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A Study on the Search of the Most Discriminative Speech Features in the Speaker Dependent Speech Emotion Recognition

机译:基于说话人的语音情感识别中最具歧视性语音特征的搜索研究

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摘要

Expressing emotion to others and recognizing emotion state of the counterpart are not difficult for human. Emotion state of a person may be recognized from the facial expression, voice, and/or gesture. Speech emotion recognition research gained a lot of attention in recent years. One of the important subjects in speech emotion recognition research is the feature selection. The speech features used will greatly influence the recognition rate. In this research, we try to find the most discriminative features for emotion recognition out from a set of 78 features. We use these features to study the feature characteristics for individual speaker by using a GMM classifier. We obtained an average of 71% recognition rate in speaker dependent case while an average of 48% recognition rate in speaker independent case.
机译:向他人表达情感并认识对方的情感状态对人类来说并不困难。可以从面部表情,语音和/或手势识别人的情绪状态。语音情感识别研究近年来受到了广泛的关注。特征选择是语音情感识别研究中的重要课题之一。使用的语音功能将极大地影响识别率。在这项研究中,我们尝试从78种功能中找出最有区别的情感识别功能。我们使用这些功能来通过GMM分类器研究单个说话者的功能特征。我们在说话人依赖的情况下获得了平均71%的识别率,而在说话人独立的情况下获得了48%的识别率。

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