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import torch |
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from torch import nn |
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from configs.paths_config import model_paths |
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from models.encoders.model_irse import Backbone |
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class IDLoss(nn.Module): |
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def __init__(self): |
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super(IDLoss, self).__init__() |
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print('Loading ResNet ArcFace') |
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self.facenet = Backbone(input_size=112, num_layers=50, drop_ratio=0.6, mode='ir_se') |
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self.facenet.load_state_dict(torch.load(model_paths['ir_se50'])) |
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self.face_pool = torch.nn.AdaptiveAvgPool2d((112, 112)) |
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self.facenet.eval() |
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for module in [self.facenet, self.face_pool]: |
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for param in module.parameters(): |
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param.requires_grad = False |
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def extract_feats(self, x): |
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x = x[:, :, 35:223, 32:220] |
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x = self.face_pool(x) |
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x_feats = self.facenet(x) |
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return x_feats |
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def forward(self, y_hat, y, x): |
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n_samples = x.shape[0] |
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x_feats = self.extract_feats(x) |
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y_feats = self.extract_feats(y) |
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y_hat_feats = self.extract_feats(y_hat) |
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y_feats = y_feats.detach() |
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loss = 0 |
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sim_improvement = 0 |
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id_logs = [] |
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count = 0 |
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for i in range(n_samples): |
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diff_target = y_hat_feats[i].dot(y_feats[i]) |
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diff_input = y_hat_feats[i].dot(x_feats[i]) |
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diff_views = y_feats[i].dot(x_feats[i]) |
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id_logs.append({'diff_target': float(diff_target), |
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'diff_input': float(diff_input), |
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'diff_views': float(diff_views)}) |
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loss += 1 - diff_target |
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id_diff = float(diff_target) - float(diff_views) |
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sim_improvement += id_diff |
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count += 1 |
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return loss / count, sim_improvement / count, id_logs |
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