import torch from torch import nn, Tensor import numpy as np class RobustCrossEntropyLoss(nn.CrossEntropyLoss): """ this is just a compatibility layer because my target tensor is float and has an extra dimension input must be logits, not probabilities! """ def forward(self, input: Tensor, target: Tensor) -> Tensor: if len(target.shape) == len(input.shape): assert target.shape[1] == 1 target = target[:, 0] return super().forward(input, target.long()) class TopKLoss(RobustCrossEntropyLoss): """ input must be logits, not probabilities! """ def __init__(self, weight=None, ignore_index: int = -100, k: float = 10, label_smoothing: float = 0): self.k = k super(TopKLoss, self).__init__(weight, False, ignore_index, reduce=False, label_smoothing=label_smoothing) def forward(self, inp, target): target = target[:, 0].long() res = super(TopKLoss, self).forward(inp, target) num_voxels = np.prod(res.shape, dtype=np.int64) res, _ = torch.topk(res.view((-1, )), int(num_voxels * self.k / 100), sorted=False) return res.mean()