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Towards Safe Autonomous Driving: Decision Making with Observation-Robust Reinforcement Learning

Xiangkun He, Chen Lv

2023Automotive Innovation36 citationsDOIOpen Access PDF

Abstract

Abstract Most real-world situations involve unavoidable measurement noises or perception errors which result in unsafe decision making or even casualty in autonomous driving. To address these issues and further improve safety, automated driving is required to be capable of handling perception uncertainties. Here, this paper presents an observation-robust reinforcement learning against observational uncertainties to realize safe decision making for autonomous vehicles. Specifically, an adversarial agent is trained online to generate optimal adversarial attacks on observations, which attempts to amplify the average variation distance on perturbed policies. In addition, an observation-robust actor-critic approach is developed to enable the agent to learn the optimal policies and ensure that the changes of the policies perturbed by optimal adversarial attacks remain within a certain bound. Lastly, the safe decision making scheme is evaluated on a lane change task under complex highway traffic scenarios. The results show that the developed approach can ensure autonomous driving performance, as well as the policy robustness against adversarial attacks on observations.

Topics & Concepts

Reinforcement learningAdversarial systemRobustness (evolution)Computer sciencePerceptionArtificial intelligenceTask (project management)Autonomous agentComputer securityMachine learningEngineeringBiochemistryBiologyGeneNeuroscienceChemistrySystems engineeringAdversarial Robustness in Machine LearningAutonomous Vehicle Technology and SafetyTraffic control and management