CRLGSYJun 13, 2021

Security Analysis of Camera-LiDAR Fusion Against Black-Box Attacks on Autonomous Vehicles

arXiv:2106.07098v490 citations
Originality Highly original
AI Analysis

This addresses security vulnerabilities in sensor fusion for autonomous vehicles, revealing a critical new attack vector that could impact safety.

The paper analyzed camera-LiDAR fusion in autonomous vehicles under LiDAR spoofing attacks, showing that existing attacks fail against fusion but a novel frustum attack significantly compromises all tested perception algorithms and can stealthily disrupt tracking and control.

To enable safe and reliable decision-making, autonomous vehicles (AVs) feed sensor data to perception algorithms to understand the environment. Sensor fusion with multi-frame tracking is becoming increasingly popular for detecting 3D objects. Thus, in this work, we perform an analysis of camera-LiDAR fusion, in the AV context, under LiDAR spoofing attacks. Recently, LiDAR-only perception was shown vulnerable to LiDAR spoofing attacks; however, we demonstrate these attacks are not capable of disrupting camera-LiDAR fusion. We then define a novel, context-aware attack: frustum attack, and show that out of 8 widely used perception algorithms - across 3 architectures of LiDAR-only and 3 architectures of camera-LiDAR fusion - all are significantly vulnerable to the frustum attack. In addition, we demonstrate that the frustum attack is stealthy to existing defenses against LiDAR spoofing as it preserves consistencies between camera and LiDAR semantics. Finally, we show that the frustum attack can be exercised consistently over time to form stealthy longitudinal attack sequences, compromising the tracking module and creating adverse outcomes on end-to-end AV control.

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