Assessment of vocal correlates of clinical depression in female subjects with probabilistic mixture modeling of speech cepstrum
Conference proceedings article
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Publication Details
Author list: Boonla T., Yingthawornsuk T.
Publication year: 2011
Start page: 387
End page: 391
Number of pages: 5
ISBN: 9781457708350
ISSN: 1598-7833
eISSN: 1598-7833
Languages: English-Great Britain (EN-GB)
Abstract
The acoustical properties of speech have been reported to relate to the mental state of speaker while speaking. This proposed work describes way to address the issue of distinguishing between female depressed patients and female remitted subjects based on the measurable change in the cepstral parameters extracted from their sound record. The cepstral coefficients corresponding to the filter response characteristics, affectively mediated by the emotionally depressive illness or even in particular case of the elevated suicidal risk into the speech production system of depressed speaker, are analyzed via the speech cepstral estimation in conjunction with the GMM fitting approximation. The results of pairwise classification in combinations with SVM, cross-validation, training and testing the cepstral coefficients provide the fairly high accuracy in class separation, when evaluating the testing datasets of coefficients extracted from speech segmentations which are highly corresponding to individual female speakers. ฉ 2011 ICROS.
Keywords
Automatic Speech, Cepstral Estimation, Clinical Depression, Vocal Filter