Recognizing emotions in spoken dialogue with acoustic and lexical cues

Leimin Tian, Johanna D. Moore, Catherine Lai
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引用次数: 5

Abstract

Emotions play a vital role in human communications. Therefore, it is desirable for virtual agent dialogue systems to recognize and react to user's emotions. However, current automatic emotion recognizers have limited performance compared to humans. Our work attempts to improve performance of recognizing emotions in spoken dialogue by identifying dialogue cues predictive of emotions, and by building multimodal recognition models with a knowledge-inspired hierarchy. We conduct experiments on both spontaneous and acted dialogue data to study the efficacy of the proposed approaches. Our results show that including prior knowledge on emotions in dialogue in either the feature representation or the model structure is beneficial for automatic emotion recognition.
通过声音和词汇线索识别口语对话中的情绪
情感在人类交流中起着至关重要的作用。因此,虚拟代理对话系统对用户的情绪进行识别和反应是很有必要的。然而,目前的自动情绪识别与人类相比,性能有限。我们的工作试图通过识别预测情绪的对话线索,以及建立具有知识启发层次的多模态识别模型,来提高口语对话中情绪识别的性能。我们对自发对话和行为对话数据进行了实验,以研究所提出方法的有效性。我们的研究结果表明,在特征表示或模型结构中包含对话中情绪的先验知识有利于情绪的自动识别。
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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