基于contourlet变换的乳房x线图像结构畸变检测

S. Anand, R. Rathna
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引用次数: 12

摘要

本文介绍了一种常用的癌症分类——建筑畸变的检测方法,该方法采用了计数let变换和相位画像方法。结构扭曲在解释乳腺癌以及乳房x光片上的微钙化和肿块方面是一个非常重要的发现。然而,对于医生来说,检测结构扭曲比检测微钙化和肿块更困难。所提出的检测方法包括五个步骤。最初,使用Otsu技术进行分割。为了使边缘光滑,进行了顶帽处理。进行轮廓波分解,使图像能够在多个方向上进行滤波;相位肖像分析是为了进行定向分析。假阳性通过滑动窗口中白色空间的集中而消除。我们的图像数据库包括16例具有建筑畸变的MIAS。因此,令人信服的是,我们的方法可以有效地检测建筑变形,并且需要进一步增加纹理分析。
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Detection of architectural distortion in mammogram images using contourlet transform
This paper presents the detection of architectural distortion a common classification of cancer, using countourlet transform and the phase portrait methods. The architectural distortion is a very important finding in interpreting breast cancers as well as microcalcification and mass on mammograms. However, it is more difficult for physicians to detect architectural distortion than microcalcification and mass. The proposed detection method consists of five steps. Initially, the Otsu technique was performed for segmentation. In order to smooth the edges, the top-hat processing was performed. The contourlet decomposing is performed so that the image can be filtered in multidirections; the phase portrait analysis is done for the orientation analysis purpose. The false positives were eliminated by their concentration of white spaces in the sliding window. Our image database consisted 16 cases from MIAS with architectural distortions. As a result, it was convincing that our methods were effective to detect architectural distortions and further need to be increased with the textural analysis.
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