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Learn to Make Decision with Small Data for Autonomous Driving: Deep Gaussian Process and Feedback Control
2020
Journal of Advanced Transportation
Autonomous driving is a popular and promising field in artificial intelligence. Rapid decision of the next action according to the latest few actions and status, such as acceleration, brake, and steering angle, is a major concern for autonomous driving. There are some learning methods, such as reinforcement learning which automatically learns the decision. However, it usually requires large volume of samples. In this paper, to reduce the sample size, we exploit the deep Gaussian process, where
doi:10.1155/2020/8495264
fatcat:iqr37tuxsne2tps35xazvpt5du