Distributed Fusion with Multi-Bernoulli Filter based on Generalized Covariance Intersection
Abstract
In this paper, we propose a distributed multi-object tracking algorithm through the use of multi-Bernoulli (MB) filter based on generalized Covariance Intersection (G-CI). Our analyses show that the G-CI fusion with two MB posterior distributions does not admit an accurate closed-form expression. To solve this challenging problem, we firstly approximate the fused posterior as the unlabeled version of -generalized labeled multi-Bernoulli (-GLMB) distribution, referred to as generalized multi-Bernoulli (GMB) distribution. Then, to allow the subsequent fusion with another multi-Bernoulli posterior distribution, e.g., fusion with a third sensor node in the sensor network, or fusion in the feedback working mode, we further approximate the fused GMB posterior distribution as an MB distribution which matches its first-order statistical moment. The proposed fusion algorithm is implemented using sequential Monte Carlo technique and its performance is highlighted by numerical results.
Cite
@article{arxiv.1603.08340,
title = {Distributed Fusion with Multi-Bernoulli Filter based on Generalized Covariance Intersection},
author = {Bailu Wang and Wei Yi and Reza Hoseinnezhad and Suqi Li and Lingjiang Kong and Xiaobo Yang},
journal= {arXiv preprint arXiv:1603.08340},
year = {2016}
}
Comments
14 pages, 13 figures, under review for IEEE Trans. on Signal Process Volume: 65, Issue: 1, Jan.1, 1 2017