ICCV2021

DenseTNT: End-to-end Trajectory Prediction from Dense Goal Sets

Junru Gu, Chen Sun, Hang Zhao

563 citations

Abstract

Due to the stochasticity of human behaviors, predicting the future trajectories of road agents is challenging for autonomous driving. Recently, goal-based multi-trajectory prediction methods are proved to be effective, where they first score over-sampled goal candidates and then select a final set from them. However, these methods usually involve goal predictions based on sparse pre-defined anchors and heuristic goal selection algorithms. In this work, we propose an anchor-free and end-to-end trajectory prediction model, named DenseTNT, that directly outputs a set of trajectories from dense goal candidates. In addition, we introduce an offline optimization-based technique to provide multi-future pseudo-labels for our final online model. Experiments show that DenseTNT achieves state-of-the-art performance, ranking 1 st on the Argoverse motion forecasting benchmark and being the 1 st place winner of the 2021 Waymo Open Dataset Motion Prediction Challenge.