Fast and scalable approximate spectral matching for higher order graph matching.

IEEE Trans. Pattern Anal. Mach. Intell.(2014)

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摘要
This paper presents a fast and efficient computational approach to higher order spectral graph matching. Exploiting the redundancy in a tensor representing the affinity between feature points, we approximate the affinity tensor with the linear combination of Kronecker products between bases and index tensors. The bases and index tensors are highly compressed representations of the approximated affinity tensor, requiring much smaller memory than in previous methods, which store the full affinity tensor. We compute the principal eigenvector of the approximated affinity tensor using the small bases and index tensors without explicitly storing the approximated tensor. To compensate for the loss of matching accuracy by the approximation, we also adopt and incorporate a marginalization scheme that maps a higher order tensor to matrix as well as a one-to-one mapping constraint into the eigenvector computation process. The experimental results show that the proposed method is faster and requires smaller memory than the existing methods with little or no loss of accuracy.
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compressed tensor representations,bases,higher order tensor,matching accuracy,approximation theory,affinity tensor,computational approach,index tensors,full affinity tensor,approximate spectral matching,smaller memory,kronecker products,one-to-one mapping constraint,approximated tensor,higher order spectral graph,approximation algorithm,marginalization scheme,approximated affinity tensor,eigenvector computation process,scalable approximate spectral matching,approximation,spectral relaxation,graph theory,higher order graph matching,eigenvalues and eigenfunctions,principal eigenvector,tensors,vectors,pattern matching,redundancy,sparse matrices,indexes,tensile stress
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