Jinghan Yang, Andew Estornell, Yevgeniy Vorobeychik (Washington University in St. Louis)

A common vision for large-scale autonomous vehicle deployment is in a ride-hailing context. While this promises tremendous societal benefits, large-scale deployment can also exacerbate the impact of potential vulnerabilities of autonomous vehicle technologies. One particularly concerning vulnerability demonstrated in recent security research involves GPS spoofing, whereby a malicious party can introduce significant error into the perceived location of the vehicle. However, such attack focus on a single target vehicle. Our goal is to understand the systemic impact of a limited number of carefully placed spoofing devices on the quality of the ride hailing service that employs a large number of autonomous vehicles. We consider two variants of this problem: 1) a static variant, in which the spoofing device locations and their configuration are fixed, and 2) a dynamic variant, where both the spoofing devices and their configuration can change over time. In addition, we consider two possible attack objectives: 1) to maximize overall travel delay, and 2) to minimize the number of successfully completed requests (dropping off passengers at the wrong destinations). First, we show that the problem is NP-hard even in the static case. Next, we present an integer linear programming approach for solving the static variant of the problem, as well as a novel deep reinforcement learning approach for the dynamic variant. Our experiments on a real traffic network demonstrate that the proposed attacks on autonomous fleets are highly successful, and even a few spoofing devices can significantly degrade the efficacy of an autonomous ride-hailing fleet.

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DOITRUST: Dissecting On-chain Compromised Internet Domains via Graph Learning

Shuo Wang (CSIRO's Data61 & Cybersecurity CRC, Australia), Mahathir Almashor (CSIRO's Data61 & Cybersecurity CRC, Australia), Alsharif Abuadbba (CSIRO's Data61 & Cybersecurity CRC, Australia), Ruoxi Sun (CSIRO's Data61), Minhui Xue (CSIRO's Data61), Calvin Wang (CSIRO's Data61), Raj Gaire (CSIRO's Data61 & Cybersecurity CRC, Australia), Surya Nepal (CSIRO's Data61 & Cybersecurity CRC, Australia), Seyit Camtepe (CSIRO's…

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Lightning Community Shout-Outs to:

(1) Jonathan Petit, Secure ML Performance Benchmark (Qualcomm) (2) David Balenson, The Road to Future Automotive Research Datasets: PIVOT Project and Community Workshop (USC Information Sciences Institute) (3) Jeremy Daily, CyberX Challenge Events (Colorado State University) (4) Mert D. Pesé, DETROIT: Data Collection, Translation and Sharing for Rapid Vehicular App Development (Clemson University) (5) Ning…

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REaaS: Enabling Adversarially Robust Downstream Classifiers via Robust Encoder...

Wenjie Qu (Huazhong University of Science and Technology), Jinyuan Jia (University of Illinois Urbana-Champaign), Neil Zhenqiang Gong (Duke University)

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