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SVM-MLP-PNN Classifiers on Speech Emotion Recognition Field - A Comparative Study

机译:语音情感识别领域的SVM-MLP-PNN分类器-比较研究

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In this paper, we present a comparative analysisof three classifiers for speech signal emotion recognition.Recognition was performed on emotional Berlin Database.This work focuses on speaker and utterance (phrase)dependent and independent framework. One hundred thirtythree (133) sound/speech features were extracted from Pitch,Mel Frequency Cepstral Coefficients, Energy and Formantsand were evaluated in order to create a feature set sufficient todiscriminate between seven emotions in acted speech. A set of26 features was selected by statistical method and MultilayerPercepton, Probabilistic Neural Networks and Support VectorMachine were used for the Emotion Classification at sevenclasses: anger, happiness, anxiety/fear, sadness, boredom,disgust and neutral. In speaker dependent framework,Probabilistic Neural Network classifier reached very highaccuracy of 94%, whereas in speaker independent framework,Support Vector Machine classification reached the bestaccuracy of 80%. The results of numerical experiments aregiven and discussed in the paper.
机译:在本文中,我们对语音信号情感识别的三个分类器进行了比较分析。在情感柏林数据库上进行了识别。从音高,梅尔频率倒谱系数,能量和共振峰中提取了一百三十三(133)个声音/语音特征,并对其进行了评估,以创建足以区分实际语音中七个情绪的特征集。通过统计方法选择了一组26个特征,并将MultilayerPercepton,概率神经网络和Support VectorMachine用于情感分类,分为七个类别:愤怒,幸福,焦虑/恐惧,悲伤,无聊,厌恶和中立。在与说话者相关的框架中,概率神经网络分类器达到了94%的非常高的准确性,而在与说话者无关的框架中,支持向量机分类达到了80%的最佳准确性。文中给出并讨论了数值实验的结果。

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