On the Generalization Capability of Multi-Layered Networks in the Extraction of Speech Properties
Conference Paper
Publication Date:
1989
abstract:
The paper describes a speech coding system
based on an ear model followed by a set of Multi-
Layer Networks (MLN). MLNs are trained to learn
how to recognize articulatory features like the
place and manner of articulation. Experiments are
performed on 10 English vowels showing a
recognition rate higher than 95% for new
speakers. When features are used for recognition,
comparable results are obtained for vowels and
diphthongs not used for training and pronounced
by new speakers. This suggests that MLNs
suitably fed by the data computed by an ear model
have good generalization capabilities over new
speakers and new sounds.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Generalization; Multi-Layered Networks; Speech Properties
List of contributors:
Cosi, Piero
Book title:
Proceeding IJCAI'89 Proceedings of the 11th international joint conference on Artificial intelligence