Compressed sensing with unknown sensor permutation

Acoustics, Speech and Signal Processing(2014)

引用 49|浏览20
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摘要
Compressed sensing is the ability to retrieve a sparse vector from a set of linear measurements. The task gets more difficult when the sensing process is not perfectly known. We address such a problem in the case where the sensors have been permuted, i.e., the order of the measurements is unknown. We propose a branch-and-bound algorithm that converges to the solution. The experimental study shows that our approach always retrieves the unknown permutation, while a simple convex relaxation strategy almost always fails. In terms of its time complexity, we show that the proposed algorithm converges quickly with respect to the combinatorial nature of the problem.
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关键词
combinatorial mathematics,compressed sensing,relaxation theory,tree searching,branch-and-bound algorithm,compressed sensing,linear measurement,simple convex relaxation strategy,sparse vector retrieval,unknown sensor permutation,Inverse problem,branch and bound,compressed sensing,dictionary learning,optimization,permutation,sparsity
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