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Automated Violin Fingering Transcription Through Analysis of an Audio Recording
Author(s) -
Akira Maezawa,
Katsutoshi Itoyama,
Kazunori Komatani,
Tetsuya Ogata,
Hiroshi G. Okuno
Publication year - 2012
Publication title -
computer music journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.219
H-Index - 41
eISSN - 1531-5169
pISSN - 0148-9267
DOI - 10.1162/comj_a_00129
Subject(s) - violin , computer science , speech recognition , timbre , sequence (biology) , polyphony , estimator , artificial intelligence , acoustics , mathematics , statistics , biology , visual arts , genetics , art , musical , physics
We present a method to recuperate fingerings for a given piece of violin music in order to recreate the timbre of a given audio recording of the piece. This is achieved by first analyzing an audio signal to determine the most likely sequence of two-dimensional fingerboard locations (string number and location along the string), which recovers elements of violin fingering relevant to timbre. This sequence is then used as a constraint for finding an ergonomic sequence of finger placements that satisfies both the sequence of notated pitch and the given fingerboard-location sequence. Fingerboard-location-sequence estimation is based on estimation of a hidden Markov model, each state of which represents a particular fingerboard location and emits a Gaussian mixture model of the relative strengths of harmonics. The relative strengths of harmonics are estimated from a polyphonic mixture using score-informed source segregation, and compensates for discrepancies between observed data and training data through mean normalization. Fingering estimation is based on the modeling of a cost function for a sequence of finger placements. We tailor our model to incorporate the playing practices of the violin. We evaluate the performance of the fingerboard-location estimator with a polyphonic mixture, and with recordings of a violin whose timbral characteristics differ significantly from that of the training data. We subjectively evaluate the fingering estimator and validate the effectiveness of tailoring the fingering model towards the violin

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