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Multiple Classifier Systems in Texton-Based Approach for the Classification of CT Images of Lung

机译:基于Texton的肺部CT图像分类的多分类器系统

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In this paper, we propose using texton signatures based on raw pixel representation along with a parallel multiple classifier system for the classification of emphysema in computed tomography images of the lung. The multiple classifier system is composed of support vector machines on the texton signatures as base classifiers and combines their decisions using product rule. The proposed approach is tested on 168 annotated regions of interest consisting of normal tissue, centrilobular emphysema, and paraseptal emphysema. Texton-based approach in texture classification mainly has two parameters, i.e., texton size and k value in k-means. Our results show that while aggregation of single decisions by SVMs over various k values using multiple classifier systems helps to improve the results compared to single SVMs, combining over different texton sizes is not beneficial. The performance of the proposed system, with an accuracy of 95%, is similar to a recently proposed approach based on local binary patterns, which performs almost the best among other approaches in the literature.
机译:在本文中,我们建议使用基于原始像素表示的Texton签名以及并行多分类器系统,用于肺的计算机断层摄影图像中的肺气肿分类。多分类器系统由Texton签名上的支持向量机组成为基本分类器,并使用产品规则结合其决策。该拟议的方法是由168个注释的感兴趣区域进行测试,由正常组织,肢体肺气肿和探针肺气肿。基于Texton的纹理分类方法主要具有两个参数,即Texton尺寸和K均值的k值。我们的结果表明,使用多个分类器系统通过SVMS通过SVMS的单一决策聚合有助于改善与单个SVM相比的结果,相比,通过不同的Texton大小组合并不有益。提出的系统的性能,精度为95%,类似于最近提出的方法,基于本地二进制模式,在文献中的其他方法中表现出几乎是最好的。

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