Learning models of speaker head nods with affective information

Jina Lee, H. Prendinger, Alena Neviarouskaya, S. Marsella
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引用次数: 16

Abstract

During face-to-face conversation, the speaker's head is continually in motion. These movements serve a variety of important communicative functions, and may also be influenced by our emotions. The goal for this work is to build a domain-independent model of speaker's head movements and investigate the effect of using affective information during the learning process. Once the model is learned, it can later be used to generate head movements for virtual agents. In this paper, we describe our machine-learning approach to predict speaker's head nods using an annotated corpora of face-to-face human interaction and emotion labels generated by an affect recognition model. We describe the feature selection process, training process, and the comparison of results of the learned models under varying conditions. The results show that using affective information can help predict head nods better than when no affective information is used.
带情感信息的说话人点头学习模型
在面对面的交谈中,说话者的头部一直在运动。这些动作具有多种重要的交流功能,也可能受到我们情绪的影响。本研究的目的是建立一个独立于领域的说话人头部运动模型,并研究在学习过程中使用情感信息的效果。一旦模型被学习,它就可以用来为虚拟代理生成头部运动。在本文中,我们描述了我们的机器学习方法来预测说话者的头部点头,该方法使用了面对面人类互动的注释语料库和情感识别模型生成的情感标签。我们描述了特征选择过程、训练过程以及在不同条件下学习模型的结果比较。结果表明,使用情感信息比不使用情感信息能更好地预测头部点头。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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