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

06/05/2013
by   T. Tony Cai, et al.
0

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 t>4/3, in compressed sensing δ_tk^A < √((t-1)/t) guarantees the exact recovery of all k sparse signals in the noiseless case through the constrained ℓ_1 minimization, and similarly in affine rank minimization δ_tr^M< √((t-1)/t) ensures the exact reconstruction of all matrices with rank at most r in the noiseless case via the constrained nuclear norm minimization. Moreover, for any ϵ>0, δ_tk^A<√(t-1/t)+ϵ is not sufficient to guarantee the exact recovery of all k-sparse signals for large k. Similar result also holds for matrix recovery. In addition, the conditions δ_tk^A < √((t-1)/t) and δ_tr^M< √((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.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset
Success!
Error Icon An error occurred

Sign in with Google

×

Use your Google Account to sign in to DeepAI

×

Consider DeepAI Pro