In this paper, we propose a model for image segmentation based on a finite mixture of Gaussian distributions. For each pixel of the image, prior probabilities of class memberships are specified through a Gibbs distribution, where association between labels of adjacent pixels is modeled by a class-specific term allowing for different interaction strengths across classes. We show how model parameters can be estimated in a maximum likelihood framework using Mean Field theory. Experimental performance on perturbed phantom and on real benchmark images shows that the proposed method performs well in a wide variety of empirical situations.

A finite mixture model for image segmentation / Alfo', Marco; Luciano, Nieddu; Vicari, Donatella. - In: STATISTICS AND COMPUTING. - ISSN 0960-3174. - 18:2(2008), pp. 137-150. [10.1007/s11222-007-9044-9]

A finite mixture model for image segmentation

ALFO', Marco;VICARI, Donatella
2008

Abstract

In this paper, we propose a model for image segmentation based on a finite mixture of Gaussian distributions. For each pixel of the image, prior probabilities of class memberships are specified through a Gibbs distribution, where association between labels of adjacent pixels is modeled by a class-specific term allowing for different interaction strengths across classes. We show how model parameters can be estimated in a maximum likelihood framework using Mean Field theory. Experimental performance on perturbed phantom and on real benchmark images shows that the proposed method performs well in a wide variety of empirical situations.
2008
finite mixtures; gibbs distribution; image segmentation; maximum-likelihood; mean field approximation
01 Pubblicazione su rivista::01a Articolo in rivista
A finite mixture model for image segmentation / Alfo', Marco; Luciano, Nieddu; Vicari, Donatella. - In: STATISTICS AND COMPUTING. - ISSN 0960-3174. - 18:2(2008), pp. 137-150. [10.1007/s11222-007-9044-9]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/69468
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