Classification of Emotion with Audio Analysis

Coşkucan Büyükyildiz, I. Saritas, A. Yasar
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Abstract

Classification is an important technique used to predict which group the samples in the data belong to. In this study it is aimed to classify according to emotions by extracting audio features. The study was performed using audio data from 2 male and 2 female individuals that spoke in four different emotions amused, angry, neutral, and sleepy. “MFCC” as a Cepstral feature, “Centroid, Flatness, Skewness, Crest, Flux, Slope, Decrease, Kurtosis, Spread, Entropy, roll-off point” as Spectral Feature, “Pitch, Harmonic ratio” as Periodicity Features were used in voices. All classification algorithms that were located in the classification learner toolbox in Matlab were applied to the data, and the algorithm providing the highest accuracy was asked to estimate the emotion. 26 inputs and one output were calculated, and the performance results had compared to each other. According to the results, it has been seen that the support vector machine algorithm provides the highest accuracy performance. Considering the performances obtained, this study reveals that it is possible to distinguish and classify sounds using sentimental data and sound feature parameters.
基于音频分析的情绪分类
分类是一项重要的技术,用于预测数据中的样本属于哪一类。本研究的目的是通过提取音频特征来进行情感分类。这项研究使用了两名男性和两名女性的音频数据,他们以四种不同的情绪说话,包括开心、生气、中性和困倦。“MFCC”作为倒谱特征,“质心、平坦度、偏度、波峰、通量、斜率、减小、峰度、扩散、熵、滚落点”作为谱特征,“音高、谐波比”作为周期特征。将Matlab中分类学习器工具箱中的所有分类算法应用于数据,并要求准确率最高的算法对情绪进行估计。计算了26个输入和1个输出,并对性能结果进行了比较。从结果来看,支持向量机算法提供了最高的精度性能。考虑到所获得的性能,本研究表明,使用情感数据和声音特征参数来区分和分类声音是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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