Securing Autonomous Vehicles Under Partial-Information Cyber Attacks on LiDAR Data

03/06/2023
by   R. Spencer Hallyburton, et al.
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Safety is paramount in autonomous vehicles (AVs). Auto manufacturers have spent millions of dollars and driven billions of miles to prove AVs are safe. However, this is ill-suited to answer: what happens to an AV if its data are adversarially compromised? We design a framework built on security-relevant metrics to benchmark AVs on longitudinal datasets. We establish the capabilities of a cyber-level attacker with only access to LiDAR datagrams and from them derive novel attacks on LiDAR. We demonstrate that even though the attacker has minimal knowledge and only access to raw datagrams, the attacks compromise perception and tracking in multi-sensor AVs and lead to objectively unsafe scenarios. To mitigate vulnerabilities and advance secure architectures in AVs, we present two improvements for security-aware fusion – a data-asymmetry monitor and a scalable track-to-track fusion of 3D LiDAR and monocular detections (T2T-3DLM); we demonstrate that the approaches significantly reduce the attack effectiveness.

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