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引用次数: 8

摘要

大多数对抗性机器学习研究集中在加性攻击上,即在输入数据中添加对抗性扰动。另一方面,与图像识别问题不同,只有少数攻击方法在视频领域得到了探索。在本文中,我们提出了一种针对视频识别模型的新攻击方法——乘法对抗视频(MultAV),该方法通过乘法对视频数据施加扰动。与加性对应物相比,MultAV具有不同的噪声分布,因此对针对抵抗加性对抗性攻击的防御方法提出了挑战。此外,它不仅可以推广到具有新的对手约束(称为比率界)的$\ell_{p}$范数攻击,还可以推广到不同类型的物理可实现攻击。实验结果表明,针对加性攻击进行对抗训练的模型对MultAV的鲁棒性较差。
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MultAV: Multiplicative Adversarial Videos
The majority of adversarial machine learning research focuses on additive attacks, which add adversarial perturbation to input data. On the other hand, unlike image recognition problems, only a handful of attack approaches have been explored in the video domain. In this paper, we propose a novel attack method against video recognition models, Multiplicative Adversarial Videos (MultAV), which imposes perturbation on video data by multiplication. MultAV has different noise distributions to the additive counterparts and thus challenges the defense methods tailored to resisting additive adversarial attacks. Moreover, it can be generalized to not only $\ell_{p}$-norm attacks with a new adversary constraint called ratio bound, but also different types of physically realizable attacks. Experimental results show that the model adversarially trained against additive attack is less robust to MultAV.
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