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 \textbf{quadratic constraint} incorporated into the DGM framework. The quadratic constraint minimizes the pairwise structural discrepancy between graphs, which can reduce the ambiguities brought by only using the extracted CNN features. Moreover, we present a differentiable implementation to the quadratic constrained-optimization such that it is compatible with the unconstrained deep learning optimizer. To give more precise and proper supervision, a well-designed false matching loss against class imbalance is proposed, which can better penalize the false negatives and false positives with less overfitting. Exhaustive experiments demonstrate that our method achieves state-of-the-art performance on real-world datasets.
翻译:最近,基于深层次学习的方法在图形匹配问题上显示了令人乐观的结果,它依靠了在图形节点上提取的深层特征的描述能力。然而,现有深层次图形匹配方法的一个主要局限性在于它们不了解图形结构的明显限制,这可能导致模型被困在本地最低培训水平上。在本文中,我们提议明确制定双向图形结构,作为纳入 DGM 框架的 \ textbf{quadratic strict} 。 二次限制将图之间的对称结构差异降到最低,这只能减少被提取的CNN 特征带来的模糊性。 此外,我们提出了对四面形限制优化方法的不同执行方法,使之与未受限制的深层学习优化方法相容。为了进行更准确和适当的监督,我们提出了一个设计完善的与阶级不平衡相匹配的虚假损失,这可以更好地惩罚错误的负值和错误的正值,而不那么完美。Exphusive 实验表明,我们的方法在现实世界数据集上取得了最先进的表现。