In the task of autonomous driving, safe vehicle motion prediction is a challenging task not only due to the complicated street environment but also due to uncertain factors such as unseen vehicles that are outside the scope of the ego vehicle’s perception range. Henceforth, being able to predict potential trajectories of undetected vehicles is a necessary part of safe motion prediction. Traditional models rely on historical observation to predict the motion of surrounding vehicles, but what if there is no historical input? In this paper, we propose a method that can achieve motion prediction for both seen vehicles and unseen vehicles, taking both historical trajectories and statistical information as input and utilizing a self-devised deep-learning model. The prediction for unseen vehic...[ Read more ]
Mengge SunChongyu GuoLulu GuoPeng HangHong Chen
Hao JiangYixun NiuChuan HuShuang HuBaixuan ZhaoXi ZhangYiwei Lin
Ang DuanShiming FuZhi LiCe ZhangDuo ChenKe Song