Improving implicit communication in mixed human-robot teams with social force detection

Bradley Hayes, B. Scassellati
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引用次数: 8

Abstract

One of the hallmarks of development is the transition of an agent from novice learner to able partner to experienced instructor. While most machine learning approaches focus on the first transition, we are interested in building an effective learning and development system that allows for the complete range of transitions to occur. In this paper, we present a mechanism enabling such transitions within the context of collaborative social tasks. We present a cooperative robot system capable of learning a hierarchical task execution from an experienced human user, collaborating safely with a knowledgeable human peer, and instructing a novice user based on the explicit inclusion of a feature within the planning and skill execution subsystems we've termed social force. We conclude with an evaluation of this feature's flexibility within a collaborative construction task, changing a robot's behaviors between student, peer, and instructor through simple manipulations of this feature's treatment within the planning subsystem.
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基于社会力检测的人机混合团队隐式沟通改进
发展的标志之一是代理人从初学者到有能力的合作伙伴再到有经验的指导者的转变。虽然大多数机器学习方法都专注于第一次过渡,但我们感兴趣的是建立一个有效的学习和发展系统,允许完整的过渡发生。在本文中,我们提出了一种在协作社会任务背景下实现这种转变的机制。我们提出了一种协作机器人系统,它能够从经验丰富的人类用户那里学习分层任务执行,与知识渊博的人类同伴安全地合作,并根据我们称之为社会力量的规划和技能执行子系统中明确包含的特征来指导新手用户。最后,我们评估了该功能在协作构建任务中的灵活性,通过在规划子系统中对该功能的处理进行简单的操作,改变了机器人在学生、同伴和教师之间的行为。
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