Frequent approximate subgraphs as features for graph-based image classification

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The use of approximate graph matching for frequent subgraph mining has been identified in different applications as a need. To meet this need, several algorithms have been developed, but there are applications where it has not been used yet, for example image classification. In this paper, a new algorithm for mining frequent connected subgraphs over undirected and labeled graph collections VEAM (Vertex and Edge Approximate graph Miner) is presented. Slight variations of the data, keeping the topology of the graphs, are allowed in this algorithm. Approximate matching in existing algorithm (APGM) is only performed on vertex label set. In VEAM, the approximate matching between edge label set in frequent subgraph mining is included in the mining process. Also, a framework for graph-based image classification is introduced. The approximate method of VEAM was tested on an artificial image collection using a graph-based image representation proposed in this paper. The experimentation on this collection shows that our proposal gets better results than graph-based image classification using some algorithms reported in related work.

论文关键词:Approximate graph mining,Approximate graph matching,Image representation,Image classification,Feature selection

论文评审过程:Received 27 April 2011, Revised 30 November 2011, Accepted 1 December 2011, Available online 13 December 2011.

论文官网地址:https://doi.org/10.1016/j.knosys.2011.12.002