Communications-inspired projection design with application to compressive sensing

dc.contributor.author

Carson, WR

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Chen, M

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Rodrigues, MRD

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Calderbank, R

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Carin, L

dc.date.accessioned

2014-07-22T16:18:12Z

dc.date.issued

2012-12-01

dc.description.abstract

We consider the recovery of an underlying signal x ∈ ℂm based on projection measurements of the form y = Mx+w, where y ∈ ℂℓ and w is measurement noise; we are interested in the case ℓ ≪ m. It is assumed that the signal model p(x) is known and that w ~ CN(w; 0,Σw) for known Σ w. The objective is to design a projection matrix M ∈ ℂℓ×m to maximize key information-theoretic quantities with operational significance, including the mutual information between the signal and the projections I(x; y) or the Rényi entropy of the projections hα (y) (Shannon entropy is a special case). By capitalizing on explicit characterizations of the gradients of the information measures with respect to the projection matrix, where we also partially extend the well-known results of Palomar and Verdu ́ from the mutual information to the Rényi entropy domain, we reveal the key operations carried out by the optimal projection designs: mode exposure and mode alignment. Experiments are considered for the case of compressive sensing (CS) applied to imagery. In this context, we provide a demonstration of the performance improvement possible through the application of the novel projection designs in relation to conventional ones, as well as justification for a fast online projection design method with which state-of-the-art adaptive CS signal recovery is achieved. © 2012 Society for Industrial and Applied Mathematics.

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1936-4954

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https://hdl.handle.net/10161/8952

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Society for Industrial & Applied Mathematics (SIAM)

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SIAM Journal on Imaging Sciences

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10.1137/120878380

dc.title

Communications-inspired projection design with application to compressive sensing

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Journal article

pubs.begin-page

1182

pubs.end-page

1212

pubs.issue

4

pubs.organisational-group

Computer Science

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Duke

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Electrical and Computer Engineering

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Mathematics

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Physics

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Pratt School of Engineering

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Trinity College of Arts & Sciences

pubs.publication-status

Published

pubs.volume

5

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