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Brain image segmentation using semi-supervised clustering
Affiliation:1. School of Mathematics and Computer Science, Fujian Normal University, Fuzhou, China;2. Department of Computer Science and Electrical Engineering, West Virginia University, Morgantown, USA;3. Department of Computer Science, University of Sherbrooke, Sherbrooke, Canada;1. Department of Economics and Statistics, University of Naples Federico II, Via Cinthia, 80126 Naples, Italy;2. Faculté des Sciences Sociales, Université de Liège, Place des Orateurs 3, 4000 Liège, Belgium;3. Department of Industrial Engineering, University of Naples Federico II, Piazzale Tecchio, 80125 Naples, Italy;1. Computer Science and Engineering, Siksha ‘O’ Anusandhan University, Bhubaneswar, Indian;2. Multidisciplinary Research Cell, Siksha O Anusandhan University, Bhubaneswar, India;1. Department of Management, IESEG School of Management (LEM-CNRS), 3, rue de la Digue, 59000 Lille, Francen;2. Department of Industrial and Systems Engineering, The Hong Kong Polytechnic University, Hong Kong, Chinan;1. University of Grenoble Alpes, F-38000 Grenoble, France;2. CNRS, Gipsa-Lab, F-38000 Grenoble, France;3. CEA, LETI, MINATEC Campus, F-38054 Grenoble, France;4. CNRS, LPNC, F-38000 Grenoble, France
Abstract:The objective of brain image segmentation is to partition the brain images into different non-overlapping homogeneous regions representing the different anatomical structures. Magnetic resonance brain image segmentation has large number of applications in diagnosis of neurological disorders like Alzheimer diseases, Parkinson related syndrome etc. But automatically segmenting the MR brain image is not an easy task. To solve this problem, several unsupervised and supervised based classification techniques have been developed in the literature. But supervised classification techniques are more time consuming and cost-sensitive due to the requirement of sufficient labeled data. In contrast, unsupervised classification techniques work without using any prior information but it suffers from the local trap problems. So, to overcome the problems associated with unsupervised and supervised classification techniques, we have proposed a new semi-supervised clustering technique using the concepts of multiobjective optimization and applied this technique for automatic segmentation of MR brain images in the intensity space. Multiple centers are used to encode a cluster in the form of a string. The proposed clustering technique utilizes intensity values of the brain pixels as the features. Additionally it also assumes that the actual class label information of 10% points of a particular image data set is also known. Three cluster validity indices are utilized as the objective functions, which are simultaneously optimized using AMOSA, a modern multiobjective optimization technique based on the concepts of simulated annealing. First two cluster validity indices are symmetry distance based Sym-index and Euclidean distance based I-index, which are based on unsupervised properties. Last one is a supervised information based cluster validity index, Minkowski Index. The effectiveness of this proposed semi-supervised clustering technique is demonstrated on several simulated MR normal brain images and MR brain images having some multiple sclerosis lesions. The performance of the proposed semi-supervised clustering technique is compared with some other popular image segmentation techniques like Fuzzy C-means, Expectation Maximization and some recent image clustering techniques like multi-objective based MCMOClust technique, and Fuzzy-VGAPS clustering techniques.
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