Informed Steiner Trees: Sampling and Pruning for Multi-Goal Path Finding in High Dimensions

May 09, 2022 Β· Declared Dead Β· πŸ› IEEE Transactions on Automation Science and Engineering

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Authors Nikhil Chandak, Kenny Chour, Sivakumar Rathinam, R. Ravi arXiv ID 2205.04548 Category cs.MA: Multiagent Systems Cross-listed cs.AI, cs.RO Citations 3 Venue IEEE Transactions on Automation Science and Engineering Last Checked 3 months ago
Abstract
We interleave sampling based motion planning methods with pruning ideas from minimum spanning tree algorithms to develop a new approach for solving a Multi-Goal Path Finding (MGPF) problem in high dimensional spaces. The approach alternates between sampling points from selected regions in the search space and de-emphasizing regions that may not lead to good solutions for MGPF. Our approach provides an asymptotic, 2-approximation guarantee for MGPF. We also present extensive numerical results to illustrate the advantages of our proposed approach over uniform sampling in terms of the quality of the solutions found and computation speed.
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