Time-of-flight (ToF) distance measurement devices such as ultrasonics, LiDAR and radar are widely used in autonomous vehicles for environmental perception, navigation and assisted braking control. Despite their relative importance in making safer driving decisions, these devices are vulnerable to multiple attack types including spoofing, triggering and false data injection. When these attacks are successful they can compromise the security of autonomous vehicles leading to severe consequences for the driver, nearby vehicles and pedestrians. To handle these attacks and protect the measurement devices, we propose a spatial-temporal anomaly detection model \textit{STAnDS} which incorporates a residual error spatial detector, with a time-based expected change detection. This approach is evaluated using a simulated quantitative environment and the results show that \textit{STAnDS} is effective at detecting multiple attack types.
翻译:超声波、激光雷达和雷达等飞行时空测量装置被广泛用于自主车辆,用于环境认知、导航和辅助制动控制。尽管这些装置在作出更安全的驾驶决定方面相对重要,但这些装置很容易受到多种攻击类型的影响,包括潜伏、触发和虚假数据注入。当这些攻击成功时,它们可能损害自主车辆的安全,对驾驶员、附近车辆和行人造成严重后果。为了处理这些攻击并保护测量装置,我们提议采用空间时空异常探测模型\textit{STANDS},其中包括一个残留误差空间探测器,并按时间进行预期的变化探测。这种方法是使用模拟定量环境进行评估的,结果显示\textit{STANDS}在探测多种攻击类型方面是有效的。