Maximizing multi-scale spatial statistical discrepancy
Weishan Dong, Renjie Yao, et al.
CIKM 2014
This paper addresses the problem of hypergraph matching using higher-order affinity information. We propose a solver that iteratively updates the solution in the discrete domain by linear assignment approximation. The proposed method is guaranteed to converge to a stationary discrete solution and avoids the annealing procedure and ad-hoc post binarization step that are required in several previous methods. Specifically, we start with a simple iterative discrete gradient assignment solver. This solver can be trapped in an m-circle sequence under moderate conditions, where m is the order of the graph matching problem. We then devise an adaptive relaxation mechanism to jump out this degenerating case and show that the resulting new path will converge to a fixed solution in the discrete domain. The proposed method is tested on both synthetic and real-world benchmarks. The experimental results corroborate the efficacy of our method.
Weishan Dong, Renjie Yao, et al.
CIKM 2014
Chao Zhang, Junchi Yan, et al.
Neurocomputing
Junchi Yan, Minsu Cho, et al.
IEEE TPAMI
Wenjie Zhang, Xiangfeng Wang, et al.
BigMM 2017