基于LSTM的自动驾驶汽车劫持检测方法

N. Negi, Ons Jelassi, S. Clémençon, S. Fischmeister
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引用次数: 4

摘要

近几十年来,汽车研究一直专注于创造无人驾驶的未来。自动驾驶汽车有望接管对人类来说枯燥、肮脏和危险的任务(机器人化的第三代)。然而,增强的自主性增加了对系统健壮性的依赖。自动驾驶汽车系统非常注重数据采集,以便准确地感知驾驶环境。未来,典型的自动驾驶汽车数据生态系统将包括来自内部传感器、基础设施、与附近车辆的通信以及其他来源的数据。物理故障、恶意攻击或行为不端的车辆都可能导致对环境的错误感知,进而导致任务失败或事故。因此,异常检测有望在提高自动驾驶和互联汽车的安全性和效率方面发挥关键作用。异常检测可以定义为一种识别异常或意外事件和/或测量的方法。在本文中,我们重点研究了恶意攻击/劫持系统导致自动驾驶汽车不可预测的演变的具体案例。我们使用长短期记忆(LSTM)网络进行异常/故障检测。首先,对非异常数据进行训练,以了解系统的基线性能和行为,并通过三个车辆控制参数(即速度、加速度和加速度)进行监测。然后,该模型用于预测未来的许多时间步长,一旦观察到的自动驾驶汽车的行为明显偏离预测,就会发出警报。这种方法的相关性得到了基于自动驾驶汽车模拟器产生的数据的数值实验的支持,该模拟器能够对系统产生攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A LSTM Approach to Detection of Autonomous Vehicle Hijacking
In the recent decades, automotive research has been focused on creating a driverless future. Autonomous vehicles are expected to take over tasks which are dull, dirty and dangerous for humans (3Ds of robotization). However, augmented autonomy increases reliance on the robustness of the system. Autonomous vehicle systems are heavily focused on data acquisition in order to perceive the driving environment accurately. In the future, a typical autonomous vehicle data ecosystem will include data from internal sensors, infrastructure, communication with nearby vehicles, and other sources. Physical faults, malicious attacks or a misbehaving vehicle can result in the incorrect perception of the environment, which can in turn lead to task failure or accidents. Anomaly detection is hence expected to play a critical role improving the security and efficiency of autonomous and connected vehicles. Anomaly detection can be defined as a way of identifying unusual or unexpected events and/or measurements. In this paper, we focus on the specific case of malicious attack/hijacking of the system which results in unpredictable evolution of the autonomous vehicle. We use a Long Short-Term Memory (LSTM) network for anomaly/fault detection. It is, first, trained on non-abnormal data to understand the system’s baseline performance and behaviour, monitored through three vehicle control parameters namely velocity, acceleration and jerk. Then, the model is used to predict over a number of future time steps and an alarm is raised as soon as the observed behaviour of the autonomous car significantly deviates from the prediction. The relevance of this approach is supported by numerical experiments based on data produced by an autonomous car simulator, capable of generating attacks on the system.
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