Take a NAP: Non-Autoregressive Prediction for Pedestrian Trajectories
conference contribution
posted on 2024-11-03, 13:52authored byHao XueHao Xue, Du Huynh, Mark Reynolds
Pedestrian trajectory prediction is a challenging task as there are three properties of human movement behaviors which need to be addressed, namely, the social influence from other pedestrians, the scene constraints, and the multimodal (multi-route) nature of predictions. Although existing methods have explored these key properties, the prediction process of these methods is autoregressive. This means they can only predict future locations sequentially. In this paper, we present NAP, a non-autoregressive method for trajectory prediction. Our method comprises specifically designed feature encoders and a latent variable generator to handle the three properties above. It also has a future-time-agnostic context generator and a future-time-oriented context generator for non-autoregressive prediction. Through extensive experiments that compare NAP against eleven recent methods, we show that NAP achieves state-of-the-art trajectory prediction performance.
History
Volume
12532 LNCS
Start page
544
End page
556
Total pages
13
Outlet
Proceedings of the 27th International Conference on Neural Information Processing (ICONIP 2020)
Editors
Haiqin Yang; Kitsuchart Pasupa; Andrew Chi-Sing Leung; James T. Kwok; Jonathan H. Chan; Irwin King
Name of conference
ICONIP 2020: Neural Information Processing LNCS, volume 12532