mirror of
https://github.com/Wan-Video/Wan2.1.git
synced 2025-11-04 14:16:57 +00:00
424 lines
16 KiB
Python
424 lines
16 KiB
Python
import subprocess
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import tempfile, os
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import ffmpeg
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import torchvision.transforms.functional as TF
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import torch.nn.functional as F
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import cv2
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import tempfile
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import imageio
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import binascii
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import torchvision
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import torch
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from PIL import Image
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import os.path as osp
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import json
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def rand_name(length=8, suffix=''):
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name = binascii.b2a_hex(os.urandom(length)).decode('utf-8')
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if suffix:
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if not suffix.startswith('.'):
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suffix = '.' + suffix
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name += suffix
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return name
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def extract_audio_tracks(source_video, verbose=False, query_only=False):
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"""
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Extract all audio tracks from a source video into temporary AAC files.
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Returns:
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Tuple:
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- List of temp file paths for extracted audio tracks
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- List of corresponding metadata dicts:
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{'codec', 'sample_rate', 'channels', 'duration', 'language'}
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where 'duration' is set to container duration (for consistency).
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"""
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probe = ffmpeg.probe(source_video)
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audio_streams = [s for s in probe['streams'] if s['codec_type'] == 'audio']
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container_duration = float(probe['format'].get('duration', 0.0))
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if not audio_streams:
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if query_only: return 0
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if verbose: print(f"No audio track found in {source_video}")
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return [], []
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if query_only:
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return len(audio_streams)
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if verbose:
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print(f"Found {len(audio_streams)} audio track(s), container duration = {container_duration:.3f}s")
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file_paths = []
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metadata = []
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for i, stream in enumerate(audio_streams):
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fd, temp_path = tempfile.mkstemp(suffix=f'_track{i}.aac', prefix='audio_')
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os.close(fd)
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file_paths.append(temp_path)
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metadata.append({
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'codec': stream.get('codec_name'),
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'sample_rate': int(stream.get('sample_rate', 0)),
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'channels': int(stream.get('channels', 0)),
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'duration': container_duration,
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'language': stream.get('tags', {}).get('language', None)
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})
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ffmpeg.input(source_video).output(
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temp_path,
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**{f'map': f'0:a:{i}', 'acodec': 'aac', 'b:a': '128k'}
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).overwrite_output().run(quiet=not verbose)
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return file_paths, metadata
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def combine_and_concatenate_video_with_audio_tracks(
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save_path_tmp, video_path,
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source_audio_tracks, new_audio_tracks,
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source_audio_duration, audio_sampling_rate,
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new_audio_from_start=False,
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source_audio_metadata=None,
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audio_bitrate='128k',
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audio_codec='aac',
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verbose = False
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):
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inputs, filters, maps, idx = ['-i', video_path], [], ['-map', '0:v'], 1
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metadata_args = []
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sources = source_audio_tracks or []
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news = new_audio_tracks or []
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duplicate_source = len(sources) == 1 and len(news) > 1
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N = len(news) if source_audio_duration == 0 else max(len(sources), len(news)) or 1
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for i in range(N):
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s = (sources[i] if i < len(sources)
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else sources[0] if duplicate_source else None)
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n = news[i] if len(news) == N else (news[0] if news else None)
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if source_audio_duration == 0:
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if n:
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inputs += ['-i', n]
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filters.append(f'[{idx}:a]apad=pad_dur=100[aout{i}]')
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idx += 1
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else:
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filters.append(f'anullsrc=r={audio_sampling_rate}:cl=mono,apad=pad_dur=100[aout{i}]')
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else:
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if s:
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inputs += ['-i', s]
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meta = source_audio_metadata[i] if source_audio_metadata and i < len(source_audio_metadata) else {}
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needs_filter = (
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meta.get('codec') != audio_codec or
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meta.get('sample_rate') != audio_sampling_rate or
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meta.get('channels') != 1 or
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meta.get('duration', 0) < source_audio_duration
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)
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if needs_filter:
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filters.append(
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f'[{idx}:a]aresample={audio_sampling_rate},aformat=channel_layouts=mono,'
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f'apad=pad_dur={source_audio_duration},atrim=0:{source_audio_duration},asetpts=PTS-STARTPTS[s{i}]')
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else:
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filters.append(
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f'[{idx}:a]apad=pad_dur={source_audio_duration},atrim=0:{source_audio_duration},asetpts=PTS-STARTPTS[s{i}]')
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if lang := meta.get('language'):
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metadata_args += ['-metadata:s:a:' + str(i), f'language={lang}']
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idx += 1
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else:
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filters.append(
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f'anullsrc=r={audio_sampling_rate}:cl=mono,atrim=0:{source_audio_duration},asetpts=PTS-STARTPTS[s{i}]')
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if n:
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inputs += ['-i', n]
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start = '0' if new_audio_from_start else source_audio_duration
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filters.append(
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f'[{idx}:a]aresample={audio_sampling_rate},aformat=channel_layouts=mono,'
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f'atrim=start={start},asetpts=PTS-STARTPTS[n{i}]')
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filters.append(f'[s{i}][n{i}]concat=n=2:v=0:a=1[aout{i}]')
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idx += 1
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else:
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filters.append(f'[s{i}]apad=pad_dur=100[aout{i}]')
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maps += ['-map', f'[aout{i}]']
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cmd = ['ffmpeg', '-y', *inputs,
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'-filter_complex', ';'.join(filters), # ✅ Only change made
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*maps, *metadata_args,
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'-c:v', 'copy',
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'-c:a', audio_codec,
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'-b:a', audio_bitrate,
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'-ar', str(audio_sampling_rate),
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'-ac', '1',
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'-shortest', save_path_tmp]
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if verbose:
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print(f"ffmpeg command: {cmd}")
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try:
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subprocess.run(cmd, check=True, capture_output=True, text=True)
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except subprocess.CalledProcessError as e:
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raise Exception(f"FFmpeg error: {e.stderr}")
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def combine_video_with_audio_tracks(target_video, audio_tracks, output_video,
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audio_metadata=None, verbose=False):
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if not audio_tracks:
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if verbose: print("No audio tracks to combine."); return False
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dur = float(next(s for s in ffmpeg.probe(target_video)['streams']
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if s['codec_type'] == 'video')['duration'])
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if verbose: print(f"Video duration: {dur:.3f}s")
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cmd = ['ffmpeg', '-y', '-i', target_video]
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for path in audio_tracks:
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cmd += ['-i', path]
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cmd += ['-map', '0:v']
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for i in range(len(audio_tracks)):
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cmd += ['-map', f'{i+1}:a']
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for i, meta in enumerate(audio_metadata or []):
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if (lang := meta.get('language')):
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cmd += ['-metadata:s:a:' + str(i), f'language={lang}']
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cmd += ['-c:v', 'copy', '-c:a', 'copy', '-t', str(dur), output_video]
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result = subprocess.run(cmd, capture_output=not verbose, text=True)
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if result.returncode != 0:
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raise Exception(f"FFmpeg error:\n{result.stderr}")
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if verbose:
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print(f"Created {output_video} with {len(audio_tracks)} audio track(s)")
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return True
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def cleanup_temp_audio_files(audio_tracks, verbose=False):
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"""
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Clean up temporary audio files.
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Args:
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audio_tracks: List of audio file paths to delete
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verbose: Enable verbose output (default: False)
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Returns:
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Number of files successfully deleted
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"""
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deleted_count = 0
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for audio_path in audio_tracks:
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try:
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if os.path.exists(audio_path):
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os.unlink(audio_path)
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deleted_count += 1
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if verbose:
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print(f"Cleaned up {audio_path}")
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except PermissionError:
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print(f"Warning: Could not delete {audio_path} (file may be in use)")
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except Exception as e:
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print(f"Warning: Error deleting {audio_path}: {e}")
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if verbose and deleted_count > 0:
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print(f"Successfully deleted {deleted_count} temporary audio file(s)")
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return deleted_count
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def save_video(tensor,
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save_file=None,
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fps=30,
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codec_type='libx264_8',
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container='mp4',
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nrow=8,
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normalize=True,
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value_range=(-1, 1),
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retry=5):
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"""Save tensor as video with configurable codec and container options."""
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if torch.is_tensor(tensor) and len(tensor.shape) == 4:
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tensor = tensor.unsqueeze(0)
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suffix = f'.{container}'
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cache_file = osp.join('/tmp', rand_name(suffix=suffix)) if save_file is None else save_file
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if not cache_file.endswith(suffix):
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cache_file = osp.splitext(cache_file)[0] + suffix
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# Configure codec parameters
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codec_params = _get_codec_params(codec_type, container)
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# Process and save
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error = None
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for _ in range(retry):
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try:
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if torch.is_tensor(tensor):
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# Preprocess tensor
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tensor = tensor.clamp(min(value_range), max(value_range))
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tensor = torch.stack([
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torchvision.utils.make_grid(u, nrow=nrow, normalize=normalize, value_range=value_range)
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for u in tensor.unbind(2)
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], dim=1).permute(1, 2, 3, 0)
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tensor = (tensor * 255).type(torch.uint8).cpu()
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arrays = tensor.numpy()
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else:
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arrays = tensor
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# Write video (silence ffmpeg logs)
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writer = imageio.get_writer(cache_file, fps=fps, ffmpeg_log_level='error', **codec_params)
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for frame in arrays:
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writer.append_data(frame)
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writer.close()
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return cache_file
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except Exception as e:
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error = e
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print(f"error saving {save_file}: {e}")
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def _get_codec_params(codec_type, container):
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"""Get codec parameters based on codec type and container."""
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if codec_type == 'libx264_8':
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return {'codec': 'libx264', 'quality': 8, 'pixelformat': 'yuv420p'}
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elif codec_type == 'libx264_10':
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return {'codec': 'libx264', 'quality': 10, 'pixelformat': 'yuv420p'}
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elif codec_type == 'libx265_28':
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return {'codec': 'libx265', 'pixelformat': 'yuv420p', 'output_params': ['-crf', '28', '-x265-params', 'log-level=none','-hide_banner', '-nostats']}
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elif codec_type == 'libx265_8':
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return {'codec': 'libx265', 'pixelformat': 'yuv420p', 'output_params': ['-crf', '8', '-x265-params', 'log-level=none','-hide_banner', '-nostats']}
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elif codec_type == 'libx264_lossless':
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if container == 'mkv':
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return {'codec': 'ffv1', 'pixelformat': 'rgb24'}
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else: # mp4
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return {'codec': 'libx264', 'output_params': ['-crf', '0'], 'pixelformat': 'yuv444p'}
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else: # libx264
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return {'codec': 'libx264', 'pixelformat': 'yuv420p'}
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def save_image(tensor,
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save_file,
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nrow=8,
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normalize=True,
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value_range=(-1, 1),
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quality='jpeg_95', # 'jpeg_95', 'jpeg_85', 'jpeg_70', 'jpeg_50', 'webp_95', 'webp_85', 'webp_70', 'webp_50', 'png', 'webp_lossless'
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retry=5):
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"""Save tensor as image with configurable format and quality."""
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# Get format and quality settings
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format_info = _get_format_info(quality)
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# Rename file extension to match requested format
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save_file = osp.splitext(save_file)[0] + format_info['ext']
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# Save image
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error = None
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for _ in range(retry):
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try:
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tensor = tensor.clamp(min(value_range), max(value_range))
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if format_info['use_pil']:
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# Use PIL for WebP and advanced options
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grid = torchvision.utils.make_grid(tensor, nrow=nrow, normalize=normalize, value_range=value_range)
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# Convert to PIL Image
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grid = grid.mul(255).add_(0.5).clamp_(0, 255).permute(1, 2, 0).to('cpu', torch.uint8).numpy()
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img = Image.fromarray(grid)
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img.save(save_file, **format_info['params'])
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else:
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# Use torchvision for JPEG and PNG
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torchvision.utils.save_image(
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tensor, save_file, nrow=nrow, normalize=normalize,
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value_range=value_range, **format_info['params']
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)
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break
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except Exception as e:
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error = e
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continue
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else:
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print(f'cache_image failed, error: {error}', flush=True)
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return save_file
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def _get_format_info(quality):
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"""Get format extension and parameters."""
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formats = {
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# JPEG with PIL (so 'quality' works)
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'jpeg_95': {'ext': '.jpg', 'params': {'quality': 95}, 'use_pil': True},
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'jpeg_85': {'ext': '.jpg', 'params': {'quality': 85}, 'use_pil': True},
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'jpeg_70': {'ext': '.jpg', 'params': {'quality': 70}, 'use_pil': True},
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'jpeg_50': {'ext': '.jpg', 'params': {'quality': 50}, 'use_pil': True},
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# PNG with torchvision
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'png': {'ext': '.png', 'params': {}, 'use_pil': False},
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# WebP with PIL (for quality control)
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'webp_95': {'ext': '.webp', 'params': {'quality': 95}, 'use_pil': True},
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'webp_85': {'ext': '.webp', 'params': {'quality': 85}, 'use_pil': True},
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'webp_70': {'ext': '.webp', 'params': {'quality': 70}, 'use_pil': True},
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'webp_50': {'ext': '.webp', 'params': {'quality': 50}, 'use_pil': True},
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'webp_lossless': {'ext': '.webp', 'params': {'lossless': True}, 'use_pil': True},
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}
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return formats.get(quality, formats['jpeg_95'])
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from PIL import Image, PngImagePlugin
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def _enc_uc(s):
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try: return b"ASCII\0\0\0" + s.encode("ascii")
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except UnicodeEncodeError: return b"UNICODE\0" + s.encode("utf-16le")
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def _dec_uc(b):
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if not isinstance(b, (bytes, bytearray)):
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try: b = bytes(b)
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except Exception: return None
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if b.startswith(b"ASCII\0\0\0"): return b[8:].decode("ascii", "ignore")
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if b.startswith(b"UNICODE\0"): return b[8:].decode("utf-16le", "ignore")
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return b.decode("utf-8", "ignore")
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def save_image_metadata(image_path, metadata_dict, **save_kwargs):
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try:
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j = json.dumps(metadata_dict, ensure_ascii=False)
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ext = os.path.splitext(image_path)[1].lower()
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with Image.open(image_path) as im:
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if ext == ".png":
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pi = PngImagePlugin.PngInfo(); pi.add_text("comment", j)
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im.save(image_path, pnginfo=pi, **save_kwargs); return True
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if ext in (".jpg", ".jpeg"):
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im.save(image_path, comment=j.encode("utf-8"), **save_kwargs); return True
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if ext == ".webp":
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import piexif
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exif = {"0th":{}, "Exif":{piexif.ExifIFD.UserComment:_enc_uc(j)}, "GPS":{}, "1st":{}, "thumbnail":None}
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im.save(image_path, format="WEBP", exif=piexif.dump(exif), **save_kwargs); return True
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raise ValueError("Unsupported format")
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except Exception as e:
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print(f"Error saving metadata: {e}"); return False
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def read_image_metadata(image_path):
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try:
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ext = os.path.splitext(image_path)[1].lower()
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with Image.open(image_path) as im:
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if ext == ".png":
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val = (getattr(im, "text", {}) or {}).get("comment") or im.info.get("comment")
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return json.loads(val) if val else None
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if ext in (".jpg", ".jpeg"):
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val = im.info.get("comment")
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if isinstance(val, (bytes, bytearray)): val = val.decode("utf-8", "ignore")
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if val:
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try: return json.loads(val)
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except Exception: pass
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exif = getattr(im, "getexif", lambda: None)()
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if exif:
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uc = exif.get(37510) # UserComment
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s = _dec_uc(uc) if uc else None
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if s:
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try: return json.loads(s)
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except Exception: pass
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return None
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if ext == ".webp":
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exif_bytes = Image.open(image_path).info.get("exif")
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if not exif_bytes: return None
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import piexif
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uc = piexif.load(exif_bytes).get("Exif", {}).get(piexif.ExifIFD.UserComment)
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s = _dec_uc(uc) if uc else None
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return json.loads(s) if s else None
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return None
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except Exception as e:
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print(f"Error reading metadata: {e}"); return None |