""" This module provide the attack method for FGSM's implement. """ from __future__ import division import numpy as np from collections import Iterable from .base import Attack class GradientSignAttack(Attack): """ This attack was originally implemented by Goodfellow et al. (2015) with the infinity norm (and is known as the "Fast Gradient Sign Method"). This is therefore called the Fast Gradient Method. Paper link: https://arxiv.org/abs/1412.6572 """ def _apply(self, image_batch, epsilons=1000): pre_label = np.argmax(self.model.predict(image_batch)) min_, max_ = self.model.bounds() gradient = self.model.gradient(image_batch) gradient_sign = np.sign(gradient) * (max_ - min_) if not isinstance(epsilons, Iterable): epsilons = np.linspace(0, 1, num = epsilons + 1) for epsilon in epsilons: adv_img = image_batch[0][0].reshape(gradient_sign.shape) + epsilon * gradient_sign adv_img = np.clip(adv_img, min_, max_) adv_label = np.argmax(self.model.predict([(adv_img, 0)])) #print("pre_label="+str(pre_label)+ " adv_label="+str(adv_label)) if pre_label != adv_label: #print(epsilon, pre_label, adv_label) return adv_img FGSM = GradientSignAttack