A Hierarchical LSTM-Based Vehicle Trajectory Prediction Method Considering Interaction Information

被引:12
作者
Min, Haitao [1 ]
Xiong, Xiaoyong [1 ]
Wang, Pengyu [1 ]
Zhang, Zhaopu [1 ]
机构
[1] Jilin Univ, State Key Lab Automot Simulat & Control, Changchun 130012, Peoples R China
关键词
Autonomous vehicles; Trajectory prediction; Long Short-Term Memory; Driving intention prediction; NEURAL-NETWORK; MODEL;
D O I
10.1007/s42154-023-00261-0
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Trajectory prediction is an essential component in autonomous driving systems, as it can forecast the future movements of surrounding vehicles, thereby enhancing the decision-making and planning capabilities of autonomous driving systems. Traditional models relying on constant acceleration and constant velocity often experience a reduction in prediction accuracy as the forecasted timeframe extends. This limitation makes it challenging to meet the demands for medium to long-term trajectory prediction. Conversely, data-driven models, particularly those based on Long Short-Term Memory (LSTM) neural networks, have demonstrated superior performance in medium to long-term trajectory prediction. Therefore, this study introduces a hierarchical LSTM-based method for vehicle trajectory prediction. Considering the difficulty of using a single LSTM model to predict trajectories for all driving intentions, the trajectory prediction task is decomposed into three sequential steps: driving intention prediction, lane change time prediction, and trajectory prediction. Furthermore, given that the driving intent and trajectory of a vehicle are always subject to the influence of the surrounding traffic flow, the predictive model proposed in this paper incorporates the interactional information of neighboring vehicle movements into the model input. The proposed method is trained and validated on the real vehicle trajectory dataset Next Generation Simulation. The results show that the proposed hierarchical LSTM method has a lower prediction error compared to the integral LSTM model.
引用
收藏
页码:71 / 81
页数:11
相关论文
共 37 条
[11]  
Gers F., 2001, Long Short-Term Memory in Recurrent Neural Networks
[12]  
Graves A, 2012, STUD COMPUT INTELL, V385, P1, DOI [10.1162/neco.1997.9.1.1, 10.1007/978-3-642-24797-2]
[13]   LSTM: A Search Space Odyssey [J].
Greff, Klaus ;
Srivastava, Rupesh K. ;
Koutnik, Jan ;
Steunebrink, Bas R. ;
Schmidhuber, Juergen .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2017, 28 (10) :2222-2232
[14]  
Guo CS, 2016, IEEE INT VEH SYM, P1279, DOI 10.1109/IVS.2016.7535555
[15]   Using Bidirectional Long-Term Memory Neural Network for Trajectory Prediction of Large Inner Wheel Routes [J].
Horng, Gwo-Jiun ;
Huang, Yu-Chin ;
Yin, Zong-Xian .
SUSTAINABILITY, 2022, 14 (10)
[16]  
Houenou A, 2013, IEEE INT C INT ROBOT, P4363, DOI 10.1109/IROS.2013.6696982
[17]   RETRACTED: LSTM-Based Attentional Embedding for English Machine Translation (Retracted Article) [J].
Jian, Lihua ;
Xiang, Huiqun ;
Le, Guobin .
SCIENTIFIC PROGRAMMING, 2022, 2022
[18]   Switched Kalman filter-interacting multiple model algorithm based on optimal autoregressive model for manoeuvring target tracking [J].
Jin, Biao ;
Jiu, Bo ;
Su, Tao ;
Liu, Hongwei ;
Liu, Gaofeng .
IET RADAR SONAR AND NAVIGATION, 2015, 9 (02) :199-209
[19]   Efficient Driving on Multilane Roads Under a Connected Vehicle Environment [J].
Kamal, Md Abdus Samad ;
Taguchi, Shun ;
Yoshimura, Takayoshi .
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2016, 17 (09) :2541-2551
[20]  
Kingma Diederik P, 2014, ARXIV PREPRINT ARXIV