Invisible for both Camera and LiDAR: Security of Multi-Sensor Fusion based Perception in Autonomous Driving Under Physical-World Attacks

Yulong Cao, Ningfei Wang, Chaowei Xiao, Dawei Yang, Jin Fang, Ruigang Yang, Qi Alfred Chen, Mingyan Liu, Bo Li
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引用次数: 110

Abstract

In Autonomous Driving (AD) systems, perception is both security and safety critical. Despite various prior studies on its security issues, all of them only consider attacks on camera-or LiDAR-based AD perception alone. However, production AD systems today predominantly adopt a Multi-Sensor Fusion (MSF) based design, which in principle can be more robust against these attacks under the assumption that not all fusion sources are (or can be) attacked at the same time. In this paper, we present the first study of security issues of MSF-based perception in AD systems. We directly challenge the basic MSF design assumption above by exploring the possibility of attacking all fusion sources simultaneously. This allows us for the first time to understand how much security guarantee MSF can fundamentally provide as a general defense strategy for AD perception.We formulate the attack as an optimization problem to generate a physically-realizable, adversarial 3D-printed object that misleads an AD system to fail in detecting it and thus crash into it. To systematically generate such a physical-world attack, we propose a novel attack pipeline that addresses two main design challenges: (1) non-differentiable target camera and LiDAR sensing systems, and (2) non-differentiable cell-level aggregated features popularly used in LiDAR-based AD perception. We evaluate our attack on MSF algorithms included in representative open-source industry-grade AD systems in real-world driving scenarios. Our results show that the attack achieves over 90% success rate across different object types and MSF algorithms. Our attack is also found stealthy, robust to victim positions, transferable across MSF algorithms, and physical-world realizable after being 3D-printed and captured by LiDAR and camera devices. To concretely assess the end-to-end safety impact, we further perform simulation evaluation and show that it can cause a 100% vehicle collision rate for an industry-grade AD system. We also evaluate and discuss defense strategies.
摄像头和激光雷达隐身:物理世界攻击下自动驾驶中基于多传感器融合感知的安全性
在自动驾驶(AD)系统中,感知对安全性和安全性都至关重要。尽管之前有各种关于其安全问题的研究,但它们都只考虑了对基于摄像头或激光雷达的AD感知的攻击。然而,今天的生产AD系统主要采用基于多传感器融合(MSF)的设计,在假设并非所有融合源同时受到(或可以)攻击的情况下,原则上可以更健壮地抵御这些攻击。在本文中,我们提出了基于msf感知的AD系统安全问题的第一个研究。我们通过探索同时攻击所有聚变源的可能性,直接挑战上述基本的MSF设计假设。这让我们第一次了解到MSF可以从根本上提供多少安全保证,作为AD感知的一般防御策略。我们将攻击描述为一个优化问题,以生成一个物理上可实现的,对抗性的3d打印对象,误导AD系统在检测它时失败,从而撞到它。为了系统地产生这样的物理世界攻击,我们提出了一种新的攻击管道,解决了两个主要的设计挑战:(1)不可微分的目标相机和LiDAR传感系统,以及(2)不可微分的细胞级聚合特征,这些特征普遍用于基于LiDAR的AD感知。我们评估了我们对MSF算法的攻击,这些算法包含在真实驾驶场景中的代表性开源工业级AD系统中。我们的研究结果表明,在不同的对象类型和MSF算法下,攻击成功率超过90%。我们的攻击还被发现是隐形的,对受害者的位置具有鲁强性,可跨MSF算法转移,并且在3d打印并被激光雷达和相机设备捕获后可在物理世界中实现。为了具体评估端到端安全影响,我们进一步进行了仿真评估,并表明它可以使工业级AD系统的车辆碰撞率达到100%。我们也评估和讨论防御策略。
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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