Constrained Sampling: Optimum Reconstruction in Subspace With Minimax Regret Constraint

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IEEE-Inst Electrical Electronics Engineers Inc

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info:eu-repo/semantics/openAccess

Abstract

This paper considers the problem of optimum reconstruction in generalized sampling-reconstruction processes (GSRPs). We propose constrained GSRP, a novel framework that minimizes the reconstruction error for inputs in a subspace, subject to a constraint on the maximum regret-error for any other signal in the entire signal space. This framework addresses the primary limitation of existing GSRPs (consistent, subspace, and minimax regret), namely, the assumption that the a priori subspace is either fully known or fully ignored. We formulate constrained GSRP as a constrained optimization problem, the solution to which turns out to be a convex combination of the subspace and the minimax regret samplings. Detailed theoretical analysis on the reconstruction error shows that constrained sampling achieves a reconstruction that is, 1) (sub) optimal for signals in the input subspace, 2) robust for signals around the input subspace, and 3) reasonably bounded for any other signals with a simple choice of the constraint parameter. Experimental results on sampling-reconstruction of a Gaussian signal and a speech signal demonstrate the effectiveness of the proposed scheme.

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Consistent sampling, constrained optimization, generalized sampling-reconstruction processes, minimax regret sampling, oblique projection, orthogonal projection, reconstruction error, subspace sampling

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Ieee Transactions on Signal Processing

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67

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16

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