Automotive Engineering ›› 2022, Vol. 44 ›› Issue (5): 675-683.doi: 10.19562/j.chinasae.qcgc.2022.05.004
Special Issue: 智能网联汽车技术专题-感知&HMI&测评2022年
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Zheyu Zhang,Lü Chao(),Jinghang Li,Guangming Xiong,Shaobin Wu,Jianwei Gong
Received:
2021-11-02
Revised:
2021-12-15
Online:
2022-05-25
Published:
2022-05-27
Contact:
Lü Chao
E-mail:chaolu@bit.edu.cn
Zheyu Zhang,Lü Chao,Jinghang Li,Guangming Xiong,Shaobin Wu,Jianwei Gong. Pedestrian Trajectory Prediction and Risk Grade Assessment Based on Vehicle-Perspective Pedestrian Data[J].Automotive Engineering, 2022, 44(5): 675-683.
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