IEEE Trans Pattern Anal Mach Intell. 2016 Jun;38(6):1228-42. doi: 10.1109/TPAMI.2015.2477832. Epub 2015 Sep 10.
This paper addresses the problem of matching common node correspondences among multiple graphs referring to an identical or related structure. This multi-graph matching problem involves two correlated components: i) the local pairwise matching affinity across pairs of graphs; ii) the global matching consistency that measures the uniqueness of the pairwise matchings by different composition orders. Previous studies typically either enforce the matching consistency constraints in the beginning of an iterative optimization, which may propagate matching error both over iterations and across graph pairs; or separate affinity optimization and consistency enforcement into two steps. This paper is motivated by the observation that matching consistency can serve as a regularizer in the affinity objective function especially when the function is biased due to noises or inappropriate modeling. We propose composition-based multi-graph matching methods to incorporate the two aspects by optimizing the affinity score, meanwhile gradually infusing the consistency. We also propose two mechanisms to elicit the common inliers against outliers. Compelling results on synthetic and real images show the competency of our algorithms.
本文针对匹配多个图谱中相同或相关结构的公共节点对应关系的问题。该多图谱匹配问题涉及两个相关部分:i)不同图谱对之间的局部两两匹配亲和力;ii)通过不同组合顺序度量两两匹配唯一性的全局匹配一致性。之前的研究通常在迭代优化的开始强制匹配一致性约束,这可能在迭代和图谱对之间传播匹配错误;或者将亲和力优化和一致性执行分离为两个步骤。本文的动机是观察到匹配一致性可以作为亲和力目标函数中的正则化项,特别是当函数由于噪声或不当建模而存在偏差时。我们提出基于组合的多图谱匹配方法,通过优化亲和力得分来结合这两个方面,同时逐渐注入一致性。我们还提出了两种机制来提取公共内点和外点。在合成和真实图像上的有力结果表明了我们算法的竞争力。