Junan ChenYan WangRuihan WuMark Campbell
In this paper, a Spatial Temporal Graph Neural Network (STGNN) model is developed, including a temporal block and Graph Neural Network (GNN) block, to solve the problem of vehicle trajectory prediction in unstructured scenes. Specifically, a temporal block combines a recurrent neural network and non-local operation to extract the features from past trajectories, and a GNN block models the subtle interactions between vehicles. The proposed model is evaluated on two datasets: Unstructured Scene Dataset and Argoverse Dataset. Experiment results show that the STGNN model achieves a better performance in the unstructured scenes and can be applied to common scenes where rules of the road dominate.
Ruiyu WangWenxie LinGang RenQi CaoZhe ZhangYue Deng
Amr AbdelraoufR. K. GuptaKyungtae Han
Wangxing ChenHaifeng SangJinyu WangZishan Zhao
Hao ZhouDongchun RenHuaxia XiaMingyu FanXu YangHai Huang
Adnan A. QaseemLei AoKai ShengDejene M. SimeQing CaiJianzhao LiXiaojiang Ren