针对对抗性例子的频率中心防御机制

Sanket B. Shah, Param Raval, Harin Khakhi, M. Raval
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引用次数: 5

摘要

对抗性示例(AE)旨在通过在输入图像中引入小扰动来欺骗卷积神经网络。提出的工作利用傅里叶谱的幅度和相位以及图像的熵来防御声发射。我们通过两种方式来演示防御:通过训练对抗检测器和去噪对抗效应。实验分别在低分辨率CIFAR-10和高分辨率ImageNet数据集上进行。对抗性检测器对CIFAR-10数据集的FGSM和PGD攻击具有99%的准确率。然而,对于复杂的DeepFool和Carlini & Wagner对ImageNet的攻击,检测准确率下降到50%。我们通过使用自动编码器克服了这一限制,并表明在去噪后,70%的ae被正确分类。
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Frequency Centric Defense Mechanisms against Adversarial Examples
Adversarial example(AE) aims at fooling a Convolution Neural Network by introducing small perturbations in the input image. The proposed work uses the magnitude and phase of the Fourier Spectrum and the entropy of the image to defend against AE. We demonstrate the defense in two ways: by training an adversarial detector and denoising the adversarial effect. Experiments were conducted on the low-resolution CIFAR-10 and high-resolution ImageNet datasets. The adversarial detector has 99% accuracy for FGSM and PGD attacks on the CIFAR-10 dataset. However, the detection accuracy falls to 50% for sophisticated DeepFool and Carlini & Wagner attacks on ImageNet. We overcome the limitation by using autoencoder and show that 70% of AEs are correctly classified after denoising.
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