Smart Data Driven System for Pathological Voices Classification

Registro completo de metadados
MetadadosDescriçãoIdioma
Autor(es): dc.contributorFaculdade de Engenharia da Universidade do Porto (FEUP)-
Autor(es): dc.contributorUniversidade Estadual Paulista (UNESP)-
Autor(es): dc.contributorInstituto Politecnico de Braganca (IPB)-
Autor(es): dc.creatorFernandes, Joana-
Autor(es): dc.creatorJunior, Arnaldo Candido-
Autor(es): dc.creatorFreitas, Diamantino-
Autor(es): dc.creatorTeixeira, João Paulo-
Data de aceite: dc.date.accessioned2025-08-21T23:24:11Z-
Data de disponibilização: dc.date.available2025-08-21T23:24:11Z-
Data de envio: dc.date.issued2023-07-29-
Data de envio: dc.date.issued2023-07-29-
Data de envio: dc.date.issued2021-12-31-
Fonte completa do material: dc.identifierhttp://dx.doi.org/10.1007/978-3-031-23236-7_29-
Fonte completa do material: dc.identifierhttp://hdl.handle.net/11449/246824-
Fonte: dc.identifier.urihttp://educapes.capes.gov.br/handle/11449/246824-
Descrição: dc.descriptionClassifying and recognizing voice pathologies non-invasively using acoustic analysis saves patient and specialist time and can improve the accuracy of assessments. In this work, we intend to understand which models provide better accuracy rates in the distinction between healthy and pathological, to later be implemented in a system for the detection of vocal pathologies. 194 control subjects and 350 pathological subjects distributed across 17 pathologies were used. Each subject has 3 vowels in 3 tones, which is equivalent to 9 sound files per subject. For each sound file, 13 parameters were extracted (jitta, jitter, Rap, PPQ5, ShdB, Shim, APQ3, APQ5, F0, HNR, autocorrelation, Shannon entropy and logarithmic entropy). For the classification between healthy and pathological, several classifiers were used (Decision Trees, Discriminant Analysis, Logistic Regression Classifiers, Naive Bayes Classifiers, Support Vector Machines, Nearest Neighbor Classifiers, Ensemble Classifiers, Neural Network Classifiers) with various models. For each patient, 118 parameters were used (13 acoustic parameters * 9 sound files per subject, plus the subject’s gender). As pre-processing of the input matrix data, the Outliers treatment was used using the quartile method, then the data were normalized and, finally, Principal Component Analysis (PCA) was applied in order to reduce the dimension. As the best model, the Wide Neural Network was obtained, with an accuracy of 98% and AUC of 0.99.-
Descrição: dc.descriptionResearch Centre in Digitaization and Intelligent Robotics (CeDRI) Instituto Politecnico de Braganca (IPB) Braganca 5300 Portugal Faculdade de Engenharia da Universidade do Porto (FEUP)-
Descrição: dc.descriptionSão Paulo State University Institute of Biosciences Language and Physical Sciences, SP-
Descrição: dc.descriptionFaculdade de Engenharia da Universidade do Porto (FEUP)-
Descrição: dc.descriptionResearch Centre in Digitaization and Intelligent Robotics (CeDRI) Applied Management Research Unit (UNIAG) and Laboratório para a Sustentabilidade e Tecnologia em Regiões de Montanha (SusTEC) Instituto Politecnico de Braganca (IPB)-
Descrição: dc.descriptionSão Paulo State University Institute of Biosciences Language and Physical Sciences, SP-
Formato: dc.format419-426-
Idioma: dc.languageen-
Relação: dc.relationCommunications in Computer and Information Science-
???dc.source???: dc.sourceScopus-
Palavras-chave: dc.subjectMachine learning-
Palavras-chave: dc.subjectPrincipal component analysis-
Palavras-chave: dc.subjectSpeech features-
Palavras-chave: dc.subjectSpeech pathologies-
Palavras-chave: dc.subjectVocal acoustic analysis-
Título: dc.titleSmart Data Driven System for Pathological Voices Classification-
Tipo de arquivo: dc.typeaula digital-
Aparece nas coleções:Repositório Institucional - Unesp

Não existem arquivos associados a este item.