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肝癌超声图像识别的特征提取
引用本文:陈菲. 肝癌超声图像识别的特征提取[J]. 微计算机信息, 2006, 22(30): 272-274
作者姓名:陈菲
作者单位:621010,四川绵阳,西南科技大学计算机科学与技术学院
摘    要:本文提出了识别肝癌超声图像的一种特征提取。它将共生矩阵和多分辨率提取分形特征方法结合,提取空间灰度独立矩阵、灰度差分统计、Laws纹理能量度量、傅立叶能量谱等特征来实现肝癌超声图像的识别。实验证明,这种有效的特征提取对超声正常肝和肝癌图像具有较高的分类正确率,在对缺乏病理专家的医院和远程医疗信息系统中的应用提供了坚实的理论基础。

关 键 词:感兴趣区域  Bayesian决策  图像识别  纹理特征提取  肝癌超声图像
文章编号:1008-0570(2006)10-3-0272-03
修稿时间:2006-02-23

Extracting Features for Ultrasonic Liver Cancer Images
Chen Fei. Extracting Features for Ultrasonic Liver Cancer Images[J]. Control & Automation, 2006, 22(30): 272-274
Authors:Chen Fei
Abstract:A study about classification of ultrasonic live cancer images is proposed by the texture features, which combines the co- occurrence matrices with Multiresolution fractal feature .Many features have extracted including the spatial gray_level dependence ma- trices ,the gray- level difference statistics, Laws' s texture energy measures and the Fourier power spectrum .we have completed to classify normal liver image and ultrasonic cancer live images. The experiment results also show that this study is very effective to de- cide. it is sound basis to the hospital absence of professional and the telemedicine information system.
Keywords:Regions of interest(ROI)  Bayesian decision rule  Image recognition  Extracting texture feature  Ultrasonic images
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