangerous. It is much better to use ' 'alternatives, such as pointers or simple constants.') # Everything else in this function operates on class declarations. # Return early if the top of the nesting stack is not a class, or if # the class head is not completed yet. classinfo = nesting_state.InnermostClass() if not classinfo or not classinfo.seen_open_brace: return # The class may have been declared with namespace or classname qualifiers. # The constructor and destructor will not have those qualifiers. base_classname = classinfo.name.split('::')[-1] # Look for single-argument constructors that aren't marked explicit. # Technically a valid construct, but against style. args = Match(r'\s+(?:inline\s+)?%s\s*\(([^,()]+)\)' % re.escape(base_classname), line) if (args and args.group(1) != 'void' and not Match(r'(const\s+)?%s(\s+const)?\s*(?:<\w+>\s*)?&' % re.escape(base_classname), args.group(1).strip())): error(filename, linenum, 'runtime/explicit', 5, 'Single-argument constructors should be marked explicit.') def CheckSpacingForFunctionCall(filename, line, linenum, error): """Checks for the correctness of various spacing around function calls. Args: filename: The name of the current file. line: The text of the line to check. linenum: The number of the line to check. error: The function to call with any errors found. """ # Since function calls often occur inside if/for/while/switch # expressions - which have their own, more liberal conventions - we # first see if we should be looking inside such an expression for a # function call, to which we can apply more strict standards. fncall = line # if there's no control flow construct, look at whole line for pattern in (r'\bif\s*\((.*)\)\s*{', r'\bfor\s*\((.*)\)\s*{', r'\bwhile\s*\((.*)\)\s*[{;]', r'\bswitch\s*\((.*)\)\s*{'): match = Search(pattern, line) if match: fncall = match.group(1) # look inside the parens for function calls break # Except in if/for/while/switch, there should never be space # immediately inside parens (eg "f( 3, 4 )"). We make an exception # for nested parens ( (a+b) + c ). Likewise, there should never be # a space before a ( when it's a function argument. I assume it's a # function argument when the char before the whitespace is legal in # a function name (alnum + _) and we're not starting a macro. Also ignore # pointers and references to arrays and functions coz they're too tricky: # we use a very simple way to recognize these: # " (something)(maybe-something)" or # " (something)(maybe-something," or # " (something)[something]" # Note that we assume the contents of [] to be short enough that # they'll never need to wrap. if ( # Ignore control structures. not Search(r'\b(if|for|while|switch|return|new|delete|catch|sizeof)\b', fncall) and # Ignore pointers/references to functions. not Search(r' \([^)]+\)\([^)]*(\)|,$)', fncall) and # Ignore pointers/references to arrays. not Search(r' \([^)]+\)\[[^\]]+\]', fncall)): if Search(r'\w\s*\(\s(?!\s*\\$)', fncall): # a ( used for a fn call error(filename, linenum, 'whitespace/parens', 4, 'Extra space after ( in function call') elif Search(r'\(\s+(?!(\s*\\)|\()', fncall): error(filename, linenum, 'whitespace/parens', 2, 'Extra space after (') if (Search(r'\w\s+\(', fncall) and not Search(r'#\s*define|typedef', fncall) and not Search(r'\w\s+\((\w+::)*\*\w+\)\(', fncall)): error(filename, linenum, 'whitespace/parens', 4, 'Extra space before ( in function call') # If the ) is followed only by a newline or a { + newline, assume it's # part of a control statement (if/while/etc), and don't complain if Search(r'[^)]\s+\)\s*[^{\s]', fncall): # If the closing parenthesis is preceded by only whitespaces, # try to give a more descriptive error message. if Search(r'^\s+\)', fncall): error(filename, linenum, 'whitespace/parens', 2, 'Closing ) should be moved to the previous line') else: error(filename, linenum, 'whitespace/parens', 2, 'Extra space before )') def IsBlankLine(line): """Returns true if the given line is blank. We consider a line to be blank if the line is empty or consists of only white spaces. Args: line: A line of a string. Returns: True, if the given line is blank. """ return not line or line.isspace() def CheckForFunctionLengths(filename, clean_lines, linenum, function_state, error): """Reports for long function bodies. For an overview why this is done, see: http://google-styleguide.googlecode.com/svn/trunk/cppguide.xml#Write_Short_Functions Uses a simplistic algorithm assuming other style guidelines (especially spacing) are followed. Only checks unindented functions, so class members are unchecked. Trivial bodies are unchecked, so constructors with huge initializer lists may be missed. Blank/comment lines are not counted so as to avoid encouraging the removal of vertical space and comments just to get through a lint check. NOLINT *on the last line of a function* disables this check. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. function_state: Current function name and lines in body so far. error: The function to call with any errors found. """ lines = clean_lines.lines line = lines[linenum] raw = clean_lines.raw_lines raw_line = raw[linenum] joined_line = '' starting_func = False regexp = r'(\w(\w|::|\*|\&|\s)*)\(' # decls * & space::name( ... match_result = Match(regexp, line) if match_result: # If the name is all caps and underscores, figure it's a macro and # ignore it, unless it's TEST or TEST_F. function_name = match_result.group(1).split()[-1] if function_name == 'TEST' or function_name == 'TEST_F' or ( not Match(r'[A-Z_]+$', function_name)): starting_func = True if starting_func: body_found = False for start_linenum in xrange(linenum, clean_lines.NumLines()): start_line = lines[start_linenum] joined_line += ' ' + start_line.lstrip() if Search(r'(;|})', start_line): # Declarations and trivial functions body_found = True break # ... ignore elif Search(r'{', start_line): body_found = True function = Search(r'((\w|:)*)\(', line).group(1) if Match(r'TEST', function): # Handle TEST... macros parameter_regexp = Search(r'(\(.*\))', joined_line) if parameter_regexp: # Ignore bad syntax function += parameter_regexp.group(1) else: function += '()' function_state.Begin(function) break if not body_found: # No body for the function (or evidence of a non-function) was found. error(filename, linenum, 'readability/fn_size', 5, 'Lint failed to find start of function body.') elif Match(r'^\}\s*$', line): # function end function_state.Check(error, filename, linenum) function_state.End() elif not Match(r'^\s*$', line): function_state.Count() # Count non-blank/non-comment lines. _RE_PATTERN_TODO = re.compile(r'^//(\s*)TODO(\(.+?\))?:?(\s|$)?') def CheckComment(comment, filename, linenum, error): """Checks for common mistakes in TODO comments. Args: comment: The text of the comment from the line in question. filename: The name of the current file. linenum: The number of the line to check. error: The function to call with any errors found. """ match = _RE_PATTERN_TODO.match(comment) if match: # One whitespace is correct; zero whitespace is handled elsewhere. leading_whitespace = match.group(1) if len(leading_whitespace) > 1: error(filename, linenum, 'whitespace/todo', 2, 'Too many spaces before TODO') username = match.group(2) if not username: error(filename, linenum, 'readability/todo', 2, 'Missing username in TODO; it should look like ' '"// TODO(my_username): Stuff."') middle_whitespace = match.group(3) # Comparisons made explicit for correctness -- pylint: disable=g-explicit-bool-comparison if middle_whitespace != ' ' and middle_whitespace != '': error(filename, linenum, 'whitespace/todo', 2, 'TODO(my_username) should be followed by a space') def CheckAccess(filename, clean_lines, linenum, nesting_state, error): """Checks for improper use of DISALLOW* macros. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. nesting_state: A _NestingState instance which maintains information about the current stack of nested blocks being parsed. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] # get rid of comments and strings matched = Match((r'\s*(DISALLOW_COPY_AND_ASSIGN|' r'DISALLOW_EVIL_CONSTRUCTORS|' r'DISALLOW_IMPLICIT_CONSTRUCTORS)'), line) if not matched: return if nesting_state.stack and isinstance(nesting_state.stack[-1], _ClassInfo): if nesting_state.stack[-1].access != 'private': error(filename, linenum, 'readability/constructors', 3, '%s must be in the private: section' % matched.group(1)) else: # Found DISALLOW* macro outside a class declaration, or perhaps it # was used inside a function when it should have been part of the # class declaration. We could issue a warning here, but it # probably resulted in a compiler error already. pass def FindNextMatchingAngleBracket(clean_lines, linenum, init_suffix): """Find the corresponding > to close a template. Args: clean_lines: A CleansedLines instance containing the file. linenum: Current line number. init_suffix: Remainder of the current line after the initial <. Returns: True if a matching bracket exists. """ line = init_suffix nesting_stack = ['<'] while True: # Find the next operator that can tell us whether < is used as an # opening bracket or as a less-than operator. We only want to # warn on the latter case. # # We could also check all other operators and terminate the search # early, e.g. if we got something like this "a<b+c", the "<" is # most likely a less-than operator, but then we will get false # positives for default arguments and other template expressions. match = Search(r'^[^<>(),;\[\]]*([<>(),;\[\]])(.*)$', line) if match: # Found an operator, update nesting stack operator = match.group(1) line = match.group(2) if nesting_stack[-1] == '<': # Expecting closing angle bracket if operator in ('<', '(', '['): nesting_stack.append(operator) elif operator == '>': nesting_stack.pop() if not nesting_stack: # Found matching angle bracket return True elif operator == ',': # Got a comma after a bracket, this is most likely a template # argument. We have not seen a closing angle bracket yet, but # it's probably a few lines later if we look for it, so just # return early here. return True else: # Got some other operator. return False else: # Expecting closing parenthesis or closing bracket if operator in ('<', '(', '['): nesting_stack.append(operator) elif operator in (')', ']'): # We don't bother checking for matching () or []. If we got # something like (] or [), it would have been a syntax error. nesting_stack.pop() else: # Scan the next line linenum += 1 if linenum >= len(clean_lines.elided): break line = clean_lines.elided[linenum] # Exhausted all remaining lines and still no matching angle bracket. # Most likely the input was incomplete, otherwise we should have # seen a semicolon and returned early. return True def FindPreviousMatchingAngleBracket(clean_lines, linenum, init_prefix): """Find the corresponding < that started a template. Args: clean_lines: A CleansedLines instance containing the file. linenum: Current line number. init_prefix: Part of the current line before the initial >. Returns: True if a matching bracket exists. """ line = init_prefix nesting_stack = ['>'] while True: # Find the previous operator match = Search(r'^(.*)([<>(),;\[\]])[^<>(),;\[\]]*$', line) if match: # Found an operator, update nesting stack operator = match.group(2) line = match.group(1) if nesting_stack[-1] == '>': # Expecting opening angle bracket if operator in ('>', ')', ']'): nesting_stack.append(operator) elif operator == '<': nesting_stack.pop() if not nesting_stack: # Found matching angle bracket return True elif operator == ',': # Got a comma before a bracket, this is most likely a # template argument. The opening angle bracket is probably # there if we look for it, so just return early here. return True else: # Got some other operator. return False else: # Expecting opening parenthesis or opening bracket if operator in ('>', ')', ']'): nesting_stack.append(operator) elif operator in ('(', '['): nesting_stack.pop() else: # Scan the previous line linenum -= 1 if linenum < 0: break line = clean_lines.elided[linenum] # Exhausted all earlier lines and still no matching angle bracket. return False def CheckSpacing(filename, clean_lines, linenum, nesting_state, error): """Checks for the correctness of various spacing issues in the code. Things we check for: spaces around operators, spaces after if/for/while/switch, no spaces around parens in function calls, two spaces between code and comment, don't start a block with a blank line, don't end a function with a blank line, don't add a blank line after public/protected/private, don't have too many blank lines in a row. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. nesting_state: A _NestingState instance which maintains information about the current stack of nested blocks being parsed. error: The function to call with any errors found. """ # Don't use "elided" lines here, otherwise we can't check commented lines. # Don't want to use "raw" either, because we don't want to check inside C++11 # raw strings, raw = clean_lines.lines_without_raw_strings line = raw[linenum] # Before nixing comments, check if the line is blank for no good # reason. This includes the first line after a block is opened, and # blank lines at the end of a function (ie, right before a line like '}' # # Skip all the blank line checks if we are immediately inside a # namespace body. In other words, don't issue blank line warnings # for this block: # namespace { # # } # # A warning about missing end of namespace comments will be issued instead. if IsBlankLine(line) and not nesting_state.InNamespaceBody(): elided = clean_lines.elided prev_line = elided[linenum - 1] prevbrace = prev_line.rfind('{') # TODO(unknown): Don't complain if line before blank line, and line after, # both start with alnums and are indented the same amount. # This ignores whitespace at the start of a namespace block # because those are not usually indented. if prevbrace != -1 and prev_line[prevbrace:].find('}') == -1: # OK, we have a blank line at the start of a code block. Before we # complain, we check if it is an exception to the rule: The previous # non-empty line has the parameters of a function header that are indented # 4 spaces (because they did not fit in a 80 column line when placed on # the same line as the function name). We also check for the case where # the previous line is indented 6 spaces, which may happen when the # initializers of a constructor do not fit into a 80 column line. exception = False if Match(r' {6}\w', prev_line): # Initializer list? # We are looking for the opening column of initializer list, which # should be indented 4 spaces to cause 6 space indentation afterwards. search_position = linenum-2 while (search_position >= 0 and Match(r' {6}\w', elided[search_position])): search_position -= 1 exception = (search_position >= 0 and elided[search_position][:5] == ' :') else: # Search for the function arguments or an initializer list. We use a # simple heuristic here: If the line is indented 4 spaces; and we have a # closing paren, without the opening paren, followed by an opening brace # or colon (for initializer lists) we assume that it is the last line of # a function header. If we have a colon indented 4 spaces, it is an # initializer list. exception = (Match(r' {4}\w[^\(]*\)\s*(const\s*)?(\{\s*$|:)', prev_line) or Match(r' {4}:', prev_line)) if not exception: error(filename, linenum, 'whitespace/blank_line', 2, 'Redundant blank line at the start of a code block ' 'should be deleted.') # Ignore blank lines at the end of a block in a long if-else # chain, like this: # if (condition1) { # // Something followed by a blank line # # } else if (condition2) { # // Something else # } if linenum + 1 < clean_lines.NumLines(): next_line = raw[linenum + 1] if (next_line and Match(r'\s*}', next_line) and next_line.find('} else ') == -1): error(filename, linenum, 'whitespace/blank_line', 3, 'Redundant blank line at the end of a code block ' 'should be deleted.') matched = Match(r'\s*(public|protected|private):', prev_line) if matched: error(filename, linenum, 'whitespace/blank_line', 3, 'Do not leave a blank line after "%s:"' % matched.group(1)) # Next, we complain if there's a comment too near the text commentpos = line.find('//') if commentpos != -1: # Check if the // may be in quotes. If so, ignore it # Comparisons made explicit for clarity -- pylint: disable=g-explicit-bool-comparison if (line.count('"', 0, commentpos) - line.count('\\"', 0, commentpos)) % 2 == 0: # not in quotes # Allow one space for new scopes, two spaces otherwise: if (not Match(r'^\s*{ //', line) and ((commentpos >= 1 and line[commentpos-1] not in string.whitespace) or (commentpos >= 2 and line[commentpos-2] not in string.whitespace))): error(filename, linenum, 'whitespace/comments', 2, 'At least two spaces is best between code and comments') # There should always be a space between the // and the comment commentend = commentpos + 2 if commentend < len(line) and not line[commentend] == ' ': # but some lines are exceptions -- e.g. if they're big # comment delimiters like: # //---------------------------------------------------------- # or are an empty C++ style Doxygen comment, like: # /// # or C++ style Doxygen comments placed after the variable: # ///< Header comment # //!< Header comment # or they begin with multiple slashes followed by a space: # //////// Header comment match = (Search(r'[=/-]{4,}\s*$', line[commentend:]) or Search(r'^/$', line[commentend:]) or Search(r'^!< ', line[commentend:]) or Search(r'^/< ', line[commentend:]) or Search(r'^/+ ', line[commentend:])) if not match: error(filename, linenum, 'whitespace/comments', 4, 'Should have a space between // and comment') CheckComment(line[commentpos:], filename, linenum, error) line = clean_lines.elided[linenum] # get rid of comments and strings # Don't try to do spacing checks for operator methods line = re.sub(r'operator(==|!=|<|<<|<=|>=|>>|>)\(', 'operator\(', line) # We allow no-spaces around = within an if: "if ( (a=Foo()) == 0 )". # Otherwise not. Note we only check for non-spaces on *both* sides; # sometimes people put non-spaces on one side when aligning ='s among # many lines (not that this is behavior that I approve of...) if Search(r'[\w.]=[\w.]', line) and not Search(r'\b(if|while) ', line): error(filename, linenum, 'whitespace/operators', 4, 'Missing spaces around =') # It's ok not to have spaces around binary operators like + - * /, but if # there's too little whitespace, we get concerned. It's hard to tell, # though, so we punt on this one for now. TODO. # You should always have whitespace around binary operators. # # Check <= and >= first to avoid false positives with < and >, then # check non-include lines for spacing around < and >. match = Search(r'[^<>=!\s](==|!=|<=|>=)[^<>=!\s]', line) if match: error(filename, linenum, 'whitespace/operators', 3, 'Missing spaces around %s' % match.group(1)) # We allow no-spaces around << when used like this: 10<<20, but # not otherwise (particularly, not when used as streams) # Also ignore using ns::operator<<; match = Search(r'(operator|\S)(?:L|UL|ULL|l|ul|ull)?<<(\S)', line) if (match and not (match.group(1).isdigit() and match.group(2).isdigit()) and not (match.group(1) == 'operator' and match.group(2) == ';')): error(filename, linenum, 'whitespace/operators', 3, 'Missing spaces around <<') elif not Match(r'#.*include', line): # Avoid false positives on -> reduced_line = line.replace('->', '') # Look for < that is not surrounded by spaces. This is only # triggered if both sides are missing spaces, even though # technically should should flag if at least one side is missing a # space. This is done to avoid some false positives with shifts. match = Search(r'[^\s<]<([^\s=<].*)', reduced_line) if (match and not FindNextMatchingAngleBracket(clean_lines, linenum, match.group(1))): error(filename, linenum, 'whitespace/operators', 3, 'Missing spaces around <') # Look for > that is not surrounded by spaces. Similar to the # above, we only trigger if both sides are missing spaces to avoid # false positives with shifts. match = Search(r'^(.*[^\s>])>[^\s=>]', reduced_line) if (match and not FindPreviousMatchingAngleBracket(clean_lines, linenum, match.group(1))): error(filename, linenum, 'whitespace/operators', 3, 'Missing spaces around >') # We allow no-spaces around >> for almost anything. This is because # C++11 allows ">>" to close nested templates, which accounts for # most cases when ">>" is not followed by a space. # # We still warn on ">>" followed by alpha character, because that is # likely due to ">>" being used for right shifts, e.g.: # value >> alpha # # When ">>" is used to close templates, the alphanumeric letter that # follows would be part of an identifier, and there should still be # a space separating the template type and the identifier. # type<type<type>> alpha match = Search(r'>>[a-zA-Z_]', line) if match: error(filename, linenum, 'whitespace/operators', 3, 'Missing spaces around >>') # There shouldn't be space around unary operators match = Search(r'(!\s|~\s|[\s]--[\s;]|[\s]\+\+[\s;])', line) if match: error(filename, linenum, 'whitespace/operators', 4, 'Extra space for operator %s' % match.group(1)) # A pet peeve of mine: no spaces after an if, while, switch, or for match = Search(r' (if\(|for\(|while\(|switch\()', line) if match: error(filename, linenum, 'whitespace/parens', 5, 'Missing space before ( in %s' % match.group(1)) # For if/for/while/switch, the left and right parens should be # consistent about how many spaces are inside the parens, and # there should either be zero or one spaces inside the parens. # We don't want: "if ( foo)" or "if ( foo )". # Exception: "for ( ; foo; bar)" and "for (foo; bar; )" are allowed. match = Search(r'\b(if|for|while|switch)\s*' r'\(([ ]*)(.).*[^ ]+([ ]*)\)\s*{\s*$', line) if match: if len(match.group(2)) != len(match.group(4)): if not (match.group(3) == ';' and len(match.group(2)) == 1 + len(match.group(4)) or not match.group(2) and Search(r'\bfor\s*\(.*; \)', line)): error(filename, linenum, 'whitespace/parens', 5, 'Mismatching spaces inside () in %s' % match.group(1)) if len(match.group(2)) not in [0, 1]: error(filename, linenum, 'whitespace/parens', 5, 'Should have zero or one spaces inside ( and ) in %s' % match.group(1)) # You should always have a space after a comma (either as fn arg or operator) # # This does not apply when the non-space character following the # comma is another comma, since the only time when that happens is # for empty macro arguments. # # We run this check in two passes: first pass on elided lines to # verify that lines contain missing whitespaces, second pass on raw # lines to confirm that those missing whitespaces are not due to # elided comments. if Search(r',[^,\s]', line) and Search(r',[^,\s]', raw[linenum]): error(filename, linenum, 'whitespace/comma', 3, 'Missing space after ,') # You should always have a space after a semicolon # except for few corner cases # TODO(unknown): clarify if 'if (1) { return 1;}' is requires one more # space after ; if Search(r';[^\s};\\)/]', line): error(filename, linenum, 'whitespace/semicolon', 3, 'Missing space after ;') # Next we will look for issues with function calls. CheckSpacingForFunctionCall(filename, line, linenum, error) # Except after an opening paren, or after another opening brace (in case of # an initializer list, for instance), you should have spaces before your # braces. And since you should never have braces at the beginning of a line, # this is an easy test. match = Match(r'^(.*[^ ({]){', line) if match: # Try a bit harder to check for brace initialization. This # happens in one of the following forms: # Constructor() : initializer_list_{} { ... } # Constructor{}.MemberFunction() # Type variable{}; # FunctionCall(type{}, ...); # LastArgument(..., type{}); # LOG(INFO) << type{} << " ..."; # map_of_type[{...}] = ...; # # We check for the character following the closing brace, and # silence the warning if it's one of those listed above, i.e. # "{.;,)<]". # # To account for nested initializer list, we allow any number of # closing braces up to "{;,)<". We can't simply silence the # warning on first sight of closing brace, because that would # cause false negatives for things that are not initializer lists. # Silence this: But not this: # Outer{ if (...) { # Inner{...} if (...){ // Missing space before { # }; } # # There is a false negative with this approach if people inserted # spurious semicolons, e.g. "if (cond){};", but we will catch the # spurious semicolon with a separate check. (endline, endlinenum, endpos) = CloseExpression( clean_lines, linenum, len(match.group(1))) trailing_text = '' if endpos > -1: trailing_text = endline[endpos:] for offset in xrange(endlinenum + 1, min(endlinenum + 3, clean_lines.NumLines() - 1)): trailing_text += clean_lines.elided[offset] if not Match(r'^[\s}]*[{.;,)<\]]', trailing_text): error(filename, linenum, 'whitespace/braces', 5, 'Missing space before {') # Make sure '} else {' has spaces. if Search(r'}else', line): error(filename, linenum, 'whitespace/braces', 5, 'Missing space before else') # You shouldn't have spaces before your brackets, except maybe after # 'delete []' or 'new char * []'. if Search(r'\w\s+\[', line) and not Search(r'delete\s+\[', line): error(filename, linenum, 'whitespace/braces', 5, 'Extra space before [') # You shouldn't have a space before a semicolon at the end of the line. # There's a special case for "for" since the style guide allows space before # the semicolon there. if Search(r':\s*;\s*$', line): error(filename, linenum, 'whitespace/semicolon', 5, 'Semicolon defining empty statement. Use {} instead.') elif Search(r'^\s*;\s*$', line): error(filename, linenum, 'whitespace/semicolon', 5, 'Line contains only semicolon. If this should be an empty statement, ' 'use {} instead.') elif (Search(r'\s+;\s*$', line) and not Search(r'\bfor\b', line)): error(filename, linenum, 'whitespace/semicolon', 5, 'Extra space before last semicolon. If this should be an empty ' 'statement, use {} instead.') # In range-based for, we wanted spaces before and after the colon, but # not around "::" tokens that might appear. if (Search('for *\(.*[^:]:[^: ]', line) or Search('for *\(.*[^: ]:[^:]', line)): error(filename, linenum, 'whitespace/forcolon', 2, 'Missing space around colon in range-based for loop') def CheckSectionSpacing(filename, clean_lines, class_info, linenum, error): """Checks for additional blank line issues related to sections. Currently the only thing checked here is blank line before protected/private. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. class_info: A _ClassInfo objects. linenum: The number of the line to check. error: The function to call with any errors found. """ # Skip checks if the class is small, where small means 25 lines or less. # 25 lines seems like a good cutoff since that's the usual height of # terminals, and any class that can't fit in one screen can't really # be considered "small". # # Also skip checks if we are on the first line. This accounts for # classes that look like # class Foo { public: ... }; # # If we didn't find the end of the class, last_line would be zero, # and the check will be skipped by the first condition. if (class_info.last_line - class_info.starting_linenum <= 24 or linenum <= class_info.starting_linenum): return matched = Match(r'\s*(public|protected|private):', clean_lines.lines[linenum]) if matched: # Issue warning if the line before public/protected/private was # not a blank line, but don't do this if the previous line contains # "class" or "struct". This can happen two ways: # - We are at the beginning of the class. # - We are forward-declaring an inner class that is semantically # private, but needed to be public for implementation reasons. # Also ignores cases where the previous line ends with a backslash as can be # common when defining classes in C macros. prev_line = clean_lines.lines[linenum - 1] if (not IsBlankLine(prev_line) and not Search(r'\b(class|struct)\b', prev_line) and not Search(r'\\$', prev_line)): # Try a bit harder to find the beginning of the class. This is to # account for multi-line base-specifier lists, e.g.: # class Derived # : public Base { end_class_head = class_info.starting_linenum for i in range(class_info.starting_linenum, linenum): if Search(r'\{\s*$', clean_lines.lines[i]): end_class_head = i break if end_class_head < linenum - 1: error(filename, linenum, 'whitespace/blank_line', 3, '"%s:" should be preceded by a blank line' % matched.group(1)) def GetPreviousNonBlankLine(clean_lines, linenum): """Return the most recent non-blank line and its line number. Args: clean_lines: A CleansedLines instance containing the file contents. linenum: The number of the line to check. Returns: A tuple with two elements. The first element is the contents of the last non-blank line before the current line, or the empty string if this is the first non-blank line. The second is the line number of that line, or -1 if this is the first non-blank line. """ prevlinenum = linenum - 1 while prevlinenum >= 0: prevline = clean_lines.elided[prevlinenum] if not IsBlankLine(prevline): # if not a blank line... return (prevline, prevlinenum) prevlinenum -= 1 return ('', -1) def CheckBraces(filename, clean_lines, linenum, error): """Looks for misplaced braces (e.g. at the end of line). Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] # get rid of comments and strings if Match(r'\s*{\s*$', line): # We allow an open brace to start a line in the case where someone is using # braces in a block to explicitly create a new scope, which is commonly used # to control the lifetime of stack-allocated variables. Braces are also # used for brace initializers inside function calls. We don't detect this # perfectly: we just don't complain if the last non-whitespace character on # the previous non-blank line is ',', ';', ':', '(', '{', or '}', or if the # previous line starts a preprocessor block. prevline = GetPreviousNonBlankLine(clean_lines, linenum)[0] if (not Search(r'[,;:}{(]\s*$', prevline) and not Match(r'\s*#', prevline)): error(filename, linenum, 'whitespace/braces', 4, '{ should almost always be at the end of the previous line') # An else clause should be on the same line as the preceding closing brace. if Match(r'\s*else\s*', line): prevline = GetPreviousNonBlankLine(clean_lines, linenum)[0] if Match(r'\s*}\s*$', prevline): error(filename, linenum, 'whitespace/newline', 4, 'An else should appear on the same line as the preceding }') # If braces come on one side of an else, they should be on both. # However, we have to worry about "else if" that spans multiple lines! if Search(r'}\s*else[^{]*$', line) or Match(r'[^}]*else\s*{', line): if Search(r'}\s*else if([^{]*)$', line): # could be multi-line if # find the ( after the if pos = line.find('else if') pos = line.find('(', pos) if pos > 0: (endline, _, endpos) = CloseExpression(clean_lines, linenum, pos) if endline[endpos:].find('{') == -1: # must be brace after if error(filename, linenum, 'readability/braces', 5, 'If an else has a brace on one side, it should have it on both') else: # common case: else not followed by a multi-line if error(filename, linenum, 'readability/braces', 5, 'If an else has a brace on one side, it should have it on both') # Likewise, an else should never have the else clause on the same line if Search(r'\belse [^\s{]', line) and not Search(r'\belse if\b', line): error(filename, linenum, 'whitespace/newline', 4, 'Else clause should never be on same line as else (use 2 lines)') # In the same way, a do/while should never be on one line if Match(r'\s*do [^\s{]', line): error(filename, linenum, 'whitespace/newline', 4, 'do/while clauses should not be on a single line') # Block bodies should not be followed by a semicolon. Due to C++11 # brace initialization, there are more places where semicolons are # required than not, so we use a whitelist approach to check these # rather than a blacklist. These are the places where "};" should # be replaced by just "}": # 1. Some flavor of block following closing parenthesis: # for (;;) {}; # while (...) {}; # switch (...) {}; # Function(...) {}; # if (...) {}; # if (...) else if (...) {}; # # 2. else block: # if (...) else {}; # # 3. const member function: # Function(...) const {}; # # 4. Block following some statement: # x = 42; # {}; # # 5. Block at the beginning of a function: # Function(...) { # {}; # } # # Note that naively checking for the preceding "{" will also match # braces inside multi-dimensional arrays, but this is fine since # that expression will not contain semicolons. # # 6. Block following another block: # while (true) {} # {}; # # 7. End of namespaces: # namespace {}; # # These semicolons seems far more common than other kinds of # redundant semicolons, possibly due to people converting classes # to namespaces. For now we do not warn for this case. # # Try matching case 1 first. match = Match(r'^(.*\)\s*)\{', line) if match: # Matched closing parenthesis (case 1). Check the token before the # matching opening parenthesis, and don't warn if it looks like a # macro. This avoids these false positives: # - macro that defines a base class # - multi-line macro that defines a base class # - macro that defines the whole class-head # # But we still issue warnings for macros that we know are safe to # warn, specifically: # - TEST, TEST_F, TEST_P, MATCHER, MATCHER_P # - TYPED_TEST # - INTERFACE_DEF # - EXCLUSIVE_LOCKS_REQUIRED, SHARED_LOCKS_REQUIRED, LOCKS_EXCLUDED: # # We implement a whitelist of safe macros instead of a blacklist of # unsafe macros, even though the latter appears less frequently in # google code and would have been easier to implement. This is because # the downside for getting the whitelist wrong means some extra # semicolons, while the downside for getting the blacklist wrong # would result in compile errors. # # In addition to macros, we also don't want to warn on compound # literals. closing_brace_pos = match.group(1).rfind(')') opening_parenthesis = ReverseCloseExpression( clean_lines, linenum, closing_brace_pos) if opening_parenthesis[2] > -1: line_prefix = opening_parenthesis[0][0:opening_parenthesis[2]] macro = Search(r'\b([A-Z_]+)\s*$', line_prefix) if ((macro and macro.group(1) not in ( 'TEST', 'TEST_F', 'MATCHER', 'MATCHER_P', 'TYPED_TEST', 'EXCLUSIVE_LOCKS_REQUIRED', 'SHARED_LOCKS_REQUIRED', 'LOCKS_EXCLUDED', 'INTERFACE_DEF')) or Search(r'\s+=\s*$', line_prefix)): match = None else: # Try matching cases 2-3. match = Match(r'^(.*(?:else|\)\s*const)\s*)\{', line) if not match: # Try matching cases 4-6. These are always matched on separate lines. # # Note that we can't simply concatenate the previous line to the # current line and do a single match, otherwise we may output # duplicate warnings for the blank line case: # if (cond) { # // blank line # } prevline = GetPreviousNonBlankLine(clean_lines, linenum)[0] if prevline and Search(r'[;{}]\s*$', prevline): match = Match(r'^(\s*)\{', line) # Check matching closing brace if match: (endline, endlinenum, endpos) = CloseExpression( clean_lines, linenum, len(match.group(1))) if endpos > -1 and Match(r'^\s*;', endline[endpos:]): # Current {} pair is eligible for semicolon check, and we have found # the redundant semicolon, output warning here. # # Note: because we are scanning forward for opening braces, and # outputting warnings for the matching closing brace, if there are # nested blocks with trailing semicolons, we will get the error # messages in reversed order. error(filename, endlinenum, 'readability/braces', 4, "You don't need a ; after a }") def CheckEmptyBlockBody(filename, clean_lines, linenum, error): """Look for empty loop/conditional body with only a single semicolon. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ # Search for loop keywords at the beginning of the line. Because only # whitespaces are allowed before the keywords, this will also ignore most # do-while-loops, since those lines should start with closing brace. # # We also check "if" blocks here, since an empty conditional block # is likely an error. line = clean_lines.elided[linenum] matched = Match(r'\s*(for|while|if)\s*\(', line) if matched: # Find the end of the conditional expression (end_line, end_linenum, end_pos) = CloseExpression( clean_lines, linenum, line.find('(')) # Output warning if what follows the condition expression is a semicolon. # No warning for all other cases, including whitespace or newline, since we # have a separate check for semicolons preceded by whitespace. if end_pos >= 0 and Match(r';', end_line[end_pos:]): if matched.group(1) == 'if': error(filename, end_linenum, 'whitespace/empty_conditional_body', 5, 'Empty conditional bodies should use {}') else: error(filename, end_linenum, 'whitespace/empty_loop_body', 5, 'Empty loop bodies should use {} or continue') def CheckCheck(filename, clean_lines, linenum, error): """Checks the use of CHECK and EXPECT macros. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ # Decide the set of replacement macros that should be suggested lines = clean_lines.elided check_macro = None start_pos = -1 for macro in _CHECK_MACROS: i = lines[linenum].find(macro) if i >= 0: check_macro = macro # Find opening parenthesis. Do a regular expression match here # to make sure that we are matching the expected CHECK macro, as # opposed to some other macro that happens to contain the CHECK # substring. matched = Match(r'^(.*\b' + check_macro + r'\s*)\(', lines[linenum]) if not matched: continue start_pos = len(matched.group(1)) break if not check_macro or start_pos < 0: # Don't waste time here if line doesn't contain 'CHECK' or 'EXPECT' return # Find end of the boolean expression by matching parentheses (last_line, end_line, end_pos) = CloseExpression( clean_lines, linenum, start_pos) if end_pos < 0: return if linenum == end_line: expression = lines[linenum][start_pos + 1:end_pos - 1] else: expression = lines[linenum][start_pos + 1:] for i in xrange(linenum + 1, end_line): expression += lines[i] expression += last_line[0:end_pos - 1] # Parse expression so that we can take parentheses into account. # This avoids false positives for inputs like "CHECK((a < 4) == b)", # which is not replaceable by CHECK_LE. lhs = '' rhs = '' operator = None while expression: matched = Match(r'^\s*(<<|<<=|>>|>>=|->\*|->|&&|\|\||' r'==|!=|>=|>|<=|<|\()(.*)$', expression) if matched: token = matched.group(1) if token == '(': # Parenthesized operand expression = matched.group(2) (end, _) = FindEndOfExpressionInLine(expression, 0, 1, '(', ')') if end < 0: return # Unmatched parenthesis lhs += '(' + expression[0:end] expression = expression[end:] elif token in ('&&', '||'): # Logical and/or operators. This means the expression # contains more than one term, for example: # CHECK(42 < a && a < b); # # These are not replaceable with CHECK_LE, so bail out early. return elif token in ('<<', '<<=', '>>', '>>=', '->*', '->'): # Non-relational operator lhs += token expression = matched.group(2) else: # Relational operator operator = token rhs = matched.group(2) break else: # Unparenthesized operand. Instead of appending to lhs one character # at a time, we do another regular expression match to consume several # characters at once if possible. Trivial benchmark shows that this # is more efficient when the operands are longer than a single # character, which is generally the case. matched = Match(r'^([^-=!<>()&|]+)(.*)$', expression) if not matched: matched = Match(r'^(\s*\S)(.*)$', expression) if not matched: break lhs += matched.group(1) expression = matched.group(2) # Only apply checks if we got all parts of the boolean expression if not (lhs and operator and rhs): return # Check that rhs do not contain logical operators. We already know # that lhs is fine since the loop above parses out && and ||. if rhs.find('&&') > -1 or rhs.find('||') > -1: return # At least one of the operands must be a constant literal. This is # to avoid suggesting replacements for unprintable things like # CHECK(variable != iterator) # # The following pattern matches decimal, hex integers, strings, and # characters (in that order). lhs = lhs.strip() rhs = rhs.strip() match_constant = r'^([-+]?(\d+|0[xX][0-9a-fA-F]+)[lLuU]{0,3}|".*"|\'.*\')$' if Match(match_constant, lhs) or Match(match_constant, rhs): # Note: since we know both lhs and rhs, we can provide a more # descriptive error message like: # Consider using CHECK_EQ(x, 42) instead of CHECK(x == 42) # Instead of: # Consider using CHECK_EQ instead of CHECK(a == b) # # We are still keeping the less descriptive message because if lhs # or rhs gets long, the error message might become unreadable. error(filename, linenum, 'readability/check', 2, 'Consider using %s instead of %s(a %s b)' % ( _CHECK_REPLACEMENT[check_macro][operator], check_macro, operator)) def CheckAltTokens(filename, clean_lines, linenum, error): """Check alternative keywords being used in boolean expressions. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] # Avoid preprocessor lines if Match(r'^\s*#', line): return # Last ditch effort to avoid multi-line comments. This will not help # if the comment started before the current line or ended after the # current line, but it catches most of the false positives. At least, # it provides a way to workaround this warning for people who use # multi-line comments in preprocessor macros. # # TODO(unknown): remove this once cpplint has better support for # multi-line comments. if line.find('/*') >= 0 or line.find('*/') >= 0: return for match in _ALT_TOKEN_REPLACEMENT_PATTERN.finditer(line): error(filename, linenum, 'readability/alt_tokens', 2, 'Use operator %s instead of %s' % ( _ALT_TOKEN_REPLACEMENT[match.group(1)], match.group(1))) def GetLineWidth(line): """Determines the width of the line in column positions. Args: line: A string, which may be a Unicode string. Returns: The width of the line in column positions, accounting for Unicode combining characters and wide characters. """ if isinstance(line, unicode): width = 0 for uc in unicodedata.normalize('NFC', line): if unicodedata.east_asian_width(uc) in ('W', 'F'): width += 2 elif not unicodedata.combining(uc): width += 1 return width else: return len(line) def CheckStyle(filename, clean_lines, linenum, file_extension, nesting_state, error): """Checks rules from the 'C++ style rules' section of cppguide.html. Most of these rules are hard to test (naming, comment style), but we do what we can. In particular we check for 2-space indents, line lengths, tab usage, spaces inside code, etc. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. file_extension: The extension (without the dot) of the filename. nesting_state: A _NestingState instance which maintains information about the current stack of nested blocks being parsed. error: The function to call with any errors found. """ # Don't use "elided" lines here, otherwise we can't check commented lines. # Don't want to use "raw" either, because we don't want to check inside C++11 # raw strings, raw_lines = clean_lines.lines_without_raw_strings line = raw_lines[linenum] if line.find('\t') != -1: error(filename, linenum, 'whitespace/tab', 1, 'Tab found; better to use spaces') # One or three blank spaces at the beginning of the line is weird; it's # hard to reconcile that with 2-space indents. # NOTE: here are the conditions rob pike used for his tests. Mine aren't # as sophisticated, but it may be worth becoming so: RLENGTH==initial_spaces # if(RLENGTH > 20) complain = 0; # if(match($0, " +(error|private|public|protected):")) complain = 0; # if(match(prev, "&& *$")) complain = 0; # if(match(prev, "\\|\\| *$")) complain = 0; # if(match(prev, "[\",=><] *$")) complain = 0; # if(match($0, " <<")) complain = 0; # if(match(prev, " +for \\(")) complain = 0; # if(prevodd && match(prevprev, " +for \\(")) complain = 0; initial_spaces = 0 cleansed_line = clean_lines.elided[linenum] while initial_spaces < len(line) and line[initial_spaces] == ' ': initial_spaces += 1 if line and line[-1].isspace(): error(filename, linenum, 'whitespace/end_of_line', 4, 'Line ends in whitespace. Consider deleting these extra spaces.') # There are certain situations we allow one space, notably for section labels elif ((initial_spaces == 1 or initial_spaces == 3) and not Match(r'\s*\w+\s*:\s*$', cleansed_line)): error(filename, linenum, 'whitespace/indent', 3, 'Weird number of spaces at line-start. ' 'Are you using a 2-space indent?') # Check if the line is a header guard. is_header_guard = False if file_extension == 'h': cppvar = GetHeaderGuardCPPVariable(filename) if (line.startswith('#ifndef %s' % cppvar) or line.startswith('#define %s' % cppvar) or line.startswith('#endif // %s' % cppvar)): is_header_guard = True # #include lines and header guards can be long, since there's no clean way to # split them. # # URLs can be long too. It's possible to split these, but it makes them # harder to cut&paste. # # The "$Id:...$" comment may also get very long without it being the # developers fault. if (not line.startswith('#include') and not is_header_guard and not Match(r'^\s*//.*http(s?)://\S*$', line) and not Match(r'^// \$Id:.*#[0-9]+ \$$', line)): line_width = GetLineWidth(line) extended_length = int((_line_length * 1.25)) if line_width > extended_length: error(filename, linenum, 'whitespace/line_length', 4, 'Lines should very rarely be longer than %i characters' % extended_length) elif line_width > _line_length: error(filename, linenum, 'whitespace/line_length', 2, 'Lines should be <= %i characters long' % _line_length) if (cleansed_line.count(';') > 1 and # for loops are allowed two ;'s (and may run over two lines). cleansed_line.find('for') == -1 and (GetPreviousNonBlankLine(clean_lines, linenum)[0].find('for') == -1 or GetPreviousNonBlankLine(clean_lines, linenum)[0].find(';') != -1) and # It's ok to have many commands in a switch case that fits in 1 line not ((cleansed_line.find('case ') != -1 or cleansed_line.find('default:') != -1) and cleansed_line.find('break;') != -1)): error(filename, linenum, 'whitespace/newline', 0, 'More than one command on the same line') # Some more style checks CheckBraces(filename, clean_lines, linenum, error) CheckEmptyBlockBody(filename, clean_lines, linenum, error) CheckAccess(filename, clean_lines, linenum, nesting_state, error) CheckSpacing(filename, clean_lines, linenum, nesting_state, error) CheckCheck(filename, clean_lines, linenum, error) CheckAltTokens(filename, clean_lines, linenum, error) classinfo = nesting_state.InnermostClass() if classinfo: CheckSectionSpacing(filename, clean_lines, classinfo, linenum, error) _RE_PATTERN_INCLUDE_NEW_STYLE = re.compile(r'#include +"[^/]+\.h"') _RE_PATTERN_INCLUDE = re.compile(r'^\s*#\s*include\s*([<"])([^>"]*)[>"].*$') # Matches the first component of a filename delimited by -s and _s. That is: # _RE_FIRST_COMPONENT.match('foo').group(0) == 'foo' # _RE_FIRST_COMPONENT.match('foo.cc').group(0) == 'foo' # _RE_FIRST_COMPONENT.match('foo-bar_baz.cc').group(0) == 'foo' # _RE_FIRST_COMPONENT.match('foo_bar-baz.cc').group(0) == 'foo' _RE_FIRST_COMPONENT = re.compile(r'^[^-_.]+') def _DropCommonSuffixes(filename): """Drops common suffixes like _test.cc or -inl.h from filename. For example: >>> _DropCommonSuffixes('foo/foo-inl.h') 'foo/foo' >>> _DropCommonSuffixes('foo/bar/foo.cc') 'foo/bar/foo' >>> _DropCommonSuffixes('foo/foo_internal.h') 'foo/foo' >>> _DropCommonSuffixes('foo/foo_unusualinternal.h') 'foo/foo_unusualinternal' Args: filename: The input filename. Returns: The filename with the common suffix removed. """ for suffix in ('test.cc', 'regtest.cc', 'unittest.cc', 'inl.h', 'impl.h', 'internal.h'): if (filename.endswith(suffix) and len(filename) > len(suffix) and filename[-len(suffix) - 1] in ('-', '_')): return filename[:-len(suffix) - 1] return os.path.splitext(filename)[0] def _IsTestFilename(filename): """Determines if the given filename has a suffix that identifies it as a test. Args: filename: The input filename. Returns: True if 'filename' looks like a test, False otherwise. """ if (filename.endswith('_test.cc') or filename.endswith('_unittest.cc') or filename.endswith('_regtest.cc')): return True else: return False def _ClassifyInclude(fileinfo, include, is_system): """Figures out what kind of header 'include' is. Args: fileinfo: The current file cpplint is running over. A FileInfo instance. include: The path to a #included file. is_system: True if the #include used <> rather than "". Returns: One of the _XXX_HEADER constants. For example: >>> _ClassifyInclude(FileInfo('foo/foo.cc'), 'stdio.h', True) _C_SYS_HEADER >>> _ClassifyInclude(FileInfo('foo/foo.cc'), 'string', True) _CPP_SYS_HEADER >>> _ClassifyInclude(FileInfo('foo/foo.cc'), 'foo/foo.h', False) _LIKELY_MY_HEADER >>> _ClassifyInclude(FileInfo('foo/foo_unknown_extension.cc'), ... 'bar/foo_other_ext.h', False) _POSSIBLE_MY_HEADER >>> _ClassifyInclude(FileInfo('foo/foo.cc'), 'foo/bar.h', False) _OTHER_HEADER """ # This is a list of all standard c++ header files, except # those already checked for above. is_cpp_h = include in _CPP_HEADERS if is_system: if is_cpp_h: return _CPP_SYS_HEADER else: return _C_SYS_HEADER # If the target file and the include we're checking share a # basename when we drop common extensions, and the include # lives in . , then it's likely to be owned by the target file. target_dir, target_base = ( os.path.split(_DropCommonSuffixes(fileinfo.RepositoryName()))) include_dir, include_base = os.path.split(_DropCommonSuffixes(include)) if target_base == include_base and ( include_dir == target_dir or include_dir == os.path.normpath(target_dir + '/../public')): return _LIKELY_MY_HEADER # If the target and include share some initial basename # component, it's possible the target is implementing the # include, so it's allowed to be first, but we'll never # complain if it's not there. target_first_component = _RE_FIRST_COMPONENT.match(target_base) include_first_component = _RE_FIRST_COMPONENT.match(include_base) if (target_first_component and include_first_component and target_first_component.group(0) == include_first_component.group(0)): return _POSSIBLE_MY_HEADER return _OTHER_HEADER def CheckIncludeLine(filename, clean_lines, linenum, include_state, error): """Check rules that are applicable to #include lines. Strings on #include lines are NOT removed from elided line, to make certain tasks easier. However, to prevent false positives, checks applicable to #include lines in CheckLanguage must be put here. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. include_state: An _IncludeState instance in which the headers are inserted. error: The function to call with any errors found. """ fileinfo = FileInfo(filename) line = clean_lines.lines[linenum] # "include" should use the new style "foo/bar.h" instead of just "bar.h" if _RE_PATTERN_INCLUDE_NEW_STYLE.search(line): error(filename, linenum, 'build/include_dir', 4, 'Include the directory when naming .h files') # we shouldn't include a file more than once. actually, there are a # handful of instances where doing so is okay, but in general it's # not. match = _RE_PATTERN_INCLUDE.search(line) if match: include = match.group(2) is_system = (match.group(1) == '<') if include in include_state: error(filename, linenum, 'build/include', 4, '"%s" already included at %s:%s' % (include, filename, include_state[include])) else: include_state[include] = linenum # We want to ensure that headers appear in the right order: # 1) for foo.cc, foo.h (preferred location) # 2) c system files # 3) cpp system files # 4) for foo.cc, foo.h (deprecated location) # 5) other google headers # # We classify each include statement as one of those 5 types # using a number of techniques. The include_state object keeps # track of the highest type seen, and complains if we see a # lower type after that. error_message = include_state.CheckNextIncludeOrder( _ClassifyInclude(fileinfo, include, is_system)) if error_message: error(filename, linenum, 'build/include_order', 4, '%s. Should be: %s.h, c system, c++ system, other.' % (error_message, fileinfo.BaseName())) canonical_include = include_state.CanonicalizeAlphabeticalOrder(include) if not include_state.IsInAlphabeticalOrder( clean_lines, linenum, canonical_include): error(filename, linenum, 'build/include_alpha', 4, 'Include "%s" not in alphabetical order' % include) include_state.SetLastHeader(canonical_include) # Look for any of the stream classes that are part of standard C++. match = _RE_PATTERN_INCLUDE.match(line) if match: include = match.group(2) if Match(r'(f|ind|io|i|o|parse|pf|stdio|str|)?stream$', include): # Many unit tests use cout, so we exempt them. if not _IsTestFilename(filename): error(filename, linenum, 'readability/streams', 3, 'Streams are highly discouraged.') def _GetTextInside(text, start_pattern): r"""Retrieves all the text between matching open and close parentheses. Given a string of lines and a regular expression string, retrieve all the text following the expression and between opening punctuation symbols like (, [, or {, and the matching close-punctuation symbol. This properly nested occurrences of the punctuations, so for the text like printf(a(), b(c())); a call to _GetTextInside(text, r'printf\(') will return 'a(), b(c())'. start_pattern must match string having an open punctuation symbol at the end. Args: text: The lines to extract text. Its comments and strings must be elided. It can be single line and can span multiple lines. start_pattern: The regexp string indicating where to start extracting the text. Returns: The extracted text. None if either the opening string or ending punctuation could not be found. """ # TODO(sugawarayu): Audit cpplint.py to see what places could be profitably # rewritten to use _GetTextInside (and use inferior regexp matching today). # Give opening punctuations to get the matching close-punctuations. matching_punctuation = {'(': ')', '{': '}', '[': ']'} closing_punctuation = set(matching_punctuation.itervalues()) # Find the position to start extracting text. match = re.search(start_pattern, text, re.M) if not match: # start_pattern not found in text. return None start_position = match.end(0) assert start_position > 0, ( 'start_pattern must ends with an opening punctuation.') assert text[start_position - 1] in matching_punctuation, ( 'start_pattern must ends with an opening punctuation.') # Stack of closing punctuations we expect to have in text after position. punctuation_stack = [matching_punctuation[text[start_position - 1]]] position = start_position while punctuation_stack and position < len(text): if text[position] == punctuation_stack[-1]: punctuation_stack.pop() elif text[position] in closing_punctuation: # A closing punctuation without matching opening punctuations. return None elif text[position] in matching_punctuation: punctuation_stack.append(matching_punctuation[text[position]]) position += 1 if punctuation_stack: # Opening punctuations left without matching close-punctuations. return None # punctuations match. return text[start_position:position - 1] # Patterns for matching call-by-reference parameters. # # Supports nested templates up to 2 levels deep using this messy pattern: # < (?: < (?: < [^<>]* # > # | [^<>] )* # > # | [^<>] )* # > _RE_PATTERN_IDENT = r'[_a-zA-Z]\w*' # =~ [[:alpha:]][[:alnum:]]* _RE_PATTERN_TYPE = ( r'(?:const\s+)?(?:typename\s+|class\s+|struct\s+|union\s+|enum\s+)?' r'(?:\w|' r'\s*<(?:<(?:<[^<>]*>|[^<>])*>|[^<>])*>|' r'::)+') # A call-by-reference parameter ends with '& identifier'. _RE_PATTERN_REF_PARAM = re.compile( r'(' + _RE_PATTERN_TYPE + r'(?:\s*(?:\bconst\b|[*]))*\s*' r'&\s*' + _RE_PATTERN_IDENT + r')\s*(?:=[^,()]+)?[,)]') # A call-by-const-reference parameter either ends with 'const& identifier' # or looks like 'const type& identifier' when 'type' is atomic. _RE_PATTERN_CONST_REF_PARAM = ( r'(?:.*\s*\bconst\s*&\s*' + _RE_PATTERN_IDENT + r'|const\s+' + _RE_PATTERN_TYPE + r'\s*&\s*' + _RE_PATTERN_IDENT + r')') def CheckLanguage(filename, clean_lines, linenum, file_extension, include_state, nesting_state, error): """Checks rules from the 'C++ language rules' section of cppguide.html. Some of these rules are hard to test (function overloading, using uint32 inappropriately), but we do the best we can. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. file_extension: The extension (without the dot) of the filename. include_state: An _IncludeState instance in which the headers are inserted. nesting_state: A _NestingState instance which maintains information about the current stack of nested blocks being parsed. error: The function to call with any errors found. """ # If the line is empty or consists of entirely a comment, no need to # check it. line = clean_lines.elided[linenum] if not line: return match = _RE_PATTERN_INCLUDE.search(line) if match: CheckIncludeLine(filename, clean_lines, linenum, include_state, error) return # Reset include state across preprocessor directives. This is meant # to silence warnings for conditional includes. if Match(r'^\s*#\s*(?:ifdef|elif|else|endif)\b', line): include_state.ResetSection() # Make Windows paths like Unix. fullname = os.path.abspath(filename).replace('\\', '/') # TODO(unknown): figure out if they're using default arguments in fn proto. # Check to see if they're using an conversion function cast. # I just try to capture the most common basic types, though there are more. # Parameterless conversion functions, such as bool(), are allowed as they are # probably a member operator declaration or default constructor. match = Search( r'(\bnew\s+)?\b' # Grab 'new' operator, if it's there r'(int|float|double|bool|char|int32|uint32|int64|uint64)' r'(\([^)].*)', line) if match: matched_new = match.group(1) matched_type = match.group(2) matched_funcptr = match.group(3) # gMock methods are defined using some variant of MOCK_METHODx(name, type) # where type may be float(), int(string), etc. Without context they are # virtually indistinguishable from int(x) casts. Likewise, gMock's # MockCallback takes a template parameter of the form return_type(arg_type), # which looks much like the cast we're trying to detect. # # std::function<> wrapper has a similar problem. # # Return types for function pointers also look like casts if they # don't have an extra space. if (matched_new is None and # If new operator, then this isn't a cast not (Match(r'^\s*MOCK_(CONST_)?METHOD\d+(_T)?\(', line) or Search(r'\bMockCallback<.*>', line) or Search(r'\bstd::function<.*>', line)) and not (matched_funcptr and Match(r'\((?:[^() ]+::\s*\*\s*)?[^() ]+\)\s*\(', matched_funcptr))): # Try a bit harder to catch gmock lines: the only place where # something looks like an old-style cast is where we declare the # return type of the mocked method, and the only time when we # are missing context is if MOCK_METHOD was split across # multiple lines. The missing MOCK_METHOD is usually one or two # lines back, so scan back one or two lines. # # It's not possible for gmock macros to appear in the first 2 # lines, since the class head + section name takes up 2 lines. if (linenum < 2 or not (Match(r'^\s*MOCK_(?:CONST_)?METHOD\d+(?:_T)?\((?:\S+,)?\s*$', clean_lines.elided[linenum - 1]) or Match(r'^\s*MOCK_(?:CONST_)?METHOD\d+(?:_T)?\(\s*$', clean_lines.elided[linenum - 2]))): error(filename, linenum, 'readability/casting', 4, 'Using deprecated casting style. ' 'Use static_cast<%s>(...) instead' % matched_type) CheckCStyleCast(filename, linenum, line, clean_lines.raw_lines[linenum], 'static_cast', r'\((int|float|double|bool|char|u?int(16|32|64))\)', error) # This doesn't catch all cases. Consider (const char * const)"hello". # # (char *) "foo" should always be a const_cast (reinterpret_cast won't # compile). if CheckCStyleCast(filename, linenum, line, clean_lines.raw_lines[linenum], 'const_cast', r'\((char\s?\*+\s?)\)\s*"', error): pass else: # Check pointer casts for other than string constants CheckCStyleCast(filename, linenum, line, clean_lines.raw_lines[linenum], 'reinterpret_cast', r'\((\w+\s?\*+\s?)\)', error) # In addition, we look for people taking the address of a cast. This # is dangerous -- casts can assign to temporaries, so the pointer doesn't # point where you think. match = Search( r'(?:&\(([^)]+)\)[\w(])|' r'(?:&(static|dynamic|down|reinterpret)_cast\b)', line) if match and match.group(1) != '*': error(filename, linenum, 'runtime/casting', 4, ('Are you taking an address of a cast? ' 'This is dangerous: could be a temp var. ' 'Take the address before doing the cast, rather than after')) # Create an extended_line, which is the concatenation of the current and # next lines, for more effective checking of code that may span more than one # line. if linenum + 1 < clean_lines.NumLines(): extended_line = line + clean_lines.elided[linenum + 1] else: extended_line = line # Check for people declaring static/global STL strings at the top level. # This is dangerous because the C++ language does not guarantee that # globals with constructors are initialized before the first access. match = Match( r'((?:|static +)(?:|const +))string +([a-zA-Z0-9_:]+)\b(.*)', line) # Make sure it's not a function. # Function template specialization looks like: "string foo<Type>(...". # Class template definitions look like: "string Foo<Type>::Method(...". # # Also ignore things that look like operators. These are matched separately # because operator names cross non-word boundaries. If we change the pattern # above, we would decrease the accuracy of matching identifiers. if (match and not Search(r'\boperator\W', line) and not Match(r'\s*(<.*>)?(::[a-zA-Z0-9_]+)?\s*\(([^"]|$)', match.group(3))): error(filename, linenum, 'runtime/string', 4, 'For a static/global string constant, use a C style string instead: ' '"%schar %s[]".' % (match.group(1), match.group(2))) if Search(r'\b([A-Za-z0-9_]*_)\(\1\)', line): error(filename, linenum, 'runtime/init', 4, 'You seem to be initializing a member variable with itself.') if file_extension == 'h': # TODO(unknown): check that 1-arg constructors are explicit. # How to tell it's a constructor? # (handled in CheckForNonStandardConstructs for now) # TODO(unknown): check that classes have DISALLOW_EVIL_CONSTRUCTORS # (level 1 error) pass # Check if people are using the verboten C basic types. The only exception # we regularly allow is "unsigned short port" for port. if Search(r'\bshort port\b', line): if not Search(r'\bunsigned short port\b', line): error(filename, linenum, 'runtime/int', 4, 'Use "unsigned short" for ports, not "short"') else: match = Search(r'\b(short|long(?! +double)|long long)\b', line) if match: error(filename, linenum, 'runtime/int', 4, 'Use int16/int64/etc, rather than the C type %s' % match.group(1)) # When snprintf is used, the second argument shouldn't be a literal. match = Search(r'snprintf\s*\(([^,]*),\s*([0-9]*)\s*,', line) if match and match.group(2) != '0': # If 2nd arg is zero, snprintf is used to calculate size. error(filename, linenum, 'runtime/printf', 3, 'If you can, use sizeof(%s) instead of %s as the 2nd arg ' 'to snprintf.' % (match.group(1), match.group(2))) # Check if some verboten C functions are being used. if Search(r'\bsprintf\b', line): error(filename, linenum, 'runtime/printf', 5, 'Never use sprintf. Use snprintf instead.') match = Search(r'\b(strcpy|strcat)\b', line) if match: error(filename, linenum, 'runtime/printf', 4, 'Almost always, snprintf is better than %s' % match.group(1)) # Check if some verboten operator overloading is going on # TODO(unknown): catch out-of-line unary operator&: # class X {}; # int operator&(const X& x) { return 42; } // unary operator& # The trick is it's hard to tell apart from binary operator&: # class Y { int operator&(const Y& x) { return 23; } }; // binary operator& if Search(r'\boperator\s*&\s*\(\s*\)', line): error(filename, linenum, 'runtime/operator', 4, 'Unary operator& is dangerous. Do not use it.') # Check for suspicious usage of "if" like # } if (a == b) { if Search(r'\}\s*if\s*\(', line): error(filename, linenum, 'readability/braces', 4, 'Did you mean "else if"? If not, start a new line for "if".') # Check for potential format string bugs like printf(foo). # We constrain the pattern not to pick things like DocidForPrintf(foo). # Not perfect but it can catch printf(foo.c_str()) and printf(foo->c_str()) # TODO(sugawarayu): Catch the following case. Need to change the calling # convention of the whole function to process multiple line to handle it. # printf( # boy_this_is_a_really_long_variable_that_cannot_fit_on_the_prev_line); printf_args = _GetTextInside(line, r'(?i)\b(string)?printf\s*\(') if printf_args: match = Match(r'([\w.\->()]+)$', printf_args) if match and match.group(1) != '__VA_ARGS__': function_name = re.search(r'\b((?:string)?printf)\s*\(', line, re.I).group(1) error(filename, linenum, 'runtime/printf', 4, 'Potential format string bug. Do %s("%%s", %s) instead.' % (function_name, match.group(1))) # Check for potential memset bugs like memset(buf, sizeof(buf), 0). match = Search(r'memset\s*\(([^,]*),\s*([^,]*),\s*0\s*\)', line) if match and not Match(r"^''|-?[0-9]+|0x[0-9A-Fa-f]$", match.group(2)): error(filename, linenum, 'runtime/memset', 4, 'Did you mean "memset(%s, 0, %s)"?' % (match.group(1), match.group(2))) if Search(r'\busing namespace\b', line): error(filename, linenum, 'build/namespaces', 5, 'Do not use namespace using-directives. ' 'Use using-declarations instead.') # Detect variable-length arrays. match = Match(r'\s*(.+::)?(\w+) [a-z]\w*\[(.+)];', line) if (match and match.group(2) != 'return' and match.group(2) != 'delete' and match.group(3).find(']') == -1): # Split the size using space and arithmetic operators as delimiters. # If any of the resulting tokens are not compile time constants then # report the error. tokens = re.split(r'\s|\+|\-|\*|\/|<<|>>]', match.group(3)) is_const = True skip_next = False for tok in tokens: if skip_next: skip_next = False continue if Search(r'sizeof\(.+\)', tok): continue if Search(r'arraysize\(\w+\)', tok): continue tok = tok.lstrip('(') tok = tok.rstrip(')') if not tok: continue if Match(r'\d+', tok): continue if Match(r'0[xX][0-9a-fA-F]+', tok): continue if Match(r'k[A-Z0-9]\w*', tok): continue if Match(r'(.+::)?k[A-Z0-9]\w*', tok): continue if Match(r'(.+::)?[A-Z][A-Z0-9_]*', tok): continue # A catch all for tricky sizeof cases, including 'sizeof expression', # 'sizeof(*type)', 'sizeof(const type)', 'sizeof(struct StructName)' # requires skipping the next token because we split on ' ' and '*'. if tok.startswith('sizeof'): skip_next = True continue is_const = False break if not is_const: error(filename, linenum, 'runtime/arrays', 1, 'Do not use variable-length arrays. Use an appropriately named ' "('k' followed by CamelCase) compile-time constant for the size.") # If DISALLOW_EVIL_CONSTRUCTORS, DISALLOW_COPY_AND_ASSIGN, or # DISALLOW_IMPLICIT_CONSTRUCTORS is present, then it should be the last thing # in the class declaration. match = Match( (r'\s*' r'(DISALLOW_(EVIL_CONSTRUCTORS|COPY_AND_ASSIGN|IMPLICIT_CONSTRUCTORS))' r'\(.*\);$'), line) if match and linenum + 1 < clean_lines.NumLines(): next_line = clean_lines.elided[linenum + 1] # We allow some, but not all, declarations of variables to be present # in the statement that defines the class. The [\w\*,\s]* fragment of # the regular expression below allows users to declare instances of # the class or pointers to instances, but not less common types such # as function pointers or arrays. It's a tradeoff between allowing # reasonable code and avoiding trying to parse more C++ using regexps. if not Search(r'^\s*}[\w\*,\s]*;', next_line): error(filename, linenum, 'readability/constructors', 3, match.group(1) + ' should be the last thing in the class') # Check for use of unnamed namespaces in header files. Registration # macros are typically OK, so we allow use of "namespace {" on lines # that end with backslashes. if (file_extension == 'h' and Search(r'\bnamespace\s*{', line) and line[-1] != '\\'): error(filename, linenum, 'build/namespaces', 4, 'Do not use unnamed namespaces in header files. See ' 'http://google-styleguide.googlecode.com/svn/trunk/cppguide.xml#Namespaces' ' for more information.') def CheckForNonConstReference(filename, clean_lines, linenum, nesting_state, error): """Check for non-const references. Separate from CheckLanguage since it scans backwards from current line, instead of scanning forward. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. nesting_state: A _NestingState instance which maintains information about the current stack of nested blocks being parsed. error: The function to call with any errors found. """ # Do nothing if there is no '&' on current line. line = clean_lines.elided[linenum] if '&' not in line: return # Long type names may be broken across multiple lines, usually in one # of these forms: # LongType # ::LongTypeContinued &identifier # LongType:: # LongTypeContinued &identifier # LongType< # ...>::LongTypeContinued &identifier # # If we detected a type split across two lines, join the previous # line to current line so that we can match const references # accordingly. # # Note that this only scans back one line, since scanning back # arbitrary number of lines would be expensive. If you have a type # that spans more than 2 lines, please use a typedef. if linenum > 1: previous = None if Match(r'\s*::(?:[\w<>]|::)+\s*&\s*\S', line): # previous_line\n + ::current_line previous = Search(r'\b((?:const\s*)?(?:[\w<>]|::)+[\w<>])\s*$', clean_lines.elided[linenum - 1]) elif Match(r'\s*[a-zA-Z_]([\w<>]|::)+\s*&\s*\S', line): # previous_line::\n + current_line previous = Search(r'\b((?:const\s*)?(?:[\w<>]|::)+::)\s*$', clean_lines.elided[linenum - 1]) if previous: line = previous.group(1) + line.lstrip() else: # Check for templated parameter that is split across multiple lines endpos = line.rfind('>') if endpos > -1: (_, startline, startpos) = ReverseCloseExpression( clean_lines, linenum, endpos) if startpos > -1 and startline < linenum: # Found the matching < on an earlier line, collect all # pieces up to current line. line = '' for i in xrange(startline, linenum + 1): line += clean_lines.elided[i].strip() # Check for non-const references in function parameters. A single '&' may # found in the following places: # inside expression: binary & for bitwise AND # inside expression: unary & for taking the address of something # inside declarators: reference parameter # We will exclude the first two cases by checking that we are not inside a # function body, including one that was just introduced by a trailing '{'. # TODO(unknwon): Doesn't account for preprocessor directives. # TODO(unknown): Doesn't account for 'catch(Exception& e)' [rare]. check_params = False if not nesting_state.stack: check_params = True # top level elif (isinstance(nesting_state.stack[-1], _ClassInfo) or isinstance(nesting_state.stack[-1], _NamespaceInfo)): check_params = True # within class or namespace elif Match(r'.*{\s*$', line): if (len(nesting_state.stack) == 1 or isinstance(nesting_state.stack[-2], _ClassInfo) or isinstance(nesting_state.stack[-2], _NamespaceInfo)): check_params = True # just opened global/class/namespace block # We allow non-const references in a few standard places, like functions # called "swap()" or iostream operators like "<<" or ">>". Do not check # those function parameters. # # We also accept & in static_assert, which looks like a function but # it's actually a declaration expression. whitelisted_functions = (r'(?:[sS]wap(?:<\w:+>)?|' r'operator\s*[<>][<>]|' r'static_assert|COMPILE_ASSERT' r')\s*\(') if Search(whitelisted_functions, line): check_params = False elif not Search(r'\S+\([^)]*$', line): # Don't see a whitelisted function on this line. Actually we # didn't see any function name on this line, so this is likely a # multi-line parameter list. Try a bit harder to catch this case. for i in xrange(2): if (linenum > i and Search(whitelisted_functions, clean_lines.elided[linenum - i - 1])): check_params = False break if check_params: decls = ReplaceAll(r'{[^}]*}', ' ', line) # exclude function body for parameter in re.findall(_RE_PATTERN_REF_PARAM, decls): if not Match(_RE_PATTERN_CONST_REF_PARAM, parameter): error(filename, linenum, 'runtime/references', 2, 'Is this a non-const reference? ' 'If so, make const or use a pointer: ' + ReplaceAll(' *<', '<', parameter)) def CheckCStyleCast(filename, linenum, line, raw_line, cast_type, pattern, error): """Checks for a C-style cast by looking for the pattern. Args: filename: The name of the current file. linenum: The number of the line to check. line: The line of code to check. raw_line: The raw line of code to check, with comments. cast_type: The string for the C++ cast to recommend. This is either reinterpret_cast, static_cast, or const_cast, depending. pattern: The regular expression used to find C-style casts. error: The function to call with any errors found. Returns: True if an error was emitted. False otherwise. """ match = Search(pattern, line) if not match: return False # Exclude lines with sizeof, since sizeof looks like a cast. sizeof_match = Match(r'.*sizeof\s*$', line[0:match.start(1) - 1]) if sizeof_match: return False # operator++(int) and operator--(int) if (line[0:match.start(1) - 1].endswith(' operator++') or line[0:match.start(1) - 1].endswith(' operator--')): return False # A single unnamed argument for a function tends to look like old # style cast. If we see those, don't issue warnings for deprecated # casts, instead issue warnings for unnamed arguments where # appropriate. # # These are things that we want warnings for, since the style guide # explicitly require all parameters to be named: # Function(int); # Function(int) { # ConstMember(int) const; # ConstMember(int) const { # ExceptionMember(int) throw (...); # ExceptionMember(int) throw (...) { # PureVirtual(int) = 0; # # These are functions of some sort, where the compiler would be fine # if they had named parameters, but people often omit those # identifiers to reduce clutter: # (FunctionPointer)(int); # (FunctionPointer)(int) = value; # Function((function_pointer_arg)(int)) # <TemplateArgument(int)>; # <(FunctionPointerTemplateArgument)(int)>; remainder = line[match.end(0):] if Match(r'^\s*(?:;|const\b|throw\b|=|>|\{|\))', remainder): # Looks like an unnamed parameter. # Don't warn on any kind of template arguments. if Match(r'^\s*>', remainder): return False # Don't warn on assignments to function pointers, but keep warnings for # unnamed parameters to pure virtual functions. Note that this pattern # will also pass on assignments of "0" to function pointers, but the # preferred values for those would be "nullptr" or "NULL". matched_zero = Match(r'^\s=\s*(\S+)\s*;', remainder) if matched_zero and matched_zero.group(1) != '0': return False # Don't warn on function pointer declarations. For this we need # to check what came before the "(type)" string. if Match(r'.*\)\s*$', line[0:match.start(0)]): return False # Don't warn if the parameter is named with block comments, e.g.: # Function(int /*unused_param*/); if '/*' in raw_line: return False # Passed all filters, issue warning here. error(filename, linenum, 'readability/function', 3, 'All parameters should be named in a function') return True # At this point, all that should be left is actual casts. error(filename, linenum, 'readability/casting', 4, 'Using C-style cast. Use %s<%s>(...) instead' % (cast_type, match.group(1))) return True _HEADERS_CONTAINING_TEMPLATES = ( ('<deque>', ('deque',)), ('<functional>', ('unary_function', 'binary_function', 'plus', 'minus', 'multiplies', 'divides', 'modulus', 'negate', 'equal_to', 'not_equal_to', 'greater', 'less', 'greater_equal', 'less_equal', 'logical_and', 'logical_or', 'logical_not', 'unary_negate', 'not1', 'binary_negate', 'not2', 'bind1st', 'bind2nd', 'pointer_to_unary_function', 'pointer_to_binary_function', 'ptr_fun', 'mem_fun_t', 'mem_fun', 'mem_fun1_t', 'mem_fun1_ref_t', 'mem_fun_ref_t', 'const_mem_fun_t', 'const_mem_fun1_t', 'const_mem_fun_ref_t', 'const_mem_fun1_ref_t', 'mem_fun_ref', )), ('<limits>', ('numeric_limits',)), ('<list>', ('list',)), ('<map>', ('map', 'multimap',)), ('<memory>', ('allocator',)), ('<queue>', ('queue', 'priority_queue',)), ('<set>', ('set', 'multiset',)), ('<stack>', ('stack',)), ('<string>', ('char_traits', 'basic_string',)), ('<utility>', ('pair',)), ('<vector>', ('vector',)), # gcc extensions. # Note: std::hash is their hash, ::hash is our hash ('<hash_map>', ('hash_map', 'hash_multimap',)), ('<hash_set>', ('hash_set', 'hash_multiset',)), ('<slist>', ('slist',)), ) _RE_PATTERN_STRING = re.compile(r'\bstring\b') _re_pattern_algorithm_header = [] for _template in ('copy', 'max', 'min', 'min_element', 'sort', 'swap', 'transform'): # Match max<type>(..., ...), max(..., ...), but not foo->max, foo.max or # type::max(). _re_pattern_algorithm_header.append( (re.compile(r'[^>.]\b' + _template + r'(<.*?>)?\([^\)]'), _template, '<algorithm>')) _re_pattern_templates = [] for _header, _templates in _HEADERS_CONTAINING_TEMPLATES: for _template in _templates: _re_pattern_templates.append( (re.compile(r'(\<|\b)' + _template + r'\s*\<'), _template + '<>', _header)) def FilesBelongToSameModule(filename_cc, filename_h): """Check if these two filenames belong to the same module. The concept of a 'module' here is a as follows: foo.h, foo-inl.h, foo.cc, foo_test.cc and foo_unittest.cc belong to the same 'module' if they are in the same directory. some/path/public/xyzzy and some/path/internal/xyzzy are also considered to belong to the same module here. If the filename_cc contains a longer path than the filename_h, for example, '/absolute/path/to/base/sysinfo.cc', and this file would include 'base/sysinfo.h', this function also produces the prefix needed to open the header. This is used by the caller of this function to more robustly open the header file. We don't have access to the real include paths in this context, so we need this guesswork here. Known bugs: tools/base/bar.cc and base/bar.h belong to the same module according to this implementation. Because of this, this function gives some false positives. This should be sufficiently rare in practice. Args: filename_cc: is the path for the .cc file filename_h: is the path for the header path Returns: Tuple with a bool and a string: bool: True if filename_cc and filename_h belong to the same module. string: the additional prefix needed to open the header file. """ if not filename_cc.endswith('.cc'): return (False, '') filename_cc = filename_cc[:-len('.cc')] if filename_cc.endswith('_unittest'): filename_cc = filename_cc[:-len('_unittest')] elif filename_cc.endswith('_test'): filename_cc = filename_cc[:-len('_test')] filename_cc = filename_cc.replace('/public/', '/') filename_cc = filename_cc.replace('/internal/', '/') if not filename_h.endswith('.h'): return (False, '') filename_h = filename_h[:-len('.h')] if filename_h.endswith('-inl'): filename_h = filename_h[:-len('-inl')] filename_h = filename_h.replace('/public/', '/') filename_h = filename_h.replace('/internal/', '/') files_belong_to_same_module = filename_cc.endswith(filename_h) common_path = '' if files_belong_to_same_module: common_path = filename_cc[:-len(filename_h)] return files_belong_to_same_module, common_path def UpdateIncludeState(filename, include_state, io=codecs): """Fill up the include_state with new includes found from the file. Args: filename: the name of the header to read. include_state: an _IncludeState instance in which the headers are inserted. io: The io factory to use to read the file. Provided for testability. Returns: True if a header was succesfully added. False otherwise. """ headerfile = None try: headerfile = io.open(filename, 'r', 'utf8', 'replace') except IOError: return False linenum = 0 for line in headerfile: linenum += 1 clean_line = CleanseComments(line) match = _RE_PATTERN_INCLUDE.search(clean_line) if match: include = match.group(2) # The value formatting is cute, but not really used right now. # What matters here is that the key is in include_state. include_state.setdefault(include, '%s:%d' % (filename, linenum)) return True def CheckForIncludeWhatYouUse(filename, clean_lines, include_state, error, io=codecs): """Reports for missing stl includes. This function will output warnings to make sure you are including the headers necessary for the stl containers and functions that you use. We only give one reason to include a header. For example, if you use both equal_to<> and less<> in a .h file, only one (the latter in the file) of these will be reported as a reason to include the <functional>. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. include_state: An _IncludeState instance. error: The function to call with any errors found. io: The IO factory to use to read the header file. Provided for unittest injection. """ required = {} # A map of header name to linenumber and the template entity. # Example of required: { '<functional>': (1219, 'less<>') } for linenum in xrange(clean_lines.NumLines()): line = clean_lines.elided[linenum] if not line or line[0] == '#': continue # String is special -- it is a non-templatized type in STL. matched = _RE_PATTERN_STRING.search(line) if matched: # Don't warn about strings in non-STL namespaces: # (We check only the first match per line; good enough.) prefix = line[:matched.start()] if prefix.endswith('std::') or not prefix.endswith('::'): required['<string>'] = (linenum, 'string') for pattern, template, header in _re_pattern_algorithm_header: if pattern.search(line): required[header] = (linenum, template) # The following function is just a speed up, no semantics are changed. if not '<' in line: # Reduces the cpu time usage by skipping lines. continue for pattern, template, header in _re_pattern_templates: if pattern.search(line): required[header] = (linenum, template) # The policy is that if you #include something in foo.h you don't need to # include it again in foo.cc. Here, we will look at possible includes. # Let's copy the include_state so it is only messed up within this function. include_state = include_state.copy() # Did we find the header for this file (if any) and succesfully load it? header_found = False # Use the absolute path so that matching works properly. abs_filename = FileInfo(filename).FullName() # For Emacs's flymake. # If cpplint is invoked from Emacs's flymake, a temporary file is generated # by flymake and that file name might end with '_flymake.cc'. In that case, # restore original file name here so that the corresponding header file can be # found. # e.g. If the file name is 'foo_flymake.cc', we should search for 'foo.h' # instead of 'foo_flymake.h' abs_filename = re.sub(r'_flymake\.cc$', '.cc', abs_filename) # include_state is modified during iteration, so we iterate over a copy of # the keys. header_keys = include_state.keys() for header in header_keys: (same_module, common_path) = FilesBelongToSameModule(abs_filename, header) fullpath = common_path + header if same_module and UpdateIncludeState(fullpath, include_state, io): header_found = True # If we can't find the header file for a .cc, assume it's because we don't # know where to look. In that case we'll give up as we're not sure they # didn't include it in the .h file. # TODO(unknown): Do a better job of finding .h files so we are confident that # not having the .h file means there isn't one. if filename.endswith('.cc') and not header_found: return # All the lines have been processed, report the errors found. for required_header_unstripped in required: template = required[required_header_unstripped][1] if required_header_unstripped.strip('<>"') not in include_state: error(filename, required[required_header_unstripped][0], 'build/include_what_you_use', 4, 'Add #include ' + required_header_unstripped + ' for ' + template) _RE_PATTERN_EXPLICIT_MAKEPAIR = re.compile(r'\bmake_pair\s*<') def CheckMakePairUsesDeduction(filename, clean_lines, linenum, error): """Check that make_pair's template arguments are deduced. G++ 4.6 in C++0x mode fails badly if make_pair's template arguments are specified explicitly, and such use isn't intended in any case. Args: filename: The name of the current file. clean_lines: A CleansedLines instance containing the file. linenum: The number of the line to check. error: The function to call with any errors found. """ line = clean_lines.elided[linenum] match = _RE_PATTERN_EXPLICIT_MAKEPAIR.search(line) if match: error(filename, linenum, 'build/explicit_make_pair', 4, # 4 = high confidence 'For C++11-compatibility, omit template arguments from make_pair' ' OR use pair directly OR if appropriate, construct a pair directly') def ProcessLine(filename, file_extension, clean_lines, line, include_state, function_state, nesting_state, error, extra_check_functions=[]): """Processes a single line in the file. Args: filename: Filename of the file that is being processed. file_extension: The extension (dot not included) of the file. clean_lines: An array of strings, each representing a line of the file, with comments stripped. line: Number of line being processed. include_state: An _IncludeState instance in which the headers are inserted. function_state: A _FunctionState instance which counts function lines, etc. nesting_state: A _NestingState instance which maintains information about the current stack of nested blocks being parsed. error: A callable to which errors are reported, which takes 4 arguments: filename, line number, error level, and message extra_check_functions: An array of additional check functions that will be run on each source line. Each function takes 4 arguments: filename, clean_lines, line, error """ raw_lines = clean_lines.raw_lines ParseNolintSuppressions(filename, raw_lines[line], line, error) nesting_state.Update(filename, clean_lines, line, error) if nesting_state.stack and nesting_state.stack[-1].inline_asm != _NO_ASM: return CheckForFunctionLengths(filename, clean_lines, line, function_state, error) CheckForMultilineCommentsAndStrings(filename, clean_lines, line, error) CheckStyle(filename, clean_lines, line, file_extension, nesting_state, error) CheckLanguage(filename, clean_lines, line, file_extension, include_state, nesting_state, error) CheckForNonConstReference(filename, clean_lines, line, nesting_state, error) CheckForNonStandardConstructs(filename, clean_lines, line, nesting_state, error) CheckVlogArguments(filename, clean_lines, line, error) CheckCaffeAlternatives(filename, clean_lines, line, error) CheckCaffeDataLayerSetUp(filename, clean_lines, line, error) CheckCaffeRandom(filename, clean_lines, line, error) CheckPosixThreading(filename, clean_lines, line, error) CheckInvalidIncrement(filename, clean_lines, line, error) CheckMakePairUsesDeduction(filename, clean_lines, line, error) for check_fn in extra_check_functions: check_fn(filename, clean_lines, line, error) def ProcessFileData(filename, file_extension, lines, error, extra_check_functions=[]): """Performs lint checks and reports any errors to the given error function. Args: filename: Filename of the file that is being processed. file_extension: The extension (dot not included) of the file. lines: An array of strings, each representing a line of the file, with the last element being empty if the file is terminated with a newline. error: A callable to which errors are reported, which takes 4 arguments: filename, line number, error level, and message extra_check_functions: An array of additional check functions that will be run on each source line. Each function takes 4 arguments: filename, clean_lines, line, error """ lines = (['// marker so line numbers and indices both start at 1'] + lines + ['// marker so line numbers end in a known way']) include_state = _IncludeState() function_state = _FunctionState() nesting_state = _NestingState() ResetNolintSuppressions() CheckForCopyright(filename, lines, error) if file_extension == 'h': CheckForHeaderGuard(filename, lines, error) RemoveMultiLineComments(filename, lines, error) clean_lines = CleansedLines(lines) for line in xrange(clean_lines.NumLines()): ProcessLine(filename, file_extension, clean_lines, line, include_state, function_state, nesting_state, error, extra_check_functions) nesting_state.CheckCompletedBlocks(filename, error) CheckForIncludeWhatYouUse(filename, clean_lines, include_state, error) # We check here rather than inside ProcessLine so that we see raw # lines rather than "cleaned" lines. CheckForBadCharacters(filename, lines, error) CheckForNewlineAtEOF(filename, lines, error) def ProcessFile(filename, vlevel, extra_check_functions=[]): """Does google-lint on a single file. Args: filename: The name of the file to parse. vlevel: The level of errors to report. Every error of confidence >= verbose_level will be reported. 0 is a good default. extra_check_functions: An array of additional check functions that will be run on each source line. Each function takes 4 arguments: filename, clean_lines, line, error """ _SetVerboseLevel(vlevel) try: # Support the UNIX convention of using "-" for stdin. Note that # we are not opening the file with universal newline support # (which codecs doesn't support anyway), so the resulting lines do # contain trailing '\r' characters if we are reading a file that # has CRLF endings. # If after the split a trailing '\r' is present, it is removed # below. If it is not expected to be present (i.e. os.linesep != # '\r\n' as in Windows), a warning is issued below if this file # is processed. if filename == '-': lines = codecs.StreamReaderWriter(sys.stdin, codecs.getreader('utf8'), codecs.getwriter('utf8'), 'replace').read().split('\n') else: lines = codecs.open(filename, 'r', 'utf8', 'replace').read().split('\n') carriage_return_found = False # Remove trailing '\r'. for linenum in range(len(lines)): if lines[linenum].endswith('\r'): lines[linenum] = lines[linenum].rstrip('\r') carriage_return_found = True except IOError: sys.stderr.write( "Skipping input '%s': Can't open for reading\n" % filename) return # Note, if no dot is found, this will give the entire filename as the ext. file_extension = filename[filename.rfind('.') + 1:] # When reading from stdin, the extension is unknown, so no cpplint tests # should rely on the extension. if filename != '-' and file_extension not in _valid_extensions: sys.stderr.write('Ignoring %s; not a valid file name ' '(%s)\n' % (filename, ', '.join(_valid_extensions))) else: ProcessFileData(filename, file_extension, lines, Error, extra_check_functions) if carriage_return_found and os.linesep != '\r\n': # Use 0 for linenum since outputting only one error for potentially # several lines. Error(filename, 0, 'whitespace/newline', 1, 'One or more unexpected \\r (^M) found;' 'better to use only a \\n') sys.stderr.write('Done processing %s\n' % filename) def PrintUsage(message): """Prints a brief usage string and exits, optionally with an error message. Args: message: The optional error message. """ sys.stderr.write(_USAGE) if message: sys.exit('\nFATAL ERROR: ' + message) else: sys.exit(1) def PrintCategories(): """Prints a list of all the error-categories used by error messages. These are the categories used to filter messages via --filter. """ sys.stderr.write(''.join(' %s\n' % cat for cat in _ERROR_CATEGORIES)) sys.exit(0) def ParseArguments(args): """Parses the command line arguments. This may set the output format and verbosity level as side-effects. Args: args: The command line arguments: Returns: The list of filenames to lint. """ try: (opts, filenames) = getopt.getopt(args, '', ['help', 'output=', 'verbose=', 'counting=', 'filter=', 'root=', 'linelength=', 'extensions=']) except getopt.GetoptError: PrintUsage('Invalid arguments.') verbosity = _VerboseLevel() output_format = _OutputFormat() filters = '' counting_style = '' for (opt, val) in opts: if opt == '--help': PrintUsage(None) elif opt == '--output': if val not in ('emacs', 'vs7', 'eclipse'): PrintUsage('The only allowed output formats are emacs, vs7 and eclipse.') output_format = val elif opt == '--verbose': verbosity = int(val) elif opt == '--filter': filters = val if not filters: PrintCategories() elif opt == '--counting': if val not in ('total', 'toplevel', 'detailed'): PrintUsage('Valid counting options are total, toplevel, and detailed') counting_style = val elif opt == '--root': global _root _root = val elif opt == '--linelength': global _line_length try: _line_length = int(val) except ValueError: PrintUsage('Line length must be digits.') elif opt == '--extensions': global _valid_extensions try: _valid_extensions = set(val.split(',')) except ValueError: PrintUsage('Extensions must be comma seperated list.') if not filenames: PrintUsage('No files were specified.') _SetOutputFormat(output_format) _SetVerboseLevel(verbosity) _SetFilters(filters) _SetCountingStyle(counting_style) return filenames def main(): filenames = ParseArguments(sys.argv[1:]) # Change stderr to write with replacement characters so we don't die # if we try to print something containing non-ASCII characters. sys.stderr = codecs.StreamReaderWriter(sys.stderr, codecs.getreader('utf8'), codecs.getwriter('utf8'), 'replace') _cpplint_state.ResetErrorCounts() for filename in filenames: ProcessFile(filename, _cpplint_state.verbose_level) _cpplint_state.PrintErrorCounts() sys.exit(_cpplint_state.error_count > 0) if __name__ == '__main__': main()
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DRT
DRT-master/caffe/scripts/download_model_binary.py
#!/usr/bin/env python import os import sys import time import yaml import urllib import hashlib import argparse required_keys = ['caffemodel', 'caffemodel_url', 'sha1'] def reporthook(count, block_size, total_size): """ From http://blog.moleculea.com/2012/10/04/urlretrieve-progres-indicator/ """ global start_time if count == 0: start_time = time.time() return duration = time.time() - start_time progress_size = int(count * block_size) speed = int(progress_size / (1024 * duration)) percent = int(count * block_size * 100 / total_size) sys.stdout.write("\r...%d%%, %d MB, %d KB/s, %d seconds passed" % (percent, progress_size / (1024 * 1024), speed, duration)) sys.stdout.flush() def parse_readme_frontmatter(dirname): readme_filename = os.path.join(dirname, 'readme.md') with open(readme_filename) as f: lines = [line.strip() for line in f.readlines()] top = lines.index('---') bottom = lines.index('---', top + 1) frontmatter = yaml.load('\n'.join(lines[top + 1:bottom])) assert all(key in frontmatter for key in required_keys) return dirname, frontmatter def valid_dirname(dirname): try: return parse_readme_frontmatter(dirname) except Exception as e: print('ERROR: {}'.format(e)) raise argparse.ArgumentTypeError( 'Must be valid Caffe model directory with a correct readme.md') if __name__ == '__main__': parser = argparse.ArgumentParser( description='Download trained model binary.') parser.add_argument('dirname', type=valid_dirname) args = parser.parse_args() # A tiny hack: the dirname validator also returns readme YAML frontmatter. dirname = args.dirname[0] frontmatter = args.dirname[1] model_filename = os.path.join(dirname, frontmatter['caffemodel']) # Closure-d function for checking SHA1. def model_checks_out(filename=model_filename, sha1=frontmatter['sha1']): with open(filename, 'r') as f: return hashlib.sha1(f.read()).hexdigest() == sha1 # Check if model exists. if os.path.exists(model_filename) and model_checks_out(): print("Model already exists.") sys.exit(0) # Download and verify model. urllib.urlretrieve( frontmatter['caffemodel_url'], model_filename, reporthook) if not model_checks_out(): print('ERROR: model did not download correctly! Run this again.') sys.exit(1)
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py