A Tempo Feature via Modulation Spectrum Analysis and its Application to Music Emotion Classification

This paper proposes a tempo feature extraction method based on the long-term modulation spectrum analysis. To transform the modulation spectrum to a condensed feature vector, the log-scale modulation frequency coefficients are introduced. This idea aims at averaging the modulation frequency energy via the constant-Q filter-banks. Further it is pointed out that the feature can be extracted directly from the perceptually compressed data of digital music archives. To verify the effectiveness of the feature and its utility to music applications, the feature vector is used in a music emotion classification system. The system consisting two layers of Adaboost classifiers. In the first layer the conventional timbre features are employed. Then by adding the tempo feature in the second layer, the classification precision is improved dramatically. By this way the discriminability of the classifier based on the given features can be exploited extremely. The system obtains high classification precision on a small corpus. It proves that the proposed feature is very effective and computationally efficient to characterize the tempo information of music

[1]  Mohan S. Kankanhalli,et al.  Automatic music summarization in compressed domain , 2004, 2004 IEEE International Conference on Acoustics, Speech, and Signal Processing.

[2]  Les E. Atlas,et al.  Modulation-scale analysis for content identification , 2004, IEEE Transactions on Signal Processing.

[3]  Robert E. Schapire,et al.  A Brief Introduction to Boosting , 1999, IJCAI.

[4]  George Tzanetakis,et al.  Musical genre classification of audio signals , 2002, IEEE Trans. Speech Audio Process..

[5]  J. Russell,et al.  Independence and bipolarity in the structure of current affect. , 1998 .

[6]  Shingo Uchihashi,et al.  The beat spectrum: a new approach to rhythm analysis , 2001, IEEE International Conference on Multimedia and Expo, 2001. ICME 2001..

[7]  B. David,et al.  TEMPO EXTRACTION FOR AUDIO RECORDINGS , 2022 .

[8]  J. Sloboda,et al.  Music and emotion: Theory and research , 2001 .

[9]  Lie Lu,et al.  Automatic mood detection from acoustic music data , 2003, ISMIR.

[10]  Yueting Zhuang,et al.  Music information retrieval by detecting mood via computational media aesthetics , 2003, Proceedings IEEE/WIC International Conference on Web Intelligence (WI 2003).