会议专题

Music Genre Classification Using Modulation Spectral Features and Multiple Prototype Vectors Representation

In this paper, we will propose an automatic music genre classification approach based on long-term modulation spectral analysis of spectral (OSC and MPEG-7 NASE) as well as cepstral (MFCC) features. A modulation spectrogram corresponding to the collection of modulation spectra of MFCC/OSC/NASE will be constructed. The modulation spectrum is then decomposed into several logarithmically spaced modulation subbands. For each modulation subband, a new set of modulation spectral features, including modulation spectral contrast (MSC), modulation spectral valley (MSV), modulation spectral energy (MSE), modulation spectral centroid (MSCEN) and modulation spectral flatness (MSF) are then computed from each modulation subband. To cope with the problem that the feature vectors extracted from the music tracks of identical music genre might differ significantly, each music genre is modeled with a number of representative prototype vectors generated by c-means clustering algorithm. An information fusion approach which integrates both feature level fusion method and decision level combination method is then employed to improve the classification accuracy. Experiments conducted on ISMIR 2004 music dataset have shown that our proposed approach can achieve higher classification accuracy than other approaches with the same experimental setup.

Mel-frequency cepstral coefficients modulation spectral analysis music genre classification normalized audio spectrum envelope octave-based spectral contrast

Chang-Hsing Lee Chih-Hsun Chou Cheng-Chang Lien Jen-Cheng Fang

Department of Computer Science and Information Engineering Chung Hua University, Hsinchu, Taiwan

国际会议

2011 4th International Congress on Image and Signal Processing(第四届图像与信号处理国际学术会议 CISP 2011)

上海

英文

2793-2797

2011-10-15(万方平台首次上网日期,不代表论文的发表时间)