mmpretrain.models.utils.batch_augments.resizemix 源代码

# Copyright (c) OpenMMLab. All rights reserved.
from typing import List, Optional, Tuple

import numpy as np
import torch
import torch.nn.functional as F

from mmpretrain.registry import BATCH_AUGMENTS
from .cutmix import CutMix

[文档]@BATCH_AUGMENTS.register_module() class ResizeMix(CutMix): r"""ResizeMix Random Paste layer for a batch of data. The ResizeMix will resize an image to a small patch and paste it on another image. It's proposed in `ResizeMix: Mixing Data with Preserved Object Information and True Labels <>`_ Args: alpha (float): Parameters for Beta distribution to generate the mixing ratio. It should be a positive number. More details can be found in :class:`Mixup`. lam_min(float): The minimum value of lam. Defaults to 0.1. lam_max(float): The maximum value of lam. Defaults to 0.8. interpolation (str): algorithm used for upsampling: 'nearest' | 'linear' | 'bilinear' | 'bicubic' | 'trilinear' | 'area'. Defaults to 'bilinear'. prob (float): The probability to execute resizemix. It should be in range [0, 1]. Defaults to 1.0. cutmix_minmax (List[float], optional): The min/max area ratio of the patches. If not None, the bounding-box of patches is uniform sampled within this ratio range, and the ``alpha`` will be ignored. Otherwise, the bounding-box is generated according to the ``alpha``. Defaults to None. correct_lam (bool): Whether to apply lambda correction when cutmix bbox clipped by image borders. Defaults to True **kwargs: Any other parameters accpeted by :class:`CutMix`. Note: The :math:`\lambda` (``lam``) is the mixing ratio. It's a random variable which follows :math:`Beta(\alpha, \alpha)` and is mapped to the range [``lam_min``, ``lam_max``]. .. math:: \lambda = \frac{Beta(\alpha, \alpha)} {\lambda_{max} - \lambda_{min}} + \lambda_{min} And the resize ratio of source images is calculated by :math:`\lambda`: .. math:: \text{ratio} = \sqrt{1-\lambda} """ def __init__(self, alpha: float, lam_min: float = 0.1, lam_max: float = 0.8, interpolation: str = 'bilinear', cutmix_minmax: Optional[List[float]] = None, correct_lam: bool = True): super().__init__( alpha=alpha, cutmix_minmax=cutmix_minmax, correct_lam=correct_lam) self.lam_min = lam_min self.lam_max = lam_max self.interpolation = interpolation
[文档] def mix(self, batch_inputs: torch.Tensor, batch_scores: torch.Tensor) -> Tuple[torch.Tensor, torch.Tensor]: """Mix the batch inputs and batch one-hot format ground truth. Args: batch_inputs (Tensor): A batch of images tensor in the shape of ``(N, C, H, W)``. batch_scores (Tensor): A batch of one-hot format labels in the shape of ``(N, num_classes)``. Returns: Tuple[Tensor, Tensor): The mixed inputs and labels. """ lam = np.random.beta(self.alpha, self.alpha) lam = lam * (self.lam_max - self.lam_min) + self.lam_min img_shape = batch_inputs.shape[-2:] batch_size = batch_inputs.size(0) index = torch.randperm(batch_size) (y1, y2, x1, x2), lam = self.cutmix_bbox_and_lam(img_shape, lam) batch_inputs[:, :, y1:y2, x1:x2] = F.interpolate( batch_inputs[index], size=(int(y2 - y1), int(x2 - x1)), mode=self.interpolation, align_corners=False) mixed_scores = lam * batch_scores + (1 - lam) * batch_scores[index, :] return batch_inputs, mixed_scores
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