A robust eigendecomposition framework for inexact graph-matching

Bin Luo, E. Hancock
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引用次数: 3

Abstract

Graph-matching is a task of pivotal importance in high-level vision since it provides a means by which abstract pictorial descriptions can be matched to one another. This paper describes an efficient algorithm for inexact graph-matching. The method is purely structural, that is to say it uses only the edge or connectivity structure of the graph and does not draw on node or edge attributes. We make two contributions. Commencing from a probability distribution for matching errors, we show how the problem of graph-matching can be posed as maximum likelihood estimation using the apparatus of the EM algorithm. Our second contribution is to cast the recovery of correspondence matches between the graph nodes in a matrix framework. This allows us to efficiently recover correspondence matches using singular value decomposition. We experiment with the method on both real-world and synthetic data. Here we demonstrate that the method offers comparable performance to more computationally demanding methods.
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非精确图匹配的鲁棒特征分解框架
图匹配在高级视觉中是一项至关重要的任务,因为它提供了一种方法,通过这种方法可以将抽象的图像描述相互匹配。本文描述了一种有效的非精确图匹配算法。该方法是纯结构化的,也就是说,它只使用图的边或连通性结构,不绘制节点或边属性。我们有两个贡献。从匹配误差的概率分布开始,我们展示了如何使用EM算法的设备将图匹配问题作为最大似然估计。我们的第二个贡献是在矩阵框架中实现图节点之间对应匹配的恢复。这允许我们使用奇异值分解有效地恢复对应匹配。我们在真实世界和合成数据上对该方法进行了实验。在这里,我们证明了该方法提供了相当的性能,更多的计算要求的方法。
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