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自动音乐转录×音高检测算法×
领域音乐信息检索音乐信息检索
方法族Machine learningMachine learning
起源年份20082002
提出者Anssi KlapuriAlain de Cheveigné
类型Polyphonic audio-to-symbolic conversionFundamental frequency estimation
开创性文献Klapuri, A. (2008). Automatic music transcription as we know it today. Journal of New Music Research, 33(3), 323-337. DOI ↗de Cheveigné, A., & Kawahara, H. (2002). YIN, a fundamental frequency estimator for speech and music. The Journal of the Acoustical Society of America, 111(4), 1917-1930. DOI ↗
别名music-to-notation conversion, score estimation, polyphonic transcriptionf0 detection, fundamental frequency tracking, monophonic pitch extraction
相关55
摘要Automatic music transcription is the task of converting audio recordings into symbolic music notation (e.g., scores with note pitch, onset, and duration). Formalized as a research problem by Klapuri (2008), it represents one of the most challenging tasks in music information retrieval. Transcription enables music education, composition analysis, and digital preservation. Modern systems, particularly those using deep learning for piano music (Hawthorne et al., 2019), have achieved significant progress but remain far from perfect on general polyphonic music.Pitch detection (or fundamental frequency estimation) is the task of automatically determining the perceived pitch of a monophonic (single-source) audio signal at each moment in time. Formalized by de Cheveigné and Kawahara (2002) through the YIN algorithm, it is foundational to music and speech processing. Pitch detection enables vocal analysis, music transcription, instrument tuning, and speech analysis. Monophonic pitch is unambiguous; polyphonic pitch detection is fundamentally harder and a distinct problem.
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ScholarGate方法对比: Automatic Music Transcription · Pitch Detection Algorithm. 于 2026-06-19 检索自 https://scholargate.app/zh/compare