KerGM: Kernelized Graph Matching
Graph matching plays a central role in such fields as computer vision, pattern recognition, and bioinformatics. Graph matching problems can be cast as two types of quadratic assignment problems (QAPs): Koopmans-Beckmann's QAP or Lawler's QAP. In our paper, we provide a unifying view for th...
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Zusammenfassung: | Graph matching plays a central role in such fields as computer vision,
pattern recognition, and bioinformatics. Graph matching problems can be cast as
two types of quadratic assignment problems (QAPs): Koopmans-Beckmann's QAP or
Lawler's QAP. In our paper, we provide a unifying view for these two problems
by introducing new rules for array operations in Hilbert spaces. Consequently,
Lawler's QAP can be considered as the Koopmans-Beckmann's alignment between two
arrays in reproducing kernel Hilbert spaces (RKHS), making it possible to
efficiently solve the problem without computing a huge affinity matrix.
Furthermore, we develop the entropy-regularized Frank-Wolfe (EnFW) algorithm
for optimizing QAPs, which has the same convergence rate as the original FW
algorithm while dramatically reducing the computational burden for each outer
iteration. We conduct extensive experiments to evaluate our approach, and show
that our algorithm significantly outperforms the state-of-the-art in both
matching accuracy and scalability. |
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DOI: | 10.48550/arxiv.1911.11120 |