Sciweavers

NOLISP
2007
Springer

On the Usefulness of Linear and Nonlinear Prediction Residual Signals for Speaker Recognition

13 years 10 months ago
On the Usefulness of Linear and Nonlinear Prediction Residual Signals for Speaker Recognition
This paper compares the identification rates of a speaker recognition system using several parameterizations, with special emphasis on the residual signal obtained from linear and nonlinear predictive analysis. It is found that the residual signal is still useful even when using a high dimensional linear predictive analysis. On the other hand, it is shown that the residual signal of a nonlinear analysis contains less useful information, even for a prediction order of 10, than the linear residual signal. This shows the inability of the linear models to cope with nonlinear dependences present in speech signals, which are useful for recognition purposes.
Marcos Faúndez-Zanuy
Added 08 Jun 2010
Updated 08 Jun 2010
Type Conference
Year 2007
Where NOLISP
Authors Marcos Faúndez-Zanuy
Comments (0)