DocumentCode :
1251523
Title :
Estimation of generalized mixtures and its application in image segmentation
Author :
Delignon, Yves ; Marzouki, Abdelwaheb ; Pieczynski, Wojciech
Author_Institution :
Departement Electronique, Ecole Nouvelle d´´Ingenieurs en Commun., Villeneuve d´´Ascq, France
Volume :
6
Issue :
10
fYear :
1997
fDate :
10/1/1997 12:00:00 AM
Firstpage :
1364
Lastpage :
1375
Abstract :
We introduce the notion of a generalized mixture and propose some methods for estimating it, along with applications to unsupervised statistical image segmentation. A distribution mixture is said to be “generalized” when the exact nature of the components is not known, but each belongs to a finite known set of families of distributions. For instance, we can consider a mixture of three distributions, each being exponential or Gaussian. The problem of estimating such a mixture contains thus a new difficulty: we have to label each of three components (there are eight possibilities). We show that the classical mixture estimation algorithms-expectation-maximization (EM), stochastic EM (SEM), and iterative conditional estimation (ICE)-can be adapted to such situations once as we dispose of a method of recognition of each component separately. That is, when we know that a sample proceeds from one family of the set considered, we have a decision rule for what family it belongs to. Considering the Pearson system, which is a set of eight families, the decision rule above is defined by the use of “skewness” and “kurtosis”. The different algorithms so obtained are then applied to the problem of unsupervised Bayesian image segmentation, We propose the adaptive versions of SEM, EM, and ICE in the case of “blind”, i.e., “pixel by pixel”, segmentation. “Global” segmentation methods require modeling by hidden random Markov fields, and we propose adaptations of two traditional parameter estimation algorithms: Gibbsian EM (GEM) and ICE allowing the estimation of generalized mixtures corresponding to Pearson´s system. The efficiency of different methods is compared via numerical studies, and the results of unsupervised segmentation of three real radar images by different methods are presented
Keywords :
Bayes methods; Gaussian distribution; Markov processes; adaptive signal processing; decision theory; exponential distribution; image segmentation; iterative methods; parameter estimation; radar imaging; random processes; statistical analysis; Gaussian distribution; Gibbsian EM; Pearson system; adaptive algorithms; blind pixel segmentation; decision rule; distribution mixture; efficiency; expectation-maximization; exponential distribution; generalized mixtures estimation; hidden random Markov fields; iterative conditional estimation; kurtosis; mixture estimation algorithms; parameter estimation algorithms; real radar images; skewness; stochastic EM; unsupervised Bayesian image segmentation; unsupervised statistical image segmentation; Bayesian methods; Hidden Markov models; Ice; Image segmentation; Iterative algorithms; Iterative methods; Maximum likelihood estimation; Parameter estimation; Radar imaging; Stochastic processes;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/83.624951
Filename :
624951
Link To Document :
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