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Current Methods in the Automatic Tissue Segmentation of 3D Magnetic Resonance Brain Images

机译:3D磁共振脑图像自动组织分割中的当前方法

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Accurate segmentation of magnetic resonance (MR) images of the brain is of interest in the study of many brain disorders. In this paper, we provide a review of some of the current approaches in the tissue segmentation of MR brain images. We broadly divided current MR brain image segmentation algorithms into three categories: classificationbased, region-based, and contour-based, and discuss the advantages and disadvantages of these approaches. We also briefly review our recent work in this area. We show that by incorporating two key ideas into the conventional fuzzy cmeans clustering algorithm, we are able to take into account the local spatial context and compensate for the intensity nonuniformity (INU) artifact during the clustering process. We conclude this review by pointing to some possible future directions in this area.
机译:大脑的磁共振(MR)图像的准确分割是许多大脑疾病研究中的关注点。在本文中,我们对MR脑图像的组织分割中的一些当前方法进行了回顾。我们将当前的MR脑图像分割算法大致分为三类:基于分类,基于区域和基于轮廓,并讨论了这些方法的优缺点。我们还简要回顾了我们在该领域的最新工作。我们表明,通过将两个关键思想纳入常规模糊cmeans聚类算法中,我们能够考虑局部空间上下文并在聚类过程中补偿强度不均匀性(INU)伪影。我们通过指出该领域未来可能的发展方向来结束本综述。

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