Title :
Performance Analysis of Sparse Recovery Based on Constrained Minimal Singular Values
Author :
Tang, Gongguo ; Nehorai, Arye
Author_Institution :
Preston M. Green Dept. of Electr. & Syst. Eng., Washington Univ. in St. Louis, St. Louis, MO, USA
Abstract :
The stability of sparse signal reconstruction with respect to measurement noise is investigated in this paper. We design efficient algorithms to verify the sufficient condition for unique ℓ1 sparse recovery. One of our algorithms produces comparable results with the state-of-the-art technique and performs orders of magnitude faster. We show that the ℓ1 -constrained minimal singular value (ℓ1-CMSV) of the measurement matrix determines, in a very concise manner, the recovery performance of ℓ1-based algorithms such as the Basis Pursuit, the Dantzig selector, and the LASSO estimator. Compared to performance analysis involving the Restricted Isometry Constant, the arguments in this paper are much less complicated and provide more intuition on the stability of sparse signal recovery. We show also that, with high probability, the subgaussian ensemble generates measurement matrices with ℓ1-CMSVs bounded away from zero, as long as the number of measurements is relatively large. To compute the ℓ1-CMSV and its lower bound, we design two algorithms based on the interior point algorithm and the semidefinite relaxation.
Keywords :
Gaussian processes; matrix algebra; probability; signal reconstruction; ℓ1 -constrained minimal singular value; ℓ1-CMSV; Dantzig selector; LASSO estimator; Restricted Isometry Constant; basis pursuit algorithm; interior point algorithm; lower bound; measurement matrix; measurement noise; semidefinite relaxation; sparse recovery analysis; sparse signal reconstruction stability; subGaussian ensemble; Algorithm design and analysis; Noise; Relaxation methods; Sensors; Signal reconstruction; Sparse matrices; $ell_{1}$-constrained minimal singular value; Basis Pursuit; Dantzig selector; LASSO estimator; interior point algorithm; restricted isometry property; semidefinite relaxation; sparse signal reconstruction; verifiable sufficient condition;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2011.2164913