论文标题
对自动驾驶汽车的强劲感知:对抗性的观点
Towards robust sensing for Autonomous Vehicles: An adversarial perspective
论文作者
论文摘要
自动驾驶汽车依靠准确,强大的传感器观测值在各种条件下进行安全临界决策。此类系统的基本构件是处理超声,雷达,GPS,LIDAR和相机信号的传感器和分类器〜\ cite {Khan2018}。最重要的是,由此产生的决策对扰动是可靠的,这可以采用不同类型的滋扰和数据转换的形式,甚至可以是对抗性扰动(APS)。对抗性扰动是对环境或感官测量的有目的修改,目的是攻击和击败自主系统。为了在AV的快速发展域中构建和部署更安全的系统,需要仔细评估其传感系统的漏洞。为此,我们调查了对抗性环境中感应的新兴领域:在审查了对自主系统的感应方式的对抗性攻击之后,我们讨论了对策并提出未来的研究方向。
Autonomous Vehicles rely on accurate and robust sensor observations for safety critical decision-making in a variety of conditions. Fundamental building blocks of such systems are sensors and classifiers that process ultrasound, RADAR, GPS, LiDAR and camera signals~\cite{Khan2018}. It is of primary importance that the resulting decisions are robust to perturbations, which can take the form of different types of nuisances and data transformations, and can even be adversarial perturbations (APs). Adversarial perturbations are purposefully crafted alterations of the environment or of the sensory measurements, with the objective of attacking and defeating the autonomous systems. A careful evaluation of the vulnerabilities of their sensing system(s) is necessary in order to build and deploy safer systems in the fast-evolving domain of AVs. To this end, we survey the emerging field of sensing in adversarial settings: after reviewing adversarial attacks on sensing modalities for autonomous systems, we discuss countermeasures and present future research directions.