2023
DOI: 10.1109/tro.2023.3257541
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Asymmetric Self-Play-Enabled Intelligent Heterogeneous Multirobot Catching System Using Deep Multiagent Reinforcement Learning

Abstract: Aiming to develop a more robust and intelligent heterogeneous system for adversarial catching in security and rescue tasks, in this article, we discuss the specialities of applying asymmetric self-play and curriculum learning techniques to deal with the increasing heterogeneity and number of different robots in modern heterogeneous multirobot systems (HMRS). Our method, based on actor-critic multiagent reinforcement learning, provides a framework that can enable cooperative behaviors among heterogeneous multir… Show more

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Cited by 12 publications
(1 citation statement)
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“…• Urban search and rescue (USAR) [118]- [121] • Assisting in disaster scenarios through various tasks [5] • Multi-robot patrolling [122] • Autonomous pedestrian following (following security personnel in a patrol) [104] Extreme environments…”
Section: Agriculturementioning
confidence: 99%
“…• Urban search and rescue (USAR) [118]- [121] • Assisting in disaster scenarios through various tasks [5] • Multi-robot patrolling [122] • Autonomous pedestrian following (following security personnel in a patrol) [104] Extreme environments…”
Section: Agriculturementioning
confidence: 99%