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Less is More: Efficient Brain-Inspired Learning for Autonomous Driving Trajectory Prediction

Authors :
Liao, Haicheng
Li, Yongkang
Li, Zhenning
Wang, Chengyue
Tian, Chunlin
Huang, Yuming
Bian, Zilin
Zhu, Kaiqun
Li, Guofa
Pu, Ziyuan
Hu, Jia
Cui, Zhiyong
Xu, Chengzhong
Publication Year :
2024

Abstract

Accurately and safely predicting the trajectories of surrounding vehicles is essential for fully realizing autonomous driving (AD). This paper presents the Human-Like Trajectory Prediction model (HLTP++), which emulates human cognitive processes to improve trajectory prediction in AD. HLTP++ incorporates a novel teacher-student knowledge distillation framework. The "teacher" model equipped with an adaptive visual sector, mimics the dynamic allocation of attention human drivers exhibit based on factors like spatial orientation, proximity, and driving speed. On the other hand, the "student" model focuses on real-time interaction and human decision-making, drawing parallels to the human memory storage mechanism. Furthermore, we improve the model's efficiency by introducing a new Fourier Adaptive Spike Neural Network (FA-SNN), allowing for faster and more precise predictions with fewer parameters. Evaluated using the NGSIM, HighD, and MoCAD benchmarks, HLTP++ demonstrates superior performance compared to existing models, which reduces the predicted trajectory error with over 11% on the NGSIM dataset and 25% on the HighD datasets. Moreover, HLTP++ demonstrates strong adaptability in challenging environments with incomplete input data. This marks a significant stride in the journey towards fully AD systems.<br />Comment: arXiv admin note: substantial text overlap with arXiv:2402.19251

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.07020
Document Type :
Working Paper