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Legible action selection in human-robot collaboration

机译:人体机器人协作中清晰的行动选择

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摘要

Humans are error-prone in the presence of multiple similar tasks. While Human-Robot Collaboration (HRC) brings the advantage of combining the superiority of both humans and robots in their respective talents, it also requires the robot to communicate the task goal clearly to the human collaborator. We formalize such problems in interactive assembly tasks with hidden goal Markov decision processes (HGMDPs) to enable the symbiosis of human intention recognition and robot intention expression. In order to avoid the prohibitive computational requirements, we provide a myopic heuristic along with a feature-based state abstraction method for assembly tasks to approximate the solution of the resulting HGMDP. A user study with human subjects in round-based LEGO assembly tasks shows that our algorithm improves HRC and helps the human collaborators when the task goal is unclear to them.
机译:人类在存在多种类似任务的情况下出错。虽然人体机器人协作(HRC)带来了将人类和机器人的优势结合在各自的人才中,但它还需要机器人将任务目标清楚地传达给人类合作者。我们用隐藏目标马尔可夫决策过程(HGMDPS)正式化互动组装任务中的这些问题,以实现人类意图识别和机器人意向表达的共生。为了避免禁止的计算要求,我们提供了一个近视启发式,以及用于组装任务的基于特征的状态抽象方法,以近似于结果的HGMDP的解决方案。在基于圆形的LEGO装配任务中与人类学科的用户学习表明,我们的算法改善了HRC,并在任务目标不清楚时帮助人类合作者。

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