2021
DOI: 10.48550/arxiv.2103.06643
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Deep Graph Matching under Quadratic Constraint

Abstract: Recently, deep learning based methods have demonstrated promising results on the graph matching problem, by relying on the descriptive capability of deep features extracted on graph nodes. However, one main limitation with existing deep graph matching (DGM) methods lies in their ignorance of explicit constraint of graph structures, which may lead the model to be trapped into local minimum in training. In this paper, we propose to explicitly formulate pairwise graph structures as a quadratic constraint incorpor… Show more

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References 41 publications
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