Title :
A vector quantization schema for non-stationary signal distributions based on ML estimation of mixture densities
Author :
Vlassis, N.A. ; Blekas, K. ; Papakonstantinou, G. ; Stafylopatis, A.
Abstract :
We show that by selecting an appropriate distortion measure for the encoding-decoding vector quantization schema of signals following an unknown probability density p(x), the process of minimizing the average distortion error over the training set is equivalent to the Maximum Likelihood (ML) estimation of the parameters of a Gaussian mixture model that approximates p(x). Non-stationary signal distributions can be handled by appropriately altering the parameters of the mixture kernels.
Keywords :
Gaussian distribution; distortion; maximum likelihood estimation; mixture models; vector quantisation; Gaussian mixture model; ML estimation; average distortion error minimization; distortion measure; encoding-decoding vector quantization schema; maximum likelihood estimation; mixture kernel density; nonstationary signal distribution; probability density; Distortion; Distortion measurement; Kernel; Maximum likelihood decoding; Maximum likelihood estimation; Neural networks;
Conference_Titel :
Signal Processing Conference (EUSIPCO 1998), 9th European
Conference_Location :
Rhodes
Print_ISBN :
978-960-7620-06-4