Abstract
The paper describes our experiment with using the Gaussian mixture models (GMM) for classification of speech uttered by a person wearing orthodontic appliances. For the GMM classification, the input feature vectors comprise the basic and the complementary spectral properties as well as the supra-segmental parameters. Dependence of classification correctness on the number of the parameters in the input feature vector and on the computation complexity is also evaluated. In addition, an influence of the initial setting of the parameters for GMM training process was analyzed. Obtained recognition results are compared visually in the form of graphs as well as numerically in the form of tables and confusion matrices for tested sentences uttered using three configurations of orthodontic appliances. © 2014 FEI STU.
Author supplied keywords
Cite
CITATION STYLE
Přibil, J., Přibilová, A., & Ďuračková, D. (2014). Evaluation of spectral and prosodic features of speech affected by orthodontic appliances using the GMM classifier. Journal of Electrical Engineering, 65(1), 30–36. https://doi.org/10.2478/jee-2014-0004
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.