''' Modifed fromhttps://github.com/BNU-IVC/FastPoseGait/blob/main/fastposegait/modeling/losses/supconloss.py ''' import torch.nn as nn import torch from .base import BaseLoss, gather_and_scale_wrapper class SupConLoss_Re(BaseLoss): def __init__(self, temperature=0.01): super(SupConLoss_Re, self).__init__() self.train_loss = SupConLoss(temperature=temperature) @gather_and_scale_wrapper def forward(self, features, labels=None, mask=None): loss = self.train_loss(features, labels) self.info.update({ 'loss': loss.detach().clone()}) return loss, self.info class SupConLoss_Lp(BaseLoss): def __init__(self, temperature=0.01): super(SupConLoss_Lp, self).__init__() self.train_loss = SupConLoss( temperature=temperature, base_temperature=temperature, reduce_zero=True, p=2) @gather_and_scale_wrapper def forward(self, features, labels=None, mask=None): loss = self.train_loss(features.unsqueeze(1), labels) self.info.update({ 'loss': loss.detach().clone()}) return loss, self.info class SupConLoss(nn.Module): """Supervised Contrastive Learning: https://arxiv.org/pdf/2004.11362.pdf. It also supports the unsupervised contrastive loss in SimCLR""" def __init__(self, temperature=0.01, contrast_mode='all', base_temperature=0.07, reduce_zero=False, p=None): super(SupConLoss, self).__init__() self.temperature = temperature self.contrast_mode = contrast_mode self.base_temperature = base_temperature self.reduce_zero = reduce_zero self.p = p def forward(self, features, labels=None, mask=None): """Compute loss for model. If both `labels` and `mask` are None, it degenerates to SimCLR unsupervised loss: https://arxiv.org/pdf/2002.05709.pdf Args: features: hidden vector of shape [bsz, n_views, ...]. labels: ground truth of shape [bsz]. mask: contrastive mask of shape [bsz, bsz], mask_{i,j}=1 if sample j has the same class as sample i. Can be asymmetric. Returns: A loss scalar. """ device = (torch.device('cuda') if features.is_cuda else torch.device('cpu')) if len(features.shape) < 3: raise ValueError('`features` needs to be [bsz, n_views, ...],' 'at least 3 dimensions are required') if len(features.shape) > 3: features = features.view(features.shape[0], features.shape[1], -1) batch_size = features.shape[0] if labels is not None and mask is not None: raise ValueError('Cannot define both `labels` and `mask`') elif labels is None and mask is None: mask = torch.eye(batch_size, dtype=torch.float32).to(device) elif labels is not None: labels = labels.contiguous().view(-1, 1) if labels.shape[0] != batch_size: raise ValueError('Num of labels does not match num of features') mask = torch.eq(labels, labels.T).float().to(device) else: mask = mask.float().to(device) contrast_count = features.shape[1] contrast_feature = torch.cat(torch.unbind(features, dim=1), dim=0) if self.contrast_mode == 'one': anchor_feature = features[:, 0] anchor_count = 1 elif self.contrast_mode == 'all': anchor_feature = contrast_feature anchor_count = contrast_count else: raise ValueError('Unknown mode: {}'.format(self.contrast_mode)) # compute distance mat if self.p is None: mat = torch.matmul( anchor_feature, contrast_feature.T) else: anchor_feature = torch.nn.functional.normalize( anchor_feature, p=self.p, dim=1) contrast_feature = torch.nn.functional.normalize( contrast_feature, p=self.p, dim=1) mat = -torch.cdist( anchor_feature, contrast_feature, p=self.p) mat = mat/self.temperature # for numerical stability logits_max, _ = torch.max(mat, dim=1, keepdim=True) logits = mat - logits_max.detach() # tile mask mask = mask.repeat(anchor_count, contrast_count) # mask-out self-contrast cases logits_mask = torch.scatter( torch.ones_like(mask), 1, torch.arange(batch_size * anchor_count).view(-1, 1).to(device), 0 ) mask = mask * logits_mask # compute log_prob exp_logits = torch.exp(logits) * logits_mask log_prob = logits - torch.log(exp_logits.sum(1, keepdim=True)) # compute mean of log-likelihood over positive mean_log_prob_pos = (mask * log_prob).sum(1) / \ (mask.sum(1)+torch.finfo(mat.dtype).tiny) # loss loss = - (self.temperature / self.base_temperature) * mean_log_prob_pos if self.reduce_zero: loss = loss[loss > 0] return loss.mean()