Dynamic-Group-Aware Networks for Multi-Agent Trajectory Prediction with
Relational Reasoning
- URL: http://arxiv.org/abs/2206.13114v1
- Date: Mon, 27 Jun 2022 08:36:56 GMT
- Title: Dynamic-Group-Aware Networks for Multi-Agent Trajectory Prediction with
Relational Reasoning
- Authors: Chenxin Xu, Yuxi Wei, Bohan Tang, Sheng Yin, Ya Zhang, Siheng Chen
- Abstract summary: We propose DynGroupNet, a dynamic-group-aware network, which can model time-varying interactions in highly dynamic scenes.
Based on DynGroupNet, we design a prediction system to forecast socially plausible trajectories with dynamic relational reasoning.
- Score: 29.294244001911242
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Demystifying the interactions among multiple agents from their past
trajectories is fundamental to precise and interpretable trajectory prediction.
However, previous works mainly consider static, pair-wise interactions with
limited relational reasoning. To promote more comprehensive interaction
modeling and relational reasoning, we propose DynGroupNet, a
dynamic-group-aware network, which can i) model time-varying interactions in
highly dynamic scenes; ii) capture both pair-wise and group-wise interactions;
and iii) reason both interaction strength and category without direct
supervision. Based on DynGroupNet, we further design a prediction system to
forecast socially plausible trajectories with dynamic relational reasoning. The
proposed prediction system leverages the Gaussian mixture model, multiple
sampling and prediction refinement to promote prediction diversity, training
stability and trajectory smoothness, respectively. Extensive experiments show
that: 1)DynGroupNet can capture time-varying group behaviors, infer
time-varying interaction category and interaction strength during trajectory
prediction without any relation supervision on physical simulation datasets;
2)DynGroupNet outperforms the state-of-the-art trajectory prediction methods by
a significant improvement of 22.6%/28.0%, 26.9%/34.9%, 5.1%/13.0% in ADE/FDE on
the NBA, NFL Football and SDD datasets and achieve the state-of-the-art
performance on the ETH-UCY dataset.
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