Efficient manifold ranking for image retrieval

Bin Xu, Jiajun Bu, Chun Chen, Deng Cai, Xiaofei He, W. Liu, Jiebo Luo
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引用次数: 139

Abstract

Manifold Ranking (MR), a graph-based ranking algorithm, has been widely applied in information retrieval and shown to have excellent performance and feasibility on a variety of data types. 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, both in graph construction and ranking computation stages, which significantly limits its applicability to very large data sets. In this paper, we extend the original manifold ranking algorithm and propose a new framework named Efficient Manifold Ranking (EMR). We aim to address the shortcomings of MR from two perspectives: scalable graph construction and efficient computation. Specifically, we build an anchor graph on the data set instead of the traditional k-nearest neighbor graph, and design a new form of adjacency matrix utilized to speed up the ranking computation. The experimental results on a real world image database demonstrate the effectiveness and efficiency of our proposed method. With a comparable performance to the original manifold ranking, our method significantly reduces the computational time, makes it a promising method to large scale real world retrieval problems.
用于图像检索的高效流形排序
流形排序算法(Manifold Ranking, MR)是一种基于图的排序算法,在信息检索中得到了广泛的应用,并在各种数据类型上显示出优异的性能和可行性。特别是,它已经成功地应用于基于内容的图像检索,因为它具有发现给定图像数据库的潜在几何结构的出色能力。然而,流形排序在图构建和排序计算阶段的计算成本都非常高,这极大地限制了它在非常大的数据集上的适用性。本文对原有的流形排序算法进行了扩展,提出了一个新的框架——高效流形排序(EMR)。我们的目标是从两个方面来解决MR的缺点:可扩展的图构建和高效的计算。具体来说,我们在数据集上构建锚点图来代替传统的k近邻图,并设计了一种新的邻接矩阵形式来加快排序计算。在真实世界图像数据库上的实验结果证明了该方法的有效性和高效性。该方法具有与原流形排序方法相当的性能,大大减少了计算时间,是解决大规模现实世界检索问题的一种很有前途的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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