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Automatic Classification Of Medical X-Ray Images

机译:医学X射线图像的自动分类

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摘要

Image representation is one of the major aspects of automatic classification algorithms. In this paper, different feature extraction techniques have been utilized to represent medical X-ray images. They are categorized into two groups; (i) low-level image representation such as Gray Level Co-occurrence Matrix(GLCM), Canny Edge Operator, Local Binary Pattern(LBP) , pixel value, and (ii) local patch-based image representation such as Bag of Words (BoW). These features have been exploited in different algorithms for automatic classification of medical Xray images. We then analyzed the classification performance obtained with regard to the image representation techniques used. These experiments were evaluated on ImageCLEF 2007 database consists of 11000 medical X-ray images with 116 classes. Experimental results showed the classification performance obtained by exploiting LBP and BoW outperformed the other algorithms with respect to the image representation techniques used.
机译:图像表示是自动分类算法的主要方面之一。在本文中,已经使用了不同的特征提取技术来表示医学X射线图像。它们分为两类: (i)低层图像表示,例如灰度共生矩阵(GLCM),Canny Edge算子,局部二进制模式(LBP),像素值,以及(ii)基于局部补丁的图像表示,例如词袋(弓)。这些功能已在用于医学X射线图像自动分类的不同算法中得到了利用。然后,我们分析了有关所用图像表示技术的分类性能。在ImageCLEF 2007数据库上评估了这些实验,该数据库包含116个类别的11000幅医学X射线图像。实验结果表明,通过使用LBP和BoW获得的分类性能优于所使用的图像表示技术。

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