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A Novel Similarity Learning Method via Relative Comparison for Content-Based Medical Image Retrieval

机译:基于相对比较的基于内容的医学图像检索新相似度学习方法

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摘要

Nowadays, the huge volume of medical images represents an enormous challenge towards health-care organizations, as it is often hard for clinicians and researchers to manage, access, and share the image database easily. Content-based medical image retrieval (CBMIR) techniques are employed to facilitate the above process. It is known that a few concrete factors, including visual attributes extracted from images, measures encoding the similarity between images, user interaction, etc. play important roles in determining the retrieval performance. This paper concentrates on the similarity learning problem of CBMIR. A novel similarity learning paradigm is proposed via relative comparison, and a large database composed of 5,000 images is utilized to evaluate the retrieval performance. Extensive experimental results and comprehensive statistical analysis demonstrate the superiority of adopting the newly introduced learning paradigm, compared with several conventional supervised and semi-supervised similarity learning methods, in the presented CBMIR application.
机译:如今,海量医学图像对医疗保健组织构成了巨大挑战,因为临床医生和研究人员通常很难轻松地管理,访问和共享图像数据库。基于内容的医学图像检索(CBMIR)技术用于促进上述过程。已知一些具体因素,包括从图像中提取的视觉属性,对图像之间的相似性进行编码的度量,用户交互等,在确定检索性能方面起着重要的作用。本文着重于CBMIR的相似性学习问题。通过相对比较,提出了一种新颖的相似性学习范例,并利用一个由5,000张图像组成的大型数据库来评估检索性能。广泛的实验结果和全面的统计分析表明,在提出的CBMIR应用中,与几种常规的监督和半监督的相似性学习方法相比,采用新引入的学习范式的优越性。

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