首页 | 官方网站   微博 | 高级检索  
     

一种C-均值聚类图像分割的模糊熵后处理方法
引用本文:赵凤,范九伦.一种C-均值聚类图像分割的模糊熵后处理方法[J].数据采集与处理,2007,22(3):299-303.
作者姓名:赵凤  范九伦
作者单位:西安邮电学院信息与控制系,西安,710061
摘    要:提出了一种结合C-均值聚类算法和模糊熵的图像分割方法,该方法先采用C均值聚类算法对含噪图像进行初步分割,再利用模糊熵准则作后续处理。该方法一方面能够继承C-均值聚类算法的优点,可以灵活地用在基于多特征和多阂值的图像分割中,另一方面充分考虑了图像的区域信息,利用模糊熵最小作为准则,对c均值聚类算法初步分割结果的错分类点作了进一步的处理,克服了C-均值聚类算法对噪声敏感的缺点。实验结果表明,本文方法在运算开销上只比C-均值聚类算法多4~6S,对于低信噪比的图像能够取得优于C-均值聚类算法的分割效果。

关 键 词:C-均值聚类算法  模糊熵  图像分割  后续处理
文章编号:1004-9037(2007)03-0299-05
收稿时间:2006-05-19
修稿时间:2006-12-30

Fuzzy Entropy Based Post-Processing Method for C-Mean Clustering Image Segmentation Algorithm
Zhao Feng,Fan Jiulun.Fuzzy Entropy Based Post-Processing Method for C-Mean Clustering Image Segmentation Algorithm[J].Journal of Data Acquisition & Processing,2007,22(3):299-303.
Authors:Zhao Feng  Fan Jiulun
Abstract:An image segmentation method for combining C mean clustering algorithms and fuzzy entropy is presented. Firstly, the pre-segmentation on the image is made by one of the C- mean elustering algorithms; then further proeessing is clone by using fuzzy entropy principle. The method inherits the advantages of the C-mean elustering algorithms, that is, it ean be eas fly applied to image segmentation tasks with multi-feature and multi-threshold. Furthermore, the method considers the region information of the image, and utilizes the minimum fuzzy entropy prineiple to post-proeess the wrong classified points of the pre-segmentation result. Thus the method ean overeome the disadvantage of the C-mean elustering algorithms, that is, it is not sensitive to the noise. Experimental results show that the CPU-time of the method is only 4- 6 s more than the C-mean elustering algorithms, and it ean behave better in segmenting images of low signal to noise ratio than the C mean clustering algorithms.
Keywords:C-mean clustering algorithm  fuzzy entropy  image segmentation  post-processing
本文献已被 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司    京ICP备09084417号-23

京公网安备 11010802026262号