作者
Guofa Li, Shenglong Li, Shen Li, Yechen Qin, Dongpu Cao, Xingda Qu, Bo Cheng
发表日期
2020/12
期刊
Automotive Innovation
卷号
3
期号
4
页码范围
374-385
出版商
Springer Singapore
简介
Road intersection is one of the most complex and accident-prone traffic scenarios, so it’s challenging for autonomous vehicles (AVs) to make safe and efficient decisions at the intersections. Most of the related studies focus on the solution to a single scenario or only guarantee safety without considering driving efficiency. To address these problems, this study proposed a deep reinforcement learning enabled decision-making framework for AVs to drive through intersections automatically, safely and efficiently. The mapping relationship between traffic images and vehicle operations was obtained by an end-to-end decision-making framework established by convolutional neural networks. Traffic images collected at two timesteps were used to calculate the relative velocity between vehicles. Markov decision process was employed to model the interaction between AVs and other vehicles, and the deep Q …
引用总数
2020202120222023202411319289
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