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""" |
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Run this command to interactively debug: |
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PYTHONPATH=. python cosmos_predict1/tokenizer/training/datasets/video_dataset.py |
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Adapted from: |
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https://github.com/bytedance/IRASim/blob/main/dataset/dataset_3D.py |
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""" |
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import traceback |
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import warnings |
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from concurrent.futures import ThreadPoolExecutor, as_completed |
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from glob import glob |
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import numpy as np |
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import torch |
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from decord import VideoReader, cpu |
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from torch.utils.data import Dataset |
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from torchvision import transforms as T |
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from tqdm import tqdm |
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from cosmos_predict1.diffusion.training.datasets.dataset_utils import ToTensorVideo |
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class Dataset(Dataset): |
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def __init__( |
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self, |
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video_pattern, |
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sequence_interval=1, |
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start_frame_interval=1, |
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num_video_frames=25, |
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): |
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"""Dataset class for loading image-text-to-video generation data. |
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Args: |
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video_pattern (str): path/to/videos/*.mp4 |
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sequence_interval (int): Interval between sampled frames in a sequence |
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num_frames (int): Number of frames to load per sequence |
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video_size (list): Target size [H,W] for video frames |
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Returns dict with: |
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- video: RGB frames tensor [T,C,H,W] |
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- video_name: Dict with episode/frame metadata |
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""" |
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super().__init__() |
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self.video_directory_or_pattern = video_pattern |
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self.start_frame_interval = start_frame_interval |
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self.sequence_interval = sequence_interval |
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self.sequence_length = num_video_frames |
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self.video_paths = sorted(glob(str(video_pattern))) |
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print(f"{len(self.video_paths)} videos in total") |
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self.samples = self._init_samples(self.video_paths) |
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self.samples = sorted(self.samples, key=lambda x: (x["video_path"], x["frame_ids"][0])) |
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print(f"{len(self.samples)} samples in total") |
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self.wrong_number = 0 |
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self.preprocess = T.Compose( |
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[ |
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ToTensorVideo(), |
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] |
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) |
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def __str__(self): |
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return f"{len(self.video_paths)} samples from {self.video_directory_or_pattern}" |
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def _init_samples(self, video_paths): |
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samples = [] |
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with ThreadPoolExecutor(32) as executor: |
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future_to_video_path = { |
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executor.submit(self._load_and_process_video_path, video_path): video_path for video_path in video_paths |
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} |
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for future in tqdm(as_completed(future_to_video_path), total=len(video_paths)): |
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samples.extend(future.result()) |
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return samples |
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def _load_and_process_video_path(self, video_path): |
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vr = VideoReader(video_path, ctx=cpu(0), num_threads=2) |
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n_frames = len(vr) |
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samples = [] |
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for frame_i in range(0, n_frames, self.start_frame_interval): |
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sample = dict() |
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sample["video_path"] = video_path |
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sample["frame_ids"] = [] |
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curr_frame_i = frame_i |
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while True: |
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if curr_frame_i > (n_frames - 1): |
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break |
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sample["frame_ids"].append(curr_frame_i) |
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if len(sample["frame_ids"]) == self.sequence_length: |
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break |
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curr_frame_i += self.sequence_interval |
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if len(sample["frame_ids"]) == self.sequence_length: |
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samples.append(sample) |
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return samples |
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def __len__(self): |
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return len(self.samples) |
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def _load_video(self, video_path, frame_ids): |
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vr = VideoReader(video_path, ctx=cpu(0), num_threads=2) |
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assert (np.array(frame_ids) < len(vr)).all() |
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assert (np.array(frame_ids) >= 0).all() |
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vr.seek(0) |
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frame_data = vr.get_batch(frame_ids).asnumpy() |
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return frame_data |
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def _get_frames(self, video_path, frame_ids): |
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frames = self._load_video(video_path, frame_ids) |
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frames = frames.astype(np.uint8) |
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frames = torch.from_numpy(frames).permute(0, 3, 1, 2) |
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frames = self.preprocess(frames) |
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frames = torch.clamp(frames * 255.0, 0, 255).to(torch.uint8) |
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return frames |
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def __getitem__(self, index): |
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try: |
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sample = self.samples[index] |
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video_path = sample["video_path"] |
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frame_ids = sample["frame_ids"] |
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data = dict() |
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video = self._get_frames(video_path, frame_ids) |
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video = video.permute(1, 0, 2, 3) |
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data["video"] = video |
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data["video_name"] = { |
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"video_path": video_path, |
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"start_frame_id": str(frame_ids[0]), |
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} |
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data["fps"] = 24 |
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data["image_size"] = torch.tensor([704, 1280, 704, 1280]) |
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data["num_frames"] = self.sequence_length |
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data["padding_mask"] = torch.zeros(1, 704, 1280) |
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return data |
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except Exception: |
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warnings.warn( |
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f"Invalid data encountered: {self.samples[index]['video_path']}. Skipped " |
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f"(by randomly sampling another sample in the same dataset)." |
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) |
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warnings.warn("FULL TRACEBACK:") |
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warnings.warn(traceback.format_exc()) |
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self.wrong_number += 1 |
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print(self.wrong_number) |
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return self[np.random.randint(len(self.samples))] |
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if __name__ == "__main__": |
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dataset = Dataset( |
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video_directory_or_pattern="assets/example_training_data/videos/*.mp4", |
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sequence_interval=1, |
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num_frames=57, |
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video_size=[240, 360], |
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) |
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indices = [0, 13, 200, -1] |
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for idx in indices: |
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data = dataset[idx] |
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print((f"{idx=} " f"{data['video'].sum()=}\n" f"{data['video'].shape=}\n" f"{data['video_name']=}\n" "---")) |
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