2023
DOI: 10.3390/math11061293
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VRR-Net: Learning Vehicle–Road Relationships for Vehicle Trajectory Prediction on Highways

Abstract: Vehicle trajectory prediction is an important decision-making and planning basis for autonomous driving systems that enables them to drive safely and efficiently. To accurately predict vehicle trajectories, the complex representations and dynamic interactions among the elements in a traffic scene are abstracted and modelled. This paper presents vehicle–road relationships net, a deep learning network that extracts features from vehicle–road relationships and models the effects of traffic environments on vehicle… Show more

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