Title :
A neural network quantizer for long term vocal tract characterization
Author :
Ragazzini, S. ; Ricotti, L. Prina ; Martinelli, G. ; Borromeo, C.
Author_Institution :
Fondazione Ugo Bordoni, Rome, Italy
Abstract :
The performance obtained using a self-organizing neural network for the vector quantization of the reflection coefficients of a nonstationary lattice is considered. The training of the neural network is effected on a small number of speech patterns of one speaker and subsequently tested on different patterns of the same speaker. The use of a self-organizing neural network for quantizing the parameters representing a nonstationary lattice has evidenced an important property of this network when used as a quantizer, i.e., its inherent ability to generalize. When used in connection with speech, the network has been able to behave well in situations different from those considered in the training
Keywords :
neural nets; physiological models; speech analysis and processing; neural network quantizer; nonstationary lattice; reflection coefficients; speech analysis; speech patterns; vector quantization; vocal tract characterization; Bit rate; Data mining; Frequency; Lattices; Neural networks; Neurons; Reflection; Speech coding; Testing; Vector quantization;
Conference_Titel :
Electrotechnical Conference, 1989. Proceedings. 'Integrating Research, Industry and Education in Energy and Communication Engineering', MELECON '89., Mediterranean
Conference_Location :
Lisbon
DOI :
10.1109/MELCON.1989.50025