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arxiv 2008.00699 v1 pith:6XZD2HHS submitted 2020-08-03 cs.RO cs.AIcs.HCcs.MA

Getting to Know One Another: Calibrating Intent, Capabilities and Trust for Human-Robot Collaboration

classification cs.RO cs.AIcs.HCcs.MA
keywords capabilitiesagentsanotherapproachbettercalibratingcollaborationhuman
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Common experience suggests that agents who know each other well are better able to work together. In this work, we address the problem of calibrating intention and capabilities in human-robot collaboration. In particular, we focus on scenarios where the robot is attempting to assist a human who is unable to directly communicate her intent. Moreover, both agents may have differing capabilities that are unknown to one another. We adopt a decision-theoretic approach and propose the TICC-POMDP for modeling this setting, with an associated online solver. Experiments show our approach leads to better team performance both in simulation and in a real-world study with human subjects.

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