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import torch |
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import torch.nn as nn |
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import torch.nn.functional as F |
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from ..builder import LOSSES |
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from .utils import weight_reduce_loss |
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def cross_entropy(pred, |
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label, |
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weight=None, |
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class_weight=None, |
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reduction='mean', |
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avg_factor=None, |
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ignore_index=-100): |
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"""The wrapper function for :func:`F.cross_entropy`""" |
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loss = F.cross_entropy( |
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pred, |
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label, |
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weight=class_weight, |
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reduction='none', |
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ignore_index=ignore_index) |
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if weight is not None: |
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weight = weight.float() |
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loss = weight_reduce_loss( |
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loss, weight=weight, reduction=reduction, avg_factor=avg_factor) |
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return loss |
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def _expand_onehot_labels(labels, label_weights, target_shape, ignore_index): |
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"""Expand onehot labels to match the size of prediction.""" |
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bin_labels = labels.new_zeros(target_shape) |
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valid_mask = (labels >= 0) & (labels != ignore_index) |
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inds = torch.nonzero(valid_mask, as_tuple=True) |
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if inds[0].numel() > 0: |
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if labels.dim() == 3: |
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bin_labels[inds[0], labels[valid_mask], inds[1], inds[2]] = 1 |
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else: |
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bin_labels[inds[0], labels[valid_mask]] = 1 |
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valid_mask = valid_mask.unsqueeze(1).expand(target_shape).float() |
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if label_weights is None: |
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bin_label_weights = valid_mask |
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else: |
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bin_label_weights = label_weights.unsqueeze(1).expand(target_shape) |
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bin_label_weights *= valid_mask |
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return bin_labels, bin_label_weights |
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def binary_cross_entropy(pred, |
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label, |
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weight=None, |
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reduction='mean', |
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avg_factor=None, |
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class_weight=None, |
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ignore_index=255): |
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"""Calculate the binary CrossEntropy loss. |
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Args: |
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pred (torch.Tensor): The prediction with shape (N, 1). |
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label (torch.Tensor): The learning label of the prediction. |
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weight (torch.Tensor, optional): Sample-wise loss weight. |
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reduction (str, optional): The method used to reduce the loss. |
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Options are "none", "mean" and "sum". |
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avg_factor (int, optional): Average factor that is used to average |
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the loss. Defaults to None. |
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class_weight (list[float], optional): The weight for each class. |
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ignore_index (int | None): The label index to be ignored. Default: 255 |
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Returns: |
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torch.Tensor: The calculated loss |
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""" |
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if pred.dim() != label.dim(): |
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assert (pred.dim() == 2 and label.dim() == 1) or ( |
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pred.dim() == 4 and label.dim() == 3), \ |
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'Only pred shape [N, C], label shape [N] or pred shape [N, C, ' \ |
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'H, W], label shape [N, H, W] are supported' |
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label, weight = _expand_onehot_labels(label, weight, pred.shape, |
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ignore_index) |
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if weight is not None: |
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weight = weight.float() |
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loss = F.binary_cross_entropy_with_logits( |
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pred, label.float(), pos_weight=class_weight, reduction='none') |
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loss = weight_reduce_loss( |
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loss, weight, reduction=reduction, avg_factor=avg_factor) |
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return loss |
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def mask_cross_entropy(pred, |
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target, |
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label, |
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reduction='mean', |
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avg_factor=None, |
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class_weight=None, |
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ignore_index=None): |
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"""Calculate the CrossEntropy loss for masks. |
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Args: |
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pred (torch.Tensor): The prediction with shape (N, C), C is the number |
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of classes. |
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target (torch.Tensor): The learning label of the prediction. |
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label (torch.Tensor): ``label`` indicates the class label of the mask' |
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corresponding object. This will be used to select the mask in the |
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of the class which the object belongs to when the mask prediction |
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if not class-agnostic. |
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reduction (str, optional): The method used to reduce the loss. |
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Options are "none", "mean" and "sum". |
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avg_factor (int, optional): Average factor that is used to average |
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the loss. Defaults to None. |
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class_weight (list[float], optional): The weight for each class. |
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ignore_index (None): Placeholder, to be consistent with other loss. |
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Default: None. |
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Returns: |
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torch.Tensor: The calculated loss |
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""" |
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assert ignore_index is None, 'BCE loss does not support ignore_index' |
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assert reduction == 'mean' and avg_factor is None |
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num_rois = pred.size()[0] |
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inds = torch.arange(0, num_rois, dtype=torch.long, device=pred.device) |
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pred_slice = pred[inds, label].squeeze(1) |
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return F.binary_cross_entropy_with_logits( |
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pred_slice, target, weight=class_weight, reduction='mean')[None] |
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@LOSSES.register_module() |
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class CrossEntropyLoss(nn.Module): |
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"""CrossEntropyLoss. |
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Args: |
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use_sigmoid (bool, optional): Whether the prediction uses sigmoid |
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of softmax. Defaults to False. |
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use_mask (bool, optional): Whether to use mask cross entropy loss. |
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Defaults to False. |
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reduction (str, optional): . Defaults to 'mean'. |
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Options are "none", "mean" and "sum". |
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class_weight (list[float], optional): Weight of each class. |
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Defaults to None. |
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loss_weight (float, optional): Weight of the loss. Defaults to 1.0. |
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""" |
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def __init__(self, |
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use_sigmoid=False, |
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use_mask=False, |
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reduction='mean', |
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class_weight=None, |
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loss_weight=1.0): |
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super(CrossEntropyLoss, self).__init__() |
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assert (use_sigmoid is False) or (use_mask is False) |
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self.use_sigmoid = use_sigmoid |
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self.use_mask = use_mask |
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self.reduction = reduction |
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self.loss_weight = loss_weight |
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self.class_weight = class_weight |
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if self.use_sigmoid: |
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self.cls_criterion = binary_cross_entropy |
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elif self.use_mask: |
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self.cls_criterion = mask_cross_entropy |
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else: |
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self.cls_criterion = cross_entropy |
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def forward(self, |
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cls_score, |
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label, |
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weight=None, |
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avg_factor=None, |
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reduction_override=None, |
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**kwargs): |
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"""Forward function.""" |
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assert reduction_override in (None, 'none', 'mean', 'sum') |
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reduction = ( |
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reduction_override if reduction_override else self.reduction) |
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if self.class_weight is not None: |
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class_weight = cls_score.new_tensor(self.class_weight) |
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else: |
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class_weight = None |
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loss_cls = self.loss_weight * self.cls_criterion( |
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cls_score, |
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label, |
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weight, |
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class_weight=class_weight, |
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reduction=reduction, |
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avg_factor=avg_factor, |
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**kwargs) |
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return loss_cls |
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