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Ergodicity Reveals Assistance and Learning from Physical Human-Robot Interaction

机译:遍历性揭示了人机交互中的帮助和学习

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摘要

This paper applies information theoretic principles to the investigation of physical human-robot interaction. Drawing from the study of human perception and neural encoding, information theoretic approaches offer a perspective that enables quantitatively interpreting the body as an information channel, and bodily motion as an information-carrying signal. We show that ergodicity, which can be interpreted as the degree to which a trajectory encodes information about a task, correctly predicts changes due to reduction of a person’s existing deficit or the addition of algorithmic assistance. The measure also captures changes from training with robotic assistance. Other common measures for assessment failed to capture at least one of these effects. This information-based interpretation of motion can be applied broadly, in the evaluation and design of human-machine interactions, in learning by demonstration paradigms, or in human motion analysis.
机译:本文将信息理论原理应用于物理人机交互中。通过对人类感知和神经编码的研究,信息理论方法提供了一个视角,可以定量地将人体解释为信息通道,而将身体运动解释为信息传递信号。我们证明,遍历性可以解释为轨迹对有关任务的信息进行编码的程度,可以正确预测由于减少人的现有赤字或增加算法辅助而导致的变化。该措施还捕获了机器人协助培训带来的变化。其他常见的评估方法未能捕捉到至少其中一种影响。这种基于信息的运动解释可以广泛地应用于人机交互的评估和设计,通过示范范例进行学习或在人类运动分析中广泛应用。

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