Recent Changes - Search:


Home Page
MAPF Info
MAPF News
Mailing List
Meetings
Publications
Researchers
Benchmarks
Software
Apps
Tutorials
Class Projects

[Internal]

Publication

X. Zhong, J. Li, S. Koenig and H. Ma. Optimal and Bounded-Suboptimal Multi-Goal Task Assignment and Path Finding. In Proceedings of the IEEE International Conference on Robotics and Automation (ICRA), 2022.


Abstract: We formalize and study the multi-goal task assignment and path finding (MG-TAPF) problem from theoretical and algorithmic perspectives. The MG-TAPF problem is to compute an assignment of tasks to agents, where each task consists of a sequence of goal locations, and collision-free paths for the agents that visit all goal locations of their assigned tasks in sequence. Theoretically, we prove that the MG-TAPF problem is NP-hard to solve optimally. We present algorithms that build upon algorithmic techniques for the multi-agent path finding problem and solve the MG-TAPF problem optimally and bounded-suboptimally. We experimentally compare these algorithms on a variety of different benchmark domains.


Download the paper in pdf.

Edit - History - Print - Recent Changes - Search
Page last modified on December 21, 2024, at 08:24 AM