73 lines
2.4 KiB
Python
73 lines
2.4 KiB
Python
""""Copyright(c) 2023 lyuwenyu. All Rights Reserved.
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"""
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import torch
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import torchvision
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torchvision.disable_beta_transforms_warning()
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import torchvision.transforms.v2 as T
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import torchvision.transforms.v2.functional as F
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import random
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from PIL import Image
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from .._misc import convert_to_tv_tensor
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from ...core import register
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@register()
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class Mosaic(T.Transform):
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def __init__(self, size, max_size=None, ) -> None:
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super().__init__()
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self.resize = T.Resize(size=size, max_size=max_size)
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self.crop = T.RandomCrop(size=max_size if max_size else size)
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# TODO add arg `output_size` for affine`
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# self.random_perspective = T.RandomPerspective(distortion_scale=0.5, p=1., )
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self.random_affine = T.RandomAffine(degrees=0, translate=(0.1, 0.1), scale=(0.5, 1.5), fill=114)
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def forward(self, *inputs):
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inputs = inputs if len(inputs) > 1 else inputs[0]
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image, target, dataset = inputs
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images = []
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targets = []
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indices = random.choices(range(len(dataset)), k=3)
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for i in indices:
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image, target = dataset.load_item(i)
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image, target = self.resize(image, target)
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images.append(image)
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targets.append(target)
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h, w = F.get_spatial_size(images[0])
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offset = [[0, 0], [w, 0], [0, h], [w, h]]
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image = Image.new(mode=images[0].mode, size=(w * 2, h * 2), color=0)
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for i, im in enumerate(images):
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image.paste(im, offset[i])
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offset = torch.tensor([[0, 0], [w, 0], [0, h], [w, h]]).repeat(1, 2)
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target = {}
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for k in targets[0]:
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if k == 'boxes':
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v = [t[k] + offset[i] for i, t in enumerate(targets)]
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else:
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v = [t[k] for t in targets]
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if isinstance(v[0], torch.Tensor):
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v = torch.cat(v, dim=0)
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target[k] = v
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if 'boxes' in target:
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# target['boxes'] = target['boxes'].clamp(0, 640 * 2 - 1)
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w, h = image.size
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target['boxes'] = convert_to_tv_tensor(target['boxes'], 'boxes', box_format='xyxy', spatial_size=[h, w])
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if 'masks' in target:
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target['masks'] = convert_to_tv_tensor(target['masks'], 'masks')
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image, target = self.random_affine(image, target)
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# image, target = self.resize(image, target)
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image, target = self.crop(image, target)
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return image, target, dataset
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