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X-Ray Medical Image Classification based on Multi Classifiers

机译:基于多分类器的X射线医学图像分类

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Advances in the medical imaging technology has lead to a growth in the number of digital images that needs to be classified, stored and retrieved properly. Content Based Image Retrieval (CBIR) systems represent the application of specific computer vision techniques to retrieve images from large databases based on their visual features, such as color, texture and shape. Practically, the use of these visual features only does not offer appropriate measurement performance and accuracy since those features cannot express the high-level semantics of users. Therefore, image classification systems based on machine learning techniques are used as solutions for this problem of CBIR systems. In our previous works, performance of different feature types were investigated by using two techniques of machine learning which are k-Nearest Neighbor (k-NN) and Support Vector Machine (SVM). In this paper, we extend that work by exploring the effect of combining these two classifiers. Our experiments show accuracy improvements based on using ImageCLEF2005 dataset.
机译:医学成像技术的进步导致需要分类,存储和检索的数字图像数量的增长。基于内容的图像检索(CBIR)系统表示特定计算机视觉技术的应用,以基于其视觉特征检索来自大型数据库的图像,例如颜色,纹理和形状。实际上,使用这些视觉功能仅提供适当的测量性能和准确性,因为这些功能无法表达用户的高级语义。因此,基于机器学习技术的图像分类系统用作CBIR系统这个问题的解决方案。在我们以前的作品中,通过使用一种机器学习技术来研究不同特征类型的性能,这些机器学习是K最近邻(K-NN)和支持向量机(SVM)。在本文中,我们通过探索这两个分类器的效果来扩展该工作。我们的实验显示了基于使用ImageClef2005数据集的准确性改进。

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