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Image matching using alpha-entropy measures and entropic graphs

机译:使用alpha熵测度和熵图进行图像匹配

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摘要

Matching a reference image to a secondary image extracted from a database of transformed exemplars constitutes an important image retrieval task. Two related problems are: specification of a general class of discriminatory image features and an appropriate similarity measure to rank the closeness of the query to the database. In this paper we present a general method based on matching high dimensional image features, using entropic similarity measures that can be empirically estimated using entropic graphs such as the minimal spanning tree (MST). The entropic measures we consider are generalizations of the well-known Kullback-Liebler (KL) distance, the mutual information (MI) measure, and the Jensen difference. Our entropic graph approach has the advantage of being implementable for high dimensional feature spaces for which other entropy-based pattern matching methods are computationally difficult. We compare our technique to previous entropy matching methods for a variety of continuous and discrete features sets including: single pixel gray levels; tag sub-image features; and independent component analysis (ICA) features. We illustrate the methodology for multimodal face retrieval and ultrasound (US) breast image registration.
机译:将参考图像与从变换后的示例数据库中提取的辅助图像进行匹配构成了重要的图像检索任务。两个相关的问题是:区分图像特征的一般类别的规范和对查询与数据库的接近程度进行排名的适当相似性度量。在本文中,我们提出了一种基于高维图像特征匹配的通用方法,该方法使用熵相似性度量,该度量可以使用熵图(如最小生成树(MST))凭经验进行估算。我们考虑的熵测度是对众所周知的Kullback-Liebler(KL)距离,互信息(MI)测度和Jensen差的概括。我们的熵图方法的优点是可用于高维特征空间,而其他基于熵的模式匹配方法在计算上比较困难。我们将我们的技术与以前的熵匹配方法进行比较,以得到各种连续和离散特征集,包括:单像素灰度级;标记子图像特征;和独立成分分析(ICA)功能。我们说明了用于多模式面部检索和超声(US)乳房图像配准的方法。

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