Title :
Joint segmentation of a set of piecewise stationary processes
Author :
Reboul, S. ; Benjelloun, M.
Author_Institution :
Lab. d´´Analyse des Systemes du Littoral, Calais
Abstract :
We present in this article a Bayesian estimation model for the joint segmentation of a set of piecewise stationary process. The estimate we propose is based on the maximization of the posterior distribution of the change instants conditionally to the process parameter estimation. It is defined as a penalized contrast function with a first term related to the fit to the observation and a second term of penalization. In the case of joint segmentation the term of penalization is deduced from the prior law of the change instants. It is composed of parameters that guide the number and the position of the change and of parameters that will bring prior information on the mutual behavior of the processes. This work is applied to the estimation of the wind statistic parameters. The contrast function is deduced from the log-likelihood of circular Von Mises distribution for the wind direction and the log-normal distribution for the speed. The feasibility and the contribution of our method are shown on synthetic data
Keywords :
Bayes methods; maximum likelihood estimation; Bayesian estimation model; circular Von Mises distribution; joint segmentation; log-likelihood; log-normal distribution; maximum a posterior distribution; penalized contrast function; piecewise stationary process; process parameter estimation; wind statistic parameter; Bayesian methods; Change detection algorithms; Maximum a posteriori estimation; Maximum likelihood detection; Maximum likelihood estimation; Monte Carlo methods; Performance analysis; Random variables; Statistics; Wind speed;
Conference_Titel :
Computational Cybernetics, 2004. ICCC 2004. Second IEEE International Conference on
Conference_Location :
Vienna
Print_ISBN :
0-7803-8588-8
DOI :
10.1109/ICCCYB.2004.1437703