2022
DOI: 10.48550/arxiv.2202.08557
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CADRE: A Cascade Deep Reinforcement Learning Framework for Vision-based Autonomous Urban Driving

Abstract: Vision-based autonomous urban driving in dense traffic is quite challenging due to the complicated urban environment and the dynamics of the driving behaviors. Widely-applied methods either heavily rely on hand-crafted rules or learn from limited human experience, which makes them hard to generalize to rare but critical scenarios. In this paper, we present a novel CAscade Deep REinforcement learning framework, CADRE, to achieve model-free vision-based autonomous urban driving. In CADRE, to derive representativ… Show more

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