Comparison OF Wavelet Based Feature Extraction Methods for Speech/Music Discrimination
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Date
2011
Authors
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Publisher
ISTANBUL UNIV FAC ENGINEERING
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Abstract
The speech/music discrimination systems have gaining importance in several intelligent audio retrieval algorithms due to the increasing size of the multimedia sources in our daily lives. This study aims to propose a speech/music discrimination system which utilizes the advantages of the wavelet transform. Also the performance of the discrete wavelet transform and the dual-tree wavelet transform has been compared with the conventional time frequency and cepstral domain features used in speech/music discrimination. The speech and music samples collected from common databases CD recording and internet radios have been classified with artificial neural networks with different feature sets. The principal component analysis has been applied to eliminate the correlated features before classification stage. Considering the number of vanishing moments and orthogonality the best performance has been obtained with Daubechies8 wavelet among the other members of the Daubechies family. According to the results the proposed feature set outperforms the traditional ones.
Description
Keywords
Speech/music discrimination, Discrete wavelet transform, Dual-tree wavelet transform, Daubechies mother wavelet, Discrete Wavelet Transform, Daubechies Mother Wavelet, Dual-Tree Wavelet Transform, Speech/Music Discrimination
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Source
Istanbul University - Journal of Electrical and Electronics Engineering
Volume
11
Issue
1
Start Page
1355
End Page
1362
SCOPUS™ Citations
3
checked on Apr 09, 2026
Web of Science™ Citations
2
checked on Apr 09, 2026
