TY - GEN
T1 - On Data Fabrication in Collaborative Vehicular Perception
T2 - 33rd USENIX Security Symposium, USENIX Security 2024
AU - Zhang, Qingzhao
AU - Jin, Shuowei
AU - Zhu, Ruiyang
AU - Sun, Jiachen
AU - Zhang, Xumiao
AU - Chen, Qi Alfred
AU - Mao, Z. Morley
N1 - Publisher Copyright:
© USENIX Security Symposium 2024.All rights reserved.
PY - 2024
Y1 - 2024
N2 - Collaborative perception, which greatly enhances the sensing capability of connected and autonomous vehicles (CAVs) by incorporating data from external resources, also brings forth potential security risks. CAVs' driving decisions rely on remote untrusted data, making them susceptible to attacks carried out by malicious participants in the collaborative perception system. However, security analysis and countermeasures for such threats are absent. To understand the impact of the vulnerability, we break the ground by proposing various real-time data fabrication attacks in which the attacker delivers crafted malicious data to victims in order to perturb their perception results, leading to hard brakes or increased collision risks. Our attacks demonstrate a high success rate of over 86% on high-fidelity simulated scenarios and are realizable in real-world experiments. To mitigate the vulnerability, we present a systematic anomaly detection approach that enables benign vehicles to jointly reveal malicious fabrication. It detects 91.5% of attacks with a false positive rate of 3% in simulated scenarios and significantly mitigates attack impacts in real-world scenarios.
AB - Collaborative perception, which greatly enhances the sensing capability of connected and autonomous vehicles (CAVs) by incorporating data from external resources, also brings forth potential security risks. CAVs' driving decisions rely on remote untrusted data, making them susceptible to attacks carried out by malicious participants in the collaborative perception system. However, security analysis and countermeasures for such threats are absent. To understand the impact of the vulnerability, we break the ground by proposing various real-time data fabrication attacks in which the attacker delivers crafted malicious data to victims in order to perturb their perception results, leading to hard brakes or increased collision risks. Our attacks demonstrate a high success rate of over 86% on high-fidelity simulated scenarios and are realizable in real-world experiments. To mitigate the vulnerability, we present a systematic anomaly detection approach that enables benign vehicles to jointly reveal malicious fabrication. It detects 91.5% of attacks with a false positive rate of 3% in simulated scenarios and significantly mitigates attack impacts in real-world scenarios.
UR - https://www.scopus.com/pages/publications/85201278496
UR - https://www.scopus.com/pages/publications/85201278496#tab=citedBy
M3 - Conference contribution
AN - SCOPUS:85201278496
T3 - Proceedings of the 33rd USENIX Security Symposium
SP - 6309
EP - 6326
BT - Proceedings of the 33rd USENIX Security Symposium
PB - USENIX Association
Y2 - 14 August 2024 through 16 August 2024
ER -