import torch from torch import nn class WNormLoss(nn.Module): def __init__(self, opts): super(WNormLoss, self).__init__() self.opts = opts def forward(self, latent, latent_avg=None): if self.opts.start_from_latent_avg or self.opts.start_from_encoded_w_plus: latent = latent - latent_avg return torch.sum(latent.norm(2, dim=(1, 2))) / latent.shape[0]