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arxiv 2104.03807 v1 pith:4BJWDAZX submitted 2021-04-08 cs.CV cs.AI

A Bayesian Approach to Reinforcement Learning of Vision-Based Vehicular Control

classification cs.CV cs.AI
keywords systeminputestimatedlearningtrainingapproachbayesianbenchmark
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we present a state-of-the-art reinforcement learning method for autonomous driving. Our approach employs temporal difference learning in a Bayesian framework to learn vehicle control signals from sensor data. The agent has access to images from a forward facing camera, which are preprocessed to generate semantic segmentation maps. We trained our system using both ground truth and estimated semantic segmentation input. Based on our observations from a large set of experiments, we conclude that training the system on ground truth input data leads to better performance than training the system on estimated input even if estimated input is used for evaluation. The system is trained and evaluated in a realistic simulated urban environment using the CARLA simulator. The simulator also contains a benchmark that allows for comparing to other systems and methods. The required training time of the system is shown to be lower and the performance on the benchmark superior to competing approaches.

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