Detecting objects in image collections using bipartite graph matching

Pengfei Xu, Ren Chen, Yufang Ning
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引用次数: 1

Abstract

Object-based image retrieval (OBIR) problem, in which the user is only interested in a fraction of the image, remains unsatisfactory, as it relies highly on accuracy. To address this problem, a novel method basing on bipartite graph matching is proposed in this paper. On the basis of the extraction of image features, we define a cost function according to the bipartite graph theory and minimize it by using the optimization technique to obtain an optimal map. Then, we calculate the mahalanobis distance to eliminate the mismatched points, since it takes into account the distribution of matched points. Finally, we apply the measure of coefficient of variation to evaluate the discrete degree and rerank the retrieved images. The experimental results on real video sequences and Caltech256 dataset demonstrate the effectiveness of our approach.
使用二部图匹配检测图像集合中的对象
基于对象的图像检索(OBIR)问题,用户只对图像的一小部分感兴趣,仍然不能令人满意,因为它高度依赖于准确性。为了解决这一问题,本文提出了一种基于二部图匹配的新方法。在提取图像特征的基础上,根据二部图理论定义代价函数,并利用优化技术对代价函数进行最小化,得到最优映射。然后,我们计算马氏距离来消除不匹配点,因为它考虑了匹配点的分布。最后,我们利用变异系数的度量来评估图像的离散程度并对检索到的图像进行重新排序。在真实视频序列和Caltech256数据集上的实验结果证明了该方法的有效性。
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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