解读沉默的参与者:利用视听线索对小组讨论中的听者类别进行分类

Catharine Oertel, Kenneth Alberto Funes Mora, Joakim Gustafson, J. Odobez
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引用次数: 23

摘要

估计一个沉默的参与者的参与程度和他在小组讨论中的角色是具有挑战性的,因为在给定的时间内没有与言语相关的线索。然而,拥有这些可用的信息可以提供对整个团队动态的重要见解。在本文中,我们研究了倾听者的分类:注意倾听者、侧面参与者和旁观者。我们设计了一个薄片感知测试,要求受试者在15秒的视频片段中评估听众的角色和参与程度,这些视频片段取自小组访谈的语料库。结果表明,人类通常能够评估沉默参与者的角色。使用注释从一组多模态低级特征中进行识别,例如过去的说话活动,反向通道(视觉和口头)以及凝视模式,我们可以识别能够区分不同听众类别的特征。此外,结果表明,在二元互动中观察到的听者的许多视听效果也适用于多方互动。初步分类器的准确率达到64%。
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Deciphering the Silent Participant: On the Use of Audio-Visual Cues for the Classification of Listener Categories in Group Discussions
Estimating a silent participant's degree of engagement and his role within a group discussion can be challenging, as there are no speech related cues available at the given time. Having this information available, however, can provide important insights into the dynamics of the group as a whole. In this paper, we study the classification of listeners into several categories (attentive listener, side participant and bystander). We devised a thin-sliced perception test where subjects were asked to assess listener roles and engagement levels in 15-second video-clips taken from a corpus of group interviews. Results show that humans are usually able to assess silent participant roles. Using the annotation to identify from a set of multimodal low-level features, such as past speaking activity, backchannels (both visual and verbal), as well as gaze patterns, we could identify the features which are able to distinguish between different listener categories. Moreover, the results show that many of the audio-visual effects observed on listeners in dyadic interactions, also hold for multi-party interactions. A preliminary classifier achieves an accuracy of 64 %.
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