Multi-Objective Multi-Agent Planning for Discovering and Tracking Multiple Mobile Objects
Abstract
We consider the online planning problem for a team of agents to discover and track an unknown and time-varying number of moving objects from onboard sensor measurements with uncertain measurement-object origins. Since the onboard sensors have limited field-of-views, the usual planning strategy based solely on either tracking detected objects or discovering unseen objects is inadequate. To address this, we formulate a new information-based multi-objective multi-agent control problem, cast as a partially observable Markov decision process (POMDP). The resulting multi-agent planning problem is exponentially complex due to the unknown data association between objects and multi-sensor measurements; hence, computing an optimal control action is intractable. We prove that the proposed multi-objective value function is a monotone submodular set function, which admits low-cost suboptimal solutions via greedy search with a tight optimality bound. The resulting planning algorithm has a linear complexity in the number of objects and measurements across the sensors, and quadratic in the number of agents. We demonstrate the proposed solution via a series of numerical experiments with a real-world dataset.
Cite
@article{arxiv.2203.04551,
title = {Multi-Objective Multi-Agent Planning for Discovering and Tracking Multiple Mobile Objects},
author = {Hoa Van Nguyen and Ba-Ngu Vo and Ba-Tuong Vo and Hamid Rezatofighi and Damith C. Ranasinghe},
journal= {arXiv preprint arXiv:2203.04551},
year = {2024}
}
Comments
Accepted to IEEE Transactions on Signal Processing. 16 pages, 10 Figures