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Speech emotion classification using SVM and MLP on prosodic and voice quality features

机译:使用SVM和MLP对韵律和语音质量特征进行语音情感分类

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摘要

In this paper, a comparison of emotion classification undertaken by the Support Vector Machine (SVM) and the Multi-Layer Perceptron (MLP) Neural Network, using prosodic and voice quality features extracted from the Berlin Emotional Database, is reported. The features were extracted using PRAAT tools, while the WEKA tool was used for classification. Different parameters were set up for both SVM and MLP, which are used to obtain an optimized emotion classification. The results show that MLP overcomes SVM in overall emotion classification performance. Nevertheless, the training for SVM was much faster when compared to MLP. The overall accuracy was 76.82% for SVM and 78.69% for MLP. Sadness was the emotion most recognized by MLP, with accuracy of 89.0%, while anger was the emotion most recognized by SVM, with accuracy of 87.4%. The most confusing emotions using MLP classification were happiness and fear, while for SVM, the most confusing emotions were disgust and fear.
机译:在本文中,报告了使用从柏林情感数据库提取的韵律和语音质量特征,对支持向量机(SVM)和多层感知器(MLP)神经网络进行的情感分类的比较。使用PRAAT工具提取特征,而使用WEKA工具进行分类。为SVM和MLP设置了不同的参数,这些参数用于获得优化的情感分类。结果表明,MLP在总体情感分类性能上克服了SVM。但是,与MLP相比,对SVM的训练要快得多。 SVM的整体准确性为76.82%,MLP的整体准确性为78.69%。悲伤是MLP最能识别的情绪,准确度为89.0%,而愤怒是SVM最能识别的情绪,准确度为87.4%。使用MLP分类最容易混淆的情绪是幸福和恐惧,而对于SVM,最容易混淆的情绪是厌恶和恐惧。

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