Пример #1
0
 def criterionHis(self, input_data, target_data, mask_src, mask_tar, index):
     input_data = (self.de_norm(input_data) * 255).squeeze()
     target_data = (self.de_norm(target_data) * 255).squeeze()
     mask_src = mask_src.expand(1, 3, mask_src.size(2),
                                mask_src.size(2)).squeeze()
     mask_tar = mask_tar.expand(1, 3, mask_tar.size(2),
                                mask_tar.size(2)).squeeze()
     input_masked = input_data * mask_src
     target_masked = target_data * mask_tar
     input_match = histogram_matching(input_masked, target_masked, index)
     input_match = self.to_var(input_match, requires_grad=False)
     loss = self.criterionL1(input_masked, input_match)
     return loss
Пример #2
0
 def criterionHis(self, input_data, target_data, mask_src, mask_tar, index):
     input_data = (self.de_norm(input_data) * 255)
     target_data = (self.de_norm(target_data) * 255)
     mask_src = mask_src.expand(-1, 3, mask_src.size(2), mask_src.size(3))
     mask_tar = mask_tar.expand(-1, 3, mask_tar.size(2), mask_tar.size(3))
     input_masked = input_data * mask_src
     target_masked = target_data * mask_tar
     # dstImg = (input_masked.data).cpu().clone()
     # refImg = (target_masked.data).cpu().clone()
     input_match = []
     for (i, t, idx) in zip(input_masked, target_masked, index):
         input_match.append(histogram_matching(i, t, idx))
     input_match = torch.stack(input_match)
     input_match = self.to_var(input_match, requires_grad=False)
     loss = self.criterionL1(input_masked, input_match)
     return loss