On modality classification and its use in text-based image retrieval in medical databases

Pierre Tirilly, Kun Lu, Xiangming Mu, Tian Zhao, Yu Cao
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引用次数: 22

Abstract

Medical databases have been a popular application field for image retrieval techniques during the last decade. More recently, much attention has been paid to the prediction of medical image modality (X-rays, MRI…) and the integration of the predicted modality into image retrieval systems. This paper addresses these two issues. On the one hand, we believe it is possible to design specific visual descriptors to determine image modality much more efficiently than the traditional image descriptors currently used for this task. We propose very light image descriptors that better describe the modality properties and show promising results. On the other hand, we present a comparison of different existing or new modality integration methods. This comprehensive study provide insights on the behavior of these models with respect to the initial classification and retrieval systems. These results can be extended to other applications with a similar framework. All the experiments presented in this work are performed using datasets provided during the 2009 and 2010 ImageCLEF medical tracks.
模态分类及其在医学数据库文本图像检索中的应用
近十年来,医学数据库已成为图像检索技术的一个热门应用领域。近年来,人们越来越关注医学图像模态的预测(x射线,MRI…)以及将预测模态集成到图像检索系统中。本文解决了这两个问题。一方面,我们相信设计特定的视觉描述符可以比目前用于此任务的传统图像描述符更有效地确定图像模态。我们提出了非常轻的图像描述符,可以更好地描述模态属性,并显示出令人满意的结果。另一方面,我们对现有的和新的模态整合方法进行了比较。这项全面的研究为这些模型的行为提供了与初始分类和检索系统相关的见解。这些结果可以扩展到具有类似框架的其他应用程序。在这项工作中提出的所有实验都是使用2009年和2010年ImageCLEF医学轨道期间提供的数据集进行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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