import torch.nn as nn from . import base from . import functional as F from ..base.modules import Activation class JaccardLoss(base.Loss): def __init__(self, eps=1.0, activation=None, ignore_channels=None, **kwargs): super().__init__(**kwargs) self.eps = eps self.activation = Activation(activation) self.ignore_channels = ignore_channels def forward(self, y_pr, y_gt): y_pr = self.activation(y_pr) return 1 - F.jaccard( y_pr, y_gt, eps=self.eps, threshold=None, ignore_channels=self.ignore_channels, ) class DiceLoss(base.Loss): def __init__( self, eps=1.0, beta=1.0, activation=None, ignore_channels=None, **kwargs ): super().__init__(**kwargs) self.eps = eps self.beta = beta self.activation = Activation(activation) self.ignore_channels = ignore_channels def forward(self, y_pr, y_gt): y_pr = self.activation(y_pr) return 1 - F.f_score( y_pr, y_gt, beta=self.beta, eps=self.eps, threshold=None, ignore_channels=self.ignore_channels, ) class L1Loss(nn.L1Loss, base.Loss): pass class MSELoss(nn.MSELoss, base.Loss): pass class CrossEntropyLoss(nn.CrossEntropyLoss, base.Loss): pass class NLLLoss(nn.NLLLoss, base.Loss): pass class BCELoss(nn.BCELoss, base.Loss): pass class BCEWithLogitsLoss(nn.BCEWithLogitsLoss, base.Loss): pass