# ------------------------------------------------------------------------ # Deformable DETR # Copyright (c) 2020 SenseTime. All Rights Reserved. # Licensed under the Apache License, Version 2.0 [see LICENSE for details] # ------------------------------------------------------------------------ # Modified from DETR (https://github.com/facebookresearch/detr) # Copyright (c) Facebook, Inc. and its affiliates. All Rights Reserved # ------------------------------------------------------------------------ """ Transforms and data augmentation for both image + bbox. """ import random import PIL import torch import torchvision.transforms as T import torchvision.transforms.functional as F from util.box_ops import box_xyxy_to_cxcywh from util.misc import interpolate def crop(image, target, region): cropped_image = F.crop(image, *region) target = target.copy() i, j, h, w = region # should we do something wrt the original size? target["size"] = torch.tensor([h, w]) fields = ["labels", "area", "iscrowd"] if "boxes" in target: boxes = target["boxes"] max_size = torch.as_tensor([w, h], dtype=torch.float32) cropped_boxes = boxes - torch.as_tensor([j, i, j, i]) cropped_boxes = torch.min(cropped_boxes.reshape(-1, 2, 2), max_size) cropped_boxes = cropped_boxes.clamp(min=0) area = (cropped_boxes[:, 1, :] - cropped_boxes[:, 0, :]).prod(dim=1) target["boxes"] = cropped_boxes.reshape(-1, 4) target["area"] = area fields.append("boxes") if "masks" in target: # FIXME should we update the area here if there are no boxes? target['masks'] = target['masks'][:, i:i + h, j:j + w] fields.append("masks") # remove elements for which the boxes or masks that have zero area if "boxes" in target or "masks" in target: # favor boxes selection when defining which elements to keep # this is compatible with previous implementation if "boxes" in target: cropped_boxes = target['boxes'].reshape(-1, 2, 2) keep = torch.all(cropped_boxes[:, 1, :] > cropped_boxes[:, 0, :], dim=1) else: keep = target['masks'].flatten(1).any(1) for field in fields: target[field] = target[field][keep] return cropped_image, target def hflip(image, target): flipped_image = F.hflip(image) w, h = image.size target = target.copy() if "boxes" in target: boxes = target["boxes"] boxes = boxes[:, [2, 1, 0, 3]] * torch.as_tensor([-1, 1, -1, 1]) + torch.as_tensor([w, 0, w, 0]) target["boxes"] = boxes if "masks" in target: target['masks'] = target['masks'].flip(-1) return flipped_image, target def resize(image, target, size, max_size=None): # size can be min_size (scalar) or (w, h) tuple def get_size_with_aspect_ratio(image_size, size, max_size=None): w, h = image_size if max_size is not None: min_original_size = float(min((w, h))) max_original_size = float(max((w, h))) if max_original_size / min_original_size * size > max_size: size = int(round(max_size * min_original_size / max_original_size)) if (w <= h and w == size) or (h <= w and h == size): return (h, w) if w < h: ow = size oh = int(size * h / w) else: oh = size ow = int(size * w / h) return (oh, ow) def get_size(image_size, size, max_size=None): if isinstance(size, (list, tuple)): return size[::-1] else: return get_size_with_aspect_ratio(image_size, size, max_size) size = get_size(image.size, size, max_size) rescaled_image = F.resize(image, size) if target is None: return rescaled_image, None ratios = tuple(float(s) / float(s_orig) for s, s_orig in zip(rescaled_image.size, image.size)) ratio_width, ratio_height = ratios target = target.copy() if "boxes" in target: boxes = target["boxes"] scaled_boxes = boxes * torch.as_tensor([ratio_width, ratio_height, ratio_width, ratio_height]) target["boxes"] = scaled_boxes if "area" in target: area = target["area"] scaled_area = area * (ratio_width * ratio_height) target["area"] = scaled_area h, w = size target["size"] = torch.tensor([h, w]) if "masks" in target: target['masks'] = interpolate( target['masks'][:, None].float(), size, mode="nearest")[:, 0] > 0.5 return rescaled_image, target def pad(image, target, padding): # assumes that we only pad on the bottom right corners padded_image = F.pad(image, (0, 0, padding[0], padding[1])) if target is None: return padded_image, None target = target.copy() # should we do something wrt the original size? target["size"] = torch.tensor(padded_image[::-1]) if "masks" in target: target['masks'] = torch.nn.functional.pad(target['masks'], (0, padding[0], 0, padding[1])) return padded_image, target class RandomCrop(object): def __init__(self, size): self.size = size def __call__(self, img, target): region = T.RandomCrop.get_params(img, self.size) return crop(img, target, region) class RandomSizeCrop(object): def __init__(self, min_size: int, max_size: int): self.min_size = min_size self.max_size = max_size def __call__(self, img: PIL.Image.Image, target: dict): w = random.randint(self.min_size, min(img.width, self.max_size)) h = random.randint(self.min_size, min(img.height, self.max_size)) region = T.RandomCrop.get_params(img, [h, w]) return crop(img, target, region) class CenterCrop(object): def __init__(self, size): self.size = size def __call__(self, img, target): image_width, image_height = img.size crop_height, crop_width = self.size crop_top = int(round((image_height - crop_height) / 2.)) crop_left = int(round((image_width - crop_width) / 2.)) return crop(img, target, (crop_top, crop_left, crop_height, crop_width)) class RandomHorizontalFlip(object): def __init__(self, p=0.5): self.p = p def __call__(self, img, target): if random.random() < self.p: return hflip(img, target) return img, target class RandomResize(object): def __init__(self, sizes, max_size=None): assert isinstance(sizes, (list, tuple)) self.sizes = sizes self.max_size = max_size def __call__(self, img, target=None): size = random.choice(self.sizes) return resize(img, target, size, self.max_size) class RandomPad(object): def __init__(self, max_pad): self.max_pad = max_pad def __call__(self, img, target): pad_x = random.randint(0, self.max_pad) pad_y = random.randint(0, self.max_pad) return pad(img, target, (pad_x, pad_y)) class RandomSelect(object): """ Randomly selects between transforms1 and transforms2, with probability p for transforms1 and (1 - p) for transforms2 """ def __init__(self, transforms1, transforms2, p=0.5): self.transforms1 = transforms1 self.transforms2 = transforms2 self.p = p def __call__(self, img, target): if random.random() < self.p: return self.transforms1(img, target) return self.transforms2(img, target) class ToTensor(object): def __call__(self, img, target): return F.to_tensor(img), target class RandomErasing(object): def __init__(self, *args, **kwargs): self.eraser = T.RandomErasing(*args, **kwargs) def __call__(self, img, target): return self.eraser(img), target class Normalize(object): def __init__(self, mean, std): self.mean = mean self.std = std def __call__(self, image, target=None): image = F.normalize(image, mean=self.mean, std=self.std) if target is None: return image, None target = target.copy() h, w = image.shape[-2:] if "boxes" in target: boxes = target["boxes"] boxes = box_xyxy_to_cxcywh(boxes) boxes = boxes / torch.tensor([w, h, w, h], dtype=torch.float32) target["boxes"] = boxes return image, target class Compose(object): def __init__(self, transforms): self.transforms = transforms def __call__(self, image, target): for t in self.transforms: image, target = t(image, target) return image, target def __repr__(self): format_string = self.__class__.__name__ + "(" for t in self.transforms: format_string += "\n" format_string += " {0}".format(t) format_string += "\n)" return format_string