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A novel image mining technique for classification of mammograms using hybrid feature selection

机译:一种基于混合特征选择的乳腺X线照片分类新图像挖掘技术

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摘要

The image mining technique deals with the extraction of implicit knowledge and image with data relationship or other patterns not explicitly stored in the images. It is an extension of data mining to image domain. The main objective of this paper is to apply image mining in the domain such as breast mammograms to classify and detect the cancerous tissue. Mammogram image can be classified into normal, benign, and malignant class. Total of 26 features including histogram intensity features and gray-level co-occurrence matrix features are extracted from mammogram images. A hybrid approach of feature selection is proposed, which approximately reduces 75% of the features, and new decision tree is used for classification. The most interesting one is that branch and bound algorithm that is used for feature selection provides the best optimal features and no where it is applied or used for gray-level co-occurrence matrix feature selection from mammogram. Experiments have been taken for a data set of 300 images taken from MIAS of different types with the aim of improving the accuracy by generating minimum number of rules to cover more patterns. The accuracy obtained by this method is approximately 97.7%, which is highly encouraging.
机译:图像挖掘技术处理具有数据关系或其他未明确存储在图像中的模式的隐式知识和图像的提取。它是数据挖掘到图像域的扩展。本文的主要目的是将图像挖掘应用于乳腺X线照片等领域,以对癌组织进行分类和检测。乳房X射线照片可以分为正常,良性和恶性三类。从乳房X射线照片图像中提取了总共26个特征,包括直方图强度特征和灰度共现矩阵特征。提出了一种特征选择的混合方法,该方法大约减少了75%的特征,并使用新的决策树进行分类。最有趣的是,用于特征选择的分支定界算法提供了最佳的最佳特征,在从乳房X线照片选择或用于灰度共现矩阵特征的地方没有提供。已经针对从不同类型的MIAS拍摄的300张图像的数据集进行了实验,目的是通过生成最少数量的规则以覆盖更多图案来提高准确性。通过这种方法获得的准确度约为97.7%,这非常令人鼓舞。

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