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Evaluating Adversarial Evasion Attacks in the Context of Wireless Communications

机译:在无线通信环境中评估对抗性躲避攻击

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摘要

Recent advancements in radio frequency machine learning (RFML) have demonstrated the use of raw in-phase and quadrature (IQ) samples for multiple spectrum sensing tasks. Yet, deep learning techniques have been shown, in other applications, to be vulnerable to adversarial machine learning (ML) techniques, which seek to craft small perturbations that are added to the input to cause a misclassification. The current work differentiates the threats that adversarial ML poses to RFML systems based on where the attack is executed from: direct access to classifier input, synchronously transmitted over the air (OTA), or asynchronously transmitted from a separate device. Additionally, the current work develops a methodology for evaluating adversarial success in the context of wireless communications, where the primary metric of interest is bit error rate and not human perception, as is the case in image recognition. The methodology is demonstrated using the well known Fast Gradient Sign Method to evaluate the vulnerabilities of raw IQ based Automatic Modulation Classification and concludes RFML is vulnerable to adversarial examples, even in OTA attacks. However, RFML domain specific receiver effects, which would be encountered in an OTA attack, can present significant impairments to adversarial evasion.
机译:射频机器学习(RFML)的最新进展表明,已将原始同相和正交(IQ)样本用于多个频谱感测任务。但是,在其他应用程序中,深度学习技术已显示出容易受到对抗性机器学习(ML)技术的攻击,而对抗性机器学习(ML)技术力求制造出添加到输入中的小扰动,从而导致分类错误。当前的工作根据执行攻击的位置来区分对抗性ML对RFML系统的威胁:直接访问分类器输入,空中同步传输(OTA)或从单独设备异步传输。另外,当前的工作开发了一种在无线通信环境中评估对抗性成功的方法,其中主要的关注指标是误码率,而不是人的感知,就像图像识别一样。使用众所周知的快速梯度符号法来评估该方法论,以评估基于原始IQ的自动调制分类的漏洞,并得出结论,即使在OTA攻击中,RFML也容易受到对抗性示例的攻击。但是,在OTA攻击中可能会遇到RFML域特定的接收器影响,这可能会严重损害对手的逃避行为。

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