基于不变视觉特征的内镜图像检索与分类

Barbara André, Tom Kamiel Magda Vercauteren, A. Perchant, A. Buchner, M. Wallace, N. Ayache
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引用次数: 34

摘要

本文研究了使用现代基于内容的图像检索方法将内镜图像分为两类:肿瘤(病理)和良性。我们首先描述了将图像映射到视觉特征签名的方法,该特征签名是相对于某些特定类别的几何和强度变换的数值向量不变量。然后,我们解释如何使用这些签名从数据库中检索与新图像最接近的k个图像。分类最终通过一个由邻近标准(加权k近邻)加权的投票过程来实现。与之前发表的几种替代方法相比,它们在数据库上的最大准确率接近67%,我们的方法产生了80%的准确率,并提供了很有希望的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Endomicroscopic image retrieval and classification using invariant visual features
This paper investigates the use of modern content based image retrieval methods to classify endomicroscopic images into two categories: neoplastic (pathological) and benign. We describe first the method that maps an image into a visual feature signature which is a numerical vector invariant with respect to some particular classes of geometric and intensity transformations. Then we explain how these signatures are used to retrieve from a database the k closest images to a new image. The classification is finally achieved through a procedure of votes weighted by a proximity criterion (weighted k-nearest neighbors). Compared with several previously published alternatives whose maximal accuracy rate is almost 67% on the database, our approach yields an accuracy of 80% and offers promising perspectives.
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