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""" Transforms Factory |
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Factory methods for building image transforms for use with TIMM (PyTorch Image Models) |
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Hacked together by / Copyright 2019, Ross Wightman |
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""" |
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import math |
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from typing import Optional, Tuple, Union |
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import torch |
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from torchvision import transforms |
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from timm.data.constants import IMAGENET_DEFAULT_MEAN, IMAGENET_DEFAULT_STD, DEFAULT_CROP_PCT |
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from timm.data.auto_augment import rand_augment_transform, augment_and_mix_transform, auto_augment_transform |
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from timm.data.transforms import str_to_interp_mode, str_to_pil_interp, RandomResizedCropAndInterpolation,\ |
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ResizeKeepRatio, CenterCropOrPad, RandomCropOrPad, TrimBorder, ToNumpy |
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from timm.data.random_erasing import RandomErasing |
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def transforms_noaug_train( |
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img_size: Union[int, Tuple[int, int]] = 224, |
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interpolation: str = 'bilinear', |
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use_prefetcher: bool = False, |
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mean: Tuple[float, ...] = IMAGENET_DEFAULT_MEAN, |
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std: Tuple[float, ...] = IMAGENET_DEFAULT_STD, |
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): |
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""" No-augmentation image transforms for training. |
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Args: |
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img_size: Target image size. |
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interpolation: Image interpolation mode. |
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mean: Image normalization mean. |
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std: Image normalization standard deviation. |
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use_prefetcher: Prefetcher enabled. Do not convert image to tensor or normalize. |
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Returns: |
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""" |
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if interpolation == 'random': |
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interpolation = 'bilinear' |
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tfl = [ |
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transforms.Resize(img_size, interpolation=str_to_interp_mode(interpolation)), |
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transforms.CenterCrop(img_size) |
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] |
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if use_prefetcher: |
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tfl += [ToNumpy()] |
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else: |
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tfl += [ |
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transforms.ToTensor(), |
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transforms.Normalize( |
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mean=torch.tensor(mean), |
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std=torch.tensor(std) |
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) |
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] |
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return transforms.Compose(tfl) |
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def transforms_imagenet_train( |
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img_size: Union[int, Tuple[int, int]] = 224, |
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scale: Optional[Tuple[float, float]] = None, |
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ratio: Optional[Tuple[float, float]] = None, |
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train_crop_mode: Optional[str] = None, |
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hflip: float = 0.5, |
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vflip: float = 0., |
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color_jitter: Union[float, Tuple[float, ...]] = 0.4, |
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color_jitter_prob: Optional[float] = None, |
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force_color_jitter: bool = False, |
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grayscale_prob: float = 0., |
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gaussian_blur_prob: float = 0., |
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auto_augment: Optional[str] = None, |
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interpolation: str = 'random', |
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mean: Tuple[float, ...] = IMAGENET_DEFAULT_MEAN, |
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std: Tuple[float, ...] = IMAGENET_DEFAULT_STD, |
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re_prob: float = 0., |
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re_mode: str = 'const', |
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re_count: int = 1, |
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re_num_splits: int = 0, |
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use_prefetcher: bool = False, |
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separate: bool = False, |
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): |
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""" ImageNet-oriented image transforms for training. |
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Args: |
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img_size: Target image size. |
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train_crop_mode: Training random crop mode ('rrc', 'rkrc', 'rkrr'). |
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scale: Random resize scale range (crop area, < 1.0 => zoom in). |
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ratio: Random aspect ratio range (crop ratio for RRC, ratio adjustment factor for RKR). |
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hflip: Horizontal flip probability. |
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vflip: Vertical flip probability. |
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color_jitter: Random color jitter component factors (brightness, contrast, saturation, hue). |
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Scalar is applied as (scalar,) * 3 (no hue). |
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color_jitter_prob: Apply color jitter with this probability if not None (for SimlCLR-like aug). |
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force_color_jitter: Force color jitter where it is normally disabled (ie with RandAugment on). |
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grayscale_prob: Probability of converting image to grayscale (for SimCLR-like aug). |
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gaussian_blur_prob: Probability of applying gaussian blur (for SimCLR-like aug). |
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auto_augment: Auto augment configuration string (see auto_augment.py). |
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interpolation: Image interpolation mode. |
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mean: Image normalization mean. |
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std: Image normalization standard deviation. |
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re_prob: Random erasing probability. |
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re_mode: Random erasing fill mode. |
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re_count: Number of random erasing regions. |
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re_num_splits: Control split of random erasing across batch size. |
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use_prefetcher: Prefetcher enabled. Do not convert image to tensor or normalize. |
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separate: Output transforms in 3-stage tuple. |
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Returns: |
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If separate==True, the transforms are returned as a tuple of 3 separate transforms |
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for use in a mixing dataset that passes |
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* all data through the first (primary) transform, called the 'clean' data |
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* a portion of the data through the secondary transform |
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* normalizes and converts the branches above with the third, final transform |
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""" |
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train_crop_mode = train_crop_mode or 'rrc' |
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assert train_crop_mode in {'rrc', 'rkrc', 'rkrr'} |
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if train_crop_mode in ('rkrc', 'rkrr'): |
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scale = tuple(scale or (0.8, 1.00)) |
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ratio = tuple(ratio or (0.9, 1/.9)) |
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primary_tfl = [ |
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ResizeKeepRatio( |
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img_size, |
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interpolation=interpolation, |
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random_scale_prob=0.5, |
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random_scale_range=scale, |
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random_scale_area=True, |
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random_aspect_prob=0.5, |
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random_aspect_range=ratio, |
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), |
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CenterCropOrPad(img_size, padding_mode='reflect') |
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if train_crop_mode == 'rkrc' else |
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RandomCropOrPad(img_size, padding_mode='reflect') |
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] |
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else: |
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scale = tuple(scale or (0.08, 1.0)) |
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ratio = tuple(ratio or (3. / 4., 4. / 3.)) |
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primary_tfl = [ |
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RandomResizedCropAndInterpolation( |
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img_size, |
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scale=scale, |
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ratio=ratio, |
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interpolation=interpolation, |
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) |
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] |
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if hflip > 0.: |
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primary_tfl += [transforms.RandomHorizontalFlip(p=hflip)] |
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if vflip > 0.: |
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primary_tfl += [transforms.RandomVerticalFlip(p=vflip)] |
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secondary_tfl = [] |
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disable_color_jitter = False |
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if auto_augment: |
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assert isinstance(auto_augment, str) |
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disable_color_jitter = not (force_color_jitter or '3a' in auto_augment) |
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if isinstance(img_size, (tuple, list)): |
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img_size_min = min(img_size) |
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else: |
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img_size_min = img_size |
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aa_params = dict( |
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translate_const=int(img_size_min * 0.45), |
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img_mean=tuple([min(255, round(255 * x)) for x in mean]), |
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) |
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if interpolation and interpolation != 'random': |
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aa_params['interpolation'] = str_to_pil_interp(interpolation) |
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if auto_augment.startswith('rand'): |
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secondary_tfl += [rand_augment_transform(auto_augment, aa_params)] |
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elif auto_augment.startswith('augmix'): |
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aa_params['translate_pct'] = 0.3 |
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secondary_tfl += [augment_and_mix_transform(auto_augment, aa_params)] |
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else: |
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secondary_tfl += [auto_augment_transform(auto_augment, aa_params)] |
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if color_jitter is not None and not disable_color_jitter: |
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if isinstance(color_jitter, (list, tuple)): |
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assert len(color_jitter) in (3, 4) |
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else: |
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color_jitter = (float(color_jitter),) * 3 |
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if color_jitter_prob is not None: |
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secondary_tfl += [ |
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transforms.RandomApply([ |
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transforms.ColorJitter(*color_jitter), |
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], |
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p=color_jitter_prob |
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) |
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] |
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else: |
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secondary_tfl += [transforms.ColorJitter(*color_jitter)] |
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if grayscale_prob: |
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secondary_tfl += [transforms.RandomGrayscale(p=grayscale_prob)] |
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if gaussian_blur_prob: |
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secondary_tfl += [ |
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transforms.RandomApply([ |
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transforms.GaussianBlur(kernel_size=23), |
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], |
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p=gaussian_blur_prob, |
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) |
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] |
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final_tfl = [] |
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if use_prefetcher: |
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final_tfl += [ToNumpy()] |
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else: |
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final_tfl += [ |
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transforms.ToTensor(), |
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transforms.Normalize( |
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mean=torch.tensor(mean), |
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std=torch.tensor(std) |
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), |
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] |
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if re_prob > 0.: |
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final_tfl += [ |
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RandomErasing( |
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re_prob, |
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mode=re_mode, |
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max_count=re_count, |
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num_splits=re_num_splits, |
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device='cpu', |
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) |
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] |
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if separate: |
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return transforms.Compose(primary_tfl), transforms.Compose(secondary_tfl), transforms.Compose(final_tfl) |
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else: |
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return transforms.Compose(primary_tfl + secondary_tfl + final_tfl) |
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def transforms_imagenet_eval( |
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img_size: Union[int, Tuple[int, int]] = 224, |
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crop_pct: Optional[float] = None, |
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crop_mode: Optional[str] = None, |
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crop_border_pixels: Optional[int] = None, |
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interpolation: str = 'bilinear', |
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mean: Tuple[float, ...] = IMAGENET_DEFAULT_MEAN, |
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std: Tuple[float, ...] = IMAGENET_DEFAULT_STD, |
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use_prefetcher: bool = False, |
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): |
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""" ImageNet-oriented image transform for evaluation and inference. |
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Args: |
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img_size: Target image size. |
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crop_pct: Crop percentage. Defaults to 0.875 when None. |
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crop_mode: Crop mode. One of ['squash', 'border', 'center']. Defaults to 'center' when None. |
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crop_border_pixels: Trim a border of specified # pixels around edge of original image. |
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interpolation: Image interpolation mode. |
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mean: Image normalization mean. |
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std: Image normalization standard deviation. |
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use_prefetcher: Prefetcher enabled. Do not convert image to tensor or normalize. |
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Returns: |
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Composed transform pipeline |
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""" |
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crop_pct = crop_pct or DEFAULT_CROP_PCT |
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if isinstance(img_size, (tuple, list)): |
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assert len(img_size) == 2 |
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scale_size = tuple([math.floor(x / crop_pct) for x in img_size]) |
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else: |
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scale_size = math.floor(img_size / crop_pct) |
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scale_size = (scale_size, scale_size) |
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tfl = [] |
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if crop_border_pixels: |
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tfl += [TrimBorder(crop_border_pixels)] |
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if crop_mode == 'squash': |
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tfl += [ |
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transforms.Resize(scale_size, interpolation=str_to_interp_mode(interpolation)), |
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transforms.CenterCrop(img_size), |
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] |
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elif crop_mode == 'border': |
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fill = [round(255 * v) for v in mean] |
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tfl += [ |
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ResizeKeepRatio(scale_size, interpolation=interpolation, longest=1.0), |
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CenterCropOrPad(img_size, fill=fill), |
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] |
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else: |
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if scale_size[0] == scale_size[1]: |
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tfl += [ |
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transforms.Resize(scale_size[0], interpolation=str_to_interp_mode(interpolation)) |
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] |
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else: |
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tfl += [ResizeKeepRatio(scale_size)] |
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tfl += [transforms.CenterCrop(img_size)] |
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if use_prefetcher: |
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tfl += [ToNumpy()] |
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else: |
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tfl += [ |
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transforms.ToTensor(), |
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transforms.Normalize( |
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mean=torch.tensor(mean), |
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std=torch.tensor(std), |
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) |
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] |
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return transforms.Compose(tfl) |
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def create_transform( |
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input_size: Union[int, Tuple[int, int], Tuple[int, int, int]] = 224, |
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is_training: bool = False, |
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no_aug: bool = False, |
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train_crop_mode: Optional[str] = None, |
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scale: Optional[Tuple[float, float]] = None, |
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ratio: Optional[Tuple[float, float]] = None, |
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hflip: float = 0.5, |
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vflip: float = 0., |
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color_jitter: Union[float, Tuple[float, ...]] = 0.4, |
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color_jitter_prob: Optional[float] = None, |
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grayscale_prob: float = 0., |
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gaussian_blur_prob: float = 0., |
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auto_augment: Optional[str] = None, |
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interpolation: str = 'bilinear', |
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mean: Tuple[float, ...] = IMAGENET_DEFAULT_MEAN, |
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std: Tuple[float, ...] = IMAGENET_DEFAULT_STD, |
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re_prob: float = 0., |
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re_mode: str = 'const', |
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re_count: int = 1, |
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re_num_splits: int = 0, |
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crop_pct: Optional[float] = None, |
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crop_mode: Optional[str] = None, |
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crop_border_pixels: Optional[int] = None, |
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tf_preprocessing: bool = False, |
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use_prefetcher: bool = False, |
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separate: bool = False, |
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): |
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""" |
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Args: |
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input_size: Target input size (channels, height, width) tuple or size scalar. |
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is_training: Return training (random) transforms. |
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no_aug: Disable augmentation for training (useful for debug). |
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train_crop_mode: Training random crop mode ('rrc', 'rkrc', 'rkrr'). |
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scale: Random resize scale range (crop area, < 1.0 => zoom in). |
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ratio: Random aspect ratio range (crop ratio for RRC, ratio adjustment factor for RKR). |
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hflip: Horizontal flip probability. |
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vflip: Vertical flip probability. |
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color_jitter: Random color jitter component factors (brightness, contrast, saturation, hue). |
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Scalar is applied as (scalar,) * 3 (no hue). |
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color_jitter_prob: Apply color jitter with this probability if not None (for SimlCLR-like aug). |
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grayscale_prob: Probability of converting image to grayscale (for SimCLR-like aug). |
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gaussian_blur_prob: Probability of applying gaussian blur (for SimCLR-like aug). |
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auto_augment: Auto augment configuration string (see auto_augment.py). |
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interpolation: Image interpolation mode. |
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mean: Image normalization mean. |
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std: Image normalization standard deviation. |
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re_prob: Random erasing probability. |
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re_mode: Random erasing fill mode. |
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re_count: Number of random erasing regions. |
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re_num_splits: Control split of random erasing across batch size. |
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crop_pct: Inference crop percentage (output size / resize size). |
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crop_mode: Inference crop mode. One of ['squash', 'border', 'center']. Defaults to 'center' when None. |
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crop_border_pixels: Inference crop border of specified # pixels around edge of original image. |
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tf_preprocessing: Use TF 1.0 inference preprocessing for testing model ports |
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use_prefetcher: Pre-fetcher enabled. Do not convert image to tensor or normalize. |
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separate: Output transforms in 3-stage tuple. |
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Returns: |
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Composed transforms or tuple thereof |
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""" |
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if isinstance(input_size, (tuple, list)): |
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img_size = input_size[-2:] |
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else: |
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img_size = input_size |
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if tf_preprocessing and use_prefetcher: |
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assert not separate, "Separate transforms not supported for TF preprocessing" |
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from timm.data.tf_preprocessing import TfPreprocessTransform |
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transform = TfPreprocessTransform( |
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is_training=is_training, |
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size=img_size, |
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interpolation=interpolation, |
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) |
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else: |
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if is_training and no_aug: |
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assert not separate, "Cannot perform split augmentation with no_aug" |
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transform = transforms_noaug_train( |
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img_size, |
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interpolation=interpolation, |
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use_prefetcher=use_prefetcher, |
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mean=mean, |
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std=std, |
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) |
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elif is_training: |
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transform = transforms_imagenet_train( |
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img_size, |
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train_crop_mode=train_crop_mode, |
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scale=scale, |
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ratio=ratio, |
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hflip=hflip, |
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vflip=vflip, |
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color_jitter=color_jitter, |
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color_jitter_prob=color_jitter_prob, |
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grayscale_prob=grayscale_prob, |
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gaussian_blur_prob=gaussian_blur_prob, |
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auto_augment=auto_augment, |
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interpolation=interpolation, |
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use_prefetcher=use_prefetcher, |
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mean=mean, |
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std=std, |
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re_prob=re_prob, |
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re_mode=re_mode, |
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re_count=re_count, |
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re_num_splits=re_num_splits, |
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separate=separate, |
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) |
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else: |
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assert not separate, "Separate transforms not supported for validation preprocessing" |
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transform = transforms_imagenet_eval( |
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img_size, |
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interpolation=interpolation, |
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use_prefetcher=use_prefetcher, |
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mean=mean, |
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std=std, |
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crop_pct=crop_pct, |
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crop_mode=crop_mode, |
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crop_border_pixels=crop_border_pixels, |
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) |
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return transform |
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