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arxiv: 1504.02923 · v1 · pith:IADSC5F7new · submitted 2015-04-11 · 💻 cs.IT · math.IT

Compressed Sensing Recovery via Nonconvex Shrinkage Penalties

classification 💻 cs.IT math.IT
keywords originalsolutionclasscompressednonconvexp-shrinkagepenaltiesprove
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The $\ell^0$ minimization of compressed sensing is often relaxed to $\ell^1$, which yields easy computation using the shrinkage mapping known as soft thresholding, and can be shown to recover the original solution under certain hypotheses. Recent work has derived a general class of shrinkages and associated nonconvex penalties that better approximate the original $\ell^0$ penalty and empirically can recover the original solution from fewer measurements. We specifically examine p-shrinkage and firm thresholding. In this work, we prove that given data and a measurement matrix from a broad class of matrices, one can choose parameters for these classes of shrinkages to guarantee exact recovery of the sparsest solution. We further prove convergence of the algorithm iterative p-shrinkage (IPS) for solving one such relaxed problem.

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