布雷格曼总发散及其在形状检索中的应用

Meizhu Liu, Baba C Vemuri, Shun-Ichi Amari, Frank Nielsen
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引用次数: 0

摘要

在生物识别系统和 CAD 系统等领域,形状数据库搜索无处不在。这些领域中的形状数据正经历着爆炸式增长,通常需要搜索整个形状数据库,才能在各种任务中准确高效地检索出最佳匹配结果。在本文中,我们提出了[公式:见正文]中任意两个给定点或两个分布函数之间的新型发散度量。这种发散度量的是凸函数切线(用于发散度量的定义)在其输入参数之一与第二个参数之间的正交距离。这与布雷格曼发散类的通常定义中采用的正交距离不同[4]。我们利用这个正交距离重新定义了 Bregman 发散类,并发展出一套新理论,用于估计一组向量的中心以及概率分布函数。新的发散类被称为总布雷格曼发散(TBD)。我们提出了基于 l1 准则的 TBD 中心,并将其称为 t 中心,然后将其用作一类形状的聚类中心。我们介绍了一种使用 TBD 和 t-中心来表示 MPEG-7 数据库中的形状类别的形状检索方案,并将结果与文献中其他最先进的方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Total Bregman Divergence and its Applications to Shape Retrieval.

Total Bregman Divergence and its Applications to Shape Retrieval.

Total Bregman Divergence and its Applications to Shape Retrieval.

Total Bregman Divergence and its Applications to Shape Retrieval.

Shape database search is ubiquitous in the world of biometric systems, CAD systems etc. Shape data in these domains is experiencing an explosive growth and usually requires search of whole shape databases to retrieve the best matches with accuracy and efficiency for a variety of tasks. In this paper, we present a novel divergence measure between any two given points in [Formula: see text] or two distribution functions. This divergence measures the orthogonal distance between the tangent to the convex function (used in the definition of the divergence) at one of its input arguments and its second argument. This is in contrast to the ordinate distance taken in the usual definition of the Bregman class of divergences [4]. We use this orthogonal distance to redefine the Bregman class of divergences and develop a new theory for estimating the center of a set of vectors as well as probability distribution functions. The new class of divergences are dubbed the total Bregman divergence (TBD). We present the l1-norm based TBD center that is dubbed the t-center which is then used as a cluster center of a class of shapes The t-center is weighted mean and this weight is small for noise and outliers. We present a shape retrieval scheme using TBD and the t-center for representing the classes of shapes from the MPEG-7 database and compare the results with other state-of-the-art methods in literature.

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CiteScore
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