Singapore Institute of Technology
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Effects of Learning-Based Action-Space Attacks on Autonomous Driving Agents

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conference contribution
posted on 2023-11-07, 04:03 authored by Yuting Wu, Xin LouXin Lou, Pengfei Zhou, Rui Tan, Zbigniew Kalbarczyk, Ravishankar Iyer
<p dir="ltr">Vehicle cybernation with increasing use of information and communication technologies faces cybersecurity threats. This extended abstract studies action-space attacks on autonomous driving agents that make decisions using either a traditional modular processing pipeline or the recently proposed end-to-end model obtained via deep reinforcement learning (DRL). The action-space attacks alter the actuation signal and pose direct risks to the vehicle’s behavior. We formulate the attack construction as a DRL problem based on the input from either an extra camera or inertial measurement unit deployed. Attacks are designed to lurk until a safety-critical moment arises (e.g. lane changing or overtaking), with the goal of causing a side collision upon activation. Our results demonstrate that the modular processing pipeline is more resilient than the DRL-based agent, due to the former’s main focus of trajectory following. We further investigate two enhancement methods: adversarial training through fine-tuning and progressive neural networks, gaining an essential understanding of their pros and cons</p>

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Journal/Conference/Book title

Proceedings of the ACM/IEEE 14th International Conference on Cyber-Physical Systems (with CPS-IoT Week 2023)

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2023-05-09

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  • Published

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