DocumentCode :
595003
Title :
Automatic musical genre classification using sparsity-eager support vector machines
Author :
Aryafar, Kamelia ; Jafarpour, Sina ; Shokoufandeh, A.
Author_Institution :
Drexel Univ., Philadelphia, PA, USA
fYear :
2012
fDate :
11-15 Nov. 2012
Firstpage :
1526
Lastpage :
1529
Abstract :
Constructing robust categorical and typological classifiers, i.e., finding auditory constructs utilized for describing music categories, is an important problem in music genre classification. Supervised methods such as support vector machine (SVM) achieve state of the art performance for genre classification but suffer from over-fitting on training examples. In this paper, we introduce a supervised classifier, ℓ1-SVM, that utilizes sparse methods to deal with over-fitting for genre classification. We compare the proposed algorithm to competing learning methods such as SVM, logistic regression, and ℓ1-regression for genre classification. Experimental results suggest that the proposed method using short-time audio features (MFCCs) outperforms the baseline algorithms in terms of the average classification accuracy rate of musical genres.
Keywords :
audio signal processing; feature extraction; learning (artificial intelligence); music; signal classification; support vector machines; ℓ1-SVM; ℓ1-regression; MFCC; automatic musical genre classification; baseline algorithms; categorical classifiers; competing learning methods; logistic regression; musical genre average classification accuracy rate; over-fitting; short-time audio features; sparse methods; sparsity-eager support vector machines; supervised classifier; supervised methods; typological classifiers; Accuracy; Logistics; Mel frequency cepstral coefficient; Optimization; Support vector machines; Training; USA Councils;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Pattern Recognition (ICPR), 2012 21st International Conference on
Conference_Location :
Tsukuba
ISSN :
1051-4651
Print_ISBN :
978-1-4673-2216-4
Type :
conf
Filename :
6460433
Link To Document :
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