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Shared Task Representation for Human–Robot Collaborative Navigation: The Collaborative Search Case

Marc Dalmasso, J. E. Domínguez-Vidal, Iván J. Torres-Rodríguez, Pablo Jiménez, Anaís Garrell, Alberto Sanfeliu

发表年份
2023
引用次数
14
访问权限
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摘要

Abstract Recent research in Human Robot Collaboration (HRC) has spread and specialised in many sub-fields. Many show considerable advances, but the human–robot collaborative navigation (HRCN) field seems to be stuck focusing on implicit collaboration settings, on hypothetical or simulated task allocation problems, on shared autonomy or on having the human as a manager. This work takes a step forward by presenting an end-to-end system capable of handling real-world human–robot collaborative navigation tasks. This system makes use of the Social Reward Sources model (SRS), a knowledge representation to simultaneously tackle task allocation and path planning, proposes a multi-agent Monte Carlo Tree Search (MCTS) planner for human–robot teams, presents the collaborative search as a testbed for HRCN and studies the usage of smartphones for communication in this setting. The detailed experiments prove the viability of the approach, explore collaboration roles adopted by the human–robot team and test the acceptability and utility of different communication interface designs.

关键词

Human–computer interactionComputer scienceTask (project management)TestbedHuman–robot interactionRobotPlannerArtificial intelligenceField (mathematics)Motion planning

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