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Speeding up the EM algorithm for mixture model-based segmentation of magnetic resonance images
Authors:Shu-Kay Ng [Author Vitae]  Geoffrey J. McLachlan [Author Vitae]
Affiliation:Department of Mathematics, University of Queensland, Brisbane QLD 4072, Australia
Abstract:Mixture models implemented via the expectation-maximization (EM) algorithm are being increasingly used in a wide range of problems in pattern recognition such as image segmentation. However, the EM algorithm requires considerable computational time in its application to huge data sets such as a three-dimensional magnetic resonance (MR) image of over 10 million voxels. Recently, it was shown that a sparse, incremental version of the EM algorithm could improve its rate of convergence. In this paper, we show how this modified EM algorithm can be speeded up further by adopting a multiresolution kd-tree structure in performing the E-step. The proposed algorithm outperforms some other variants of the EM algorithm for segmenting MR images of the human brain.
Keywords:EM algorithm   Hidden Markov random field   Image segmentation   Magnetic resonance imaging   Mixture models   Multiresolution kd-trees   Sparse incremental EM algorithm   Statistical pattern recognition
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