GestureLSM / dataloaders /beat_sep_lower.py
Tharun156's picture
Upload 149 files
f7400bf verified
import os
import pickle
import math
import shutil
import numpy as np
import lmdb as lmdb
import pandas as pd
import torch
import glob
import json
from dataloaders.build_vocab import Vocab
from termcolor import colored
from loguru import logger
from collections import defaultdict
from torch.utils.data import Dataset
import torch.distributed as dist
import pickle
import smplx
from .utils.audio_features import process_audio_data
from .data_tools import joints_list
from .utils.other_tools import MultiLMDBManager
from .utils.motion_rep_transfer import process_smplx_motion
from .utils.mis_features import process_semantic_data, process_emotion_data
from .utils.text_features import process_word_data
from .utils.data_sample import sample_from_clip
import time
class CustomDataset(Dataset):
def __init__(self, args, loader_type, augmentation=None, kwargs=None, build_cache=True):
self.args = args
self.loader_type = loader_type
# Set rank safely - handle cases where distributed training is not yet initialized
try:
if torch.distributed.is_initialized():
self.rank = torch.distributed.get_rank()
else:
self.rank = 0
except:
self.rank = 0
self.ori_stride = self.args.stride
self.ori_length = self.args.pose_length
# Initialize basic parameters
self.ori_stride = self.args.stride
self.ori_length = self.args.pose_length
self.alignment = [0,0] # for trinity
"""Initialize SMPLX model."""
self.smplx = smplx.create(
self.args.data_path_1+"smplx_models/",
model_type='smplx',
gender='NEUTRAL_2020',
use_face_contour=False,
num_betas=300,
num_expression_coeffs=100,
ext='npz',
use_pca=False,
).cuda().eval()
if self.args.word_rep is not None:
with open(f"{self.args.data_path}weights/vocab.pkl", 'rb') as f:
self.lang_model = pickle.load(f)
# Load and process split rules
self._process_split_rules()
# Initialize data directories and lengths
self._init_data_paths()
if self.args.beat_align:
if not os.path.exists(args.data_path+f"weights/mean_vel_{args.pose_rep}.npy"):
self.calculate_mean_velocity(args.data_path+f"weights/mean_vel_{args.pose_rep}.npy")
self.avg_vel = np.load(args.data_path+f"weights/mean_vel_{args.pose_rep}.npy")
# Build or load cache
self._init_cache(build_cache)
def _process_split_rules(self):
"""Process dataset split rules."""
split_rule = pd.read_csv(self.args.data_path+"train_test_split.csv")
self.selected_file = split_rule.loc[
(split_rule['type'] == self.loader_type) &
(split_rule['id'].str.split("_").str[0].astype(int).isin(self.args.training_speakers))
]
if self.args.additional_data and self.loader_type == 'train':
split_b = split_rule.loc[
(split_rule['type'] == 'additional') &
(split_rule['id'].str.split("_").str[0].astype(int).isin(self.args.training_speakers))
]
self.selected_file = pd.concat([self.selected_file, split_b])
if self.selected_file.empty:
logger.warning(f"{self.loader_type} is empty for speaker {self.args.training_speakers}, use train set 0-8 instead")
self.selected_file = split_rule.loc[
(split_rule['type'] == 'train') &
(split_rule['id'].str.split("_").str[0].astype(int).isin(self.args.training_speakers))
]
self.selected_file = self.selected_file.iloc[0:8]
def _init_data_paths(self):
"""Initialize data directories and lengths."""
self.data_dir = self.args.data_path
if self.loader_type == "test":
self.args.multi_length_training = [1.0]
self.max_length = int(self.args.pose_length * self.args.multi_length_training[-1])
self.max_audio_pre_len = math.floor(self.args.pose_length / self.args.pose_fps * self.args.audio_sr)
if self.max_audio_pre_len > self.args.test_length * self.args.audio_sr:
self.max_audio_pre_len = self.args.test_length * self.args.audio_sr
if self.args.test_clip and self.loader_type == "test":
self.preloaded_dir = self.args.root_path + self.args.cache_path + self.loader_type + "_clip" + f"/{self.args.pose_rep}_cache"
else:
self.preloaded_dir = self.args.root_path + self.args.cache_path + self.loader_type + f"/{self.args.pose_rep}_cache"
def _init_cache(self, build_cache):
"""Initialize or build cache."""
self.lmdb_envs = {}
self.mapping_data = None
if build_cache and self.rank == 0:
self.build_cache(self.preloaded_dir)
# In DDP mode, ensure all processes wait for cache building to complete
if torch.distributed.is_initialized():
torch.distributed.barrier()
# Try to regenerate cache if corrupted (only on rank 0 to avoid race conditions)
if self.rank == 0:
self.regenerate_cache_if_corrupted()
# Wait for cache regeneration to complete
if torch.distributed.is_initialized():
torch.distributed.barrier()
self.load_db_mapping()
def build_cache(self, preloaded_dir):
"""Build the dataset cache."""
logger.info(f"Audio bit rate: {self.args.audio_fps}")
logger.info("Reading data '{}'...".format(self.data_dir))
logger.info("Creating the dataset cache...")
if self.args.new_cache and os.path.exists(preloaded_dir):
shutil.rmtree(preloaded_dir)
if os.path.exists(preloaded_dir):
# if the dir is empty, that means we still need to build the cache
if not os.listdir(preloaded_dir):
self.cache_generation(
preloaded_dir,
self.args.disable_filtering,
self.args.clean_first_seconds,
self.args.clean_final_seconds,
is_test=False
)
else:
logger.info("Found the cache {}".format(preloaded_dir))
elif self.loader_type == "test":
self.cache_generation(preloaded_dir, True, 0, 0, is_test=True)
else:
self.cache_generation(
preloaded_dir,
self.args.disable_filtering,
self.args.clean_first_seconds,
self.args.clean_final_seconds,
is_test=False
)
def cache_generation(self, out_lmdb_dir, disable_filtering, clean_first_seconds, clean_final_seconds, is_test=False):
"""Generate cache for the dataset."""
if not os.path.exists(out_lmdb_dir):
os.makedirs(out_lmdb_dir)
# Initialize the multi-LMDB manager
lmdb_manager = MultiLMDBManager(out_lmdb_dir, max_db_size=10*1024*1024*1024)
self.n_out_samples = 0
n_filtered_out = defaultdict(int)
for index, file_name in self.selected_file.iterrows():
f_name = file_name["id"]
ext = ".npz" if "smplx" in self.args.pose_rep else ".bvh"
pose_file = os.path.join(self.data_dir, self.args.pose_rep, f_name + ext)
# Process data
data = self._process_file_data(f_name, pose_file, ext)
if data is None:
continue
# Sample from clip
filtered_result, self.n_out_samples = sample_from_clip(
lmdb_manager=lmdb_manager,
audio_file=pose_file.replace(self.args.pose_rep, 'wave16k').replace(ext, ".wav"),
audio_each_file=data['audio'],
pose_each_file=data['pose'],
trans_each_file=data['trans'],
trans_v_each_file=data['trans_v'],
shape_each_file=data['shape'],
facial_each_file=data['facial'],
word_each_file=data['word'],
vid_each_file=data['vid'],
emo_each_file=data['emo'],
sem_each_file=data['sem'],
args=self.args,
ori_stride=self.ori_stride,
ori_length=self.ori_length,
disable_filtering=disable_filtering,
clean_first_seconds=clean_first_seconds,
clean_final_seconds=clean_final_seconds,
is_test=is_test,
n_out_samples=self.n_out_samples
)
for type_key in filtered_result:
n_filtered_out[type_key] += filtered_result[type_key]
lmdb_manager.close()
def _process_file_data(self, f_name, pose_file, ext):
"""Process all data for a single file."""
data = {
'pose': None, 'trans': None, 'trans_v': None, 'shape': None,
'audio': None, 'facial': None, 'word': None, 'emo': None,
'sem': None, 'vid': None
}
# Process motion data
logger.info(colored(f"# ---- Building cache for Pose {f_name} ---- #", "blue"))
if "smplx" in self.args.pose_rep:
motion_data = process_smplx_motion(pose_file, self.smplx, self.args.pose_fps, self.args.facial_rep)
else:
raise ValueError(f"Unknown pose representation '{self.args.pose_rep}'.")
if motion_data is None:
return None
data.update(motion_data)
# Process speaker ID
if self.args.id_rep is not None:
speaker_id = int(f_name.split("_")[0]) - 1
data['vid'] = np.repeat(np.array(speaker_id).reshape(1, 1), data['pose'].shape[0], axis=0)
else:
data['vid'] = np.array([-1])
# Process audio if needed
if self.args.audio_rep is not None:
audio_file = pose_file.replace(self.args.pose_rep, 'wave16k').replace(ext, ".wav")
data = process_audio_data(audio_file, self.args, data, f_name, self.selected_file)
if data is None:
return None
# Process emotion if needed
if self.args.emo_rep is not None:
data = process_emotion_data(f_name, data, self.args)
if data is None:
return None
# Process word data if needed
if self.args.word_rep is not None:
word_file = f"{self.data_dir}{self.args.word_rep}/{f_name}.TextGrid"
data = process_word_data(self.data_dir, word_file, self.args, data, f_name, self.selected_file, self.lang_model)
if data is None:
return None
# Process semantic data if needed
if self.args.sem_rep is not None:
sem_file = f"{self.data_dir}{self.args.sem_rep}/{f_name}.txt"
data = process_semantic_data(sem_file, self.args, data, f_name)
if data is None:
return None
return data
def load_db_mapping(self):
"""Load database mapping from file."""
mapping_path = os.path.join(self.preloaded_dir, "sample_db_mapping.pkl")
backup_path = os.path.join(self.preloaded_dir, "sample_db_mapping_backup.pkl")
# Check if file exists and is readable
if not os.path.exists(mapping_path):
raise FileNotFoundError(f"Mapping file not found: {mapping_path}")
# Check file size to ensure it's not empty
file_size = os.path.getsize(mapping_path)
if file_size == 0:
raise ValueError(f"Mapping file is empty: {mapping_path}")
print(f"Loading mapping file: {mapping_path} (size: {file_size} bytes)")
# Add error handling and retry logic for pickle loading
max_retries = 3
for attempt in range(max_retries):
try:
with open(mapping_path, 'rb') as f:
self.mapping_data = pickle.load(f)
print(f"Successfully loaded mapping data with {len(self.mapping_data.get('mapping', []))} samples")
break
except (EOFError, pickle.UnpicklingError) as e:
if attempt < max_retries - 1:
print(f"Warning: Failed to load pickle file (attempt {attempt + 1}/{max_retries}): {e}")
print(f"File path: {mapping_path}")
# Try backup file if main file is corrupted
if os.path.exists(backup_path) and os.path.getsize(backup_path) > 0:
print("Trying backup file...")
try:
with open(backup_path, 'rb') as f:
self.mapping_data = pickle.load(f)
print(f"Successfully loaded mapping data from backup with {len(self.mapping_data.get('mapping', []))} samples")
break
except Exception as backup_e:
print(f"Backup file also failed: {backup_e}")
print("Retrying...")
time.sleep(1) # Wait a bit before retrying
else:
print(f"Error: Failed to load pickle file after {max_retries} attempts: {e}")
print(f"File path: {mapping_path}")
print("Please check if the file is corrupted or incomplete.")
print("You may need to regenerate the cache files.")
raise
# Update paths from test to test_clip if needed
if self.loader_type == "test" and self.args.test_clip:
updated_paths = []
for path in self.mapping_data['db_paths']:
updated_path = path.replace("test/", "test_clip/")
updated_paths.append(updated_path)
self.mapping_data['db_paths'] = updated_paths
# In DDP mode, avoid modifying shared files to prevent race conditions
# Instead, just update the in-memory data
print(f"Updated test paths for test_clip mode (avoiding file modification in DDP)")
self.n_samples = len(self.mapping_data['mapping'])
def get_lmdb_env(self, db_idx):
"""Get LMDB environment for given database index."""
if db_idx not in self.lmdb_envs:
db_path = self.mapping_data['db_paths'][db_idx]
self.lmdb_envs[db_idx] = lmdb.open(db_path, readonly=True, lock=False)
return self.lmdb_envs[db_idx]
def __len__(self):
"""Return the total number of samples in the dataset."""
return self.n_samples
def __getitem__(self, idx):
"""Get a single sample from the dataset."""
db_idx = self.mapping_data['mapping'][idx]
lmdb_env = self.get_lmdb_env(db_idx)
with lmdb_env.begin(write=False) as txn:
key = "{:008d}".format(idx).encode("ascii")
sample = txn.get(key)
sample = pickle.loads(sample)
tar_pose, in_audio, in_facial, in_shape, in_word, emo, sem, vid, trans, trans_v, audio_name = sample
# Convert data to tensors with appropriate types
processed_data = self._convert_to_tensors(
tar_pose, in_audio, in_facial, in_shape, in_word,
emo, sem, vid, trans, trans_v
)
processed_data['audio_name'] = audio_name
return processed_data
def _convert_to_tensors(self, tar_pose, in_audio, in_facial, in_shape, in_word,
emo, sem, vid, trans, trans_v):
"""Convert numpy arrays to tensors with appropriate types."""
data = {
'emo': torch.from_numpy(emo).int(),
'sem': torch.from_numpy(sem).float(),
'audio_onset': torch.from_numpy(in_audio).float(),
'word': torch.from_numpy(in_word).int()
}
if self.loader_type == "test":
data.update({
'pose': torch.from_numpy(tar_pose).float(),
'trans': torch.from_numpy(trans).float(),
'trans_v': torch.from_numpy(trans_v).float(),
'facial': torch.from_numpy(in_facial).float(),
'id': torch.from_numpy(vid).float(),
'beta': torch.from_numpy(in_shape).float()
})
else:
data.update({
'pose': torch.from_numpy(tar_pose).reshape((tar_pose.shape[0], -1)).float(),
'trans': torch.from_numpy(trans).reshape((trans.shape[0], -1)).float(),
'trans_v': torch.from_numpy(trans_v).reshape((trans_v.shape[0], -1)).float(),
'facial': torch.from_numpy(in_facial).reshape((in_facial.shape[0], -1)).float(),
'id': torch.from_numpy(vid).reshape((vid.shape[0], -1)).float(),
'beta': torch.from_numpy(in_shape).reshape((in_shape.shape[0], -1)).float()
})
return data
def regenerate_cache_if_corrupted(self):
"""Regenerate cache if the pickle file is corrupted."""
mapping_path = os.path.join(self.preloaded_dir, "sample_db_mapping.pkl")
if os.path.exists(mapping_path):
try:
# Try to load the file to check if it's corrupted
with open(mapping_path, 'rb') as f:
test_data = pickle.load(f)
return False # File is not corrupted
except (EOFError, pickle.UnpicklingError):
print(f"Detected corrupted pickle file: {mapping_path}")
print("Regenerating cache...")
# Remove corrupted file
os.remove(mapping_path)
# Regenerate cache
self.build_cache(self.preloaded_dir)
return True
return False