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A Multi-Robot Task Assignment Framework for Search and Rescue with Heterogeneous Teams

Hamid Osooli, Paul Robinette, Kshitij Jerath, S. Reza Ahmadzadeh

发表年份
2023
引用次数
3
访问权限
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摘要

In post-disaster scenarios, efficient search and rescue operations involve collaborative efforts between robots and humans. Existing planning approaches focus on specific aspects but overlook crucial elements like information gathering, task assignment, and planning. Furthermore, previous methods considering robot capabilities and victim requirements suffer from time complexity due to repetitive planning steps. To overcome these challenges, we introduce a comprehensive framework__the Multi-Stage Multi-Robot Task Assignment. This framework integrates scouting, task assignment, and path-planning stages, optimizing task allocation based on robot capabilities, victim requirements, and past robot performance. Our iterative approach ensures objective fulfillment within problem constraints. Evaluation across four maps, comparing with a state-of-the-art baseline, demonstrates our algorithm's superiority with a remarkable 97 percent performance increase. Our code is open-sourced to enable result replication.

关键词

Task (project management)RobotComputer scienceSearch and rescueBaseline (sea)Motion planningFocus (optics)Replication (statistics)Task analysisHuman–computer interaction

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