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Analysis of primitive features for medical image modality classification

机译:医学图像模态分类的原始特征分析

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In this paper the performance of various descriptors is evaluated for medical image categorization. Many descriptors have been proposed in the literature for medical image categorization. It is unclear which descriptor encodes the content information efficiently. The descriptors that are calculated from these medical images should be descriptive, distinctive and robust to various transformations. The stability of these descriptors are evaluated under various transformations and are then analyzed for their discriminatory ability for the task of classification. In this study the criteria of transformations, repeatability, matching score and computations cost is used to evaluate the performance of these descriptors. The experimental results illustrates that among global descriptors local features patches histogram and among local descriptors SIFT encodes the content information quite efficiently.
机译:在本文中,对各种描述符的性能进行了评估,以用于医学图像分类。在文献中已经提出了许多用于医学图像分类的描述符。不清楚哪个描述符有效地编码内容信息。从这些医学图像计算出的描述符应该具有描述性,独特性并且对各种转换都具有鲁棒性。在各种变换下评估这些描述符的稳定性,然后分析其对分类任务的区分能力。在这项研究中,转换,可重复性,匹配分数和计算成本的标准用于评估这些描述符的性能。实验结果表明,在全局描述符中,局部特征块直方图和局部描述符中,SIFT都非常有效地编码了内容信息。

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