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http://dx.doi.org/10.3745/KIPSTB.2010.17B.2.107

Musical Instrument Recognition for the Categorization of UCC Music Source  

Kwon, Soon-Il (세종대학교 디지털콘텐츠학과)
Park, Wan-Joo (한국과학기술연구원(KIST))
Abstract
A guitar, a piano, and a violin are popular musical instruments for User Created Contents(UCC). However the patterns of audio signal generated by a guitar and a piano are too similar to differentiate. The difference between two musical instruments can be found by analyzing the frequency variation per each band near signal peaks. The distribution of probability on the existence of signal peaks based on Cumulative Histogram were applied to musical instrument recognition. Experiments with statistical models of the frequency variation per each band near signal peaks showed the 14% improvement of musical instrument recognition.
Keywords
User Created Contents(UCC); Musical Instrument Recognition; Peak Detection;
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