Hyper-graph matching via reweighted random walks

Jungmin Lee, Minsu Cho, Kyoung Mu Lee
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引用次数: 183

Abstract

Establishing correspondences between two feature sets is a fundamental issue in computer vision, pattern recognition, and machine learning. This problem can be well formulated as graph matching in which nodes represent feature points while edges describe pairwise relations between feature points. Recently, several researches have tried to embed higher-order relations of feature points by hyper-graph matching formulations. In this paper, we generalize the previous hyper-graph matching formulations to cover relations of features in arbitrary orders, and propose a novel state-of-the-art algorithm by reinterpreting the random walk concept on the hyper-graph in a probabilistic manner. Adopting personalized jumps with a reweighting scheme, the algorithm effectively reflects the one-to-one matching constraints during the random walk process. Comparative experiments on synthetic data and real images show that the proposed method clearly outperforms existing algorithms especially in the presence of noise and outliers.
通过重加权随机游走的超图匹配
在两个特征集之间建立对应关系是计算机视觉、模式识别和机器学习中的一个基本问题。这个问题可以很好地表述为图匹配,其中节点表示特征点,而边描述特征点之间的成对关系。近年来,一些研究尝试利用超图匹配公式嵌入特征点的高阶关系。在本文中,我们将以往的超图匹配公式推广到涵盖任意顺序的特征关系,并通过以概率的方式重新解释超图上的随机游走概念,提出了一种新的最先进的算法。该算法采用个性化跳跃和重权方案,有效地反映了随机游走过程中一对一匹配约束。在合成数据和真实图像上的对比实验表明,该方法明显优于现有算法,特别是在存在噪声和异常值的情况下。
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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