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Call for Paper - May 2015 Edition
IJCA solicits original research papers for the May 2015 Edition. Last date of manuscript submission is April 20, 2015. Read More

Musical Instrument Recognition using Wavelet Coefficient Histograms

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IJCA Proceedings on Emerging Trends in Electronics and Telecommunication Engineering 2013
© 2014 by IJCA Journal
NCET
Year of Publication: 2014
Authors:
Kothe R. S.
Bhalke D. G.

Kothe R S. and Bhalke D G.. Article: Musical Instrument Recognition using Wavelet Coefficient Histograms. IJCA Proceedings on Emerging Trends in Electronics and Telecommunication Engineering 2013 NCET:37-41, March 2014. Full text available. BibTeX

@article{key:article,
	author = {Kothe R. S. and Bhalke D. G.},
	title = {Article: Musical Instrument Recognition using Wavelet Coefficient Histograms},
	journal = {IJCA Proceedings on Emerging Trends in Electronics and Telecommunication Engineering 2013},
	year = {2014},
	volume = {NCET},
	pages = {37-41},
	month = {March},
	note = {Full text available}
}

Abstract

In pattern recognition applications, finding compact and efficient feature set is important in overall problem solving. In this paper, feature analysis using wavelet coefficient histogram for the musical instrument recognition has been presented and compared with traditional features. The new proposed wavelet coefficient histograms features found compact and efficient with existing traditional features. With this work it is justified that the musical instrument information is available in particular frequency sub bands and can be easily extracted using wavelet features. The proposed wavelet based features shows better accuracy than existing traditional features. The database used in this work is from Mc Gill university, Canada . The work is carried out with 18 Musical instrument from different musical instrument families .

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