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音色分析×楽器認識×
分野音楽情報検索音楽情報検索
系統Machine learningMachine learning
提唱年19772005
提唱者John M. GreyAntti Eronen
種類Acoustic feature extraction and analysisTimbre-based audio classification
原典Grey, J. M. (1977). Multidimensional perceptual scaling of musical timbres. The Journal of the Acoustical Society of America, 61(5), 1270-1277. DOI ↗Eronen, A., Peltonen, V., Tuomi, J., Klapuri, A., Fagerlund, S., Sorsa, T., & Lorho, G. (2005). Audio-based context recognition. IEEE Transactions on Audio, Speech, and Language Processing, 14(1), 321-329. DOI ↗
別名tone color analysis, spectral characterization, timbre descriptor extractioninstrument classification, timbre identification, instrument detection
関連55
概要Timbre analysis is the computational characterization and modeling of tone color—the perceived quality that distinguishes one instrument from another even at the same pitch and loudness. Pioneered by Grey (1977), timbre analysis extracts acoustic descriptors that characterize spectral shape, temporal dynamics, and harmonic content. It underlies instrument identification, music similarity assessment, and audio retrieval. Unlike melody and rhythm, timbre is high-dimensional and context-dependent, making it one of the most challenging aspects of music analysis.Instrument recognition is the task of automatically identifying which musical instruments are present in an audio recording. Formalized by Eronen et al. (2005), it addresses timbre—the tonal quality distinguishing one instrument from another. Instrument recognition is essential for music analysis, transcription, automatic indexing, and music education. It remains challenging in polyphonic contexts but has achieved good accuracy in solo and sparse accompaniment scenarios.
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ScholarGate手法を比較: Timbre Analysis · Instrument Recognition. 2026-06-17に以下より取得 https://scholargate.app/ja/compare