Article ID Journal Published Year Pages File Type
6960664 Speech Communication 2018 20 Pages PDF
Abstract
The main contributions of this work are the following. We have recorded the first large database of high quality RT-MRI midsagittal images for a French speaker. We have manually segmented the main speech articulators (jaw, lips, tongue, velum, hyoid, larynx, etc.) for a small training set of about 60 images selected by hierarchical clustering to represent the whole corpus as faithfully as possible. We have used these data to train various image and contour models for developing automatic articulatory segmentation methods. The first method, based on Multiple Linear Regression, allows to predict the contour coordinates from the image pixel intensities with a Mean Sum of Distances (MSD) segmentation error over all articulators of 0.91 mm, computed with a Leave-One-Out Cross Validation procedure on the training set. Another method, based on Shape Particle Filtering, reaches an MSD error of 0.66 mm. Finally the modified version of Active Shape Models (mASM) explored in this study gives an MSD error of a mere 0.55 mm (0.68 mm for the tongue). These results demonstrate that this mASM approach performs better than state-of-the-art methods, though at the cost of the manual segmentation of the training set. The same method used on other MRI data leads to similar errors, which testifies to its robustness. The large quantity of contour data that can be obtained with this automatic segmentation method opens the way to various fruitful perspectives in speech: establishing more elaborate articulatory models, analyzing more finely coarticulation and articulatory variability or invariance, implementing machine learning methods for articulatory speaker normalization or adaptation, or illustrating adequate or prototypical articulatory gestures for application in the domains of speech therapy and of second language pronunciation training.
Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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