stage 1 OCD

This commit is contained in:
harisreedhar
2025-06-12 20:07:41 +05:30
parent 36cad4d1b7
commit 7905cfe6a3
3 changed files with 49 additions and 59 deletions

View File

@@ -195,7 +195,7 @@ face_swapper_models : List[FaceSwapperModel] = list(face_swapper_set.keys())
frame_colorizer_models : List[FrameColorizerModel] = [ 'ddcolor', 'ddcolor_artistic', 'deoldify', 'deoldify_artistic', 'deoldify_stable' ]
frame_colorizer_sizes : List[str] = [ '192x192', '256x256', '384x384', '512x512' ]
frame_enhancer_models : List[FrameEnhancerModel] = [ 'clear_reality_x4', 'lsdir_x4', 'nomos8k_sc_x4', 'real_esrgan_x2', 'real_esrgan_x2_fp16', 'real_esrgan_x4', 'real_esrgan_x4_fp16', 'real_esrgan_x8', 'real_esrgan_x8_fp16', 'real_hatgan_x4', 'real_web_photo_x4', 'realistic_rescaler_x4', 'remacri_x4', 'siax_x4', 'span_kendata_x4', 'swin2_sr_x4', 'ultra_sharp_x4', 'ultra_sharp_2_x4' ]
lip_syncer_models : List[LipSyncerModel] = [ 'wav2lip_96', 'wav2lip_gan_96', 'edtalk_256' ]
lip_syncer_models : List[LipSyncerModel] = [ 'edtalk_256', 'wav2lip_96', 'wav2lip_gan_96' ]
age_modifier_direction_range : Sequence[int] = create_int_range(-100, 100, 1)
deep_swapper_morph_range : Sequence[int] = create_int_range(0, 100, 1)

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@@ -20,7 +20,7 @@ from facefusion.face_selector import find_similar_faces, sort_and_filter_faces
from facefusion.face_store import get_reference_faces
from facefusion.filesystem import filter_audio_paths, has_audio, 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 LipSyncerInputs
from facefusion.processors.types import LipSyncerInputs, LipSyncerWeight
from facefusion.program_helper import find_argument_group
from facefusion.thread_helper import conditional_thread_semaphore
from facefusion.types import ApplyStateItem, Args, AudioFrame, BoundingBox, DownloadScope, Face, InferencePool, ModelOptions, ModelSet, ProcessMode, QueuePayload, UpdateProgress, VisionFrame
@@ -31,6 +31,27 @@ from facefusion.vision import read_image, read_static_image, restrict_video_fps,
def create_static_model_set(download_scope : DownloadScope) -> ModelSet:
return\
{
'edtalk_256':
{
'hashes':
{
'lip_syncer':
{
'url': resolve_download_url('models-3.3.0', 'edtalk_256.hash'),
'path': resolve_relative_path('../.assets/models/edtalk_256.hash')
}
},
'sources':
{
'lip_syncer':
{
'url': resolve_download_url('models-3.3.0', 'edtalk_256.onnx'),
'path': resolve_relative_path('../.assets/models/edtalk_256.onnx')
}
},
'type': 'edtalk',
'size': (256, 256)
},
'wav2lip_96':
{
'hashes':
@@ -72,27 +93,6 @@ def create_static_model_set(download_scope : DownloadScope) -> ModelSet:
},
'type': 'wav2lip',
'size': (96, 96)
},
'edtalk_256':
{
'hashes':
{
'lip_syncer':
{
'url': resolve_download_url('models-3.3.0', 'edtalk_256.hash'),
'path': resolve_relative_path('../.assets/models/edtalk_256.hash')
}
},
'sources':
{
'lip_syncer':
{
'url': resolve_download_url('models-3.3.0', 'edtalk_256.onnx'),
'path': resolve_relative_path('../.assets/models/edtalk_256.onnx')
}
},
'type': 'edtalk',
'size': (256, 256)
}
}
@@ -168,49 +168,38 @@ def post_process() -> None:
def sync_lip(target_face : Face, temp_audio_frame : AudioFrame, temp_vision_frame : VisionFrame) -> VisionFrame:
model_name = state_manager.get_item('lip_syncer_model')
model_size = get_model_options().get('size')
temp_audio_frame = prepare_audio_frame(temp_audio_frame)
crop_vision_frame, affine_matrix = warp_face_by_face_landmark_5(temp_vision_frame, target_face.landmark_set.get('5/68'), 'ffhq_512', (512, 512))
box_mask = create_static_box_mask(crop_vision_frame.shape[:2][::-1], state_manager.get_item('face_mask_blur'), state_manager.get_item('face_mask_padding'))
crop_masks =\
[
box_mask
]
crop_masks = []
if 'occlusion' in state_manager.get_item('face_mask_types'):
occlusion_mask = create_occlusion_mask(crop_vision_frame)
crop_masks.append(occlusion_mask)
if model_name == 'edtalk_256':
lip_syncer_weight = numpy.array([ state_manager.get_item('lip_syncer_weight') ]).astype(numpy.float32) * 1.25
box_mask = create_static_box_mask(crop_vision_frame.shape[:2][::-1], state_manager.get_item('face_mask_blur'), state_manager.get_item('face_mask_padding'))
crop_masks.append(box_mask)
crop_vision_frame = prepare_crop_frame(crop_vision_frame)
crop_vision_frame = forward_edtalk(temp_audio_frame, crop_vision_frame, lip_syncer_weight)
crop_vision_frame = normalize_crop_frame(crop_vision_frame)
if model_name.startswith('wav2lip'):
face_landmark_68 = cv2.transform(target_face.landmark_set.get('68').reshape(1, -1, 2), affine_matrix).reshape(-1, 2)
area_mask = create_area_mask(face_landmark_68, [ 'lower-face' ])
crop_masks.append(area_mask)
bounding_box = create_bounding_box(face_landmark_68)
bounding_box = prepare_bounding_box(bounding_box)
crop_vision_frame = process_wav2lip(crop_vision_frame, temp_audio_frame, bounding_box)
elif model_name == 'edtalk_256':
crop_vision_frame = process_edtalk(crop_vision_frame, temp_audio_frame)
crop_mask = numpy.minimum.reduce(crop_masks)
paste_vision_frame = paste_back(temp_vision_frame, crop_vision_frame, crop_mask, affine_matrix)
return paste_vision_frame
def process_wav2lip(crop_vision_frame : VisionFrame, temp_audio_frame : AudioFrame, bounding_box : BoundingBox) -> VisionFrame:
model_size = get_model_options().get('size')
bounding_box = resize_bounding_box(bounding_box, 4 / 3)
close_vision_frame, close_matrix = warp_face_by_bounding_box(crop_vision_frame, bounding_box, model_size)
close_vision_frame = prepare_crop_frame(close_vision_frame)
close_vision_frame = forward_wav2lip(temp_audio_frame, close_vision_frame)
close_vision_frame = normalize_crop_frame(close_vision_frame)
crop_vision_frame = cv2.warpAffine(close_vision_frame, cv2.invertAffineTransform(close_matrix), (512, 512), borderMode = cv2.BORDER_REPLICATE)
return crop_vision_frame
def process_edtalk(crop_vision_frame : VisionFrame, temp_audio_frame : AudioFrame) -> VisionFrame:
lip_syncer_weight = state_manager.get_item('lip_syncer_weight') * 1.25
crop_vision_frame = prepare_crop_frame(crop_vision_frame)
crop_vision_frame = forward_edtalk(temp_audio_frame, crop_vision_frame, lip_syncer_weight)
crop_vision_frame = normalize_crop_frame(crop_vision_frame)
return crop_vision_frame
crop_mask = numpy.minimum.reduce(crop_masks)
paste_vision_frame = paste_back(temp_vision_frame, crop_vision_frame, crop_mask, affine_matrix)
return paste_vision_frame
def forward_wav2lip(temp_audio_frame : AudioFrame, close_vision_frame : VisionFrame) -> VisionFrame:
@@ -226,7 +215,7 @@ def forward_wav2lip(temp_audio_frame : AudioFrame, close_vision_frame : VisionFr
return close_vision_frame
def forward_edtalk(temp_audio_frame : AudioFrame, crop_vision_frame : VisionFrame, lip_syncer_weight : float) -> VisionFrame:
def forward_edtalk(temp_audio_frame : AudioFrame, crop_vision_frame : VisionFrame, lip_syncer_weight : LipSyncerWeight) -> VisionFrame:
lip_syncer = get_inference_pool().get('lip_syncer')
with conditional_thread_semaphore():
@@ -234,7 +223,7 @@ def forward_edtalk(temp_audio_frame : AudioFrame, crop_vision_frame : VisionFram
{
'source': temp_audio_frame,
'target': crop_vision_frame,
'weight': [ numpy.float32(lip_syncer_weight) ]
'weight': lip_syncer_weight
})[0]
return crop_vision_frame
@@ -253,24 +242,24 @@ def prepare_crop_frame(crop_vision_frame : VisionFrame) -> VisionFrame:
model_type = get_model_options().get('type')
model_size = get_model_options().get('size')
if model_type == 'edtalk':
crop_vision_frame = cv2.resize(crop_vision_frame, (256, 256), interpolation = cv2.INTER_AREA)
crop_vision_frame = crop_vision_frame[:, :, ::-1] / 255.0
crop_vision_frame = numpy.expand_dims(crop_vision_frame.transpose(2, 0, 1), axis = 0).astype(numpy.float32)
if model_type == 'wav2lip':
crop_vision_frame = numpy.expand_dims(crop_vision_frame, axis = 0)
prepare_vision_frame = crop_vision_frame.copy()
prepare_vision_frame[:, model_size[0] // 2:] = 0
crop_vision_frame = numpy.concatenate((prepare_vision_frame, crop_vision_frame), axis = 3)
crop_vision_frame = crop_vision_frame.transpose(0, 3, 1, 2).astype('float32') / 255.0
elif model_type == 'edtalk':
crop_vision_frame = cv2.resize(crop_vision_frame, (256, 256), interpolation = cv2.INTER_AREA)
crop_vision_frame = crop_vision_frame[:, :, ::-1] / 255.0
crop_vision_frame = numpy.expand_dims(crop_vision_frame.transpose(2, 0, 1), axis = 0).astype(numpy.float32)
return crop_vision_frame
def prepare_bounding_box(bounding_box : BoundingBox) -> BoundingBox:
def resize_bounding_box(bounding_box : BoundingBox, aspect_ratio : float) -> BoundingBox:
bounding_box[3] += min(8, 511)
x1, y1, x2, y2 = bounding_box
y1 = y2 - (4 / 3) * (x2 - x1)
y1 = y2 - aspect_ratio * (x2 - x1)
bounding_box[1] = max(y1, 0)
return bounding_box

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@@ -13,7 +13,7 @@ FaceEnhancerModel = Literal['codeformer', 'gfpgan_1.2', 'gfpgan_1.3', 'gfpgan_1.
FaceSwapperModel = Literal['blendswap_256', 'ghost_1_256', 'ghost_2_256', 'ghost_3_256', 'hififace_unofficial_256', 'inswapper_128', 'inswapper_128_fp16', 'simswap_256', 'simswap_unofficial_512', 'uniface_256']
FrameColorizerModel = Literal['ddcolor', 'ddcolor_artistic', 'deoldify', 'deoldify_artistic', 'deoldify_stable']
FrameEnhancerModel = Literal['clear_reality_x4', 'lsdir_x4', 'nomos8k_sc_x4', 'real_esrgan_x2', 'real_esrgan_x2_fp16', 'real_esrgan_x4', 'real_esrgan_x4_fp16', 'real_esrgan_x8', 'real_esrgan_x8_fp16', 'real_hatgan_x4', 'real_web_photo_x4', 'realistic_rescaler_x4', 'remacri_x4', 'siax_x4', 'span_kendata_x4', 'swin2_sr_x4', 'ultra_sharp_x4', 'ultra_sharp_2_x4']
LipSyncerModel = Literal['wav2lip_96', 'wav2lip_gan_96', 'edtalk_256']
LipSyncerModel = Literal['edtalk_256', 'wav2lip_96', 'wav2lip_gan_96']
FaceSwapperSet : TypeAlias = Dict[FaceSwapperModel, List[str]]
@@ -147,6 +147,7 @@ ProcessorStateSet : TypeAlias = Dict[AppContext, ProcessorState]
AgeModifierDirection : TypeAlias = NDArray[Any]
DeepSwapperMorph : TypeAlias = NDArray[Any]
FaceEnhancerWeight : TypeAlias = NDArray[Any]
LipSyncerWeight : TypeAlias = NDArray[Any]
LivePortraitPitch : TypeAlias = float
LivePortraitYaw : TypeAlias = float
LivePortraitRoll : TypeAlias = float