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Optimized kernel fuzzy c means (OKFCM) clustering algorithm on level set method for noisy images

机译:基于噪声集的水平集方法的优化内核模糊c均值(OKFCM)聚类算法

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In this paper, optimized kernel fuzzy c-means (OKFCM) was used to generate an initial contour curve which overcomes leaking at the boundary during the curve propagation. Firstly, OKFCM algorithm computes the fuzzy membership values for each pixel. On the basis of OKFCM the edge indicator function was redefined. Using the edge indicator function the segmentation of medical images which are added with salt and pepper noise was performed to extract the regions of interest for further processing. The results of the above process of segmentation showed a considerable improvement in the evolution of the level set function.
机译:在本文中,使用优化的核模糊c均值(OKFCM)来生成初始轮廓曲线,该轮廓曲线克服了曲线传播过程中边界处的泄漏。首先,OKFCM算法计算每个像素的模糊隶属度值。在OKFCM的基础上,重新定义了边缘指示器功能。使用边缘指示器功能对添加有盐和胡椒粉噪声的医学图像进行分割,以提取目标区域以进行进一步处理。上述分割过程的结果表明,水平集功能的演变有了很大的改善。

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