Multi-Scan Multi-Sensor Multi-Object State Estimation
Abstract
If computational tractability were not an issue, multi-object estimation should integrate all measurements from multiple sensors across multiple scans. In this article, we propose an efficient numerical solution to the multi-scan multi-sensor multi-object estimation problem by computing the (labeled) multi-sensor multi-object posterior density. Minimizing the -norm error from the exact posterior density requires solving large-scale multi-dimensional assignment problems that are NP-hard. An efficient multi-dimensional assignment algorithm is developed based on Gibbs sampling, together with convergence analysis. The resulting multi-scan multi-sensor multi-object estimation algorithm can be applied either offline in one batch or recursively. The efficacy of the algorithm is demonstrated using numerical experiments with a simulated dataset.
Cite
@article{arxiv.2205.15516,
title = {Multi-Scan Multi-Sensor Multi-Object State Estimation},
author = {D. Moratuwage and B. -N. Vo and B. -T. Vo and C. Shim},
journal= {arXiv preprint arXiv:2205.15516},
year = {2022}
}