Behavioral and Emotional Spoken Cues Related to Mental States in Human-Robot Social Interaction

Lucile Bechade, G. D. Duplessis, M. A. Sehili, L. Devillers
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引用次数: 8

Abstract

Understanding human behavioral and emotional cues occurring in interaction has become a major research interest due to the emergence of numerous applications such as in social robotics. While there is agreement across different theories that some behavioral signals are involved in communicating information, there is a lack of consensus regarding their specificity, their universality, and whether they convey emotions, affective, cognitive, mental states or all of those. Our goal in this study is to explore the relationship between behavioral and emotional cues extracted from speech (e.g., laughter, speech duration, negative emotions) with different communicative information about the human participant. This study is based on a corpus of audio/video data of humorous interactions between the nao{} robot and 37 human participants. Participants filled three questionnaires about their personality, sense of humor and mental states regarding the interaction. This work reveals the existence of many links between behavioral and emotional cues and the mental states reported by human participants through self-report questionnaires. However, we have not found a clear connection between reported mental states and participants profiles.
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人-机器人社会互动中与心理状态相关的行为和情感言语线索
由于社交机器人等众多应用的出现,理解人类在互动中发生的行为和情感线索已成为一个主要的研究兴趣。虽然不同的理论都认为某些行为信号参与了信息交流,但对于它们的特殊性、普遍性,以及它们是否传达了情感、情感、认知、精神状态或所有这些,人们缺乏共识。本研究的目的是探讨从言语中提取的行为和情绪线索(如笑声、言语持续时间、负面情绪)与人类参与者的不同交际信息之间的关系。本研究基于nao{}机器人与37名人类参与者之间幽默互动的音频/视频数据语料库。参与者填写了三份问卷,内容涉及他们的个性、幽默感和与互动有关的精神状态。这项工作揭示了行为和情绪线索与人类参与者通过自我报告问卷报告的精神状态之间存在许多联系。然而,我们还没有发现报告的精神状态和参与者档案之间有明确的联系。
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