Ejemplo n.º 1
0
    def forward(self, in0, in1):

        if (self.colorspace == 'RGB'):
            (N, C, X, Y) = in0.size()
            value = torch.mean(torch.mean(torch.mean((in0 - in1)**2,
                                                     dim=1).view(N, 1, X, Y),
                                          dim=2).view(N, 1, 1, Y),
                               dim=3).view(N)
            return value
        elif (self.colorspace == 'Gray'):
            (N, C, X, Y) = in0.size()
            in0 = util.tensor2tensorGrayscale(in0)
            in1 = util.tensor2tensorGrayscale(in1)

            value = torch.mean(torch.mean(torch.mean((in0 - in1)**2,
                                                     dim=1).view(N, 1, X, Y),
                                          dim=2).view(N, 1, 1, Y),
                               dim=3).view(N)
            return value
        elif (self.colorspace == 'Lab'):
            assert (in0.size()[0] == 1)  # currently only supports batchSize 1
            value = util.l2(
                util.tensor2np(util.tensor2tensorlab(in0.data, to_norm=False)),
                util.tensor2np(util.tensor2tensorlab(in1.data, to_norm=False)),
                range=100.).astype('float')
            ret_var = Variable(torch.Tensor((value, )))
            if (self.use_gpu):
                ret_var = ret_var.cuda()
            return ret_var
    def forward(self, in0, in1):
        assert(in0.size()[0]==1) # currently only supports batchSize 1

        if(self.colorspace=='RGB'):
            value = util.dssim(1.*util.tensor2im(in0.data), 1.*util.tensor2im(in1.data), range=255.).astype('float')
        elif(self.colorspace=='Lab'):
            value = util.dssim(util.tensor2np(util.tensor2tensorlab(in0.data,to_norm=False)), 
                util.tensor2np(util.tensor2tensorlab(in1.data,to_norm=False)), range=100.).astype('float')
        ret_var = Variable( torch.Tensor((value,) ) )
        if(self.use_gpu):
            ret_var = ret_var.cuda()
        return ret_var
Ejemplo n.º 3
0
    def forward(self, in0, in1):
        assert(in0.size()[0]==1) # currently only supports batchSize 1

        if(self.colorspace=='RGB'):
            value = util.dssim(1.*util.tensor2im(in0.data), 1.*util.tensor2im(in1.data), range=255.).astype('float')
        elif(self.colorspace=='Lab'):
            value = util.dssim(util.tensor2np(util.tensor2tensorlab(in0.data,to_norm=False)), 
                util.tensor2np(util.tensor2tensorlab(in1.data,to_norm=False)), range=100.).astype('float')
        ret_var = Variable( torch.Tensor((value,) ) )
        if(self.use_gpu):
            ret_var = ret_var.cuda()
        return ret_var
    def forward(self, in0, in1):
        assert(in0.size()[0]==1) # currently only supports batchSize 1

        if(self.colorspace=='RGB'):
            (N,C,X,Y) = in0.size()
            value = torch.mean(torch.mean(torch.mean((in0-in1)**2,dim=1).view(N,1,X,Y),dim=2).view(N,1,1,Y),dim=3).view(N)
            return value
        elif(self.colorspace=='Lab'):
            value = util.l2(util.tensor2np(util.tensor2tensorlab(in0.data,to_norm=False)), 
                util.tensor2np(util.tensor2tensorlab(in1.data,to_norm=False)), range=100.).astype('float')
            ret_var = Variable( torch.Tensor((value,) ) )
            if(self.use_gpu):
                ret_var = ret_var.cuda()
            return ret_var