基于MFCC音频特征的支持向量机语音情感识别模型

Arziki Pratama, S. W. Sihwi
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引用次数: 3

摘要

情绪是日常生活中最具影响力的方面之一。每个人都有自己表达情感的方式。表达情感的一种方式是通过言语或说话。这产生了一个新的研究领域,称为语音情感识别,旨在通过声音理解一个人的情绪。本研究将采用支持向量机算法,通过语音处理得到的MFCC语音特征,建立语音情感识别模型。创建的模型可以用来分类六种情绪,即快乐,悲伤,愤怒,恐惧,厌恶和中性。使用径向基函数核的支持向量机算法创建的模型获得了最高的精度,该算法被认为能够根据声音对情绪进行适当的分类。组合数据集的使用也提高了模型的精度,每次测试都能获得70%以上的最高准确率。
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Speech Emotion Recognition Model using Support Vector Machine Through MFCC Audio Feature
Emotions are one of the most influential aspects of everyday life. Everyone has their own way of expressing their emotions. One way to express emotions is through speech or by speaking. This gave rise to a new field of research called speech emotion recognition which aims to understand a person’s emotions through sound. In this study, the Support Vector Machine algorithm will be implemented to create a speech emotion recognition model through the MFCC voice feature obtained from voice processing. The model created can be used to classify six emotions, namely happy, sad, angry, fear, disgust, and neutral. The highest accuracy is obtained from the model created using the Support Vector Machine algorithm using a radial basis function kernel which is considered to be able to properly classify emotions based on sound. The usage of the combined dataset also improved the accuracy of the model and are able to obtain above 70% highest accuracy on each test.
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