Pairwise Matching Through Max-Weight Bipartite Belief Propagation

2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2016)

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摘要
Feature matching is a key problem in computer vision and pattern recognition. One way to encode the essential interdependence between potential feature matches is to cast the problem as inference in a graphical model, though recently alternatives such as spectral methods, or approaches based on the convex-concave procedure have achieved the state-of-the-art. Here we revisit the use of graphical models for feature matching, and propose a belief propagation scheme which exhibits the following advantages: (1) we explicitly enforce one-to-one matching constraints; (2) we offer a tighter relaxation of the original cost function than previous graphical-model-based approaches; and (3) our sub-problems decompose into max-weight bipartite matching, which can be solved efficiently, leading to orders-of-magnitude reductions in execution time. Experimental results show that the proposed algorithm produces results superior to those of the current state-of-the-art.
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关键词
pairwise matching,max-weight bipartite belief propagation,feature matching,computer vision,pattern recognition,convex-concave procedure,one-to-one matching constraints,graphical-model-based approach
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