Publication | Closed Access
Matching hierarchical structures using association graphs
394
Citations
56
References
1999
Year
EngineeringStructural Pattern RecognitionRelational StructuresNetwork AnalysisSemantic WebShock TreesGraph MatchingAssociation GraphsInformation RetrievalData ScienceData MiningStructural Graph TheoryAssociation GraphDiscrete MathematicsCombinatorial OptimizationAlgebraic Graph TheoryTopological Graph TheoryKnowledge DiscoveryComputer ScienceGraph AlgorithmNetwork ScienceGraph TheoryBusinessStructure MiningData Modeling
It is well-known that the problem of matching two relational structures can be posed as an equivalent problem of finding a maximal clique in a (derived) "association graph." However, it is not clear how to apply this approach to computer vision problems where the graphs are hierarchically organized, i.e., are trees, since maximal cliques are not constrained to preserve the partial order. We provide a solution to the problem of matching two trees by constructing the association graph using the graph-theoretic concept of connectivity. We prove that, in the new formulation, there is a one-to-one correspondence between maximal cliques and maximal subtree isomorphisms. This allows us to cast the tree matching problem as an indefinite quadratic program using the Motzkin-Straus theorem, and we use "replicator" dynamical systems developed in theoretical biology to solve it. Such continuous solutions to discrete problems are attractive because they can motivate analog and biological implementations. The framework is also extended to the matching of attributed trees by using weighted association graphs. We illustrate the power of the approach by matching articulated and deformed shapes described by shock trees.
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