首页> 外文会议>International Conference on Advanced Concepts for Intelligent Vision Systems(ACIVS 2006); 20060918-21; Antwerp(BE) >A Novel Stochastic Attributed Relational Graph Matching Based on Relation Vector Space Analysis
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A Novel Stochastic Attributed Relational Graph Matching Based on Relation Vector Space Analysis

机译:基于关系向量空间分析的新型随机属性关系图匹配

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In this paper, we propose a novel stochastic attributed relational graph (SARG) matching algorithm in order to cope with possible distortions due to noise and occlusion. The support flow and the correspondence measure between nodes are defined and estimated by analyzing the distribution of the attribute vectors in the relation vector space. And then the candidate subgraphs are extracted and ordered according to the correspondence measure. Missing nodes for each candidates are identified by the iterative voting scheme through an error analysis, and then the final subgraph matching is carried out effectively by excluding them. Experimental results on the synthetic ARGs demonstrate that the proposed SARG matching algorithm is quite robust and efficient even in the noisy environment. Comparative evaluation results also show that it gives superior performance compared to other conventional graph matching approaches.
机译:在本文中,我们提出了一种新颖的随机属性关系图(SARG)匹配算法,以应对由于噪声和遮挡而引起的可能的失真。通过分析关系向量空间中属性向量的分布,定义和估计节点之间的支持流程和对应度量。然后根据对应度量对候选子图进行提取和排序。通过迭代投票方案通过错误分析来识别每个候选者的缺失节点,然后通过排除它们来有效地执行最终子图匹配。在合成ARGs上的实验结果表明,即使在嘈杂的环境中,所提出的SARG匹配算法也非常健壮和高效。比较评估结果还显示,与其他常规图形匹配方法相比,它具有更高的性能。

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