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Unsupervised learning for graph matching

机译:用于图匹配的无监督学习

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摘要

Graph matching is an essential problem in computer vision that has been successfully applied to 2D and 3D feature matching and object recognition. Despite its importance, little has been published on learning the parameters that control graph matching, even though learning has been shown to be vital for improving the matching rate. In this paper we show how to perform parameter learning in an unsupervised fashion, that is when no correct correspondences between graphs are given during training. Our experiments reveal that unsupervised learning compares favorably to the supervised case, both in terms of efficiency and quality, while avoiding the tedious manual labeling of ground truth correspondences. We verify experimentally that our learning method can improve the performance of several state-of-the art graph matching algorithms. We also show that a similar method can be successfully applied to parameter learning for graphical models and demonstrate its effectiveness empirically.
机译:图形匹配是计算机视觉中的一个基本问题,已成功应用于2D和3D特征匹配和对象识别。尽管它很重要,但是即使学习对于提高匹配率至关重要,对学习控制图形匹配的参数的研究也很少。在本文中,我们展示了如何以无监督的方式执行参数学习,也就是说,在训练过程中没有给出图之间的正确对应关系时。我们的实验表明,无论是在效率还是质量上,无监督学习都比有监督案例更有利,同时避免了繁琐的人工标记地面实况信件。我们通过实验验证了我们的学习方法可以提高几种最先进的图形匹配算法的性能。我们还表明,类似的方法可以成功地应用于图形模型的参数学习,并凭经验证明其有效性。

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