SDIROct 14, 2015

Automatic Transcription of Flamenco Singing from Polyphonic Music Recordings

arXiv:1510.04039v139 citations
Originality Incremental advance
AI Analysis

This addresses a challenging domain-specific problem in music information retrieval for flamenco music analysis, with incremental improvements tailored to this genre.

The paper tackled automatic note-level transcription of flamenco singing from polyphonic recordings, proposing a system that outperformed state-of-the-art methods in voicing accuracy, onset detection, and overall performance on flamenco datasets.

Automatic note-level transcription is considered one of the most challenging tasks in music information retrieval. The specific case of flamenco singing transcription poses a particular challenge due to its complex melodic progressions, intonation inaccuracies, the use of a high degree of ornamentation and the presence of guitar accompaniment. In this study, we explore the limitations of existing state of the art transcription systems for the case of flamenco singing and propose a specific solution for this genre: We first extract the predominant melody and apply a novel contour filtering process to eliminate segments of the pitch contour which originate from the guitar accompaniment. We formulate a set of onset detection functions based on volume and pitch characteristics to segment the resulting vocal pitch contour into discrete note events. A quantised pitch label is assigned to each note event by combining global pitch class probabilities with local pitch contour statistics. The proposed system outperforms state of the art singing transcription systems with respect to voicing accuracy, onset detection and overall performance when evaluated on flamenco singing datasets.

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