Clipped BagNet: Defending Against Sticker Attacks with Clipped Bag-of-features

Zhanyuan Zhang, Benson Yuan, Michael McCoyd, David A. Wagner
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引用次数: 39

Abstract

Many works have demonstrated that neural networks are vulnerable to adversarial examples. We examine the adversarial sticker attack, where the attacker places a sticker somewhere on an image to induce it to be misclassified. We take a first step towards defending against such attacks using clipped BagNet, which bounds the influence that any limited-size sticker can have on the final classification. We evaluate our scheme on ImageNet and show that it provides strong security against targeted PGD attacks and gradient-free attacks, and yields certified security for a 95% of images against a targeted 20 × 20 pixel attack.
Clipped BagNet:用Clipped Bag-of-features防御贴纸攻击
许多研究表明,神经网络容易受到对抗性例子的影响。我们研究了对抗性贴纸攻击,攻击者在图像上的某个地方放置贴纸以诱导其被错误分类。我们使用剪贴BagNet来防御这种攻击,这是第一步,它限制了任何有限大小的贴纸对最终分类的影响。我们在ImageNet上评估了我们的方案,并表明它提供了针对目标PGD攻击和无梯度攻击的强大安全性,并且在针对目标20 × 20像素攻击的情况下,95%的图像获得了认证安全性。
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