语音和面部表情情感识别的双峰方法

S. Emerich, E. Lupu, A. Apatean
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引用次数: 17

摘要

本文旨在提出一种融合面部表情和语音信息的多模态情感识别方法。使用两个不同主题的动态数据库,我们能够强调六种情绪:悲伤、愤怒、快乐、厌恶、恐惧和中性状态。利用支持向量机分类器对系统中的模型进行了设计和测试。首先,分析了仅基于面部表情和语音信号的系统的优点和局限性。然后在特征级别融合数据。结果表明,在这种情况下,情绪识别系统的性能和鲁棒性都得到了提高。
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Bimodal approach in emotion recognition using speech and facial expressions
This paper aims to present a multimodal approach in emotion recognition which integrates information from both facial expressions and speech signal. Using two acted databases on different subjects, we were able to emphasize six emotions: sadness, anger, happiness, disgust, fear and neutral state. The models in the system were designed and tested by using a Support Vector Machine classifier. Firstly, the analysis of the strengths and the limitations of the systems based only on facial expressions or speech signal was performed. Data was then fused at the feature level. The results show that in this case the performance and the robustness of the emotion recognition system have been improved.
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