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A two-stage fuzzy multi-objective framework for segmentation of 3D MRI brain image data
Affiliation:1. Department of Computer Science and Engineering, SUNY at Buffalo, Buffalo, NY 14260, USA;2. State Key Lab of Remote Sensing Science, Institute of Remote Sensing Applications, Chinese Academy of Sciences, Beijing 100101, China;1. Université de Tunis El Manar, Institut Supérieur d’Informatique, Research Team on Intelligent Systems in Imaging and Articial Vision (SIIVA), LR16ES06 Laboratoire de recherche en Informatique, Modélisation et Traitement de l’Information et de la Connaissance (LIMTIC), Tunisia;2. Université de Carthage, Ecole Nationale d’Ingénieurs de Carthage, Tunisia;3. Nuclear Medicine Department, Pitié-Salpêtrière Hospital, AP-HP, Paris, France;4. Nuclear Medicine Department, Pasteur Institute of Tunis, Tunis, Tunisia;1. Tecnalia Research & Innovation, Computer Vision Area, Parque Tecnológico de Bizkaia, Derio 48160, Spain;2. Department of System Engineering and Automatic, University of the Basque Country, Bilbao, Spain
Abstract:Segmentation of Magnetic Resonance Imaging (MRI) brain image data has a significant impact on the computer guided medical image diagnosis and analysis. However, due to limitation of image acquisition devices and other related factors, MRI images are severely affected by the noise and inhomogeneity artefacts which lead to blurry edges in the intersection of the intra-organ soft tissue regions, making the segmentation process more difficult and challenging. This paper presents a novel two-stage fuzzy multi-objective framework (2sFMoF) for segmenting 3D MRI brain image data. In the first stage, a 3D spatial fuzzy c-means (3DSpFCM) algorithm is introduced by incorporating the 3D spatial neighbourhood information of the volume data to define a new local membership function along with the global membership function for each voxel. In particular, the membership functions actually define the underlying relationship between the voxels of a close cubic neighbourhood and image data in 3D image space. The cluster prototypes thus obtained are fed into a 3D modified fuzzy c-means (3DMFCM) algorithm, which further incorporates local voxel information to generate the final prototypes. The proposed framework addresses the shortcomings of the traditional FCM algorithm, which is highly sensitive to noise and may stuck into a local minima. The method is validated on a synthetic image volume and several simulated and in-vivo 3D MRI brain image volumes and found to be effective even in noisy data. The empirical results show the supremacy of the proposed method over the other FCM based algorithms and other related methods devised in the recent past.
Keywords:3D image segmentation  Fuzzy clustering  MRI brain image volume  Multi-objective framework  Spatial fuzzy C-means
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