| Literature DB >> 33500906 |
Russell Graves1, Subhadeep Chakraborty1.
Abstract
This work presents a heuristic for describing the next best view location for an autonomous agent exploring an unknown environment. The approach considers each robot as a point mass with omnidirectional and unrestricted vision of the environment and line-of-sight communication operating in a polygonal environment which may contain holes. The number of robots in the team is always sufficient for full visual coverage of the space. The technique employed falls in the category of distributed visibility-based deployment algorithms which seek to segment the space based on each agent's field of view with the goal of deploying each agent into the environment to create a visually connected series of agents which fully observe the previously unknown region. The contributions made to this field are a technique for utilizing linear programming methods to determine the solution to the next best observation (NBO) problem as well as a method for calculating multiple NBO points simultaneously. Both contributions are incorporated into an algorithm and deployed in a simulated environment built with MATLAB for testing. The algorithm successfully deployed agents into polygons which may contain holes. The efficiency of the deployment method was compared with random deployment methods to establish a performance metric for the proposed tactic. It was shown that the heuristic presented in this work performs better the other tested strategies.Entities:
Keywords: art gallery problem; environments with holes; multirobot exploration; next-best-view optimization; visibility-based deployment
Year: 2018 PMID: 33500906 PMCID: PMC7805636 DOI: 10.3389/frobt.2018.00019
Source DB: PubMed Journal: Front Robot AI ISSN: 2296-9144