音乐情感识别的特征选择

E. Widiyanti, S. Endah
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引用次数: 4

摘要

特征选择是预处理中的一个步骤,可以用来降低数据维数,去除不相关的数据。在特征选择方面有几种算法。本研究将比较几种特征选择算法,即顺序前向选择、顺序后向选择和救济F,以找到对音乐情感识别有很大影响的特征。该方法在音乐情感识别中采用了带有RBF核的支持向量机。实验结果表明,在最高准确率的识别结果中,影响最大的特征是通过顺序向后选择算法获得的过零率、音乐模式、谐波、音高和能量。本研究中特征的选择可以将准确率提高8%。
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Feature Selection for Music Emotion Recognition
Feature selection is step in preprocessing that can be used to reduce data dimension and eliminate the irrelevan data. There are several algorithms in feature selection. This study will compare several feature selection algorithms, namely Sequential Forward Selection, Sequential Backward Selection, and Relief F to find features that are very influential in musical emotional recognition. The method in music emotion recognition uses Support Vector Machine with the RBF kernel. The experimental results show that based on the recognition results with the highest accuracy, the most influential features are the zero crossing rate, music mode, harmonics, pitch and energy obtained through the Sequential Backward Selection algorithm. The selection of features in this study can increase accuracy up to 8%.
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