Detection and segmentation of masses in mammograms by the rule based elimination approach

H. Ture, T. Kayikçioglu
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引用次数: 1

Abstract

In this study, a method was proposed that eliminated the non-suspicious salient regions for the detection and segmentation of masses in mammograms. Since suspicious regions are generally salient dense regions, the method firstly extracts the maximum regions of interest (ROIs) that have the optimum lifetime. Subsequently, these ROIs are segmented with the rule-based elimination using morphological and intensity properties. The texture features taken from the suspicious regions are classified by Rus Boost method for detection of masses. The developed method has been tested on all mammograms, which includes mass, taken from the MIAS database. Experimental results demonstrate that the method achieves a satisfactory performance during the detection and segmentation of suspicious regions.
基于规则消除法的乳房x光片肿块检测与分割
在本研究中,提出了一种消除乳房x光片中肿块检测和分割的非可疑突出区域的方法。由于可疑区域一般为显著密集区域,该方法首先提取具有最优寿命的最大感兴趣区域(roi)。随后,利用形态学和强度属性对这些roi进行基于规则的消去分割。利用Rus Boost方法对可疑区域的纹理特征进行分类,进行质量检测。开发的方法已经在所有乳房x光片上进行了测试,其中包括从MIAS数据库中获取的肿块。实验结果表明,该方法在可疑区域的检测和分割中取得了满意的效果。
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