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A non-local fuzzy segmentation method: Application to brain MRI
Authors:Benoî  t Caldairou [Author Vitae],Nicolas Passat [Author Vitae] [Author Vitae],Colin Studholme [Author Vitae] [Author Vitae]
Affiliation:a LSIIT, UMR 7005 CNRS/Université de Strasbourg, Pôle API, Boulevard Sébastien Brant, BP 10413, 67412 Illkirch CEDEX, France
b Biomedical Image Computing Group, Department of Radiology and Biomedical Imaging, University of California San Francisco, 1 Irving Street, San Francisco, CA 94143, USA
Abstract:The Fuzzy C-Means (FCM) algorithm is a widely used and flexible approach to automated image segmentation, especially in the field of brain tissue segmentation from 3D MRI, where it addresses the problem of partial volume effects. In order to improve its robustness to classical image deterioration, namely noise and bias field artifacts, which arise in the MRI acquisition process, we propose to integrate into the FCM segmentation methodology concepts inspired by the non-local (NL) framework, initially defined and considered in the context of image restoration. The key algorithmic contributions of this article are the definition of an NL data term and an NL regularisation term to efficiently handle intensity inhomogeneities and noise in the data. The resulting new energy formulation is then built into an NL-FCM brain tissue segmentation algorithm. Experiments performed on both synthetic and real MRI data, leading to the classification of brain tissues into grey matter, white matter and cerebrospinal fluid, indicate a significant improvement in performance in the case of higher noise levels, when compared to a range of standard algorithms.
Keywords:Fuzzy clustering   Regularisation   Non-local processing   Brain segmentation   MRI
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