Roche, AlexisRibes, DelphineBach Cuadra, MeritxellKrüger, Gunnar2011-05-172011-05-172011-05-17201110.1016/j.media.2011.05.002https://infoscience.epfl.ch/handle/20.500.14299/67398WOS:000297487700004Inference of Markov random field images segmentation models is usually performed using iterative methods which adapt the well-known expectation-maximization (EM) algorithm for independent mixture models. However, some of these adaptations are ad-hoc and may turn out numerically unstable. In this paper, we review three EM-like variants for Markov random field segmentation and compare their convergence properties both at the theoretical and practical levels. We specifically advocate a numerical scheme involving asynchronous voxel updating, for which general convergence results can be established. Our experiments on brain tissue classification in magnetic resonance images provide evidence that this algorithm may achieve significantly faster convergence than its competitors while yielding at least as good segmentation results.SegmentationMarkov Random FieldExpectation-MaximizationMean FieldConvergenceLTS5CIBM-SPOn the Convergence of EM-Like Algorithms for Image Segmentation using Markov Random Fieldstext::journal::journal article::research article