Title :
Estimation of Markov random field prior parameters using Markov chain Monte Carlo maximum likelihood
Author :
Descombes, Xavier ; Morris, Robin D. ; Zerubia, Josiane ; Berthod, Marc
Author_Institution :
Inst. Nat. de Recherche en Inf. et Autom., Sophia Antipolis, France
fDate :
7/1/1999 12:00:00 AM
Abstract :
Developments in statistics now allow maximum likelihood estimators for the parameters of Markov random fields (MRFs) to be constructed. We detail the theory required, and present an algorithm that is easily implemented and practical in terms of computation time. We demonstrate this algorithm on three MRF models-the standard Potts model, an inhomogeneous variation of the Potts model, and a long-range interaction model, better adapted to modeling real-world images. We estimate the parameters from a synthetic and a real image, and then resynthesize the models to demonstrate which features of the image have been captured by the model. Segmentations are computed based on the estimated parameters and conclusions drawn
Keywords :
Markov processes; Monte Carlo methods; Potts model; image segmentation; maximum likelihood estimation; Markov chain Monte Carlo maximum likelihood; Markov random field prior parameters; computation time; image resynthesis; inhomogeneous variation; long-range interaction model; maximum likelihood estimators; real image; real-world images; segmentation; standard Potts model; synthetic image; Bayesian methods; Image restoration; Image segmentation; Inference algorithms; Layout; Markov random fields; Maximum likelihood estimation; Monte Carlo methods; Parameter estimation; Partitioning algorithms;
Journal_Title :
Image Processing, IEEE Transactions on