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Articles

Synthesized multitask compressive sensing for block-sparse signal recovery

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Pages 602-614 | Received 15 Jul 2014, Accepted 20 Jan 2015, Published online: 17 Feb 2015
 

Abstract

The paper considers the problem of reconstructing blocks-sparse signals. A new algorithm, called synthesized multitask compressive sensing (SMCS), is proposed. In contrast to existing methods that rely on the availability of the sparsity structure information, the SMCS algorithm resorts to the multitask compressive sensing (MCS) technique for signal recovery. The SMCS algorithm synthesizes new compressive sensing (CS) tasks via circular-shifting operations and utilizes the minimum description length (MDL) principle to determine the proper set of the synthesized CS tasks for signal reconstruction. An outstanding advantage of SMCS is that it can achieve good signal reconstruction performance without using prior information on the block-sparsity structure. Simulations corroborate the theoretical developments.

Acknowledgements

The authors wish to thank the associate editor and the anonymous reviewers for their constructive suggestions. The authors thank Zhilin Zhang, Bhaskar D. Rao, Shihao Ji and David Dunson for sharing codes of their algorithms.

Additional information

Funding

This work was supported by Hunan Provincial Innovation Foundation for Postgraduates [grant number CX2012B019]; Fund of Innovation, Graduate School of National University of Defense Technology [grant number B120404].

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