DocumentCode :
1836962
Title :
Parameter estimation for autoregressive Gaussian-mixture processes: the EMAX algorithm
Author :
Verbout, Shawn M. ; Ooi, James M. ; Ludwig, Jeffrey T. ; Oppenheim, Alan V.
Author_Institution :
MIT, Cambridge, MA, USA
Volume :
5
fYear :
1997
fDate :
21-24 Apr 1997
Firstpage :
3549
Abstract :
The problem of estimating parameters of discrete-time non-Gaussian autoregressive (AR) processes is addressed. The subclass of such processes considered is restricted to those whose driving noise samples are statistically independent and identically distributed according to a Gaussian-mixture probability density function (PDF). Because the likelihood function for this problem is typically unbounded in the vicinity of undesirable, degenerate parameter estimates, a global maximum likelihood approach is not appropriate. Hence, an alternative approach is taken whereby a finite local maximum of the likelihood surface is sought. This approach, which is termed the quasi-maximum likelihood (QML) approach, is used to obtain estimates of the AR parameters as well as the means, variances, and weighting coefficients that define the Gaussian-mixture PDF. A technique for generating solutions to the QML problem is derived using a generalized version of the expectation-maximization principle
Keywords :
Gaussian distribution; autoregressive processes; discrete time systems; iterative methods; maximum likelihood estimation; probability; signal processing; AR parameters; EMAX algorithm; Gaussian mixture PDF; autoregressive Gaussian mixture processes; discrete time nonGaussian AR processes; expectation maximization principle; finite local maximum; identically distributed noise; iterative algorithm; likelihood function; likelihood surface; means; noise samples; parameter estimation; probability density function; quasimaximum likelihood; statistical signal model; statistically independent noise; variances; weighting coefficients; Contracts; Equations; Gaussian distribution; Gaussian noise; Gaussian processes; Higher order statistics; Iterative algorithms; Maximum likelihood estimation; Parameter estimation; Probability density function;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Acoustics, Speech, and Signal Processing, 1997. ICASSP-97., 1997 IEEE International Conference on
Conference_Location :
Munich
ISSN :
1520-6149
Print_ISBN :
0-8186-7919-0
Type :
conf
DOI :
10.1109/ICASSP.1997.604632
Filename :
604632
Link To Document :
بازگشت