用图像缩放攻击后门和毒害神经网络

Erwin Quiring, Konrad Rieck
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引用次数: 53

摘要

后门和中毒攻击是机器学习和视觉系统安全的主要威胁。然而,这些攻击通常会在图像中留下可见的伪影,这些伪影可以通过视觉检测到,从而削弱了攻击的效果。在本文中,我们提出了一种新的隐藏后门和中毒攻击的策略。我们的方法建立在最近一类针对图像缩放的攻击之上。这些攻击可以操纵图像,以便在缩放到特定分辨率时改变其内容。通过将中毒和图像缩放攻击相结合,我们可以隐藏后门的触发器,也可以隐藏干净标签中毒的覆盖层。此外,我们还考虑了图像缩放攻击的检测,并推导了一种自适应攻击。在实证评估中,我们证明了我们的战略的有效性。首先,我们证明了后门和中毒在与图像缩放攻击相结合时同样有效。其次,我们证明了目前针对图像缩放攻击的检测防御不足以发现我们的操作。总的来说,我们的工作提供了一种隐藏操纵痕迹的新方法,适用于不同的中毒方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Backdooring and Poisoning Neural Networks with Image-Scaling Attacks
Backdoors and poisoning attacks are a major threat to the security of machine-learning and vision systems. Often, however, these attacks leave visible artifacts in the images that can be visually detected and weaken the efficacy of the attacks. In this paper, we propose a novel strategy for hiding backdoor and poisoning attacks. Our approach builds on a recent class of attacks against image scaling. These attacks enable manipulating images such that they change their content when scaled to a specific resolution. By combining poisoning and image-scaling attacks, we can conceal the trigger of backdoors as well as hide the overlays of clean-label poisoning. Furthermore, we consider the detection of image-scaling attacks and derive an adaptive attack. In an empirical evaluation, we demonstrate the effectiveness of our strategy. First, we show that backdoors and poisoning work equally well when combined with image-scaling attacks. Second, we demonstrate that current detection defenses against image-scaling attacks are insufficient to uncover our manipulations. Overall, our work provides a novel means for hiding traces of manipulations, being applicable to different poisoning approaches.
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