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WiseMove: A Framework for Safe Deep Reinforcement Learning for Autonomous Driving

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arxiv 1902.04118 v1 pith:KKBB7ARN submitted 2019-02-11 cs.LG cs.NEcs.PFstat.ML

WiseMove: A Framework for Safe Deep Reinforcement Learning for Autonomous Driving

classification cs.LG cs.NEcs.PFstat.ML
keywords learningwisemoveautonomousdrivingsafedeepframeworkquestions
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Machine learning can provide efficient solutions to the complex problems encountered in autonomous driving, but ensuring their safety remains a challenge. A number of authors have attempted to address this issue, but there are few publicly-available tools to adequately explore the trade-offs between functionality, scalability, and safety. We thus present WiseMove, a software framework to investigate safe deep reinforcement learning in the context of motion planning for autonomous driving. WiseMove adopts a modular learning architecture that suits our current research questions and can be adapted to new technologies and new questions. We present the details of WiseMove, demonstrate its use on a common traffic scenario, and describe how we use it in our ongoing safe learning research.

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