Compressive distilled sensing: Sparse recovery using adaptivity in compressive measurements

The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramatically improve the performance of sparse recovery in noisy settings. In particular, it is now known that adaptive point sampling enables the detection and/or support recovery of sparse signals that ar...

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Bibliographic Details
Published in2009 Conference Record of the Forty-Third Asilomar Conference on Signals, Systems and Computers pp. 1551 - 1555
Main Authors Haupt, Jarvis D, Baraniuk, Richard G, Castro, Rui M, Nowak, Robert D
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.11.2009
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Summary:The recently-proposed theory of distilled sensing establishes that adaptivity in sampling can dramatically improve the performance of sparse recovery in noisy settings. In particular, it is now known that adaptive point sampling enables the detection and/or support recovery of sparse signals that are otherwise too weak to be recovered using any method based on non-adaptive point sampling. In this paper the theory of distilled sensing is extended to highly-undersampled regimes, as in compressive sensing. A simple adaptive sampling-and-refinement procedure called compressive distilled sensing is proposed, where each step of the procedure utilizes information from previous observations to focus subsequent measurements into the proper signal subspace, resulting in a significant improvement in effective measurement SNR on the signal subspace. As a result, for the same budget of sensing resources, compressive distilled sensing can result in significantly improved error bounds compared to those for traditional compressive sensing.
ISBN:1424458250
9781424458257
ISSN:1058-6393
2576-2303
DOI:10.1109/ACSSC.2009.5470138