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Discovering shape classes using tree edit-distance and pairwise clustering

journal contribution
posted on 2007-05-01, 00:00 authored by Andrea Torsello, Antonio Robles-KellyAntonio Robles-Kelly, Edwin R Hancock
This paper describes work aimed at the unsupervised learning of shape-classes from shock trees. We commence by considering how to compute the edit distance between weighted trees. We show how to transform the tree edit distance problem into a series of maximum weight clique problems, and show how to use relaxation labeling to find an approximate solution. This allows us to compute a set of pairwise distances between graph-structures. We show how the edit distances can be used to compute a matrix of pairwise affinities using χ2 statistics. We present a maximum likelihood method for clustering the graphs by iteratively updating the elements of the affinity matrix. This involves interleaved steps for updating the affinity matrix using an eigendecomposition method and updating the cluster membership indicators. We illustrate the new tree clustering framework on shock-graphs extracted from the silhouettes of 2D shapes.

History

Journal

International journal of computer vision

Volume

72

Issue

3

Pagination

259 - 285

Publisher

Springer

Location

New York, N.Y.

ISSN

0920-5691

Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Copyright notice

2006, Springer Science + Business Media, LLC