Research Publications
Learning Graph Matching As a fundamental problem in pattern recognition,
graph matching has applications in a variety of fields, from
computer vision to computational biology. In graph matching,
patterns are modeled as graphs and pattern recognition amounts
to finding a correspondence between the nodes of different
graphs. Many formulations of this problem can be cast in
general as a quadratic assignment problem, where a linear
term in the objective function encodes node compatibility and
a quadratic term encodes edge compatibility. The main research
focus in this theme is about designing efficient algorithms for
approximately solving the quadratic assignment problem, since
it is NP-hard. In this paper we turn our attention to a different
question: how to estimate compatibility functions such that the
solution of the resulting graph matching problem best matches
the expected solution that a human would manually provide.
We present a method for learning graph matching: the training
examples are pairs of graphs and the ‘labels’ are matches
between them. Our experimental results reveal that learning
can substantially improve the performance of standard graph
matching algorithms. In particular, we find that simple linear
assignment with such a learning scheme outperforms Graduated
Assignment with bistochastic normalisation, a state-of-the-art
quadratic assignment relaxation algorithm. Details
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