Mammogram Image Segmentation by Watershed Algorithm and Classification through k-NN Classifier

B. Mata, Meenakshi Dr.M.
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引用次数: 4

Abstract

-This paper presents a novel approach to detect the tumors in the mammogram images based on watershed algorithm. To increase the performance of the classifier, watershed algorithm combined with K-NN classifier is implemented. The gray level co-occurrence matrices (GLCM’S) are obtained from the mammogram images, through the extraction of Halarick’s texture features are classified. American Society of cancer, UK, provides the benchmark data, MIAS (Mammographic Image Analysis Society) database for the validation of proposed algorithm. These images are used for further analysis by classification into three categories using the algorithms. Mammogram abnormalities are found to be detected using the proposed algorithm with the available ground truth given in the data base (mini-MIAS database), the accuracy obtained is as high as 83.33%. Keywords--Halarick’s Texture Features, k-NN, MIAS.
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分水岭分割与k-NN分类器分类
本文提出了一种基于分水岭算法的乳房x线图像肿瘤检测新方法。为了提高分类器的性能,将分水岭算法与K-NN分类器相结合。从乳房x线图像中得到灰度共生矩阵(GLCM’s),通过提取哈拉里克纹理特征进行分类。美国癌症协会,英国,提供了基准数据,MIAS(乳房x线图像分析协会)数据库,以验证所提出的算法。使用算法将这些图像分为三类,用于进一步分析。本文提出的算法在数据库(mini-MIAS数据库)给出的可用ground truth的基础上发现乳房x线异常,准确率高达83.33%。关键词:哈拉里克纹理特征,k-NN, MIAS
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