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An Approach Based on Immune Algorithm and SVM for Detection and Classification of Microcalcifications

机译:一种基于免疫算法和SVM检测和分类微钙化的方法

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As the feature based detection and classification of microcalcifications (MCa) in digital mammograms is considered here as a machine-leaning problem, we investigate an approach using immune algorithm (IA) and support vector machine (SVM), called IA-SVM, to solve it. Firstly, because only support vectors (SVs) are needed to build the classification hyperplane,we compress the training set according to their intra-class and inter-class Euclidean distances without losing any SVs.Meanwhile, an IA based MCs' features selector is provided to select an optimal feature subset, which can construct the input vectors for the latter SVM training; Secondly, the compressed and optimized training samples are fed to a SVM based classifier to make the optimal classification hyperplane more efficiently and more effectively. Experiments demonstrate that our method has better computing performance than other traditional classifiers (training samples were compressed by about 15%) and yields a satisfying A: vaiue (about 0.83).
机译:随着基于特征的检测和分类数字乳房X线照片被认为是机器倾斜的问题,我们研究了使用免疫算法(IA)和支持向量机(SVM)的方法,称为IA-SVM,以解决它。首先,由于只需要支持向量(SVS)来构建分类超平面,因此根据其级别的课程和级别的欧几里德距离来压缩训练集,而不会丢失任何SVS.Mean,因此提供了基于IA的MCS的功能选择器选择最佳特征子集,可以构建后者SVM培训的输入向量;其次,压缩和优化的训练样本被馈送到基于SVM的分类器,以更有效地更有效地制造最佳分类超平面。实验表明,我们的方法具有比其他传统分类器更好的计算性能(训练样品被压缩约15%),并产生满足A:Vaiue(约0.83)。

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