使用可穿戴设备的社会智能建模

A. Mihoub, G. Lefebvre
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引用次数: 9

摘要

社会信号处理技术为深入分析社会面对面互动中的人类行为提供了机会。随着最近的进步,今后有可能使用这些技术来增强社会互动,特别是口头陈述中的人类行为。本文的目标是训练一个计算模型,该模型能够为公众演讲者提供有关其口语交际的相关反馈。因此,这种模式的作用是增强演说家的社会智力,然后是他的演讲的相关性。为此,我们提出了一个原始的交互设置,其中扬声器仅配备可穿戴设备。提取并自动标注了语音量、语调、语速、眼睛注视、手势和肢体动作等几种语音模式。向参与者发送了一份离线报告,其中包含总体模式的表现分数。此外,我们还进行了一项实验后的研究,收集参与者对所研究的互动的许多方面的意见,结果是相当积极的。此外,我们对每个演示会话的推荐反馈进行了注释,并使用多模态性能分数作为输入训练动态贝叶斯网络模型来检索这些注释。我们将证明我们的评估行为模型与其他模型相比表现出良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Intelligence Modeling using Wearable Devices
Social Signal Processing techniques have given the opportunity to analyze in-depth human behavior in social face-to-face interactions. With recent advancements, it is henceforth possible to use these techniques to augment social interactions, especially the human behavior in oral presentations. The goal of this paper is to train a computational model able to provide a relevant feedback to a public speaker concerning his coverbal communication. Hence, the role of this model is to augment the social intelligence of the orator and then the relevance of his presentation. To this end, we present an original interaction setting in which the speaker is equipped with only wearable devices. Several coverbal modalities have been extracted and automatically annotated namely speech volume, intonation, speech rate, eye gaze, hand gestures and body movements. An offline report was addressed to participants containing the performance scores on the overall modalities. In addition, a post-experiment study was conducted to collect participant's opinions on many aspects of the studied interaction and the results were rather positive. Moreover, we annotated recommended feedbacks for each presentation session, and to retrieve these annotations, a Dynamic Bayesian Network model was trained using as inputs the multimodal performance scores. We will show that our assessment behavior model presents good performances compared to other models.
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