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2024 | OriginalPaper | Chapter

Investigating Adversarial Policy Learning for Robust Agents in Automated Driving Highway Simulations

Authors : Alessandro Pighetti, Francesco Bellotti, Changjae Oh, Luca Lazzaroni, Luca Forneris, Matteo Fresta, Riccardo Berta

Published in: Applications in Electronics Pervading Industry, Environment and Society

Publisher: Springer Nature Switzerland

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Abstract

This research explores an emerging approach, the adversarial policy learning paradigm, that aims to increase safety and robustness in deep reinforcement learning models for automated driving. We propose an iterative procedure to train an adversarial agent acting in a highway-simulated environment to attack a victim agent that is to be improved. Each training iteration consists of two phases. The adversarial agent is first trained to disrupt the victim-agent policy. The victim model is then trained to overcome the defects observed by the attack from the adversarial agent. The experimental results demonstrate that the victim agent trained with adversarial attacks outperforms the original agent.

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Literature
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Metadata
Title
Investigating Adversarial Policy Learning for Robust Agents in Automated Driving Highway Simulations
Authors
Alessandro Pighetti
Francesco Bellotti
Changjae Oh
Luca Lazzaroni
Luca Forneris
Matteo Fresta
Riccardo Berta
Copyright Year
2024
DOI
https://doi.org/10.1007/978-3-031-48121-5_18