English

DsMCL: Dual-Level Stochastic Multiple Choice Learning for Multi-Modal Trajectory Prediction

Signal Processing 2020-08-17 v2

Abstract

For both driving safety and efficiency, automated vehicles should be able to predict the behavior of surrounding traffic participants in a complex dynamic environment. To accomplish such a task, trajectory prediction is the key. Although many researchers have been engaged in this topic, it is still challenging. One of the important and inherent factors is the multi-modality of vehicle motion. Because of the disparate driving behaviors under the same condition, the prediction of vehicle trajectory should also be multi-modal. At present, related researches have more or less shortcomings for multi-modal trajectory prediction, such as requiring explicit modal labels or multiple forward propagation caused by sampling. In this work, we focus on overcoming these issues by pointing out the dual-levels of multi-modal characteristics in vehicle motion and proposing the dual-level stochastic multiple choice learning method (named as DsMCL, for short). This method does not require modal labels and can implement a comprehensive probabilistic multi-modal trajectory prediction by a single forward propagation. By experiments on the NGSIM and HighD datasets, our method has proven significant improvement on several trajectory prediction frameworks and achieves state-of-the-art performance.

Keywords

Cite

@article{arxiv.2003.08638,
  title  = {DsMCL: Dual-Level Stochastic Multiple Choice Learning for Multi-Modal Trajectory Prediction},
  author = {Zehan Wang and Sihong Zhou and Yuyao Huang and Wei Tian},
  journal= {arXiv preprint arXiv:2003.08638},
  year   = {2020}
}
R2 v1 2026-06-23T14:19:47.083Z