| import numpy as np |
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|
| import torch |
| import torch.nn as nn |
| import torch.nn.functional as F |
| from torch.autograd import Variable |
| import torch.optim as optim |
| from utils.criterion import CrossEntropyWithLabelSmooth |
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|
| def squared_l2_norm(x): |
| flattened = x.view(x.unsqueeze(0).shape[0], -1) |
| return (flattened ** 2).sum(1) |
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|
| def l2_norm(x): |
| return squared_l2_norm(x).sqrt() |
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|
| def trades_loss(model, x_natural, y,optimizer = None, step_size=0.003, epsilon=0.031, perturb_steps=10, beta=1.0, |
| attack='l_inf',natural_criterion= nn.CrossEntropyLoss() ): |
| """ |
| TRADES training (Zhang et al, 2019). |
| """ |
| |
| |
| criterion_kl = nn.KLDivLoss(size_average=False) |
| model.eval() |
| batch_size = len(x_natural) |
| |
| x_adv = x_natural.detach() + 0.001 * torch.randn(x_natural.shape).cuda().detach() |
| p_natural = F.softmax(model(x_natural), dim=1) |
| |
| if attack == 'l_inf': |
| for _ in range(perturb_steps): |
| x_adv.requires_grad_() |
| with torch.enable_grad(): |
| loss_kl = criterion_kl(F.log_softmax(model(x_adv), dim=1), p_natural) |
| grad = torch.autograd.grad(loss_kl, [x_adv])[0] |
| x_adv = x_adv.detach() + step_size * torch.sign(grad.detach()) |
| x_adv = torch.min(torch.max(x_adv, x_natural - epsilon), x_natural + epsilon) |
| x_adv = torch.clamp(x_adv, 0.0, 1.0) |
| |
| elif attack == 'l2': |
| delta = 0.001 * torch.randn(x_natural.shape).cuda().detach() |
| delta = Variable(delta.data, requires_grad=True) |
|
|
| |
| optimizer_delta = optim.SGD([delta], lr=epsilon / perturb_steps * 2) |
|
|
| for _ in range(perturb_steps): |
| adv = x_natural + delta |
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| |
| optimizer_delta.zero_grad() |
| with torch.enable_grad(): |
| loss = (-1) * criterion_kl(F.log_softmax(model(adv), dim=1), p_natural) |
| loss.backward(retain_graph=True) |
| |
| grad_norms = delta.grad.view(batch_size, -1).norm(p=2, dim=1) |
| delta.grad.div_(grad_norms.view(-1, 1, 1, 1)) |
| |
| if (grad_norms == 0).any(): |
| delta.grad[grad_norms == 0] = torch.randn_like(delta.grad[grad_norms == 0]) |
| optimizer_delta.step() |
|
|
| |
| delta.data.add_(x_natural) |
| delta.data.clamp_(0, 1).sub_(x_natural) |
| delta.data.renorm_(p=2, dim=0, maxnorm=epsilon) |
| x_adv = Variable(x_natural + delta, requires_grad=False) |
| else: |
| raise ValueError(f'Attack={attack} not supported for TRADES training!') |
| model.train() |
|
|
| x_adv = Variable(torch.clamp(x_adv, 0.0, 1.0), requires_grad=False) |
| |
| optimizer.zero_grad() |
| |
| logits_natural = model(x_natural) |
| |
| logits_adv = model(x_adv) |
| |
| loss_natural = natural_criterion(logits_natural, y) |
| loss_robust = (1.0 / batch_size) * criterion_kl(F.log_softmax(logits_adv, dim=1), |
| F.softmax(logits_natural, dim=1)) |
| loss = loss_natural + beta * loss_robust |
| |
| |
| |
| return loss |
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