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A two-stage fuzzy multi-objective framework for segmentation of 3D MRI brain image data

机译:用于三维MRI脑图像数据分割的两级模糊多目标框架

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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. (C) 2017 Elsevier B.V. All rights reserved.
机译:磁共振成像(MRI)脑图像数据的分割对计算机引导的医学图像诊断和分析具有显着影响。然而,由于图像采集装置和其他相关因素的限制,MRI图像受到噪声和不均匀性的严重影响,该噪声和不均匀性伪距导致器官软组织区域的交叉处的模糊边缘,使分段过程更加困难和具有挑战性。本文提出了一种用于分割3D MRI脑图像数据的新型两级模糊多目标框架(2SFMOF)。在第一阶段中,通过结合卷数据的3D空间邻域信息来引入3D空间模糊C-icil(3DSPFCM)算法,以便为每个体素定义新的本地成员函数以及全局成员资格函数。特别地,隶属函数实际上定义了3D图像空间中的关闭立方邻域和图像数据的体素之间的基础关系。由此获得的群集原型被馈送到3D修改模糊C型算法(3DMFCM)算法中,其进一步结合了本地体素信息以产生最终的原型。所提出的框架解决了传统的FCM算法的缺点,这对噪声高度敏感,并且可以粘在局部最小值中。该方法在合成图像体积和几个模拟和体内3D MRI脑图像卷上验证,并且发现即使在嘈杂的数据中也有效。经验结果表明,近期FCM基于FCM的算法和其他相关方法的提出方法的至高无上。 (c)2017 Elsevier B.v.保留所有权利。

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