Title :
Priors and constraints in Bayesian image segmentation based on finite mixtures
Author :
Gopal, SSanjay ; Hebert, T.J.
Author_Institution :
Dept. of Radiol., Michigan Univ., Ann Arbor, MI, USA
fDate :
8/1/1998 12:00:00 AM
Abstract :
The use of prior densities for image segmentation within the framework of finite mixture models is investigated. Segmentation is posed as a pixel labeling problem and a generalized expectation maximization algorithm for the Bayesian estimation of the pixel labels is employed. This algorithm is based on a unique spatially-variant mixture model that has the flexibility of incorporating any useful prior information on the potential label configurations. Two different priors are proposed for pixel labeling and their effectiveness is assessed quantitatively on simulated images at various noise levels. A qualitative evaluation is also presented using clinical magnetic resonance images of the human brain
Keywords :
Bayes methods; biomedical NMR; image segmentation; medical image processing; modelling; Bayesian image segmentation; MRI; clinical magnetic resonance images; finite mixtures; generalized expectation maximization algorithm; human brain; medical diagnostic imaging; pixel labeling problem; potential label configurations; prior densities; simulated images; unique spatially-variant mixture model; Bayesian methods; Closed-form solution; Constraint optimization; Coordinate measuring machines; Density functional theory; Image segmentation; Labeling; Maximum likelihood estimation; Parameter estimation; Pixel;
Journal_Title :
Nuclear Science, IEEE Transactions on