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 (*co-first authors)

TL;DR
This paper investigates the security vulnerabilities of multi-sensor fusion in autonomous driving perception systems by demonstrating a physical-world attack that can cause complete vehicle collisions, challenging the assumption of inherent robustness.
Contribution
It is the first to analyze security of MSF-based perception in AD, formulating a novel attack that can simultaneously target all fusion sources and demonstrating its effectiveness in real-world scenarios.
Findings
Over 90% attack success rate across different MSF systems
Attack is stealthy, transferable, and physically realizable
Can cause 100% vehicle collision rate in simulations
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…
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