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Music Genre Classification Based on Timbral Texture and Rhythmic Content Features

  • Baniya, Babu Kaji (Dept. of Computer Engineering, Chonbuk National University) ;
  • Ghimire, Deepak (Dept. of Computer Engineering, Chonbuk National University) ;
  • Lee, Joonwhon (Dept. of Computer Engineering, Chonbuk National University)
  • Published : 2013.05.10

Abstract

Music genre classification is an essential component for music information retrieval system. There are two important components to be considered for better genre classification, which are audio feature extraction and classifier. This paper incorporates two different kinds of features for genre classification, timbral texture and rhythmic content features. Timbral texture contains several spectral and Mel-frequency Cepstral Coefficient (MFCC) features. Before choosing a timbral feature we explore which feature contributes less significant role on genre discrimination. This facilitates the reduction of feature dimension. For the timbral features up to the 4-th order central moments and the covariance components of mutual features are considered to improve the overall classification result. For the rhythmic content the features extracted from beat histogram are selected. In the paper Extreme Learning Machine (ELM) with bagging is used as classifier for classifying the genres. Based on the proposed feature sets and classifier, experiment is performed with well-known datasets: GTZAN databases with ten different music genres, respectively. The proposed method acquires the better classification accuracy than the existing approaches.

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