论文标题
传感器数据验证和自动驾驶系统中的驾驶安全
Sensor Data Validation and Driving Safety in Autonomous Driving Systems
论文作者
论文摘要
自主驾驶技术由于其快速发展和极高的商业价值引起了很多关注。自动驾驶的最新技术飞跃主要归因于环境感知的进步。良好的环境感知提供了准确的高级环境信息,这对于自动驾驶汽车制定安全,精确的驾驶决策和策略至关重要。此外,如果没有深度学习模型和高级登机传感器,例如光学传感器(激光雷达和相机),雷达,GPS,不可能在准确的环境感知中进行这种进展。但是,高级传感器和深度学习模型容易出现最近发明的攻击方法。例如,光发作可能会损害激光镜头和摄像头,而深度学习模型可以受到对抗性示例的攻击。对高级传感器和深度学习模型的攻击在很大程度上会影响环境感知的准确性,从而对自动驾驶汽车的安全和安全构成了巨大威胁。在本论文中,我们研究了针对对车载传感器攻击的检测方法,以及攻击深度学习模型与自动驾驶汽车的安全性之间的联系。为了检测攻击,可以利用冗余数据源,因为受害者传感器数据中攻击引起的信息扭曲导致与其他冗余源的信息不一致。研究攻击深度学习模型与推动安全性之间的联系...
Autonomous driving technology has drawn a lot of attention due to its fast development and extremely high commercial values. The recent technological leap of autonomous driving can be primarily attributed to the progress in the environment perception. Good environment perception provides accurate high-level environment information which is essential for autonomous vehicles to make safe and precise driving decisions and strategies. Moreover, such progress in accurate environment perception would not be possible without deep learning models and advanced onboard sensors, such as optical sensors (LiDARs and cameras), radars, GPS. However, the advanced sensors and deep learning models are prone to recently invented attack methods. For example, LiDARs and cameras can be compromised by optical attacks, and deep learning models can be attacked by adversarial examples. The attacks on advanced sensors and deep learning models can largely impact the accuracy of the environment perception, posing great threats to the safety and security of autonomous vehicles. In this thesis, we study the detection methods against the attacks on onboard sensors and the linkage between attacked deep learning models and driving safety for autonomous vehicles. To detect the attacks, redundant data sources can be exploited, since information distortions caused by attacks in victim sensor data result in inconsistency with the information from other redundant sources. To study the linkage between attacked deep learning models and driving safety...