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Comparison of feature selection methods in voice based emotion recognition systems

机译:基于语音的情绪识别系统中特征选择方法的比较

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The aim of this paper to compare the effect of feature selection methods in emotion recognition from speech and song. Emotion recognition composes of signal processing, feature extraction and classification steps. Nowadays, many studies have focused on common features of speech and song, and have used sub-task classification approach for these systems. In this paper, speech and song data are merged and processed together to focus on the feature selection phase. Autoencoder, Relief-F and Chi-Square selection methods are selected to increase the accuracy of classification. Although selecting features can output similar results, using Relief-F method and Mel Frequency Cepstral Coefficient type of feature outperform these already achieved accuracy rates.
机译:本文旨在比较特征选择方法在语音和歌曲情感识别中的作用。情感识别由信号处理,特征提取和分类步骤组成。如今,许多研究都集中在语音和歌曲的共同特征上,并对这些系统使用了子任务分类方法。在本文中,语音和歌曲数据被合并和处理在一起以集中于特征选择阶段。选择自动编码器,Relief-F和Chi-Square选择方法以提高分类的准确性。尽管选择特征可以输出相似的结果,但使用Relief-F方法和“特征频率倒谱系数”类型的特征要优于这些已经达到的准确率。

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