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Emotion Recognition from German Speech Using Feature Selection Based Decision Support System

机译:使用基于特征选择的决策支持系统,从德语演讲中的情感识别

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The speech signal plays a vital role in human communication. From last very years emotion characterization from speech has gained popularity in domain of signal and speech processing. In this article we propose a decision support system for emotion recognition from German speech signal database. A set of 535 speech signals with 7 emotion labels are investigated using prominent feature descriptors viz, Mel frequency coefficients, signal energy, pitch , zero crossing rate and formant feature numeric’s to generate a set of 37 features for each speech signal respectively. Decision support system is modelled in feature space using Support Vector Machine and resultant classification accuracy is further enhanced using Information Theory based feature selection measures to achieve the highest test classification accuracy of 93 percent respectively.
机译:语音信号在人类通信中起着至关重要的作用。从讲话中的持续情绪表征在信号和语音处理领域的普及中获得了普及。在本文中,我们提出了一种从德语语音信号数据库中的情感识别的决策支持系统。使用突出特征描述符VIZ,MEL频率系数,信号能量,音高,零交叉率和格式化人特征数字来研究具有7个情感标签的535个语音信号,分别为每个语音信号产生一组37个特征。决策支持系统在使用支持向量机的特征空间中建模,并使用基于信息理论的特征选择措施进一步增强了所得的分类精度,以实现93%的最高测试分类准确度。

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