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Two-stream LSTM Network with Hybrid Attention for Vehicle Trajectory Prediction | IEEE Conference Publication | IEEE Xplore

Two-stream LSTM Network with Hybrid Attention for Vehicle Trajectory Prediction


Abstract:

Trajectory prediction aims to estimate future location by exploring driving behavior and historical trajectory, which is essential for driving decision-making and local m...Show More

Abstract:

Trajectory prediction aims to estimate future location by exploring driving behavior and historical trajectory, which is essential for driving decision-making and local motion planning of smart vehicles. However, affected by the multiple complex interaction in the traffic scene, predicting future trajectory precisely is a challenging task. Most existing models simply fuse the inter-vehicle interaction with the vehicle motion state and use the fusion vector for temporal modeling, which affects the extraction of information temporal dependency. Furthermore, the loss of important historical hidden state in recursive loops makes the long-term prediction performance of the sequence model not ideal. To address this issue, this paper proposes the Two-stream LSTM Network with hybrid attention mechanism (TH-Net). Specifically, we construct Two-stream LSTM structure (TS-LSTM) to build independent information transmission links for inter-vehicle interaction and vehicle motion state while maintaining their coupling relationship. In addition, Hybrid Attention Mechanism (H-AM) is proposed to explore the importance of hidden state from the dimensions of time and feature, and guides TH-Net to selectively reuse it. Experiments on the public dataset HighD demonstrate that TH-Net remarkably outperforms the state-of-the-art methods in long-term prediction performance.
Date of Conference: 08-12 October 2022
Date Added to IEEE Xplore: 01 November 2022
ISBN Information:
Conference Location: Macau, China

Funding Agency:

References is not available for this document.

I. Introduction

Smart vehicles are designed for safer and more efficient transportation, which shows great application potential in road traffic [1]–[3]. Trajectory prediction is a critical technology that is helpful to make reasonable local motion planning for autonomous vehicles [4]–[7]. However, vehicle trajectories tend to be highly non-linear over longer time horizons. At present, a smart vehicle cannot fully reach the driving level of a human driver who interacts with random factors in surrounding environment fluently. Predicting the accurate future trajectory of vehicle is decided by a great number of factors including the motion state of the predicted vehicle and inter-vehicle interaction, which poses a great challenge for trajectory prediction.

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1.
A. Costa, Vehicle-to-Vehicle Communication using AppLink, vol. 1, 2015.
2.
B. Zhao, C. Lv and T. Hofman, "Driving-Cycle-Aware Energy Management of Hybrid Electric Vehicles Using a Three-Dimensional Markov Chain Model", Automotive Innovation, vol. 2.2, pp. 146-156, 2019.
3.
Wanzhong Zhao et al., "Energy transfer and utilization efficiency of regenerative braking with hybrid energy storage system", Journal of Power Sources, 2019.
4.
J. Nilsson et al., "If When and How to Perform Lane Change Maneuvers on Highways", IEEE Intelligent Transportation Systems Magazine, vol. 8.4, pp. 68-78, 2016.
5.
S. Ulbrich and M. Maurer, "Towards Tactical Lane Change Behavior Planning for Automated Vehicles", 2015 IEEE 18th International Conference on Intelligent Transportation Systems - (ITSC 2015), 2015.
6.
Q. Qi et al., "Knowledge-Driven Service Offloading Decision for Vehicular Edge Computing: A Deep Reinforcement Learning Approach", IEEE Transactions on Vehicular Technology, pp. 5-1, 2019.
7.
H. Woo et al., "Lane-Change Detection Based on Vehicle-Trajectory Prediction", IEEE Robotics & Automation Letters, vol. 2.2, pp. 1109-1116, 2017.
8.
Yingfeng Cai et al., "Environment-Attention Network for Vehicle Trajectory Prediction", IEEE Transactions on Vehicular Technology, vol. 70.11, pp. 11216-11227, 2021.
9.
Nachiket Deo and Mohan M. Trivedi, "Convolutional Social Pooling for Vehicle Trajectory Prediction", 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW), pp. 1549-15498, 2018.
10.
S Lefevre, D. Vasquez and C. Laugier, "A survey on motion prediction and risk assessment for intelligent vehicles", Robomech Journal, vol. 1.1, pp. 1, 2014.
11.
Nachiket Deo, Akshay Rangesh and M. Trivedi Mohan, "How Would Surround Vehicles Move? A Unified Framework for Maneuver Classification and Motion Prediction", IEEE Transactions on Intelligent Vehicles, vol. 3.2, pp. 129-140, 2018.
12.
Adam Houenou et al., "Vehicle trajectory prediction based on motion model and maneuver recognition", 2013 IEEE/RSJ International Conference on Intelligent Robots and Systems, pp. 4363-4369, 2013.
13.
Christian Laugier et al., "Probabilistic Analysis of Dynamic Scenes and Collision Risks Assessment to Improve Driving Safety", IEEE Intelligent Transportation Systems Magazine, vol. 3.4, pp. 4-19, 2011.
14.
Julian Schlechtriemen et al., "When will it change the lane? A probabilistic regression approach for rarely occurring events", 2015 IEEE Intelligent Vehicles Symposium (IV), pp. 1373-1379, 2015.
15.
Matthias Schreier, Volker Willert and Jurgen Adamy, "Bayesian maneuver-based long-term trajectory prediction and criticality assessment for driver assistance systems", 17th International IEEE Conference on Intelligent Transportation Systems (ITSC), pp. 334-341, 2014.
16.
Quan Tran and Jonas Firl, "Online maneuver recognition and multimodal trajectory prediction for intersection assistance using non-parametric regression", 2014 IEEE Intelligent Vehicles Symposium Proceedings, pp. 918-923, 2014.
17.
Mohammad Bahram et al., "A Combined Model-and Learning-Based Framework for Interaction-Aware Maneuver Prediction", IEEE Transactions on Intelligent Transportation Systems, vol. 17.6, pp. 1538-1550, 2016.
18.
Eugen Kafer et al., "Recognition of situation classes at road intersections", 2010 IEEE International Conference on Robotics and Automation, pp. 3960-3965, 2010.
19.
Robert Krajewski et al., "The highD Dataset: A Drone Dataset of Naturalistic Vehicle Trajectories on German Highways for Validation of Highly Automated Driving Systems", 2018 21st International Conference on Intelligent Transportation Systems (ITSC), pp. 2118-2125, 2018.
20.
G. Toderici et al., Recurrent Neural Network Regularization.
21.
ByeoungDo Kim et al., "Probabilistic vehicle trajectory prediction over occupancy grid map via recurrent neural network", 2017 IEEE 20th International Conference on Intelligent Transportation Systems (ITSC), pp. 399-404, 2017.
22.
Derek J. Phillips, Tim A. Wheeler and Mykel J. Kochenderfer, "Generalizable intention prediction of human drivers at intersections", 2017 IEEE Intelligent Vehicles Symposium (IV), pp. 1665-1670, 2017.
23.
Aida Khosroshahi, Eshed Ohn-Bar and Mohan Manubhai Trivedi, "Surround vehicles trajectory analysis with recurrent neural networks", 2016 IEEE 19th International Conference on Intelligent Transportation Systems (ITSC), pp. 2267-2272, 2016.
24.
Alexandre Alahi et al., "Social LSTM: Human Trajectory Prediction in Crowded Spaces", 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR), pp. 961-971, 2016.
25.
Kaouther Messaoud et al., "Non-local Social Pooling for Vehicle Trajectory Prediction", 2019 IEEE Intelligent Vehicles Symposium (IV), pp. 975-980, 2019.
26.
Francesco Giuliari et al., "Transformer Networks for Trajectory Forecasting", 2020 25th International Conference on Pattern Recognition (ICPR), pp. 10335-10342, 2021.
27.
Tianyang Zhao et al., "Multi-Agent Tensor Fusion for Contextual Trajectory Prediction", 2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pp. 12118-12126, 2019.
28.
Christian Wissing et al., "Interaction-Aware Long-term Driving Situation Prediction", 2018 21st International Conference on Intelligent Transportation Systems (ITSC), pp. 137-143, 2018.
29.
Pu Zhang et al., "SR-LSTM: State Refinement for LSTM Towards Pedestrian Trajectory Prediction", 2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pp. 12077-12086, 2019.
30.
C. Choi, A. Patil and S. Malla, DROGON: A Causal Reasoning Framework for Future Trajectory Forecast, 2019.

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References

References is not available for this document.