음악 구조의 패턴에 기반을 둔 다음(Polyphonic) 피아노 솔로 음악으로부터의 멜로디 추출 Extracting Melodies from Polyphonic Piano Solo Music Based on Patterns of Music Structure

نویسندگان

  • Yoonjae Choi
  • Hodong Lee
  • Jong C. Park
چکیده

Thanks to the development of the Internet, people can easily access a vast amount of music. This brings attention to application systems such as a melody-based music search service or music recommendation service. Extracting melodies from music is a crucial process to provide such services. This paper introduces a novel algorithm that can extract melodies from piano music. Since piano can produce polyphonic music, we expect that by studying melody extraction from piano music, we can help extract melodies from general polyphonic music. 핵심어: Melody Extraction, Piano, Polyphonic Music, Music Information Retrieval 본 논문은 2008 년 21 세기 프론티어 연구개발 사업(인간 기능 생활지원 지능로봇 기술개발사업)을 통하여 지식경제부의 지원을 받았음. *주저자 : 한국과학기술원 전산학과 석사과정 e-mail: [email protected] **공동저자 : 한국과학기술원 전산학과 Post Doctor e-mail: [email protected] ***공동저자 : 한국과학기술원 전산학과 박사과정 e-mail: [email protected] ****교신저자 : 한국과학기술원 전산학과 교수; e-mail: [email protected] HCI2009 학술대회

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تاریخ انتشار 2009