Spatial-to-joint coordinate mapping in a neural model of speech production
نویسندگان
چکیده
The mapping from a high-level to a low-level motor repre sentation, i.e. from spatial-to-joint motor coordinates is modeled on the basis of a one-layer feed-forward neural net work and supervised learning using articulatory and acoustic data generated by a three dimensional articulatory speech synthesizer.
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