Publications
Automatic classification of palatal and pharyngeal wall shape categories from speech acoustics and inverted articulatory signals
Abstract
Inter-speaker variability is pervasive in speech, and the ability to predict sources of inter-speaker variability from acoustics can afford scientific and technological advantages. An important source of this variability is vocal tract morphology. This work proposes a statistical model-based approach to classifying the shape of the hard palate and the pharyngeal wall from speech audio. We used principal component analysis for the parameterization of the morphological shape. Analysis using K-means clustering showed that both the palate and the pharyngeal wall shape data group into two major categories. These in turn are used as targets for automatic classification using acoustic features derived at the utterance level with OpenSmile and at the model level using GMM based posterior probability supervectors. Since articulatory motions are dependent on morphological shape, the model uses estimated articulatory …
- Date
- 2013
- Authors
- Ming Li123, Adam Lammert, Jangwon Kim, Prasanta Kumar Ghosh, Shrikanth Narayanan