2021
DOI: 10.48550/arxiv.2109.10557
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A Reinforcement Learning Benchmark for Autonomous Driving in Intersection Scenarios

Abstract: In recent years, control under urban intersection scenarios becomes an emerging research topic. In such scenarios, the autonomous vehicle confronts complicated situations since it must deal with the interaction with social vehicles timely while obeying the traffic rules. Generally, the autonomous vehicle is supposed to avoid collisions while pursuing better efficiency. The existing work fails to provide a framework that emphasizes the integrity of the scenarios while being able to deploy and test reinforcement… Show more

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