Files
2024-06-13 07:56:13 +05:30

264 lines
10 KiB
Python

from typing import Any, List, Literal, Optional
from argparse import ArgumentParser
from time import sleep
import cv2
import numpy
import onnxruntime
import deepfuze.globals
import deepfuze.processors.frame.core as frame_processors
from deepfuze import config, process_manager, logger, wording
from deepfuze.face_analyser import clear_face_analyser
from deepfuze.content_analyser import clear_content_analyser
from deepfuze.execution import apply_execution_provider_options
from deepfuze.normalizer import normalize_output_path
from deepfuze.thread_helper import thread_lock, conditional_thread_semaphore
from deepfuze.typing import Face, VisionFrame, UpdateProgress, ProcessMode, ModelSet, OptionsWithModel, QueuePayload
from deepfuze.common_helper import create_metavar
from deepfuze.filesystem import is_file, resolve_relative_path, is_image, is_video
from deepfuze.download import conditional_download, is_download_done
from deepfuze.vision import read_image, read_static_image, write_image, merge_tile_frames, create_tile_frames
from deepfuze.processors.frame.typings import FrameEnhancerInputs
from deepfuze.processors.frame import globals as frame_processors_globals
from deepfuze.processors.frame import choices as frame_processors_choices
FRAME_PROCESSOR = None
NAME = __name__.upper()
MODELS : ModelSet =\
{
'clear_reality_x4':
{
'url': 'https://github.com/facefusion/facefusion-assets/releases/download/models/clear_reality_x4.onnx',
'path': resolve_relative_path('../../../models/deepfuze/clear_reality_x4.onnx'),
'size': (128, 8, 4),
'scale': 4
},
'lsdir_x4':
{
'url': 'https://github.com/facefusion/facefusion-assets/releases/download/models/lsdir_x4.onnx',
'path': resolve_relative_path('../../../models/deepfuze/lsdir_x4.onnx'),
'size': (128, 8, 4),
'scale': 4
},
'nomos8k_sc_x4':
{
'url': 'https://github.com/facefusion/facefusion-assets/releases/download/models/nomos8k_sc_x4.onnx',
'path': resolve_relative_path('../../../models/deepfuze/nomos8k_sc_x4.onnx'),
'size': (128, 8, 4),
'scale': 4
},
'real_esrgan_x2':
{
'url': 'https://github.com/facefusion/facefusion-assets/releases/download/models/real_esrgan_x2.onnx',
'path': resolve_relative_path('../../../models/deepfuze/real_esrgan_x2.onnx'),
'size': (256, 16, 8),
'scale': 2
},
'real_esrgan_x2_fp16':
{
'url': 'https://github.com/facefusion/facefusion-assets/releases/download/models/real_esrgan_x2_fp16.onnx',
'path': resolve_relative_path('../../../models/deepfuze/real_esrgan_x2_fp16.onnx'),
'size': (256, 16, 8),
'scale': 2
},
'real_esrgan_x4':
{
'url': 'https://github.com/facefusion/facefusion-assets/releases/download/models/real_esrgan_x4.onnx',
'path': resolve_relative_path('../../../models/deepfuze/real_esrgan_x4.onnx'),
'size': (256, 16, 8),
'scale': 4
},
'real_esrgan_x4_fp16':
{
'url': 'https://github.com/facefusion/facefusion-assets/releases/download/models/real_esrgan_x4_fp16.onnx',
'path': resolve_relative_path('../../../models/deepfuze/real_esrgan_x4_fp16.onnx'),
'size': (256, 16, 8),
'scale': 4
},
'real_hatgan_x4':
{
'url': 'https://github.com/facefusion/facefusion-assets/releases/download/models/real_hatgan_x4.onnx',
'path': resolve_relative_path('../../../models/deepfuze/real_hatgan_x4.onnx'),
'size': (256, 16, 8),
'scale': 4
},
'span_kendata_x4':
{
'url': 'https://github.com/facefusion/facefusion-assets/releases/download/models/span_kendata_x4.onnx',
'path': resolve_relative_path('../../../models/deepfuze/span_kendata_x4.onnx'),
'size': (128, 8, 4),
'scale': 4
},
'ultra_sharp_x4':
{
'url': 'https://github.com/facefusion/facefusion-assets/releases/download/models/ultra_sharp_x4.onnx',
'path': resolve_relative_path('../../../models/deepfuze/ultra_sharp_x4.onnx'),
'size': (128, 8, 4),
'scale': 4
}
}
OPTIONS : Optional[OptionsWithModel] = None
def get_frame_processor() -> Any:
global FRAME_PROCESSOR
with thread_lock():
while process_manager.is_checking():
sleep(0.5)
if FRAME_PROCESSOR is None:
model_path = get_options('model').get('path')
FRAME_PROCESSOR = onnxruntime.InferenceSession(model_path, providers = apply_execution_provider_options(deepfuze.globals.execution_device_id, deepfuze.globals.execution_providers))
return FRAME_PROCESSOR
def clear_frame_processor() -> None:
global FRAME_PROCESSOR
FRAME_PROCESSOR = None
def get_options(key : Literal['model']) -> Any:
global OPTIONS
if OPTIONS is None:
OPTIONS =\
{
'model': MODELS[frame_processors_globals.frame_enhancer_model]
}
return OPTIONS.get(key)
def set_options(key : Literal['model'], value : Any) -> None:
global OPTIONS
OPTIONS[key] = value
def register_args(program : ArgumentParser) -> None:
program.add_argument('--frame-enhancer-model', help = wording.get('help.frame_enhancer_model'), default = config.get_str_value('frame_processors.frame_enhancer_model', 'span_kendata_x4'), choices = frame_processors_choices.frame_enhancer_models)
program.add_argument('--frame-enhancer-blend', help = wording.get('help.frame_enhancer_blend'), type = int, default = config.get_int_value('frame_processors.frame_enhancer_blend', '80'), choices = frame_processors_choices.frame_enhancer_blend_range, metavar = create_metavar(frame_processors_choices.frame_enhancer_blend_range))
def apply_args(program : ArgumentParser) -> None:
args = program.parse_args()
frame_processors_globals.frame_enhancer_model = args.frame_enhancer_model
frame_processors_globals.frame_enhancer_blend = args.frame_enhancer_blend
def pre_check() -> bool:
download_directory_path = resolve_relative_path('../../../models/deepfuze')
model_url = get_options('model').get('url')
model_path = get_options('model').get('path')
if not deepfuze.globals.skip_download:
process_manager.check()
conditional_download(download_directory_path, [ model_url ])
process_manager.end()
return is_file(model_path)
def post_check() -> bool:
model_url = get_options('model').get('url')
model_path = get_options('model').get('path')
if not deepfuze.globals.skip_download and not is_download_done(model_url, model_path):
logger.error(wording.get('model_download_not_done') + wording.get('exclamation_mark'), NAME)
return False
if not is_file(model_path):
logger.error(wording.get('model_file_not_present') + wording.get('exclamation_mark'), NAME)
return False
return True
def pre_process(mode : ProcessMode) -> bool:
if mode in [ 'output', 'preview' ] and not is_image(deepfuze.globals.target_path) and not is_video(deepfuze.globals.target_path):
logger.error(wording.get('select_image_or_video_target') + wording.get('exclamation_mark'), NAME)
return False
if mode == 'output' and not normalize_output_path(deepfuze.globals.target_path, deepfuze.globals.output_path):
logger.error(wording.get('select_file_or_directory_output') + wording.get('exclamation_mark'), NAME)
return False
return True
def post_process() -> None:
read_static_image.cache_clear()
if deepfuze.globals.video_memory_strategy == 'strict' or deepfuze.globals.video_memory_strategy == 'moderate':
clear_frame_processor()
if deepfuze.globals.video_memory_strategy == 'strict':
clear_face_analyser()
clear_content_analyser()
def enhance_frame(temp_vision_frame : VisionFrame) -> VisionFrame:
frame_processor = get_frame_processor()
size = get_options('model').get('size')
scale = get_options('model').get('scale')
temp_height, temp_width = temp_vision_frame.shape[:2]
tile_vision_frames, pad_width, pad_height = create_tile_frames(temp_vision_frame, size)
for index, tile_vision_frame in enumerate(tile_vision_frames):
with conditional_thread_semaphore(deepfuze.globals.execution_providers):
tile_vision_frame = frame_processor.run(None,
{
frame_processor.get_inputs()[0].name : prepare_tile_frame(tile_vision_frame)
})[0]
tile_vision_frames[index] = normalize_tile_frame(tile_vision_frame)
merge_vision_frame = merge_tile_frames(tile_vision_frames, temp_width * scale, temp_height * scale, pad_width * scale, pad_height * scale, (size[0] * scale, size[1] * scale, size[2] * scale))
temp_vision_frame = blend_frame(temp_vision_frame, merge_vision_frame)
return temp_vision_frame
def prepare_tile_frame(vision_tile_frame : VisionFrame) -> VisionFrame:
vision_tile_frame = numpy.expand_dims(vision_tile_frame[:, :, ::-1], axis = 0)
vision_tile_frame = vision_tile_frame.transpose(0, 3, 1, 2)
vision_tile_frame = vision_tile_frame.astype(numpy.float32) / 255
return vision_tile_frame
def normalize_tile_frame(vision_tile_frame : VisionFrame) -> VisionFrame:
vision_tile_frame = vision_tile_frame.transpose(0, 2, 3, 1).squeeze(0) * 255
vision_tile_frame = vision_tile_frame.clip(0, 255).astype(numpy.uint8)[:, :, ::-1]
return vision_tile_frame
def blend_frame(temp_vision_frame : VisionFrame, merge_vision_frame : VisionFrame) -> VisionFrame:
frame_enhancer_blend = 1 - (frame_processors_globals.frame_enhancer_blend / 100)
temp_vision_frame = cv2.resize(temp_vision_frame, (merge_vision_frame.shape[1], merge_vision_frame.shape[0]))
temp_vision_frame = cv2.addWeighted(temp_vision_frame, frame_enhancer_blend, merge_vision_frame, 1 - frame_enhancer_blend, 0)
return temp_vision_frame
def get_reference_frame(source_face : Face, target_face : Face, temp_vision_frame : VisionFrame) -> VisionFrame:
pass
def process_frame(inputs : FrameEnhancerInputs) -> VisionFrame:
target_vision_frame = inputs.get('target_vision_frame')
return enhance_frame(target_vision_frame)
def process_frames(source_paths : List[str], queue_payloads : List[QueuePayload], update_progress : UpdateProgress) -> None:
for queue_payload in process_manager.manage(queue_payloads):
target_vision_path = queue_payload['frame_path']
target_vision_frame = read_image(target_vision_path)
output_vision_frame = process_frame(
{
'target_vision_frame': target_vision_frame
})
write_image(target_vision_path, output_vision_frame)
update_progress(1)
def process_image(source_paths : List[str], target_path : str, output_path : str) -> None:
target_vision_frame = read_static_image(target_path)
output_vision_frame = process_frame(
{
'target_vision_frame': target_vision_frame
})
write_image(output_path, output_vision_frame)
def process_video(source_paths : List[str], temp_frame_paths : List[str]) -> None:
frame_processors.multi_process_frames(None, temp_frame_paths, process_frames)