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A novel intuitionistic fuzzy set approach for segmentation of kidney MR images

机译:一种新的直觉模糊集方法,用于肾脏MR图像分割

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This paper presents a novel algorithm, which uses intuitionistic fuzzy sets and rough set theory to segment the renal components in kidney MR images. A new membership function is proposed and then is used to obtain an intuitionistic fuzzy model of the image to compensate the inherent heterogeneity present among the different renal tissue classes. In addition, a new method, which uses Hamming distance is proposed to calculate the histon. The histon is then used to compute intuitionistic fuzzy roughness measure which yields optimum valley points for image segmentation. The proposed algorithm segments the kidney MR images into medulla, cortex, and blood vessels. The quantitative performance evaluation indicates better performance of the proposed algorithm over a competing technique.
机译:本文提出了一种新颖的算法,它使用直觉模糊集和粗糙集理论在肾脏MR图像中分段肾组件。 提出了一种新的隶属函数,然后用于获得图像的直觉模糊模型,以补偿不同肾组织类别中存在的固有异质性。 另外,提出了一种使用汉明距离的新方法来计算组焦蛋白。 然后使用该组块来计算直觉模糊粗糙度测量,从而产生用于图像分割的最佳谷点。 该算法将肾脏的算法区段分段为髓质,皮质和血管。 定量性能评估表明,通过竞争技术更好地表现了所提出的算法。

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