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Computer Aided Classification of Mammographic Tissue Using Shapelets and Support Vector Machines

机译:使用小波和支持向量机的乳腺组织的计算机辅助分类

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In this paper a robust regions-of-suspicion (ROS) diagnosis system on mammograms, recognizing all types of abnormalities is presented and evaluated. A new type of descriptors, based on Shapelet decomposition, derive the source images that generate the observed ROS in mammograms. The Shapelet decomposition coefficients can be used efficiently to detect ROS areas using Support-Vector-Machines (SVMs) with radial basis function kernels. Extensive experiments using the Mammographic Image Analysis Society (MIAS) database have shown high recognition accuracy above 86% for all kinds of breast abnormalities that exceeds the performance of similar decomposition methods based on Zernike moments presented in the literature by more than 8%.
机译:在本文中,提出并评估了一种在乳房X线照片上可靠的可疑区域(ROS)诊断系统,该系统可识别所有类型的异常。一种基于Shapelet分解的新型描述符,可以生成源图像,这些源图像会生成在乳房X线照片中观察到的ROS。 Shapelet分解系数可通过带有径向基函数核的支持向量机(SVM)有效地用于检测ROS区域。使用乳房X线摄影图像分析协会(MIAS)数据库进行的大量实验表明,对于各种乳腺异常,其识别率均达到86%以上,比基于文献中Zernike矩的相似分解方法的性能高出8%以上。

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