Classification of mammogram images by dictionary learning

Mücahid Barstuğan, R. Ceylan
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引用次数: 2

Abstract

Dictionary Learning is a method used in signal and image processing. In this study, classification of mammogram images were realized by using dictionary learning and sparse representation algorithms. The attributes of the images were detected with Wavelet Transform and PCA, and the new dataset which was created by the obtained attributes were classified by Dictionary Learning. Moreover, the classification performance of the Dictionary Learning algorithm was evaluated by classifying the new dataset with SVM, Rotation Forest and AdaBoost algorithms. The best classification accuracy was obtained by PCA-Dictionary Learning algorithm as 98.89%.
基于字典学习的乳房x光图像分类
字典学习是一种用于信号和图像处理的方法。在本研究中,使用字典学习和稀疏表示算法来实现乳房x光图像的分类。利用小波变换和主成分分析对图像的属性进行检测,利用获取的属性生成新的数据集,并进行字典学习分类。此外,通过使用SVM、Rotation Forest和AdaBoost算法对新数据集进行分类,评估字典学习算法的分类性能。PCA-Dictionary Learning算法的分类准确率最高,为98.89%。
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