2021
DOI: 10.32920/17313137.v1
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Safe Driving Of Autonomous Vehicles Through Improved Deep Reinforcement Learning

Abstract: In this thesis, we propose an environment perception framework for autonomous driving using deep reinforcement learning (DRL) that exhibits learning in autonomous vehicles under complex interactions with the environment, without being explicitly trained on driving datasets. Unlike existing techniques, our proposed technique takes the learning loss into account under deterministic as well as stochastic policy gradient. We apply DRL to object detection and safe navigation while enhancing a self-driving vehicle’s… Show more

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References 70 publications
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