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基于K-均值聚类算法的中药叶片显微图像分割
引用本文:张翠萍,杨善超.基于K-均值聚类算法的中药叶片显微图像分割[J].石河子大学学报,2009,27(3):383-387.
作者姓名:张翠萍  杨善超
作者单位:张翠萍,ZHANG Cuiping(福建中医学院公共管理系,福州,350108);杨善超,YANG Shanchao(福建师范大学数学与计算机科学学院,福州,350108)  
摘    要:本文试图利用图像分割技术,实现叶片自动分类。为了充分利用像素的色彩,分割算法在RGB颜色空间进行。颜色空间数据量巨大,直接进行聚类效率太低,因此,本文运用一种特殊的存储结构存储颜色空间数据,按颜色的密度特征对图像中的颜色进行排序和聚类,并根据待聚类色彩与已有聚类中心距离是否小于类内最大距离来决定归入已有的类或形成一个新的类。实验结果表明算法具有较好的分类效果。

关 键 词:核密度  类内最大距离  K-均值聚类算法  彩色图像  分割

Micrograph Segmentation of Chinese Traditional Medicine Lamina Based on K-mean Clustering Algorithm
ZHANG Cuiping,YANG Shanchao.Micrograph Segmentation of Chinese Traditional Medicine Lamina Based on K-mean Clustering Algorithm[J].Journal of Shihezi University(Natural Science),2009,27(3):383-387.
Authors:ZHANG Cuiping  YANG Shanchao
Institution:1 Department of Public Administration Fujian College of Traditional Chinese Medicine;Fuzhou 350108;China;2 Mathematics and Computer Science Fujian Normal University;China
Abstract:We tried to employ the skill of image segmentation to distinguish herbal leaves automatically.In order to make full use of the colors of pixels,we conducted the segmentation in RGB color space.But one problem with color space is that its large data makes it inefficient when segment it directly.Therefore,we used a special storage structure to store data of color space,ordered and clustered the color of the image by density of colors,and decided which groups it belonged to by comparing the distance between th...
Keywords:nuclear density  the maximum distance in the group  K-mean cluster  color image  division  
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