论文标题

无线会员推理攻击是针对深度学习无线信号分类器的隐私威胁

Over-the-Air Membership Inference Attacks as Privacy Threats for Deep Learning-based Wireless Signal Classifiers

论文作者

Shi, Yi, Davaslioglu, Kemal, Sagduyu, Yalin E.

论文摘要

本文介绍了如何通过启动无线会员推理攻击(MIA)来泄露无线信号分类器的私人信息。当机器学习(ML)算法用于处理无线信号以做出诸如PHY层身份验证之类的决策,训练数据特征(例如,设备级信息)和环境条件(例如,收集数据的环境条件(例如,收集到的数据)可能会泄漏到ML模型。作为隐私威胁,对手可以使用这些泄漏的信息来利用对抗性ML方法来利用ML模型的漏洞。在本文中,MIA是针对基于深度学习的分类器启动的,该分类器在RF指纹识别的接收信号中使用波形,设备和频道特性(功率和相移)。通过观察频谱,对手首先构建一个替代分类器,然后建立一个推理模型,以确定是否在接收器的培训数据中使用了感兴趣的信号(例如,服务提供商)。然后,感兴趣的信号可以与特定的设备和频道特征相关联,以启动随后的攻击。攻击成功的可能性很高(根据波形和通道条件,超过88%)在识别用于构建目标分类器的感兴趣信号(以及可能的设备和通道信息)中。这些结果表明,由于其ML型号的空中信息泄漏,无线信号分类器容易受到隐私威胁的影响

This paper presents how to leak private information from a wireless signal classifier by launching an over-the-air membership inference attack (MIA). As machine learning (ML) algorithms are used to process wireless signals to make decisions such as PHY-layer authentication, the training data characteristics (e.g., device-level information) and the environment conditions (e.g., channel information) under which the data is collected may leak to the ML model. As a privacy threat, the adversary can use this leaked information to exploit vulnerabilities of the ML model following an adversarial ML approach. In this paper, the MIA is launched against a deep learning-based classifier that uses waveform, device, and channel characteristics (power and phase shifts) in the received signals for RF fingerprinting. By observing the spectrum, the adversary builds first a surrogate classifier and then an inference model to determine whether a signal of interest has been used in the training data of the receiver (e.g., a service provider). The signal of interest can then be associated with particular device and channel characteristics to launch subsequent attacks. The probability of attack success is high (more than 88% depending on waveform and channel conditions) in identifying signals of interest (and potentially the device and channel information) used to build a target classifier. These results show that wireless signal classifiers are vulnerable to privacy threats due to the over-the-air information leakage of their ML models

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