Annotation and analysis of listener's engagement based on multi-modal behaviors

K. Inoue, Divesh Lala, Shizuka Nakamura, K. Takanashi, Tatsuya Kawahara
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引用次数: 10

Abstract

We address the annotation of engagement in the context of human-machine interaction. Engagement represents the level of how much a user is being interested in and willing to continue the current interaction. The conversational data used in the annotation work is a human-robot interaction corpus where a human subject talks with the android ERICA, which is remotely operated by another human subject. The annotation work was done by multiple third-party annotators, and the task was to detect the time point when the level of engagement becomes high. The annotation results indicate that there are agreements among the annotators although the numbers of annotated points are different among them. It is also found that the level of engagement is related to turn-taking behaviors. Furthermore, we conducted interviews with the annotators to reveal behaviors used to show a high level of engagement. The results suggest that laughing, backchannels and nodding are related to the level of engagement.
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基于多模态行为的听者参与注释与分析
我们在人机交互的背景下处理参与的注释。用户粘性代表了用户对当前互动感兴趣并愿意继续的程度。注释工作中使用的会话数据是一个人机交互语料库,其中人类主体与由另一个人类主体远程操作的机器人ERICA进行对话。注释工作由多个第三方注释人员完成,任务是检测参与度高的时间点。标注结果表明,虽然标注点的数量不同,但标注者之间的标注是一致的。研究还发现,参与程度与轮流行为有关。此外,我们对注释者进行了访谈,以揭示用于显示高参与度的行为。研究结果表明,笑、回话和点头与参与程度有关。
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