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A Learned Distance Function for Medical Image Similarity Retrieval

机译:用于医学图像相似性检索的学习距离功能

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One fundamental problem remains in the area of image analysis and retrieval: how to measure perceptual similarity between two images. Most researchers employ a Minkowski-type metric, which does not reliably find similarities in objects that are obviously alike. This paper develops a similarity function that is learned in order to capture the perception of similarity. The technique first extracts high-level landmarks in the images to determine a local contextual similarity, but these are unordered and unregistered. Second, the point sets of the two images are fed into the learned similarity function to determine the overall similarity. This technique avoids arbitrary spatial constraints and is robust in the presence of noise, outliers, and imaging artifacts.
机译:图像分析和检索领域存在一个根本问题:如何测量两个图像之间的感知相似性。大多数研究人员采用Minkowski型度量,这在显然相同的物体中不可能可靠地找到相似之处。本文开发了旨在捕捉相似性感知的相似函数。该技术首先提取图像中的高级地标以确定本地上下文相似性,但这些是无序和未注册的。其次,两个图像的点集被馈送到学习的相似性功能中以确定整体相似度。该技术避免了任意空间约束,并且在存在噪声,异常值和成像伪影中是稳健的。

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