自动编码机器人状态对抗传感器欺骗攻击

Sean Rivera, S. Lagraa, Antonio Ken Iannillo, R. State
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引用次数: 5

摘要

在机器人系统中,物理世界与网络空间高度结合。新的威胁影响网络物理系统,因为它们依赖几个传感器来执行关键操作。最敏感的目标是它们的定位系统,欺骗攻击可以迫使机器人做出错误的行为。在本文中,我们提出了一种新的基于自编码器架构的传感器欺骗攻击异常检测方法。经过初始训练后,检测算法通过计算重构误差直接对压缩后的数据进行处理。我们专注于光探测和测距(LiDAR)系统的欺骗攻击。我们针对几种类型的欺骗攻击测试了我们的异常检测方法,比较了四种不同的自编码器压缩率。我们的方法在83%的压缩率下具有99%的真阳性率和10%的假阴性率。然而,41%的压缩率可以在使用一半数据的情况下处理几乎所有相同的攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Auto-Encoding Robot State Against Sensor Spoofing Attacks
In robotic systems, the physical world is highly coupled with cyberspace. New threats affect cyber-physical systems as they rely on several sensors to perform critical operations. The most sensitive targets are their location systems, where spoofing attacks can force robots to behave incorrectly. In this paper, we propose a novel anomaly detection approach for sensor spoofing attacks, based on an auto-encoder architecture. After initial training, the detection algorithm works directly on the compressed data by computing the reconstruction errors. We focus on spoofing attacks on Light Detection and Ranging (LiDAR) systems. We tested our anomaly detection approach against several types of spoofing attacks comparing four different compression rates for the auto-encoder. Our approach has a 99% True Positive rate and a 10% False Negative rate for the 83% compression rate. However, a compression rate of 41% could handle almost all of the same attacks while using half the data.
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