基于遗传算法的IFCM聚类分割

Meiju Liu, Xiaozheng Yu, Yixuan Shi
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引用次数: 1

摘要

在乳腺癌(BC)的早期诊断中,计算机辅助设计(CAD)尤为重要,乳房x线摄影中乳腺肿块的准确检测起着重要作用目的:为了将肿块区域与其他背景区域区分开来,在乳腺图像分析学会(MIAS)中提出了一种有效的分割方案。首先,通过遗传算法(GA)确定直觉模糊c均值(IFCM)的初始聚类中心,然后通过IFCM算法对图像进行分割,将随机的初始聚类中心变成有目的选择的聚类中心,从而保证最终聚类中心结果的最优结果:MIAS的平均分割精度。噪声水平分别为5%、7%和9%的图像分别为90.15%、86.85%和87.31%。结论:该方法结合了两种算法的优点,能更准确、快速地分割出肿块的位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IFCM clustering segmentation based on genetic algorithm
In the early diagnosis of breast cancer(BC), computer aided design (CAD) is particularly important, and the accurate detection of breast mass in mammography plays an important role Objective: In order to distinguish the mass region from other background regions, an effective segmentation scheme was proposed in Mammographic Image Analysis Society (MIAS) segmentation Methods: First, the initial clustering center of intuitionistic fuzzy C-means (IFCM) is determined by genetic algorithm (GA), and then the image is segmented by IFCM algorithm to turn the random initial clustering center into a purpose-selected one, so as to ensure the optimal result of the final clustering center results: The average segmentation precision of MIAS.I images with noise level of 5%,7% and 9% were 90.15% and 86.85% and 87.31%. Conclusion: This method combines the advantages of the two algorithms to segment the location of mass more accurately and quickly.
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