SoundFence: Securing Ultrasonic Sensors in Vehicles Using Physical-Layer Defense

Jianzhi Lou, Qiben Yan, Qing Hui, Huacheng Zeng
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引用次数: 1

Abstract

Autonomous vehicles (AVs), equipped with numerous sensors such as camera, LiDAR, radar, and ultrasonic sensor, are revolutionizing the transportation industry. These sensors are expected to sense reliable information from a physical environment, facilitating the critical decision-making process of the AVs. Ultrasonic sensors, which detect obstacles in a short distance, play an important role in assisted parking and blind spot detection events. However, due to their weak security level, ultrasonic sensors are particularly vulnerable to signal injection attacks, when the attackers inject malicious acoustic signals to create fake obstacles and intentionally mislead the vehicles to make wrong decisions with disastrous aftermath. In this paper, we systematically analyze the attack model of signal injection attacks toward moving vehicles. By considering the potential threats, we propose SoundFence, a physical-layer defense system which leverages the sensors’ signal processing capability without requiring any additional equipment. SoundFence verifies the benign measurement results and detects signal injection attacks by analyzing sensor readings and the physical-layer signatures of ultrasonic signals. Our experiment with commercial sensors shows that SoundFence detects most (more than 95%) of the abnormal sensor readings with very few false alarms, and it can also accurately distinguish the real echo from injected signals to identify injection attacks.
隔音栅栏:使用物理层防御保护车辆中的超声波传感器
自动驾驶汽车(AVs)配备了摄像头、激光雷达、雷达和超声波传感器等众多传感器,正在彻底改变交通运输行业。这些传感器有望从物理环境中感知可靠信息,促进自动驾驶汽车的关键决策过程。超声波传感器能够探测近距离障碍物,在辅助泊车和盲点检测事件中发挥着重要作用。然而,由于超声波传感器的安全级别较低,它特别容易受到信号注入攻击,攻击者会注入恶意的声学信号,制造假障碍物,故意误导车辆做出错误的决策,造成灾难性的后果。本文系统地分析了针对移动车辆的信号注入攻击的攻击模型。考虑到潜在的威胁,我们提出了SoundFence,一种利用传感器信号处理能力而不需要任何额外设备的物理层防御系统。SoundFence通过分析传感器读数和超声波信号的物理层特征来验证良性测量结果并检测信号注入攻击。我们对商用传感器的实验表明,SoundFence检测到大多数(95%以上)的异常传感器读数,并且很少有误报,并且它还可以准确地区分真实回波和注入信号,以识别注入攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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