Nonlinear prediction based on score function
Otros/as autores/as
Fecha de publicación
2015Resumen
The linear prediction coding of speech is based in the
assumption that the generation model is autoregresive. In
this paper we propose a structure to cope with the
nonlinear effects presents in the generation of the speech
signal. This structure will consist of two stages, the first
one will be a classical linear prediction filter, and the
second one will model the residual signal by means of
two nonlinearities between a linear filter. The coefficients
of this filter are computed by means of a gradient search
on the score function. This is done in order to deal with
the fact that the probability distribution of the residual
signal still is not gaussian. This fact is taken into account
when the coefficients are computed by a ML estimate.
The algorithm based on the minimization of a high-order
statistics criterion, uses on-line estimation of the residue
statistics and is based on blind deconvolution of Wiener
systems [1]. Improvements in the experimental results
with speech signals emphasize on the interest of this
approach.
Tipo de documento
Objeto de conferencia
Lengua
Inglés
Palabras clave
Tractament del senyal
Páginas
4 p.
Citación
Sole Casals, J., & Monte Moreno, E. (2015). Nonlinear prediction based on score function. 11th European Signal Processing Conference, EUSIPCO 2002, 2015-March
Este ítem aparece en la(s) siguiente(s) colección(ones)
- Documents de Congressos [174]
Derechos
Tots els drets reservats