from accelerate.logging import get_logger import torch import io logger = get_logger(__name__) from PIL import Image from .condition import Condition from diffusers.image_processor import VaeImageProcessor from datasets import load_dataset, concatenate_datasets def get_dataset(args): dataset = [] assert isinstance(args.dataset_name,list),"dataset dir should be a list" if args.dataset_name is not None: for name in args.dataset_name: # Downloading and loading a dataset from the hub. dataset.append(load_dataset(name,cache_dir=args.cache_dir,split='train')) dataset = concatenate_datasets(dataset) return dataset def prepare_dataset(dataset, vae_scale_factor, accelerator, args): image_processor = VaeImageProcessor(vae_scale_factor=vae_scale_factor * 2 ,do_resize=True,do_convert_rgb=True) def preprocess_conditions(conditions): conditioning_tensors = [] conditions_types = [] for cond in conditions: conditioning_tensors.append(image_processor.preprocess(cond.condition,width=args.resolution,height=args.resolution).squeeze(0)) conditions_types.append(cond.condition_type) return torch.stack(conditioning_tensors,dim=0),conditions_types def preprocess(examples): # images = [image_transforms(image) for image in images] pixel_values =[] condition_latents=[] condition_types=[] bboxes = [] for image,bbox,canny,depth in zip(examples[args.image_column],examples[args.bbox_column],examples[args.canny_column],examples[args.depth_column]): image = image.convert("RGB") if not isinstance(image, str) else Image.open(image).convert("RGB") width, height = image.size # 检查宽度是否为偶数,以便可以均匀分割 if width % 2 != 0: raise ValueError("Image width must be even to split into two equal parts.") # 分割图像 left_image = image.crop((0, 0, width // 2, height)) # 左半部分 right_image = image.crop((width // 2, 0, width, height)) # 右半部分 # load mask image image_width,image_height = image.size bbox_pixel = [ bbox[0] * image_width, bbox[1] * image_height, bbox[2] * image_width, bbox[3] * image_height ] left = bbox_pixel[0] - bbox_pixel[2] / 2 top = bbox_pixel[1] - bbox_pixel[3] / 2 right = bbox_pixel[0] + bbox_pixel[2] / 2 bottom = bbox_pixel[1] + bbox_pixel[3] / 2 masked_left_image = left_image.copy() masked_left_image.paste((0, 0, 0), (int(left), int(top), int(right), int(bottom))) bboxes.append([int(left*args.resolution/(width // 2)), int(top*args.resolution/height), int(right*args.resolution/(width // 2)), int(bottom*args.resolution/height)]) # 应用转换,将分割后的图像添加到列表中 pixel_values.append(image_processor.preprocess(left_image,width=args.resolution,height=args.resolution).squeeze(0)) conditions = [] for condition_type in args.condition_types: if condition_type == "subject": conditions.append(Condition("subject", condition = right_image)) elif condition_type == "canny": conditions.append(Condition("canny", condition = Image.open(io.BytesIO(canny['bytes'])))) elif condition_type == "depth": conditions.append(Condition("depth", condition = Image.open(io.BytesIO(depth['bytes'])))) elif condition_type == "fill": conditions.append(Condition("fill", condition = masked_left_image)) else: raise ValueError("Only support for subject, canny, depth, fill") cond_tensors, cond_types = preprocess_conditions(conditions) condition_latents.append(cond_tensors) condition_types.append(cond_types) examples["pixel_values"] = pixel_values examples["condition_latents"] = condition_latents examples["condition_types"] = condition_types examples["bbox"]=bboxes return examples with accelerator.main_process_first(): dataset = dataset.with_transform(preprocess) return dataset def collate_fn(examples): pixel_values = torch.stack([example["pixel_values"] for example in examples]) pixel_values = pixel_values.to(memory_format=torch.contiguous_format).float() condition_latents = torch.stack([example["condition_latents"] for example in examples]) condition_latents = condition_latents.to(memory_format=torch.contiguous_format).float() bboxes= [example["bbox"] for example in examples] condition_types= [example["condition_types"] for example in examples] descriptions = [example["description"]["description_0"] for example in examples] items = [example["description"]["item"] for example in examples] return {"pixel_values": pixel_values, "condition_latents": condition_latents, "condition_types":condition_types,"descriptions": descriptions, "bboxes": bboxes,"items":items}