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Medical Image Retrieval by Region Based Shape Feature For CT Images

机译:基于区域形状特征的CT图像医学图像检索

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Content Based Image Retrieval (CBIR) is the huge field for image retrieval from the wide databases. It is one of the popular techniques from computer vision domain. CBIR consist of feature extraction followed by similarity comparison. Shape feature extraction can be made on two descriptors one is region based and other is contour based. This paper implements shape feature extraction with region based descriptors. Zernike moments and Hu's seven moments have been used as a feature extraction techniques and Support Vector Machine (SVM) is used as a classifier. Different distance metrics are then used for similarity comparison with these feature extraction methods for efficient results. For performance evaluation distance metrics used are Euclidean, Chebyshev, Cityblock, Canberra, Standardized Euclidean (Seuclidean). Medical database with 6 classes consist of 100 images each namely head, hip, shoulder, pelvis, knee, ankle is used. After obtaining all the experimental results in terms of precision and recall, a comparative study is made for selected database.
机译:基于内容的图像检索(CBIR)是从广泛的数据库中检索图像的巨大领域。它是计算机视觉领域的流行技术之一。 CBIR由特征提取和相似度比较组成。可以在两个描述符上进行形状特征提取,一个是基于区域的,另一个是基于轮廓的。本文利用基于区域的描述符实现形状特征提取。 Zernike矩和Hu的七个矩已被用作特征提取技术,而支持向量机(SVM)被用作分类器。然后,将不同的距离度量用于与这些特征提取方法的相似度比较,以获得有效的结果。对于性能评估,所使用的距离度量标准是Euclidean,Chebyshev,Cityblock,堪培拉,标准化Euclidean(Seuclidean)。医学数据库分为6个类别,每个类别包含100个图像,分别是头部,臀部,肩膀,骨盆,膝盖,脚踝。在获得所有实验结果的准确性和查全率后,对所选数据库进行了比较研究。

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