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首页> 外文期刊>Knowledge and Data Engineering, IEEE Transactions on >EMR: A Scalable Graph-Based Ranking Model for Content-Based Image Retrieval
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EMR: A Scalable Graph-Based Ranking Model for Content-Based Image Retrieval

机译:EMR:用于基于内容的图像检索的可扩展的基于图的排名模型

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摘要

Graph-based ranking models have been widely applied in information retrieval area. In this paper, we focus on a well known graph-based model - the Ranking on Data Manifold model, or Manifold Ranking (MR). Particularly, it has been successfully applied to content-based image retrieval, because of its outstanding ability to discover underlying geometrical structure of the given image database. However, manifold ranking is computationally very expensive, which significantly limits its applicability to large databases especially for the cases that the queries are out of the database (new samples). We propose a novel scalable graph-based ranking model called Efficient Manifold Ranking (EMR), trying to address the shortcomings of MR from two main perspectives: scalable graph construction and efficient ranking computation. Specifically, we build an anchor graph on the database instead of a traditional -nearest neighbor graph, and design a new form of adjacency matrix utilized to speed up the ranking. An approximate method is adopted for efficient out-of-sample retrieval. Experimental results on some large scale image databases demonstrate that EMR is a promising method for real world retrieval applications.
机译:基于图的排序模型已广泛应用于信息检索领域。在本文中,我们集中于一个众所周知的基于图的模型-数据流形排名模型或流形排名(MR)。特别是,由于它具有出色的发现给定图像数据库的基础几何结构的能力,因此已成功应用于基于内容的图像检索。但是,流形排序在计算上非常昂贵,这极大地限制了它在大型数据库中的适用性,尤其是在查询不在数据库中的情况下(新样本)。我们提出了一种新颖的基于可伸缩图的排名模型,称为高效流形排名(EMR),试图从两个主要角度解决MR的缺点:可伸缩图构造和高效排名计算。具体来说,我们在数据库上建立锚图,而不是传统的最近邻图,并设计一种新形式的邻接矩阵以加快排名。为有效地进行样本外检索,采用了一种近似方法。在一些大型图像数据库上的实验结果表明,EMR对于现实世界的检索应用是一种很有前途的方法。

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