# Loss functions for medical image segmentation # BCEDiceLoss for binary tasks, CEDiceLoss for multi-class tasks import torch import torch.nn as nn import torch.nn.functional as F class BCEDiceLoss(nn.Module): """Combined BCE + Dice loss for binary segmentation. Input: logits [B, 1, H, W] (before sigmoid) Target: binary mask [B, 1, H, W] in {0, 1} """ def __init__(self, bce_weight=0.5, dice_weight=0.5, smooth=1.0): super().__init__() self.bce_weight = bce_weight self.dice_weight = dice_weight self.smooth = smooth self.bce = nn.BCEWithLogitsLoss() def forward(self, logits, targets): # BCE bce_loss = self.bce(logits, targets) # Dice probs = torch.sigmoid(logits) probs_flat = probs.view(probs.size(0), -1) targets_flat = targets.view(targets.size(0), -1) intersection = (probs_flat * targets_flat).sum(dim=1) dice = (2.0 * intersection + self.smooth) / ( probs_flat.sum(dim=1) + targets_flat.sum(dim=1) + self.smooth ) dice_loss = 1.0 - dice.mean() return self.bce_weight * bce_loss + self.dice_weight * dice_loss class CEDiceLoss(nn.Module): """Combined CE + Dice loss for multi-class segmentation. Input: logits [B, C, H, W] (before softmax) Target: class indices [B, H, W] in {0, ..., C-1} """ def __init__(self, ce_weight=0.5, dice_weight=0.5, num_classes=3, smooth=1.0): super().__init__() self.ce_weight = ce_weight self.dice_weight = dice_weight self.num_classes = num_classes self.smooth = smooth self.ce = nn.CrossEntropyLoss() def forward(self, logits, targets): # CE loss ce_loss = self.ce(logits, targets) # Dice loss (per-class, then average) probs = F.softmax(logits, dim=1) # [B, C, H, W] targets_onehot = F.one_hot(targets, self.num_classes) # [B, H, W, C] targets_onehot = targets_onehot.permute(0, 3, 1, 2).float() # [B, C, H, W] dice_sum = 0.0 for c in range(self.num_classes): probs_c = probs[:, c].contiguous().view(probs.size(0), -1) targets_c = targets_onehot[:, c].contiguous().view(targets.size(0), -1) intersection = (probs_c * targets_c).sum(dim=1) dice_c = (2.0 * intersection + self.smooth) / ( probs_c.sum(dim=1) + targets_c.sum(dim=1) + self.smooth ) dice_sum += dice_c.mean() dice_loss = 1.0 - dice_sum / self.num_classes return self.ce_weight * ce_loss + self.dice_weight * dice_loss