Quantifying Coordination in Human Dyads via a Measure of Verticality

Roshni Kaushik, I. Vidrin, A. LaViers
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引用次数: 4

Abstract

Working towards the goal of understanding complex, interactive movement in human dyads, this paper presents a model for analyzing motion capture data of human pairs and proposes measures that correlate with features of the coordination in the movement. Based on deep inquiry of what it means to partner in a motion task, a measure that characterizes the changing verticality of each agent is developed. In parallel a naïve human motion expert provides a qualitative description of the features and quality of coordination within a dyad. Analysis on the verticality measure, the cross-correlation of verticality signals, and deviation of those verticality signals from the trend over time, provides quantitative insight that corroborates the naïve expert's analysis. Specifically, the paper shows that, for four samples of dyadic behavior, these measures provide information about 1) whether two agents were involved in the same dyadic interaction and 2) the level of "resistance" found in these interactions. Future work will test this model over a larger dataset and develop human-robot coordination schemes based on this model.
通过垂直度测量来量化人类双体的协调
为了理解人类双体中复杂的互动运动,本文提出了一个分析人类双体运动捕捉数据的模型,并提出了与运动中协调特征相关的措施。在深入探讨运动任务中伙伴的意义的基础上,开发了一种表征每个agent垂直度变化的度量。与此同时,naïve人类运动专家对二分体的特征和协调质量进行了定性描述。对垂直度测量、垂直度信号的相互关联以及这些垂直度信号随时间变化趋势的偏差的分析,提供了定量的见解,证实了naïve专家的分析。具体而言,本文表明,对于四个二元行为样本,这些测量提供了关于1)两个主体是否参与相同的二元相互作用和2)在这些相互作用中发现的“抵抗”水平的信息。未来的工作将在更大的数据集上测试该模型,并基于该模型开发人机协调方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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