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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Rough segmentation of coherent local intensity for bias induced 3-D MR brain images
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Rough segmentation of coherent local intensity for bias induced 3-D MR brain images

机译:偏差诱导3-D MR脑图像相干局部强度的粗糙分割

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摘要

Segmentation of brain MR volumes into different meaningful tissue classes is an essential prerequisite for many clinical analyses. However, intensity inhomogeneity or bias field, present in MR volumes, considerably degrades the quality of segmentation. In this regard, the paper presents a new segmentation algorithm, termed as CoLoRS (Coherent Local Intensity Rough Segmentation), for brain MR volumes corrupted with bias field artifact. It judiciously integrates the merits of coherent local intensity clustering and the theory of rough sets for simultaneous segmentation and bias field correction of brain MR volumes. The proposed algorithm partitions the entire image space into a number of small overlapping neighborhood regions. The bias, in each neighborhood region, is assumed to be constant. For each individual region, an objective function is defined for coherent local intensity rough segmentation. The voxels near the center point have similar influences on local objective function. In addition, the smaller distance between center and neighboring voxels yields more contribution on the voxel of interest. The proposed algorithm uses the dual-region concept to represent the neighborhood structure more efficiently. It makes possible of separate modeling of the voxels within neighborhood, according to their locations. Each region is considered to have several tissue classes, where each tissue class consists of a core region and an overlapping region. The segmentation in fuzzy approximation spaces provides an effective mean for brain MR volume analysis, as it handles overlapping partitions and addresses vagueness in tissue class definition. The effectiveness of the proposed algorithm, along with a comparison with existing approaches, is demonstrated on several publicly available brain MR data. (C) 2019 Elsevier Ltd. All rights reserved.
机译:大脑MR卷的分割成不同有意义的组织类是许多临床分析的必要先决条件。然而,在MR卷中存在的强度不均匀性或偏置场,显着降低了分割的质量。在这方面,本文提出了一种新的分段算法,称为颜色(相干局部强度粗略分割),用于脑MR块损坏偏置场工件。它明智地整合了相干局部强度聚类的优点和粗糙集理论,同时分割和大脑MR卷的偏置场校正。所提出的算法将整个图像空间分区为多个小重叠邻居区域。假设每个邻域区域的偏置是恒定的。对于每个地区,为相干局部强度粗略分割定义了目标函数。中心点附近的体素对本地目标函数具有类似的影响。此外,中心和相邻体素之间的较小距离对感兴趣的体素产生更多贡献。所提出的算法使用双区域概念更有效地表示邻域结构。根据他们的位置,它可以在邻里内单独建模voxels。每个区域被认为具有若干组织类,其中每个组织类由核心区域和重叠区域组成。模糊近似空间中的分割为脑MR卷分析提供了有效的平均值,因为它处理了重叠分区并在组织类定义中解决了模糊性。该算法的有效性以及与现有方法的比较,在几个公开的脑MR数据上证明。 (c)2019年elestvier有限公司保留所有权利。

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