This paper proposes a prediction method for vehicle-to-pedestrian collision avoidance, which learns and then predicts pedestrian behaviors as their motion instances are being observed. During learning, known trajectories are clustered to form Motion Patterns (MP), which become knowledge a priori to a multi-level prediction model that predicts long-term or short-term pedestrian behaviors. Simulation results show that it works well in a complex structured environment and the prediction is consistent with actual behaviors. © 2008 IEEE.
Tomotaka WadaHikaru ShimadaSota Uchida
Yu-Jin Kim문종식Yonghwan JeongKyongsu Yi
Chaochun YuanJiankai WangJie ShenLong ChenYingfeng CaiYouguo HeShuofeng WengYuqi YuanYuxuan Gong
Mehrdad BagheriMatti SiekkinenJukka K. Nurminen