s-Goodness for Low-Rank Matrix Recovery

Low-rank matrix recovery (LMR) is a rank minimization problem subject to linear equality constraints, and it arises in many fields such as signal and image processing, statistics, computer vision, and system identification and control. This class of optimization problems is generally 𝒩𝒫 hard. A popu...

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Bibliographic Details
Published inAbstract and Applied Analysis Vol. 2013; pp. 26 - 34
Main Authors Kong, Lingchen, Tunçel, Levent, Xiu, Naihua
Format Journal Article
LanguageEnglish
Published Hindawi Limiteds 01.01.2013
Hindawi Publishing Corporation
John Wiley & Sons, Inc
Wiley
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Summary:Low-rank matrix recovery (LMR) is a rank minimization problem subject to linear equality constraints, and it arises in many fields such as signal and image processing, statistics, computer vision, and system identification and control. This class of optimization problems is generally 𝒩𝒫 hard. A popular approach replaces the rank function with the nuclear norm of the matrix variable. In this paper, we extend and characterize the concept of s-goodness for a sensing matrix in sparse signal recovery (proposed by Juditsky and Nemirovski (Math Program, 2011)) to linear transformations in LMR. Using the two characteristic s-goodness constants, γs and γ^s, of a linear transformation, we derive necessary and sufficient conditions for a linear transformation to be s-good. Moreover, we establish the equivalence of s-goodness and the null space properties. Therefore, s-goodness is a necessary and sufficient condition for exact s-rank matrix recovery via the nuclear norm minimization.
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ISSN:1085-3375
1687-0409
DOI:10.1155/2013/101974