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Graph Matching: Fast Candidate Elimination Using Machine Learning Techniques

机译:图匹配:使用机器学习技术的快速候选消除

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摘要

Graph matching is an important class of methods in pattern recognition. Typically, a graph representing an unknown pattern is matched with a database of models. If the database of model graphs is large, an additional factor in induced into the overall complexity of the matching process. Various techniques for reducing the influence of this additional factor have been described in the literature. In this paper we propose to extract simple features from a graph and use them to eliminate candidate graphs from the database. The most powerful set of features and a decision tree useful for candidate elimination are found by means of the C4.5 algorithm, which was originally proposed for inductive learning of classification rules. Experimental results are reported demonstrating that efficient candidate elimination can be achieved by the proposed procedure.
机译:图匹配是模式识别中的重要方法。通常,代表未知模式的图形与模型数据库匹配。如果模型图数据库很大,则会导致匹配过程总体复杂性增加。文献中已经描述了用于减小该附加因素的影响的各种技术。在本文中,我们建议从图形中提取简单特征,并使用它们从数据库中消除候选图形。通过最初建议用于归类学习分类规则的C4.5算法,可以找到最强大的功能集和可用于候选消除的决策树。据报道实验结果表明,通过提出的程序可以实现有效的候选消除。

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