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Korean Traditional Music Genre Classification Using Sample and MIDI Phrases 원문보기

KSII Transactions on internet and information systems : TIIS, v.12 no.4, 2018년, pp.1869 - 1886  

Lee, JongSeol (Department of Computer Science and Engineering Konkuk University) ,  Lee, MyeongChun (Smart Media R&D Korea Electronics Technology Institute) ,  Jang, Dalwon (Smart Media R&D Korea Electronics Technology Institute) ,  Yoon, Kyoungro (Department of Computer Science and Engineering Konkuk University)

Abstract AI-Helper 아이콘AI-Helper

This paper proposes a MIDI- and audio-based music genre classification method for Korean traditional music. There are many traditional instruments in Korea, and most of the traditional songs played using the instruments have similar patterns and rhythms. Although music information processing such as...

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