融合特征多样性的核分类器用于乳腺肿块分类

Nabiha Azizi, Nawel Zemmal, Yamina Tlili Guiassa, N. Farah
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引用次数: 7

摘要

本文探讨了利用特征与分类器之间的互补性,通过乳腺x线检查进行乳腺肿块分类的计算机辅助诊断。它是关于设计和发展一个自动肿块分类乳房x光检查。该方法包括三个阶段:分割、特征提取和分类。在分类阶段,基于核的分类器组合是当前机器学习领域的一个活跃范例。它利用了分类融合算法的优点。提出了基于核的分类器组合作为一种利用分类器之间存在的多样性来提高识别可靠性的研究方法。该方案基于支持向量机分类器的组合。每一个都与一个同质的特征族(Hu矩;中心时刻,哈拉利克时刻。本研究采用特征之间的多样性准则,以确保最佳性能。实验表明,使用DDSM数据库开发的系统取得了令人鼓舞的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel based classifiers fusion with features diversity for breast masses classification
This paper investigated a computer-aided diagnosis for breast mass classification by mammography examination using complementarity existing between features and classifiers. It is concerned with the design and development of an automatic mass classification of mammograms. The proposed method consists of three stages: segmentation, feature extraction and classification. In classification phase, kernel based classifiers combination is a current active paradigm in the field of machine learning. It takes benefit of classification fusion algorithms. The combination of Kernel-based classifiers was proposed as a research way allowing recognition reliability by using diversity which can be exist between classifiers. The proposed scheme is based on combination of support vector machine classifiers. Each one is associated with an homogenous family of features (Hu moments; central moments, Haralick moment. Diversity criteria between features are adopted in this study to ensure best performance. Our experiments demonstrated that developed system using (DDSM) database achieve very encouraging results.
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