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High Order Structural Matching Using Dominant Cluster Analysis

机译:基于优势聚类分析的高阶结构匹配

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We formulate the problem of high order structural matching by applying dominant cluster analysis (DCA) to a direct product hypergraph (DPH). For brevity we refer to the resulting algorithm as DPH-DCA. The DPH-DCA can be considered as an extension of the game theoretic algorithms presented in [8] from clustering to matching, and also as a reduced version of reduced version of the method of ensembles of affinity relations presented in [6]. The starting point for our method is to construct a K-uniform direct product hypergraph for the two sets of higher-order features to be matched. Each vertex in the direct product hypergraph represents a potential correspondence and the weight on each hyperedge represents the agreement between two K-tuples drawn from the two feature sets. Vertices representing correct assignment tend to form a strongly intra-connected cluster, i.e. a dominant cluster. We evaluate the association of each vertex belonging to the dominant cluster by maximizing an objective function which maintains the K-tuple agreements. The potential correspondences with nonzero association weights are more likely to belong to the dominant cluster than the remaining zero-weighted ones. They are thus selected as correct matchings subject to the one-to-one correspondence constraint. Furthermore, we present a route to improving the matching accuracy by invoking prior knowledge. An experimental evaluation shows that our method outperforms the state-of-the-art high order structural matching methods[10] [3].
机译:通过将优势聚类分析(DCA)应用于直接乘积超图(DPH),我们提出了高阶结构匹配的问题。为简便起见,我们将所得算法称为DPH-DCA。 DPH-DCA可以视为[8]中提出的游戏理论算法从聚类到匹配的扩展,也可以视为[6]中提出的亲和关系集成方法的简化版本的简化版本。我们方法的出发点是为要匹配的两组高阶特征构造一个K统一的直接乘积超图。直接乘积超图中的每个顶点表示一个潜在的对应关系,每个超边上的权重表示从两个特征集中得出的两个K元组之间的一致性。表示正确分配的顶点往往会形成一个内部紧密连接的群集,即一个主导群集。我们通过最大化保持K元组协议的目标函数来评估属于优势簇的每个顶点的关联。与非零关联权重相比,具有非零关联权重的潜在对应关系更可能属于主导群集。因此,将它们选择为符合一对一对应关系约束的正确匹配。此外,我们提出了一种通过调用先验知识来提高匹配精度的途径。实验评估表明,我们的方法优于最新的高阶结构匹配方法[10] [3]。

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