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Neural Graph Matching Network: Learning Lawler's Quadratic Assignment Problem with Extension to Hypergraph and Multiple-graph Matching

2019-11-26Code Available0· sign in to hype

Runzhong Wang, Junchi Yan, Xiaokang Yang

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Abstract

Graph matching involves combinatorial optimization based on edge-to-edge affinity matrix, which can be generally formulated as Lawler's Quadratic Assignment Problem (QAP). This paper presents a QAP network directly learning with the affinity matrix (equivalently the association graph) whereby the matching problem is translated into a constrained vertex classification task. The association graph is learned by an embedding network for vertex classification, followed by Sinkhorn normalization and a cross-entropy loss for end-to-end learning. We further improve the embedding model on association graph by introducing Sinkhorn based matching-aware constraint, as well as dummy nodes to deal with unequal sizes of graphs. To our best knowledge, this is one of the first network to directly learn with the general Lawler's QAP. In contrast, recent deep matching methods focus on the learning of node/edge features in two graphs respectively. We also show how to extend our network to hypergraph matching, and matching of multiple graphs. Experimental results on both synthetic graphs and real-world images show its effectiveness. For pure QAP tasks on synthetic data and QAPLIB benchmark, our method can perform competitively and even surpass state-of-the-art graph matching and QAP solvers with notable less time cost. We provide a project homepage at http://thinklab.sjtu.edu.cn/project/NGM/index.html.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
PASCAL VOCNHGMmatching accuracy0.65Unverified
PASCAL VOCNGMmatching accuracy0.64Unverified
PASCAL VOCNHGM-v2matching accuracy0.8Unverified
SPair-71kNGMmatching accuracy0.69Unverified
SPair-71kNGM-v2matching accuracy0.81Unverified
Willow Object ClassNGMmatching accuracy0.85Unverified
Willow Object ClassNGM-v2matching accuracy0.98Unverified

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