mirror of
https://github.com/modelscope/DiffSynth-Studio.git
synced 2026-03-19 23:08:13 +00:00
219 lines
7.4 KiB
Python
219 lines
7.4 KiB
Python
import torch, torchvision, imageio, os
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import imageio.v3 as iio
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from PIL import Image
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class DataProcessingPipeline:
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def __init__(self, operators=None):
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self.operators: list[DataProcessingOperator] = [] if operators is None else operators
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def __call__(self, data):
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for operator in self.operators:
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data = operator(data)
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return data
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def __rshift__(self, pipe):
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if isinstance(pipe, DataProcessingOperator):
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pipe = DataProcessingPipeline([pipe])
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return DataProcessingPipeline(self.operators + pipe.operators)
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class DataProcessingOperator:
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def __call__(self, data):
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raise NotImplementedError("DataProcessingOperator cannot be called directly.")
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def __rshift__(self, pipe):
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if isinstance(pipe, DataProcessingOperator):
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pipe = DataProcessingPipeline([pipe])
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return DataProcessingPipeline([self]).__rshift__(pipe)
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class DataProcessingOperatorRaw(DataProcessingOperator):
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def __call__(self, data):
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return data
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class ToInt(DataProcessingOperator):
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def __call__(self, data):
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return int(data)
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class ToFloat(DataProcessingOperator):
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def __call__(self, data):
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return float(data)
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class ToStr(DataProcessingOperator):
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def __init__(self, none_value=""):
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self.none_value = none_value
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def __call__(self, data):
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if data is None: data = self.none_value
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return str(data)
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class LoadImage(DataProcessingOperator):
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def __init__(self, convert_RGB=True):
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self.convert_RGB = convert_RGB
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def __call__(self, data: str):
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image = Image.open(data)
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if self.convert_RGB: image = image.convert("RGB")
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return image
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class ImageCropAndResize(DataProcessingOperator):
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def __init__(self, height=None, width=None, max_pixels=None, height_division_factor=1, width_division_factor=1):
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self.height = height
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self.width = width
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self.max_pixels = max_pixels
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self.height_division_factor = height_division_factor
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self.width_division_factor = width_division_factor
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def crop_and_resize(self, image, target_height, target_width):
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width, height = image.size
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scale = max(target_width / width, target_height / height)
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image = torchvision.transforms.functional.resize(
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image,
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(round(height*scale), round(width*scale)),
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interpolation=torchvision.transforms.InterpolationMode.BILINEAR
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)
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image = torchvision.transforms.functional.center_crop(image, (target_height, target_width))
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return image
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def get_height_width(self, image):
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if self.height is None or self.width is None:
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width, height = image.size
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if width * height > self.max_pixels:
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scale = (width * height / self.max_pixels) ** 0.5
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height, width = int(height / scale), int(width / scale)
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height = height // self.height_division_factor * self.height_division_factor
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width = width // self.width_division_factor * self.width_division_factor
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else:
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height, width = self.height, self.width
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return height, width
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def __call__(self, data: Image.Image):
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image = self.crop_and_resize(data, *self.get_height_width(data))
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return image
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class ToList(DataProcessingOperator):
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def __call__(self, data):
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return [data]
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class LoadVideo(DataProcessingOperator):
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def __init__(self, num_frames=81, time_division_factor=4, time_division_remainder=1, frame_processor=lambda x: x):
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self.num_frames = num_frames
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self.time_division_factor = time_division_factor
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self.time_division_remainder = time_division_remainder
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# frame_processor is build in the video loader for high efficiency.
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self.frame_processor = frame_processor
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def get_num_frames(self, reader):
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num_frames = self.num_frames
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if int(reader.count_frames()) < num_frames:
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num_frames = int(reader.count_frames())
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while num_frames > 1 and num_frames % self.time_division_factor != self.time_division_remainder:
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num_frames -= 1
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return num_frames
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def __call__(self, data: str):
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reader = imageio.get_reader(data)
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num_frames = self.get_num_frames(reader)
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frames = []
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for frame_id in range(num_frames):
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frame = reader.get_data(frame_id)
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frame = Image.fromarray(frame)
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frame = self.frame_processor(frame)
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frames.append(frame)
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reader.close()
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return frames
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class SequencialProcess(DataProcessingOperator):
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def __init__(self, operator=lambda x: x):
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self.operator = operator
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def __call__(self, data):
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return [self.operator(i) for i in data]
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class LoadGIF(DataProcessingOperator):
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def __init__(self, num_frames=81, time_division_factor=4, time_division_remainder=1, frame_processor=lambda x: x):
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self.num_frames = num_frames
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self.time_division_factor = time_division_factor
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self.time_division_remainder = time_division_remainder
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# frame_processor is build in the video loader for high efficiency.
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self.frame_processor = frame_processor
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def get_num_frames(self, path):
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num_frames = self.num_frames
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images = iio.imread(path, mode="RGB")
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if len(images) < num_frames:
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num_frames = len(images)
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while num_frames > 1 and num_frames % self.time_division_factor != self.time_division_remainder:
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num_frames -= 1
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return num_frames
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def __call__(self, data: str):
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num_frames = self.get_num_frames(data)
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frames = []
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images = iio.imread(data, mode="RGB")
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for img in images:
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frame = Image.fromarray(img)
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frame = self.frame_processor(frame)
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frames.append(frame)
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if len(frames) >= num_frames:
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break
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return frames
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class RouteByExtensionName(DataProcessingOperator):
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def __init__(self, operator_map):
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self.operator_map = operator_map
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def __call__(self, data: str):
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file_ext_name = data.split(".")[-1].lower()
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for ext_names, operator in self.operator_map:
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if ext_names is None or file_ext_name in ext_names:
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return operator(data)
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raise ValueError(f"Unsupported file: {data}")
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class RouteByType(DataProcessingOperator):
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def __init__(self, operator_map):
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self.operator_map = operator_map
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def __call__(self, data):
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for dtype, operator in self.operator_map:
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if dtype is None or isinstance(data, dtype):
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return operator(data)
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raise ValueError(f"Unsupported data: {data}")
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class LoadTorchPickle(DataProcessingOperator):
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def __init__(self, map_location="cpu"):
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self.map_location = map_location
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def __call__(self, data):
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return torch.load(data, map_location=self.map_location, weights_only=False)
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class ToAbsolutePath(DataProcessingOperator):
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def __init__(self, base_path=""):
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self.base_path = base_path
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def __call__(self, data):
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return os.path.join(self.base_path, data)
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class LoadAudio(DataProcessingOperator):
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def __init__(self, sr=16000):
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self.sr = sr
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def __call__(self, data: str):
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import librosa
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input_audio, sample_rate = librosa.load(data, sr=self.sr)
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return input_audio
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