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Multiple Order Graph Matching

机译:多阶图匹配

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摘要

This paper addresses the problem of finding correspondences between two sets of features by using multiple order constraints all together. First, we build a high-order supersymmetric tensor, called multiple order tensor, to incorporate the constraints of different orders (e.g., unary, pairwise, third order, etc.). The multiple order tensor naturally merges multi-granularity geometric affinities, thus it presents stronger descriptive power of consistent constraints than the individual order based methods. Second, to achieve the optimal matching, we present an efficient computational approach for the power iteration of the multiple order tensor. It only needs sparse tensor elements and reduces the sampling size of feature tuples, due to the supersymmetry of the multiple order tensor. The experiments on both synthetic and real image data show that our approach improves the matching performance compared to state-of-the-art algorithms.
机译:本文解决了通过一起使用多个顺序约束来查找两组特征之间的对应关系的问题。首先,我们建立一个称为多阶张量的高阶超对称张量,以合并不同阶数(例如一元,成对,三阶等)的约束。多阶张量自然地融合了多个粒度的几何亲和力,因此与基于单个阶的方法相比,它具有更强的一致性约束描述能力。其次,为了实现最佳匹配,我们提出了一种有效的计算方法,用于多阶张量的幂迭代。由于多阶张量的超对称性,它只需要稀疏张量元素并减小特征元组的采样大小。对合成和真实图像数据进行的实验表明,与最新算法相比,我们的方法提高了匹配性能。

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