mirror of
https://github.com/facefusion/facefusion.git
synced 2026-05-11 18:12:36 +02:00
da0da3a4b4
* Rename calcXXX to calculateXXX * Add migraphx support * Add migraphx support * Add migraphx support * Add migraphx support * Add migraphx support * Add migraphx support * Use True for the flags * Add migraphx support * add face-swapper-weight * add face-swapper-weight to facefusion.ini * changes * change choice * Fix typing for xxxWeight * Feat/log inference session (#906) * Log inference session, Introduce time helper * Log inference session, Introduce time helper * Log inference session, Introduce time helper * Log inference session, Introduce time helper * Mark as NEXT * Follow industry standard x1, x2, y1 and y2 * Follow industry standard x1, x2, y1 and y2 * Follow industry standard in terms of naming (#908) * Follow industry standard in terms of naming * Improve xxx_embedding naming * Fix norm vs. norms * Reduce timeout to 5 * Sort out voice_extractor once again * changes * Introduce many to the occlusion mask (#910) * Introduce many to the occlusion mask * Then we use minimum * Add support for wmv * Run platform tests before has_execution_provider (#911) * Add support for wmv * Introduce benchmark mode (#912) * Honestly makes no difference to me * Honestly makes no difference to me * Fix wording * Bring back YuNet (#922) * Reintroduce YuNet without cv2 dependency * Fix variable naming * Avoid RGB to YUV colorshift using libx264rgb * Avoid RGB to YUV colorshift using libx264rgb * Make libx264 the default again * Make libx264 the default again * Fix types in ffmpeg builder * Fix quality stuff in ffmpeg builder * Fix quality stuff in ffmpeg builder * Add libx264rgb to test * Revamp Processors (#923) * Introduce new concept of pure target frames * Radical refactoring of process flow * Introduce new concept of pure target frames * Fix webcam * Minor improvements * Minor improvements * Use deque for video processing * Use deque for video processing * Extend the video manager * Polish deque * Polish deque * Deque is not even used * Improve speed with multiple futures * Fix temp frame mutation and * Fix RAM usage * Remove old types and manage method * Remove execution_queue_count * Use init_state for benchmarker to avoid issues * add voice extractor option * Change the order of voice extractor in code * Use official download urls * Use official download urls * add gui * fix preview * Add remote updates for voice extractor * fix crash on headless-run * update test_job_helper.py * Fix it for good * Remove pointless method * Fix types and unused imports * Revamp reference (#925) * Initial revamp of face references * Initial revamp of face references * Initial revamp of face references * Terminate find_similar_faces * Improve find mutant faces * Improve find mutant faces * Move sort where it belongs * Forward reference vision frame * Forward reference vision frame also in preview * Fix reference selection * Use static video frame * Fix CI * Remove reference type from frame processors * Improve some naming * Fix types and unused imports * Fix find mutant faces * Fix find mutant faces * Fix imports * Correct naming * Correct naming * simplify pad * Improve webcam performance on highres * Camera manager (#932) * Introduce webcam manager * Fix order * Rename to camera manager, improve video manager * Fix CI * Remove optional * Fix naming in webcam options * Avoid using temp faces (#933) * output video scale * Fix imports * output image scale * upscale fix (not limiter) * add unit test scale_resolution & remove unused methods * fix and add test * fix * change pack_resolution * fix tests * Simplify output scale testing * Fix benchmark UI * Fix benchmark UI * Update dependencies * Introduce REAL multi gpu support using multi dimensional inference pool (#935) * Introduce REAL multi gpu support using multi dimensional inference pool * Remove the MULTI:GPU flag * Restore "processing stop" * Restore "processing stop" * Remove old templates * Go fill in with caching * add expression restorer areas * re-arrange * rename method * Fix stop for extract frames and merge video * Replace arcface_converter models with latest crossface models * Replace arcface_converter models with latest crossface models * Move module logs to debug mode * Refactor/streamer (#938) * Introduce webcam manager * Fix order * Rename to camera manager, improve video manager * Fix CI * Fix naming in webcam options * Move logic over to streamer * Fix streamer, improve webcam experience * Improve webcam experience * Revert method * Revert method * Improve webcam again * Use release on capture instead * Only forward valid frames * Fix resolution logging * Add AVIF support * Add AVIF support * Limit avif to unix systems * Drop avif * Drop avif * Drop avif * Default to Documents in the UI if output path is not set * Update wording.py (#939) "succeed" is grammatically incorrect in the given context. To succeed is the infinitive form of the verb. Correct would be either "succeeded" or alternatively a form involving the noun "success". * Fix more grammar issue * Fix more grammar issue * Sort out caching * Move webcam choices back to UI * Move preview options to own file (#940) * Fix Migraphx execution provider * Fix benchmark * Reuse blend frame method * Fix CI * Fix CI * Fix CI * Hotfix missing check in face debugger, Enable logger for preview * Fix reference selection (#942) * Fix reference selection * Fix reference selection * Fix reference selection * Fix reference selection * Side by side preview (#941) * Initial side by side preview * More work on preview, remove UI only stuff from vision.py * Improve more * Use fit frame * Add different fit methods for vision * Improve preview part2 * Improve preview part3 * Improve preview part4 * Remove none as choice * Remove useless methods * Fix CI * Fix naming * use 1024 as preview resolution default * Fix fit_cover_frame * Uniform fit_xxx_frame methods * Add back disabled logger * Use ui choices alias * Extract select face logic from processors (#943) * Extract select face logic from processors to use it for face by face in preview * Fix order * Remove old code * Merge methods * Refactor face debugger (#944) * Refactor huge method of face debugger * Remove text metrics from face debugger * Remove useless copy of temp frame * Resort methods * Fix spacing * Remove old method * Fix hard exit to work without signals * Prevent upscaling for face-by-face * Switch to version * Improve exiting --------- Co-authored-by: harisreedhar <h4harisreedhar.s.s@gmail.com> Co-authored-by: Harisreedhar <46858047+harisreedhar@users.noreply.github.com> Co-authored-by: Rafael Tappe Maestro <rafael@tappemaestro.com>
196 lines
7.3 KiB
Python
196 lines
7.3 KiB
Python
from functools import lru_cache
|
|
from typing import Tuple
|
|
|
|
import numpy
|
|
import scipy
|
|
|
|
from facefusion import inference_manager, state_manager
|
|
from facefusion.download import conditional_download_hashes, conditional_download_sources, resolve_download_url
|
|
from facefusion.filesystem import resolve_relative_path
|
|
from facefusion.thread_helper import thread_semaphore
|
|
from facefusion.types import Audio, AudioChunk, DownloadScope, DownloadSet, InferencePool, ModelSet, Voice, VoiceChunk
|
|
|
|
|
|
@lru_cache()
|
|
def create_static_model_set(download_scope : DownloadScope) -> ModelSet:
|
|
return\
|
|
{
|
|
'kim_vocal_1':
|
|
{
|
|
'hashes':
|
|
{
|
|
'voice_extractor':
|
|
{
|
|
'url': resolve_download_url('models-3.4.0', 'kim_vocal_1.hash'),
|
|
'path': resolve_relative_path('../.assets/models/kim_vocal_1.hash')
|
|
}
|
|
},
|
|
'sources':
|
|
{
|
|
'voice_extractor':
|
|
{
|
|
'url': resolve_download_url('models-3.4.0', 'kim_vocal_1.onnx'),
|
|
'path': resolve_relative_path('../.assets/models/kim_vocal_1.onnx')
|
|
}
|
|
}
|
|
},
|
|
'kim_vocal_2':
|
|
{
|
|
'hashes':
|
|
{
|
|
'voice_extractor':
|
|
{
|
|
'url': resolve_download_url('models-3.0.0', 'kim_vocal_2.hash'),
|
|
'path': resolve_relative_path('../.assets/models/kim_vocal_2.hash')
|
|
}
|
|
},
|
|
'sources':
|
|
{
|
|
'voice_extractor':
|
|
{
|
|
'url': resolve_download_url('models-3.0.0', 'kim_vocal_2.onnx'),
|
|
'path': resolve_relative_path('../.assets/models/kim_vocal_2.onnx')
|
|
}
|
|
}
|
|
},
|
|
'uvr_mdxnet':
|
|
{
|
|
'hashes':
|
|
{
|
|
'voice_extractor':
|
|
{
|
|
'url': resolve_download_url('models-3.4.0', 'uvr_mdxnet.hash'),
|
|
'path': resolve_relative_path('../.assets/models/uvr_mdxnet.hash')
|
|
}
|
|
},
|
|
'sources':
|
|
{
|
|
'voice_extractor':
|
|
{
|
|
'url': resolve_download_url('models-3.4.0', 'uvr_mdxnet.onnx'),
|
|
'path': resolve_relative_path('../.assets/models/uvr_mdxnet.onnx')
|
|
}
|
|
}
|
|
}
|
|
}
|
|
|
|
|
|
def get_inference_pool() -> InferencePool:
|
|
model_names = [ state_manager.get_item('voice_extractor_model') ]
|
|
_, model_source_set = collect_model_downloads()
|
|
|
|
return inference_manager.get_inference_pool(__name__, model_names, model_source_set)
|
|
|
|
|
|
def clear_inference_pool() -> None:
|
|
model_names = [ state_manager.get_item('voice_extractor_model') ]
|
|
inference_manager.clear_inference_pool(__name__, model_names)
|
|
|
|
|
|
def collect_model_downloads() -> Tuple[DownloadSet, DownloadSet]:
|
|
model_set = create_static_model_set('full')
|
|
model_hash_set = {}
|
|
model_source_set = {}
|
|
|
|
for voice_extractor_model in [ 'kim_vocal_1', 'kim_vocal_2', 'uvr_mdxnet' ]:
|
|
if state_manager.get_item('voice_extractor_model') == voice_extractor_model:
|
|
model_hash_set[voice_extractor_model] = model_set.get(voice_extractor_model).get('hashes').get('voice_extractor')
|
|
model_source_set[voice_extractor_model] = model_set.get(voice_extractor_model).get('sources').get('voice_extractor')
|
|
|
|
return model_hash_set, model_source_set
|
|
|
|
|
|
def pre_check() -> bool:
|
|
model_hash_set, model_source_set = collect_model_downloads()
|
|
|
|
return conditional_download_hashes(model_hash_set) and conditional_download_sources(model_source_set)
|
|
|
|
|
|
def batch_extract_voice(audio : Audio, chunk_size : int, step_size : int) -> Voice:
|
|
temp_voice = numpy.zeros((audio.shape[0], 2)).astype(numpy.float32)
|
|
temp_voice_chunk = numpy.zeros((audio.shape[0], 2)).astype(numpy.float32)
|
|
|
|
for start in range(0, audio.shape[0], step_size):
|
|
end = min(start + chunk_size, audio.shape[0])
|
|
temp_voice[start:end, ...] += extract_voice(audio[start:end, ...])
|
|
temp_voice_chunk[start:end, ...] += 1
|
|
|
|
voice = temp_voice / temp_voice_chunk
|
|
return voice
|
|
|
|
|
|
def extract_voice(temp_audio_chunk : AudioChunk) -> VoiceChunk:
|
|
voice_extractor = get_inference_pool().get(state_manager.get_item('voice_extractor_model'))
|
|
voice_trim_size = 3840
|
|
voice_chunk_size = (voice_extractor.get_inputs()[0].shape[3] - 1) * 1024
|
|
temp_audio_chunk, audio_pad_size = prepare_audio_chunk(temp_audio_chunk.T, voice_chunk_size, voice_trim_size)
|
|
temp_audio_chunk = decompose_audio_chunk(temp_audio_chunk, voice_trim_size)
|
|
temp_audio_chunk = forward(temp_audio_chunk)
|
|
temp_audio_chunk = compose_audio_chunk(temp_audio_chunk, voice_trim_size)
|
|
temp_audio_chunk = normalize_audio_chunk(temp_audio_chunk, voice_chunk_size, voice_trim_size, audio_pad_size)
|
|
return temp_audio_chunk
|
|
|
|
|
|
def forward(temp_audio_chunk : AudioChunk) -> AudioChunk:
|
|
voice_extractor = get_inference_pool().get(state_manager.get_item('voice_extractor_model'))
|
|
|
|
with thread_semaphore():
|
|
temp_audio_chunk = voice_extractor.run(None,
|
|
{
|
|
'input': temp_audio_chunk
|
|
})[0]
|
|
|
|
return temp_audio_chunk
|
|
|
|
|
|
def prepare_audio_chunk(temp_audio_chunk : AudioChunk, chunk_size : int, audio_trim_size : int) -> Tuple[AudioChunk, int]:
|
|
audio_step_size = chunk_size - 2 * audio_trim_size
|
|
audio_pad_size = audio_step_size - temp_audio_chunk.shape[1] % audio_step_size
|
|
audio_chunk_size = temp_audio_chunk.shape[1] + audio_pad_size
|
|
temp_audio_chunk = temp_audio_chunk.astype(numpy.float32) / numpy.iinfo(numpy.int16).max
|
|
temp_audio_chunk = numpy.pad(temp_audio_chunk, ((0, 0), (audio_trim_size, audio_trim_size + audio_pad_size)))
|
|
temp_audio_chunks = []
|
|
|
|
for index in range(0, audio_chunk_size, audio_step_size):
|
|
temp_audio_chunks.append(temp_audio_chunk[:, index:index + chunk_size])
|
|
|
|
temp_audio_chunk = numpy.concatenate(temp_audio_chunks, axis = 0)
|
|
temp_audio_chunk = temp_audio_chunk.reshape((-1, chunk_size))
|
|
return temp_audio_chunk, audio_pad_size
|
|
|
|
|
|
def decompose_audio_chunk(temp_audio_chunk : AudioChunk, audio_trim_size : int) -> AudioChunk:
|
|
audio_frame_size = 7680
|
|
audio_frame_overlap = 6656
|
|
audio_frame_total = 3072
|
|
audio_bin_total = 256
|
|
audio_channel_total = 4
|
|
window = scipy.signal.windows.hann(audio_frame_size)
|
|
temp_audio_chunk = scipy.signal.stft(temp_audio_chunk, nperseg = audio_frame_size, noverlap = audio_frame_overlap, window = window)[2]
|
|
temp_audio_chunk = numpy.stack((numpy.real(temp_audio_chunk), numpy.imag(temp_audio_chunk)), axis = -1).transpose((0, 3, 1, 2))
|
|
temp_audio_chunk = temp_audio_chunk.reshape(-1, 2, 2, audio_trim_size + 1, audio_bin_total).reshape(-1, audio_channel_total, audio_trim_size + 1, audio_bin_total)
|
|
temp_audio_chunk = temp_audio_chunk[:, :, :audio_frame_total]
|
|
temp_audio_chunk /= numpy.sqrt(1.0 / window.sum() ** 2)
|
|
return temp_audio_chunk
|
|
|
|
|
|
def compose_audio_chunk(temp_audio_chunk : AudioChunk, audio_trim_size : int) -> AudioChunk:
|
|
audio_frame_size = 7680
|
|
audio_frame_overlap = 6656
|
|
audio_frame_total = 3072
|
|
audio_bin_total = 256
|
|
window = scipy.signal.windows.hann(audio_frame_size)
|
|
temp_audio_chunk = numpy.pad(temp_audio_chunk, ((0, 0), (0, 0), (0, audio_trim_size + 1 - audio_frame_total), (0, 0)))
|
|
temp_audio_chunk = temp_audio_chunk.reshape(-1, 2, audio_trim_size + 1, audio_bin_total).transpose((0, 2, 3, 1))
|
|
temp_audio_chunk = temp_audio_chunk[:, :, :, 0] + 1j * temp_audio_chunk[:, :, :, 1]
|
|
temp_audio_chunk = scipy.signal.istft(temp_audio_chunk, nperseg = audio_frame_size, noverlap = audio_frame_overlap, window = window)[1]
|
|
temp_audio_chunk *= numpy.sqrt(1.0 / window.sum() ** 2)
|
|
return temp_audio_chunk
|
|
|
|
|
|
def normalize_audio_chunk(temp_audio_chunk : AudioChunk, chunk_size : int, audio_trim_size : int, audio_pad_size : int) -> AudioChunk:
|
|
temp_audio_chunk = temp_audio_chunk.reshape((-1, 2, chunk_size))
|
|
temp_audio_chunk = temp_audio_chunk[:, :, audio_trim_size:-audio_trim_size].transpose(1, 0, 2)
|
|
temp_audio_chunk = temp_audio_chunk.reshape(2, -1)[:, :-audio_pad_size].T
|
|
return temp_audio_chunk
|