Many-to-many graph matching via metric embedding


Keselman Y., Shokoufandeh A., Demirci M. F., Dickinson S.

2003 IEEE Computer Society Conference on Computer Vision and Pattern Recognition, Madison, WI, United States Of America, 18 - 20 June 2003, vol.1, (Full Text) identifier

  • Publication Type: Conference Paper / Full Text
  • Volume: 1
  • City: Madison, WI
  • Country: United States Of America
  • Ankara Yıldırım Beyazıt University Affiliated: No

Abstract

Graph matching is an important component in many object recognition algorithms. Although most graph matching algorithms seek a one-to-one correspondence between nodes, it is often the case that a more meaningful correspondence exists between a cluster of nodes in one graph and a cluster of nodes in the other. We present a matching algorithm that establishes many-to-many correspondences between nodes of noisy, vertex-labeled weighted graphs. The algorithm is based on recent developments in efficient low-distortion metric embedding of graphs into normed vector spaces. By embedding weighted graphs into normed vector spaces, we reduce the problem of many-to-many graph matching to that of computing a distribution-based distance measure between graph embeddings. We use a specific measure, the Earth Mover's Distance, to compute distances between sets of weighted vectors. Empirical evaluation of the algorithm on an extensive set of recognition trials demonstrates both the robustness and efficiency of the overall approach.