Automatic tracheoesophageal voice typing using acoustic parameters

Authors
Publication date 2013
Journal Interspeech
Event 14th Annual Conference of the International Speech Communication Association (Interspeech 2013)
Volume | Issue number 14
Pages (from-to) 2162-2166
Organisations
  • Faculty of Humanities (FGw) - Amsterdam Institute for Humanities Research (AIHR) - Amsterdam Center for Language and Communication (ACLC)
Abstract
The acoustics of isolated vowels, e.g. of /a/, have in many studies been linked to pathological voice types, such as tracheoesophageal (TE) voice. To study the possibilities of objective and automatic classification of pathological TE voice types, the acoustic features of /a/ were quantified and subsequently classified using a suit of machine learning technologies. Best classification was achieved by using a voiced-voiceless measurement and the harmonics-to-noise ratio. Other common acoustic features were correlated to pathological type as well, but were less distinctive in classification. We conclude that for objective and automatic classification of TE voice pathology, voicing distinction and harmonics-to-noise ratio are most relevant.
Document type Article
Note Proceedings title: Interspeech 2013: 14th Annual Conference of the International Speech Communication Association: Lyon, France, August 25-29, 2013 Publisher: ISCA Editors: F. Bimbot, C. Cerisara, C. Fougeron, G. Gravier, L. Lamel, F. Pellegrino, P. Perrier
Language English
Published at https://doi.org/10.21437/Interspeech.2013-511
Downloads
Clapham_2013Interspeech_.pdf (Final published version)
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