Graph Neural Networks for 3D Multi-Object Tracking - Robotics Institute Carnegie Mellon University

Graph Neural Networks for 3D Multi-Object Tracking

Workshop Paper, ECCV '20 Workshops, August, 2020

Abstract

3D Multi-object tracking (MOT) is crucial to autonomous systems. Recent work often uses a tracking-by-detection pipeline, where the feature of each object is extracted independently to compute an affinity matrix. Then, the affinity matrix is passed to the Hungarian algorithm for data association. A key process of this pipeline is to learn discriminative features for different objects in order to reduce confusion during data association. To that end, we propose two innovative techniques: (1) instead of obtaining the features for each object independently , we propose a novel feature interaction mechanism by introducing Graph Neural Networks; (2) instead of obtaining the features from either 2D or 3D space as in prior work, we propose a novel joint feature extractor to learn appearance and motion features from 2D and 3D space. Through experiments on the KITTI dataset, our proposed method achieves state-of-the-art 3D MOT performance. Our project website is at http://www.xinshuoweng.com/projects/GNN3DMOT.

BibTeX

@workshop{Weng-2020-124270,
author = {Xinshuo Weng and Yongxin Wang and Yunze Man and Kris Kitani},
title = {Graph Neural Networks for 3D Multi-Object Tracking},
booktitle = {Proceedings of ECCV '20 Workshops},
year = {2020},
month = {August},
}