A Machine Learning Approach to Expression Modeling for the Singing Voice

Maria-Cristina Marinescu, Rafael Ramirez

Producció científica: Capítol de llibreContribució a congrés/conferènciaAvaluat per experts

Resum

This work investigates how opera singers manipulate timing in order to produce expressive performances that have common features but also bear a distinguishable personal style. We characterize performances not only relative to the score, but also consider the contribution of features extracted from the libretto. Our approach is based on applying machine learning to extract singer-specific patterns of expressive singing from performances by Josep Carreras and Placido Domingo. We compare and contrast some of these rules, and we draw analogies between them and some of the general expressive performance rules from existing literature.
Idioma originalAnglès
Títol de la publicació2011 International Conference On Computer And Computational Intelligence (iccci 2011)
EditorAmer Soc Mechanical Engineers
Pàgines311-315
Nombre de pàgines5
ISBN (imprès)978-0-7918-5992-6
DOIs
Estat de la publicacióPublicada - 2012
Publicat externament
EsdevenimentInternational Conference on Computer and Computational Intelligence (ICCCI 2011) - Bangkok, Thailand
Durada: 2 de des. 20114 de des. 2011

Conferència

ConferènciaInternational Conference on Computer and Computational Intelligence (ICCCI 2011)
País/TerritoriThailand
CiutatBangkok
Període2/12/114/12/11

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