对象检测器的自然物理对抗补丁

Yuqing Hu, Jun-Cheng Chen, Bo-Han Kung, K. Hua, Daniel Stanley Tan
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引用次数: 65

摘要

以往关于物理对抗性攻击的研究大多集中在攻击性能上,很少对生成的对抗性补丁的外观进行限制。这导致产生的斑块明显和引人注目的模式,可以很容易地被人类识别。为了解决这个问题,我们提出了一种方法,通过利用预训练生成对抗网络(GAN)(例如BigGAN和StyleGAN)在真实世界图像上学习的图像歧管,为目标检测器制作物理对抗补丁。通过从GAN中采样最优图像,我们的方法可以在保持高攻击性能的同时生成看起来自然的对抗补丁。通过在数字和物理领域的广泛实验以及几次独立的主观调查,结果表明,我们提出的方法在实现竞争性攻击性能的同时,比几个最先进的基线产生更逼真和自然的补丁。1
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Naturalistic Physical Adversarial Patch for Object Detectors
Most prior works on physical adversarial attacks mainly focus on the attack performance but seldom enforce any restrictions over the appearance of the generated adversarial patches. This leads to conspicuous and attention-grabbing patterns for the generated patches which can be easily identified by humans. To address this issue, we pro-pose a method to craft physical adversarial patches for object detectors by leveraging the learned image manifold of a pretrained generative adversarial network (GAN) (e.g., BigGAN and StyleGAN) upon real-world images. Through sampling the optimal image from the GAN, our method can generate natural looking adversarial patches while maintaining high attack performance. With extensive experiments on both digital and physical domains and several independent subjective surveys, the results show that our proposed method produces significantly more realistic and natural looking patches than several state-of-the-art base-lines while achieving competitive attack performance. 1
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