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Sparse Representation of a Polytope and Recovery of Sparse Signals and Low-rank Matrices

Abstract

This paper considers compressed sensing and affine rank minimization in both noiseless and noisy cases and establishes sharp restricted isometry conditions for sparse signal and low-rank matrix recovery. The analysis relies on a key technical tool which represents points in a polytope by convex combinations of sparse vectors. The technique is elementary while leads to sharp results. It is shown that for any given constant t4/3t\ge {4/3}, in compressed sensing δtkA<(t1)/t\delta_{tk}^A < \sqrt{(t-1)/t} guarantees the exact recovery of all kk sparse signals in the noiseless case through the constrained 1\ell_1 minimization, and similarly in affine rank minimization δtrM<(t1)/t\delta_{tr}^\mathcal{M}< \sqrt{(t-1)/t} ensures the exact reconstruction of all matrices with rank at most rr in the noiseless case via the constrained nuclear norm minimization. Moreover, for any ϵ>0\epsilon>0, δtkA<t1t+ϵ\delta_{tk}^A<\sqrt{\frac{t-1}{t}}+\epsilon is not sufficient to guarantee the exact recovery of all kk-sparse signals for large kk. Similar result also holds for matrix recovery. In addition, the conditions δtkA<(t1)/t\delta_{tk}^A < \sqrt{(t-1)/t} and δtrM<(t1)/t\delta_{tr}^\mathcal{M}< \sqrt{(t-1)/t} are also shown to be sufficient respectively for stable recovery of approximately sparse signals and low-rank matrices in the noisy case.

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