多人会议中使用头部运动预测下一话语时间

Ryo Ishii, Shiro Kumano, K. Otsuka
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引用次数: 14

摘要

为了构建一个能使agent系统与多人顺畅沟通的会话界面,必须知道如何决定说话的时机。在本研究中,我们探索了参与者的头部运动作为一种易于测量的非语言行为来预测巢话语时间,即当前说话者话语结束和下一个说话者话语开始之间的间隔,在多方会议中轮流变化。首先,我们收集了四人会议中参与者的六个自由度头部运动和话语数据。分析结果表明,当前说话者、下一个说话者和听者的头部运动次数与话语间隔呈正相关。此外,当前说话人和下一个说话人的头部位置和姿势的同步性程度与话语间隔呈负相关。在此基础上,我们以头部运动和头部运动的同步性为特征值,设计了几种预测模型。使用所有特征的模型表现最好,能够很好地预测下一个话语的时间。因此,本研究揭示了在多人会议中,参与者的头部运动对预测下一个话语的时间是有用的。
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Prediction of Next-Utterance Timing using Head Movement in Multi-Party Meetings
To build a conversational interface wherein an agent system can smoothly communicate with multiple persons, it is imperative to know how the timing of speaking is decided. In this research, we explore the head movements of participants as an easy-to-measure nonverbal behavior to predict the nest-utterance timing, i.e., the interval between the end of the current speaker's utterance and the start of the next speaker's utterance, in turn-changing in multi-party meetings. First, we collected data on participants' six degree-of-freedom head movements and utterances in four-person meetings. The results of the analysis revealed that the amount of head movements of current speaker, next speaker, and listeners have a positive correlation with the utterance interval. Moreover, the degree of synchrony of the head position and posture between the current speaker and next speaker is negatively correlated with the utterance interval. On the basis of these findings, we used their head movements and the synchrony of their head movements as feature values and devised several prediction models. A model using all features performed the best and was able to predict the next-utterance timing well. Therefore, this research revealed that the participants' head movement is useful for predicting the next-utterance timing in turn-changing in multi-party meetings.
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