Solving Multi-Agent Target Assignment and Path Finding with a Single Constraint Tree
July 02, 2023 Β· Declared Dead Β· π International Symposium on Multi-Robot and Multi-Agent Systems
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Authors
Yimin Tang, Zhongqiang Ren, Jiaoyang Li, Katia Sycara
arXiv ID
2307.00663
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.RO
Citations
12
Venue
International Symposium on Multi-Robot and Multi-Agent Systems
Last Checked
4 months ago
Abstract
Combined Target-Assignment and Path-Finding problem (TAPF) requires simultaneously assigning targets to agents and planning collision-free paths for agents from their start locations to their assigned targets. As a leading approach to address TAPF, Conflict-Based Search with Target Assignment (CBS-TA) leverages both K-best target assignments to create multiple search trees and Conflict-Based Search (CBS) to resolve collisions in each search tree. While being able to find an optimal solution, CBS-TA suffers from scalability due to the duplicated collision resolution in multiple trees and the expensive computation of K-best assignments. We therefore develop Incremental Target Assignment CBS (ITA-CBS) to bypass these two computational bottlenecks. ITA-CBS generates only a single search tree and avoids computing K-best assignments by incrementally computing new 1-best assignments during the search. We show that, in theory, ITA-CBS is guaranteed to find an optimal solution and, in practice, is computationally efficient.
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