Function-described graphs for modelling objects represented by sets of attributed graphs

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We present in this article the model function-described graph (FDG), which is a type of compact representation of a set of attributed graphs (AGs) that borrow from random graphs the capability of probabilistic modelling of structural and attribute information. We define the FDGs, their features and two distance measures between AGs (unclassified patterns) and FDGs (models or classes) and we also explain an efficient matching algorithm. Two applications of FDGs are presented: in the former, FDGs are used for modelling and matching 3D-objects described by multiple views, whereas in the latter, they are used for representing and recognising human faces, described also by several views.

论文关键词:Attributed graphs,Error-tolerant graph matching,Function-described graphs,Random graphs,Clustering,Synthesis,3D-object recognition and face identification

论文评审过程:Received 19 November 2001, Accepted 23 May 2002, Available online 14 November 2002.

论文官网地址:https://doi.org/10.1016/S0031-3203(02)00107-3