Genetic algorithms and multifractal segmentation of cervical cell images

N. Lassouaoui, L. Hamami
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引用次数: 24

Abstract

This paper deals with the segmentation problem of cervical cell images. Knowing that the malignity criteria appear on the morphology of the core and the cytoplasm of each cell, then, the goal of this segmentation is to separate each cell on its component, that permits to analyze separately their morphology (size and shape) in the recognition step, for deducing decision about the malignity of each cell. For that, we use a multifractal algorithm based on the computation of the singularity exponent on each point of the image. For increasing the quality of the segmentation, we propose to add an optimization step based on genetic algorithms. The proposed processing has been tested on several images. Herein, we present some results obtained by two cervical cell images.
子宫颈细胞图像的遗传算法与多重分形分割
本文研究了宫颈细胞图像的分割问题。知道恶性标准出现在每个细胞的核心和细胞质的形态上,那么,这种分割的目标是在其组成部分上分离每个细胞,这允许在识别步骤中单独分析它们的形态(大小和形状),以推断每个细胞的恶性决策。为此,我们使用基于计算图像上每个点的奇异指数的多重分形算法。为了提高分割的质量,我们提出了一个基于遗传算法的优化步骤。所提出的处理方法已在多幅图像上进行了测试。在这里,我们提出了一些结果获得了两个宫颈细胞图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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