首页|TCN-SA: A Social Attention Network Based on Temporal Convolutional Network for Vehicle Trajectory Prediction

TCN-SA: A Social Attention Network Based on Temporal Convolutional Network for Vehicle Trajectory Prediction

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Vehicle trajectory prediction can provide important support for intelligent transportation systems in areas such as autonomous driving, traffic control, and traffic flow optimization. Predicting vehicle trajectories is an extremely challenging task that not only depends on the vehicle’s historical trajectory but also on the dynamic and complex social-temporal relationships of the surrounding traffic network. The trajectory of the target vehicle is influenced by surrounding vehicles. However, existing methods have shortcomings in considering both time dependency and interactive dependency between vehicles or insufficient consideration of the impact of surrounding vehicles. To address this issue, we propose a hybrid deep learning model based on a temporal convolutional network (TCN) that considers local and global interactions between vehicles. Specifically, we use a social convolutional pooling layer to capture local interaction features between vehicles and a multihead self-attention layer to capture global interaction features between vehicles. Finally, we combine these two features using an encoder-decoder structure to predict vehicle trajectories. Through experiments on the Next-Generation Simulation (NGSIM) public dataset and ablation experiments, we validate the effectiveness of our model.

Qin Li、Bingguang Ou、Yifa Liang、Yong Wang、Xuan Yang、Linchao Li、Jingda Wu

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School of Mechanical Engineering Guangxi University Nanning 530004

School of Mechanical Engineering Beijing Institute of Technology Beijing 100081

Urban Smart Transportation Safety Maintenance Shenzhen University Shenzhen 518060

2023

Journal of advanced transportation

Journal of advanced transportation

SCI
ISSN:0197-6729
年,卷(期):2023.2023(Pt.6)
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