WiAdv: Practical and Robust Adversarial Attack against WiFi-based Gesture Recognition System

Yuxuan Zhou, Huangxun Chen, Chenyu Huang, Qian Zhang
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引用次数: 3

Abstract

WiFi-based gesture recognition systems have attracted enormous interest owing to the non-intrusive of WiFi signals and the wide adoption of WiFi for communication. Despite boosted performance via integrating advanced deep neural network (DNN) classifiers, there lacks sufficient investigation on their security vulnerabilities, which are rooted in the open nature of the wireless medium and the inherent defects (e.g., adversarial attacks) of classifiers. To fill this gap, we aim to study adversarial attacks to DNN-powered WiFi-based gesture recognition to encourage proper countermeasures. We design WiAdv to construct physically realizable adversarial examples to fool these systems. WiAdv features a signal synthesis scheme to craft adversarial signals with desired motion features based on the fundamental principle of WiFi-based gesture recognition, and a black-box attack scheme to handle the inconsistency between the perturbation space and the input space of the classifier caused by the in-between non-differentiable processing modules. We realize and evaluate our attack strategies against a representative state-of-the-art system, Widar3.0 in realistic settings. The experimental results show that the adversarial wireless signals generated by WiAdv achieve over 70% attack success rate on average, and remain robust and effective across different physical settings. Our attack case study and analysis reveal the vulnerability of WiFi-based gesture recognition systems, and we hope WiAdv could help promote the improvement of the relevant systems.
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WiAdv:针对基于wifi的手势识别系统的实用且稳健的对抗性攻击
基于WiFi的手势识别系统由于WiFi信号的非侵入性和WiFi通信的广泛采用而引起了人们的极大兴趣。尽管通过集成高级深度神经网络(DNN)分类器提高了性能,但缺乏对其安全漏洞的充分调查,这些漏洞源于无线媒体的开放性和分类器的固有缺陷(例如,对抗性攻击)。为了填补这一空白,我们的目标是研究对基于dnn的wifi手势识别的对抗性攻击,以鼓励适当的对策。我们设计WiAdv来构建物理上可实现的对抗示例来欺骗这些系统。WiAdv采用基于wifi手势识别基本原理的信号合成方案,生成具有所需运动特征的对抗信号;采用黑盒攻击方案,处理中间不可微处理模块导致的扰动空间与分类器输入空间不一致的问题。我们在现实环境中实现并评估了针对具有代表性的最先进系统Widar3.0的攻击策略。实验结果表明,WiAdv生成的对抗性无线信号平均攻击成功率超过70%,并且在不同物理环境下都保持鲁棒性和有效性。我们的攻击案例研究和分析揭示了基于wifi的手势识别系统的脆弱性,我们希望WiAdv能够帮助推动相关系统的完善。
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