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import itertools
from contextlib import ExitStack
import torch
from mask2former.data.datasets.register_ade20k_panoptic import ADE20K_150_CATEGORIES
from PIL import Image
import numpy as np
import torch.nn.functional as F
from detectron2.config import instantiate
from detectron2.data import MetadataCatalog
from detectron2.data import detection_utils as utils
from detectron2.config import LazyCall as L
from detectron2.data import transforms as T
from detectron2.data.datasets.builtin_meta import COCO_CATEGORIES
from detectron2.evaluation import inference_context
from detectron2.utils.env import seed_all_rng
from detectron2.utils.visualizer import ColorMode, Visualizer, random_color
from detectron2.utils.logger import setup_logger
from odise import model_zoo
from odise.checkpoint import ODISECheckpointer
from odise.config import instantiate_odise
from odise.data import get_openseg_labels
from odise.modeling.wrapper import OpenPanopticInference
from third_party.ODISE.odise.config.instantiate import instantiate_odise_backbone
from third_party.utils.utils_correspondence import resize
import faiss
COCO_THING_CLASSES = [
label
for idx, label in enumerate(get_openseg_labels("coco_panoptic", True))
if COCO_CATEGORIES[idx]["isthing"] == 1
]
COCO_THING_COLORS = [c["color"] for c in COCO_CATEGORIES if c["isthing"] == 1]
COCO_STUFF_CLASSES = [
label
for idx, label in enumerate(get_openseg_labels("coco_panoptic", True))
if COCO_CATEGORIES[idx]["isthing"] == 0
]
COCO_STUFF_COLORS = [c["color"] for c in COCO_CATEGORIES if c["isthing"] == 0]
ADE_THING_CLASSES = [
label
for idx, label in enumerate(get_openseg_labels("ade20k_150", True))
if ADE20K_150_CATEGORIES[idx]["isthing"] == 1
]
ADE_THING_COLORS = [c["color"] for c in ADE20K_150_CATEGORIES if c["isthing"] == 1]
ADE_STUFF_CLASSES = [
label
for idx, label in enumerate(get_openseg_labels("ade20k_150", True))
if ADE20K_150_CATEGORIES[idx]["isthing"] == 0
]
ADE_STUFF_COLORS = [c["color"] for c in ADE20K_150_CATEGORIES if c["isthing"] == 0]
LVIS_CLASSES = get_openseg_labels("lvis_1203", True)
# use beautiful coco colors
LVIS_COLORS = list(
itertools.islice(itertools.cycle([c["color"] for c in COCO_CATEGORIES]), len(LVIS_CLASSES))
)
class StableDiffusionSeg(object):
def __init__(self, model, metadata, aug, instance_mode=ColorMode.IMAGE):
"""
Args:
model (nn.Module):
metadata (MetadataCatalog): image metadata.
instance_mode (ColorMode):
parallel (bool): whether to run the model in different processes from visualization.
Useful since the visualization logic can be slow.
"""
self.model = model
self.metadata = metadata
self.aug = aug
self.cpu_device = torch.device("cpu")
self.instance_mode = instance_mode
def get_features(self, original_image, caption=None, pca=None):
"""
Args:
original_image (np.ndarray): an image of shape (H, W, C) (in BGR order).
Returns:
features (dict):
the output of the model for one image only.
"""
height, width = original_image.shape[:2]
aug_input = T.AugInput(original_image, sem_seg=None)
self.aug(aug_input)
image = aug_input.image
image = torch.as_tensor(image.astype("float32").transpose(2, 0, 1))
inputs = {"image": image, "height": height, "width": width}
if caption is not None:
features = self.model.get_features([inputs],caption,pca=pca)
else:
features = self.model.get_features([inputs],pca=pca)
return features
def predict(self, original_image):
"""
Args:
original_image (np.ndarray): an image of shape (H, W, C) (in BGR order).
Returns:
predictions (dict):
the output of the model for one image only.
See :doc:`/tutorials/models` for details about the format.
"""
height, width = original_image.shape[:2]
aug_input = T.AugInput(original_image, sem_seg=None)
self.aug(aug_input)
image = aug_input.image
image = torch.as_tensor(image.astype("float32").transpose(2, 0, 1))
inputs = {"image": image, "height": height, "width": width}
predictions = self.model([inputs])[0]
return predictions
def build_demo_classes_and_metadata(vocab, label_list):
extra_classes = []
if vocab:
for words in vocab.split(";"):
extra_classes.append([word.strip() for word in words.split(",")])
extra_colors = [random_color(rgb=True, maximum=1) for _ in range(len(extra_classes))]
demo_thing_classes = extra_classes
demo_stuff_classes = []
demo_thing_colors = extra_colors
demo_stuff_colors = []
if "COCO" in label_list:
demo_thing_classes += COCO_THING_CLASSES
demo_stuff_classes += COCO_STUFF_CLASSES
demo_thing_colors += COCO_THING_COLORS
demo_stuff_colors += COCO_STUFF_COLORS
if "ADE" in label_list:
demo_thing_classes += ADE_THING_CLASSES
demo_stuff_classes += ADE_STUFF_CLASSES
demo_thing_colors += ADE_THING_COLORS
demo_stuff_colors += ADE_STUFF_COLORS
if "LVIS" in label_list:
demo_thing_classes += LVIS_CLASSES
demo_thing_colors += LVIS_COLORS
MetadataCatalog.pop("odise_demo_metadata", None)
demo_metadata = MetadataCatalog.get("odise_demo_metadata")
demo_metadata.thing_classes = [c[0] for c in demo_thing_classes]
demo_metadata.stuff_classes = [
*demo_metadata.thing_classes,
*[c[0] for c in demo_stuff_classes],
]
demo_metadata.thing_colors = demo_thing_colors
demo_metadata.stuff_colors = demo_thing_colors + demo_stuff_colors
demo_metadata.stuff_dataset_id_to_contiguous_id = {
idx: idx for idx in range(len(demo_metadata.stuff_classes))
}
demo_metadata.thing_dataset_id_to_contiguous_id = {
idx: idx for idx in range(len(demo_metadata.thing_classes))
}
demo_classes = demo_thing_classes + demo_stuff_classes
return demo_classes, demo_metadata
import sys
def load_model(config_path="Panoptic/odise_label_coco_50e.py", seed=42, diffusion_ver="v1-3", image_size=1024, num_timesteps=0, block_indices=(2,5,8,11), decoder_only=False, encoder_only=False, resblock_only=False):
cfg = model_zoo.get_config(config_path, trained=True)
cfg.model.backbone.feature_extractor.init_checkpoint = "sd://"+diffusion_ver
cfg.model.backbone.feature_extractor.steps = (num_timesteps,)
cfg.model.backbone.feature_extractor.unet_block_indices = block_indices
cfg.model.backbone.feature_extractor.encoder_only = encoder_only
cfg.model.backbone.feature_extractor.decoder_only = decoder_only
cfg.model.backbone.feature_extractor.resblock_only = resblock_only
cfg.model.overlap_threshold = 0
cfg.dataloader.test.mapper.augmentations=[
L(T.ResizeShortestEdge)(short_edge_length=image_size, sample_style="choice", max_size=2560),
]
dataset_cfg = cfg.dataloader.test
aug = instantiate(dataset_cfg.mapper).augmentations
model = instantiate_odise(cfg.model)
model.to(cfg.train.device)
ODISECheckpointer(model).load(cfg.train.init_checkpoint)
return model, aug
def load_sd_backbone(config_path="Panoptic/odise_label_coco_50e.py", seed=42, diffusion_ver="v1-3", image_size=1024, num_timesteps=0, block_indices=(2,5,8,11), decoder_only=False, encoder_only=False, resblock_only=False):
cfg = model_zoo.get_config(config_path, trained=True)
cfg.model.backbone.feature_extractor.init_checkpoint = "sd://"+diffusion_ver
cfg.model.backbone.feature_extractor.steps = (num_timesteps,)
cfg.model.backbone.feature_extractor.unet_block_indices = block_indices
cfg.model.backbone.feature_extractor.encoder_only = encoder_only
cfg.model.backbone.feature_extractor.decoder_only = decoder_only
cfg.model.backbone.feature_extractor.resblock_only = resblock_only
cfg.model.overlap_threshold = 0
model = instantiate_odise_backbone(cfg.model)
odise_backbone_ckpt = torch.load("third_party/ODISE/ckpts/odise_backbone_weights.pth", map_location="cpu")['model']
missing_keys, unexpected_keys = model.load_state_dict(odise_backbone_ckpt, strict=False)
model.to(cfg.train.device)
return model
def inference(model, aug, image, vocab, label_list):
demo_classes, demo_metadata = build_demo_classes_and_metadata(vocab, label_list)
with ExitStack() as stack:
inference_model = OpenPanopticInference(
model=model,
labels=demo_classes,
metadata=demo_metadata,
semantic_on=False,
instance_on=False,
panoptic_on=True,
)
stack.enter_context(inference_context(inference_model))
stack.enter_context(torch.no_grad())
demo = StableDiffusionSeg(inference_model, demo_metadata, aug)
pred = demo.predict(np.array(image))
return (pred, demo_classes)
def get_features(model, aug, image, vocab, label_list, caption=None, pca=False):
demo_classes, demo_metadata = build_demo_classes_and_metadata(vocab, label_list)
with ExitStack() as stack:
inference_model = OpenPanopticInference(
model=model,
labels=demo_classes,
metadata=demo_metadata,
semantic_on=False,
instance_on=False,
panoptic_on=True,
)
stack.enter_context(inference_context(inference_model))
stack.enter_context(torch.no_grad())
demo = StableDiffusionSeg(inference_model, demo_metadata, aug)
if caption is not None:
features = demo.get_features(np.array(image), caption, pca=pca)
else:
features = demo.get_features(np.array(image), pca=pca)
return features
def pca_process(features):
# Get the feature tensors
size_s5=features['s5'].shape[-1]
size_s4=features['s4'].shape[-1]
size_s3=features['s3'].shape[-1]
s5 = features['s5'].reshape(features['s5'].shape[0], features['s5'].shape[1], -1)
s4 = features['s4'].reshape(features['s4'].shape[0], features['s4'].shape[1], -1)
s3 = features['s3'].reshape(features['s3'].shape[0], features['s3'].shape[1], -1)
# Define the target dimensions
target_dims = {'s5': 128, 's4': 128, 's3': 128}
# Apply PCA to each tensor using Faiss CPU
for name, tensor in zip(['s5', 's4', 's3'], [s5, s4, s3]):
target_dim = target_dims[name]
# Transpose the tensor so that the last dimension is the number of features
tensor = tensor.permute(0, 2, 1)
# # Norm the tensor
# tensor = tensor / tensor.norm(dim=-1, keepdim=True)
# Initialize a Faiss PCA object
pca = faiss.PCAMatrix(tensor.shape[-1], target_dim)
# Train the PCA object
pca.train(tensor[0].cpu().numpy())
# Apply PCA to the data
transformed_tensor_np = pca.apply(tensor[0].cpu().numpy())
# Convert the transformed data back to a tensor
transformed_tensor = torch.tensor(transformed_tensor_np, device=tensor.device).unsqueeze(0)
# Store the transformed tensor in the features dictionary
features[name] = transformed_tensor
# Reshape the tensors back to their original shapes
features['s5'] = features['s5'].permute(0, 2, 1).reshape(features['s5'].shape[0], -1, size_s5, size_s5)
features['s4'] = features['s4'].permute(0, 2, 1).reshape(features['s4'].shape[0], -1, size_s4, size_s4)
features['s3'] = features['s3'].permute(0, 2, 1).reshape(features['s3'].shape[0], -1, size_s3, size_s3)
# Upsample s5 spatially by a factor of 2
upsampled_s5 = torch.nn.functional.interpolate(features['s5'], scale_factor=2, mode='bilinear', align_corners=False)
# Concatenate upsampled_s5 and s4 to create a new s5
features['s5'] = torch.cat((upsampled_s5, features['s4']), dim=1)
# Set s3 as the new s4
features['s4'] = features['s3']
# Remove s3 from the features dictionary
del features['s3']
return features
def process_features_and_mask(model, aug, image, category=None, input_text=None, mask=True, pca=False, raw=False):
input_image = image
caption = input_text
vocab = ""
label_list = ["COCO"]
category_convert_dict={
'aeroplane':'airplane',
'motorbike':'motorcycle',
'pottedplant':'potted plant',
'tvmonitor':'tv',
}
if type(category) is not list and category in category_convert_dict:
category=category_convert_dict[category]
elif type(category) is list:
category=[category_convert_dict[cat] if cat in category_convert_dict else cat for cat in category]
features = get_features(model, aug, input_image, vocab, label_list, caption, pca=(pca or raw))
if pca:
features = pca_process(features)
if raw:
return features
features_gether_s4_s5 = torch.cat([features['s4'], F.interpolate(features['s5'], size=(features['s4'].shape[-2:]), mode='bilinear')], dim=1)
if mask:
(pred,classes) =inference(model, aug, input_image, vocab, label_list)
seg_map=pred['panoptic_seg'][0]
target_mask_id = []
for item in pred['panoptic_seg'][1]:
item['category_name']=classes[item['category_id']]
if category in item['category_name']:
target_mask_id.append(item['id'])
resized_seg_map_s4 = F.interpolate(seg_map.unsqueeze(0).unsqueeze(0).float(),
size=(features['s4'].shape[-2:]), mode='nearest')
# to do adjust size
binary_seg_map = torch.zeros_like(resized_seg_map_s4)
for i in target_mask_id:
binary_seg_map += (resized_seg_map_s4 == i).float()
if len(target_mask_id) == 0 or binary_seg_map.sum() < 6:
binary_seg_map = torch.ones_like(resized_seg_map_s4)
features_gether_s4_s5 = features_gether_s4_s5 * binary_seg_map
# set where mask is 0 to inf
features_gether_s4_s5[(binary_seg_map == 0).repeat(1,features_gether_s4_s5.shape[1],1,1)] = -1
return features_gether_s4_s5
def get_mask(model, aug, image, category=None, input_text=None):
model.backbone.feature_extractor.decoder_only = False
model.backbone.feature_extractor.encoder_only = False
model.backbone.feature_extractor.resblock_only = False
input_image = image
caption = input_text
vocab = ""
label_list = ["COCO"]
category_convert_dict={
'aeroplane':'airplane',
'motorbike':'motorcycle',
'pottedplant':'potted plant',
'tvmonitor':'tv',
}
if type(category) is not list and category in category_convert_dict:
category=category_convert_dict[category]
elif type(category) is list:
category=[category_convert_dict[cat] if cat in category_convert_dict else cat for cat in category]
(pred,classes) =inference(model, aug, input_image, vocab, label_list)
seg_map=pred['panoptic_seg'][0]
target_mask_id = []
for item in pred['panoptic_seg'][1]:
item['category_name']=classes[item['category_id']]
if type(category) is list:
for cat in category:
if cat in item['category_name']:
target_mask_id.append(item['id'])
else:
if category in item['category_name']:
target_mask_id.append(item['id'])
resized_seg_map_s4 = seg_map.float()
binary_seg_map = torch.zeros_like(resized_seg_map_s4)
for i in target_mask_id:
binary_seg_map += (resized_seg_map_s4 == i).float()
if len(target_mask_id) == 0 or binary_seg_map.sum() < 6:
binary_seg_map = torch.ones_like(resized_seg_map_s4)
return binary_seg_map
if __name__ == "__main__":
image_path = sys.argv[1]
try:
input_text = sys.argv[2]
except:
input_text = None
model, aug = load_model()
img_size = 960
image = Image.open(image_path).convert('RGB')
image = resize(image, img_size, resize=True, to_pil=True)
features = process_features_and_mask(model, aug, image, category=input_text, pca=False, raw=True)
features = features['s4'] # save the features of layer 5
# save the features
np.save(image_path[:-4]+'.npy', features.cpu().numpy())