作者
Huiqian Li, Jin Huang, Zhong Cao, Diange Yang, Zhihua Zhong
发表日期
2023/1
期刊
Frontiers of Information Technology & Electronic Engineering
卷号
24
期号
1
页码范围
131-140
出版商
Zhejiang University Press
简介
Ensuring the safety of pedestrians is essential and challenging when autonomous vehicles are involved. Classical pedestrian avoidance strategies cannot handle uncertainty, and learning-based methods lack performance guarantees. In this paper we propose a hybrid reinforcement learning (HRL) approach for autonomous vehicles to safely interact with pedestrians behaving uncertainly. The method integrates the rule-based strategy and reinforcement learning strategy. The confidence of both strategies is evaluated using the data recorded in the training process. Then we design an activation function to select the final policy with higher confidence. In this way, we can guarantee that the final policy performance is not worse than that of the rule-based policy. To demonstrate the effectiveness of the proposed method, we validate it in simulation using an accelerated testing technique to generate stochastic …
引用总数
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H Li, J Huang, Z Cao, D Yang, Z Zhong - Frontiers of Information Technology & Electronic …, 2023