Feature-Based Understanding of Human Emotions

Jonathon Moody, D. Jeong, Soo-Yeon Ji
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引用次数: 1

Abstract

Since human emotion recognition is considered as one of the priority research topics in academia and industries to help people manage their stress and emotions, many significant research studies have been performed by proposing innovative techniques to recognize emotions. However, it is still difficult to understand the emotions. In this paper, we focused on analyzing the emotions computationally. In detail, a wavelet transform technique is utilized to extract significant features to find patterns in an emotion dataset. With the features, both classification and visual analysis are performed. For the classification, Logistic Regression, C4.5, and Support Vector Machine are used. Visualization techniques are utilized to show the similarity and difference among the emotion patterns. From the analysis, we found that there is an improvement in identifying the difference among the emotions.
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基于特征的人类情感理解
由于人类情绪识别被学术界和工业界认为是帮助人们管理压力和情绪的优先研究课题之一,许多重要的研究都是通过提出创新的情绪识别技术来进行的。然而,这种情绪仍然难以理解。在本文中,我们着重于对情绪进行计算分析。详细地说,利用小波变换技术提取重要特征来寻找情感数据集中的模式。利用这些特征进行分类和可视化分析。对于分类,使用逻辑回归,C4.5和支持向量机。使用可视化技术来显示情感模式之间的相似性和差异性。从分析中,我们发现在识别情绪之间的差异方面有了进步。
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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