Files
facefusion/facefusion/processors/modules/face_enhancer.py
Henry Ruhs da0da3a4b4 Next (#945)
* 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>
2025-09-08 10:43:58 +02:00

369 lines
13 KiB
Python
Executable File

from argparse import ArgumentParser
from functools import lru_cache
import numpy
import facefusion.jobs.job_manager
import facefusion.jobs.job_store
from facefusion import config, content_analyser, face_classifier, face_detector, face_landmarker, face_masker, face_recognizer, inference_manager, logger, state_manager, video_manager, wording
from facefusion.common_helper import create_float_metavar, create_int_metavar
from facefusion.download import conditional_download_hashes, conditional_download_sources, resolve_download_url
from facefusion.face_helper import paste_back, warp_face_by_face_landmark_5
from facefusion.face_masker import create_box_mask, create_occlusion_mask
from facefusion.face_selector import select_faces
from facefusion.filesystem import in_directory, is_image, is_video, resolve_relative_path, same_file_extension
from facefusion.processors import choices as processors_choices
from facefusion.processors.types import FaceEnhancerInputs, FaceEnhancerWeight
from facefusion.program_helper import find_argument_group
from facefusion.thread_helper import thread_semaphore
from facefusion.types import ApplyStateItem, Args, DownloadScope, Face, InferencePool, ModelOptions, ModelSet, ProcessMode, VisionFrame
from facefusion.vision import blend_frame, read_static_image, read_static_video_frame
@lru_cache()
def create_static_model_set(download_scope : DownloadScope) -> ModelSet:
return\
{
'codeformer':
{
'hashes':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'codeformer.hash'),
'path': resolve_relative_path('../.assets/models/codeformer.hash')
}
},
'sources':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'codeformer.onnx'),
'path': resolve_relative_path('../.assets/models/codeformer.onnx')
}
},
'template': 'ffhq_512',
'size': (512, 512)
},
'gfpgan_1.2':
{
'hashes':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gfpgan_1.2.hash'),
'path': resolve_relative_path('../.assets/models/gfpgan_1.2.hash')
}
},
'sources':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gfpgan_1.2.onnx'),
'path': resolve_relative_path('../.assets/models/gfpgan_1.2.onnx')
}
},
'template': 'ffhq_512',
'size': (512, 512)
},
'gfpgan_1.3':
{
'hashes':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gfpgan_1.3.hash'),
'path': resolve_relative_path('../.assets/models/gfpgan_1.3.hash')
}
},
'sources':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gfpgan_1.3.onnx'),
'path': resolve_relative_path('../.assets/models/gfpgan_1.3.onnx')
}
},
'template': 'ffhq_512',
'size': (512, 512)
},
'gfpgan_1.4':
{
'hashes':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gfpgan_1.4.hash'),
'path': resolve_relative_path('../.assets/models/gfpgan_1.4.hash')
}
},
'sources':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gfpgan_1.4.onnx'),
'path': resolve_relative_path('../.assets/models/gfpgan_1.4.onnx')
}
},
'template': 'ffhq_512',
'size': (512, 512)
},
'gpen_bfr_256':
{
'hashes':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gpen_bfr_256.hash'),
'path': resolve_relative_path('../.assets/models/gpen_bfr_256.hash')
}
},
'sources':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gpen_bfr_256.onnx'),
'path': resolve_relative_path('../.assets/models/gpen_bfr_256.onnx')
}
},
'template': 'arcface_128',
'size': (256, 256)
},
'gpen_bfr_512':
{
'hashes':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gpen_bfr_512.hash'),
'path': resolve_relative_path('../.assets/models/gpen_bfr_512.hash')
}
},
'sources':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gpen_bfr_512.onnx'),
'path': resolve_relative_path('../.assets/models/gpen_bfr_512.onnx')
}
},
'template': 'ffhq_512',
'size': (512, 512)
},
'gpen_bfr_1024':
{
'hashes':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gpen_bfr_1024.hash'),
'path': resolve_relative_path('../.assets/models/gpen_bfr_1024.hash')
}
},
'sources':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gpen_bfr_1024.onnx'),
'path': resolve_relative_path('../.assets/models/gpen_bfr_1024.onnx')
}
},
'template': 'ffhq_512',
'size': (1024, 1024)
},
'gpen_bfr_2048':
{
'hashes':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gpen_bfr_2048.hash'),
'path': resolve_relative_path('../.assets/models/gpen_bfr_2048.hash')
}
},
'sources':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'gpen_bfr_2048.onnx'),
'path': resolve_relative_path('../.assets/models/gpen_bfr_2048.onnx')
}
},
'template': 'ffhq_512',
'size': (2048, 2048)
},
'restoreformer_plus_plus':
{
'hashes':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'restoreformer_plus_plus.hash'),
'path': resolve_relative_path('../.assets/models/restoreformer_plus_plus.hash')
}
},
'sources':
{
'face_enhancer':
{
'url': resolve_download_url('models-3.0.0', 'restoreformer_plus_plus.onnx'),
'path': resolve_relative_path('../.assets/models/restoreformer_plus_plus.onnx')
}
},
'template': 'ffhq_512',
'size': (512, 512)
}
}
def get_inference_pool() -> InferencePool:
model_names = [ state_manager.get_item('face_enhancer_model') ]
model_source_set = get_model_options().get('sources')
return inference_manager.get_inference_pool(__name__, model_names, model_source_set)
def clear_inference_pool() -> None:
model_names = [ state_manager.get_item('face_enhancer_model') ]
inference_manager.clear_inference_pool(__name__, model_names)
def get_model_options() -> ModelOptions:
model_name = state_manager.get_item('face_enhancer_model')
return create_static_model_set('full').get(model_name)
def register_args(program : ArgumentParser) -> None:
group_processors = find_argument_group(program, 'processors')
if group_processors:
group_processors.add_argument('--face-enhancer-model', help = wording.get('help.face_enhancer_model'), default = config.get_str_value('processors', 'face_enhancer_model', 'gfpgan_1.4'), choices = processors_choices.face_enhancer_models)
group_processors.add_argument('--face-enhancer-blend', help = wording.get('help.face_enhancer_blend'), type = int, default = config.get_int_value('processors', 'face_enhancer_blend', '80'), choices = processors_choices.face_enhancer_blend_range, metavar = create_int_metavar(processors_choices.face_enhancer_blend_range))
group_processors.add_argument('--face-enhancer-weight', help = wording.get('help.face_enhancer_weight'), type = float, default = config.get_float_value('processors', 'face_enhancer_weight', '0.5'), choices = processors_choices.face_enhancer_weight_range, metavar = create_float_metavar(processors_choices.face_enhancer_weight_range))
facefusion.jobs.job_store.register_step_keys([ 'face_enhancer_model', 'face_enhancer_blend', 'face_enhancer_weight' ])
def apply_args(args : Args, apply_state_item : ApplyStateItem) -> None:
apply_state_item('face_enhancer_model', args.get('face_enhancer_model'))
apply_state_item('face_enhancer_blend', args.get('face_enhancer_blend'))
apply_state_item('face_enhancer_weight', args.get('face_enhancer_weight'))
def pre_check() -> bool:
model_hash_set = get_model_options().get('hashes')
model_source_set = get_model_options().get('sources')
return conditional_download_hashes(model_hash_set) and conditional_download_sources(model_source_set)
def pre_process(mode : ProcessMode) -> bool:
if mode in [ 'output', 'preview' ] and not is_image(state_manager.get_item('target_path')) and not is_video(state_manager.get_item('target_path')):
logger.error(wording.get('choose_image_or_video_target') + wording.get('exclamation_mark'), __name__)
return False
if mode == 'output' and not in_directory(state_manager.get_item('output_path')):
logger.error(wording.get('specify_image_or_video_output') + wording.get('exclamation_mark'), __name__)
return False
if mode == 'output' and not same_file_extension(state_manager.get_item('target_path'), state_manager.get_item('output_path')):
logger.error(wording.get('match_target_and_output_extension') + wording.get('exclamation_mark'), __name__)
return False
return True
def post_process() -> None:
read_static_image.cache_clear()
read_static_video_frame.cache_clear()
video_manager.clear_video_pool()
if state_manager.get_item('video_memory_strategy') in [ 'strict', 'moderate' ]:
clear_inference_pool()
if state_manager.get_item('video_memory_strategy') == 'strict':
content_analyser.clear_inference_pool()
face_classifier.clear_inference_pool()
face_detector.clear_inference_pool()
face_landmarker.clear_inference_pool()
face_masker.clear_inference_pool()
face_recognizer.clear_inference_pool()
def enhance_face(target_face : Face, temp_vision_frame : VisionFrame) -> VisionFrame:
model_template = get_model_options().get('template')
model_size = get_model_options().get('size')
crop_vision_frame, affine_matrix = warp_face_by_face_landmark_5(temp_vision_frame, target_face.landmark_set.get('5/68'), model_template, model_size)
box_mask = create_box_mask(crop_vision_frame, state_manager.get_item('face_mask_blur'), (0, 0, 0, 0))
crop_masks =\
[
box_mask
]
if 'occlusion' in state_manager.get_item('face_mask_types'):
occlusion_mask = create_occlusion_mask(crop_vision_frame)
crop_masks.append(occlusion_mask)
crop_vision_frame = prepare_crop_frame(crop_vision_frame)
face_enhancer_weight = numpy.array([ state_manager.get_item('face_enhancer_weight') ]).astype(numpy.double)
crop_vision_frame = forward(crop_vision_frame, face_enhancer_weight)
crop_vision_frame = normalize_crop_frame(crop_vision_frame)
crop_mask = numpy.minimum.reduce(crop_masks).clip(0, 1)
paste_vision_frame = paste_back(temp_vision_frame, crop_vision_frame, crop_mask, affine_matrix)
temp_vision_frame = blend_paste_frame(temp_vision_frame, paste_vision_frame)
return temp_vision_frame
def forward(crop_vision_frame : VisionFrame, face_enhancer_weight : FaceEnhancerWeight) -> VisionFrame:
face_enhancer = get_inference_pool().get('face_enhancer')
face_enhancer_inputs = {}
for face_enhancer_input in face_enhancer.get_inputs():
if face_enhancer_input.name == 'input':
face_enhancer_inputs[face_enhancer_input.name] = crop_vision_frame
if face_enhancer_input.name == 'weight':
face_enhancer_inputs[face_enhancer_input.name] = face_enhancer_weight
with thread_semaphore():
crop_vision_frame = face_enhancer.run(None, face_enhancer_inputs)[0][0]
return crop_vision_frame
def has_weight_input() -> bool:
face_enhancer = get_inference_pool().get('face_enhancer')
for deep_swapper_input in face_enhancer.get_inputs():
if deep_swapper_input.name == 'weight':
return True
return False
def prepare_crop_frame(crop_vision_frame : VisionFrame) -> VisionFrame:
crop_vision_frame = crop_vision_frame[:, :, ::-1] / 255.0
crop_vision_frame = (crop_vision_frame - 0.5) / 0.5
crop_vision_frame = numpy.expand_dims(crop_vision_frame.transpose(2, 0, 1), axis = 0).astype(numpy.float32)
return crop_vision_frame
def normalize_crop_frame(crop_vision_frame : VisionFrame) -> VisionFrame:
crop_vision_frame = numpy.clip(crop_vision_frame, -1, 1)
crop_vision_frame = (crop_vision_frame + 1) / 2
crop_vision_frame = crop_vision_frame.transpose(1, 2, 0)
crop_vision_frame = (crop_vision_frame * 255.0).round()
crop_vision_frame = crop_vision_frame.astype(numpy.uint8)[:, :, ::-1]
return crop_vision_frame
def blend_paste_frame(temp_vision_frame : VisionFrame, paste_vision_frame : VisionFrame) -> VisionFrame:
face_enhancer_blend = 1 - (state_manager.get_item('face_enhancer_blend') / 100)
temp_vision_frame = blend_frame(temp_vision_frame, paste_vision_frame, 1 - face_enhancer_blend)
return temp_vision_frame
def process_frame(inputs : FaceEnhancerInputs) -> VisionFrame:
reference_vision_frame = inputs.get('reference_vision_frame')
target_vision_frame = inputs.get('target_vision_frame')
temp_vision_frame = inputs.get('temp_vision_frame')
target_faces = select_faces(reference_vision_frame, target_vision_frame)
if target_faces:
for target_face in target_faces:
temp_vision_frame = enhance_face(target_face, temp_vision_frame)
return temp_vision_frame