DocumentCode
253850
Title
Attributed Graph Mining and Matching: An Attempt to Define and Extract Soft Attributed Patterns
Author
Quanshi Zhang ; Xuan Song ; Xiaowei Shao ; Huijing Zhao ; Shibasaki, Ryosuke
Author_Institution
Univ. of Tokyo, Tokyo, Japan
fYear
2014
fDate
23-28 June 2014
Firstpage
1394
Lastpage
1401
Abstract
Graph matching and graph mining are two typical areas in artificial intelligence. In this paper, we define the soft attributed pattern (SAP) to describe the common subgraph pattern among a set of attributed relational graphs (ARGs), considering both the graphical structure and graph attributes. We propose a direct solution to extract the SAP with the maximal graph size without node enumeration. Given an initial graph template and a number of ARGs, we modify the graph template into the maximal SAP among the ARGs in an unsupervised fashion. The maximal SAP extraction is equivalent to learning a graphical model (i.e. an object model) from large ARGs (i.e. cluttered RGB/RGB-D images) for graph matching, which extends the concept of "unsupervised learning for graph matching." Furthermore, this study can be also regarded as the first known approach to formulating "maximal graph mining" in the graph domain of ARGs. Our method exhibits superior performance on RGB and RGB-D images.
Keywords
artificial intelligence; data mining; feature extraction; graph theory; image colour analysis; image matching; unsupervised learning; ARGs; RGB images; RGB-D images; SAP extraction; artificial intelligence; attributed graph matching; attributed graph mining; attributed relational graphs; graph attributes; graph domain; graphical structure; initial graph template; maximal graph mining; maximal graph size; soft attributed pattern extraction; subgraph pattern; unsupervised fashion; unsupervised learning; Computational modeling; Computer vision; Data mining; Educational institutions; Minimization; Optimization; Pattern matching; Attributed Relational Graphs; Graph Matching; Graph Mining;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location
Columbus, OH
Type
conf
DOI
10.1109/CVPR.2014.181
Filename
6909577
Link To Document