一种测量儿童机器人交互中协作参与的探索性方法

Yanghee Kim, S. Butail, Michael Tscholl, Lichuan Liu, Yunlong Wang
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引用次数: 7

摘要

本研究探索了数据分析方法来评估幼儿在机器人介导的协作互动中的参与度。为了开发我们的分析模型,我们采用了个案研究的方法,仔细观察了四个孩子在三次对话中的行为。在参与理论的基础上,通过人工注释和自动语音识别和分析,对三种多模态行为数据来源(话语、动作和声音)进行编码。然后,利用信息论方法揭示每个孩子的多模态行为之间的非线性依赖关系(称为互信息)。由此,我们推导出一个模型来计算一个复合的参与变量。这种计算产生了每个孩子的参与趋势,一对孩子之间的参与关系,以及随着时间的推移与机器人的参与关系。计算出的趋势与人类观测的数据吻合得很好。这种方法对从丰富和自然的多模态行为中量化参与具有启示意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An exploratory approach to measuring collaborative engagement in child robot interaction
This study explored data analytic approaches to assessing young children's engagement in robot-mediated collaborative interaction. To develop our analytic models, we took a case-study approach and looked closely into four children's behaviors during three conversational sessions. Grounded in engagement theory, three sources of multimodal behavioral data (utterances, kinesics, and vocie) were coded through human annotation and automatic speech recognition and analysis. Then, information-theoretic methods were used to uncover nonlinear dependencies (called mutual information) among the multimodal behaviors of each child. From this, we derived a model to compute a compound variable of engagement. This computation produced engagement trends of each child, the engagement relationship between two children in a pair, and the engagement relationship with the robot over time. The computed trends corresponded well with the data from human observations. This approach has implications for quantifying engagement from rich and natural multimodal behaviors.
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