Title :
Lorentzian Iterative Hard Thresholding: Robust Compressed Sensing With Prior Information
Author :
Carrillo, R.E. ; Barner, K.E.
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Delaware, Newark, DE, USA
Abstract :
Commonly employed reconstruction algorithms in compressed sensing (CS) use the L2 norm as the metric for the residual error. However, it is well-known that least squares (LS) based estimators are highly sensitive to outliers present in the measurement vector leading to a poor performance when the noise no longer follows the Gaussian assumption but, instead, is better characterized by heavier-than-Gaussian tailed distributions. In this paper, we propose a robust iterative hard Thresholding (IHT) algorithm for reconstructing sparse signals in the presence of impulsive noise. To address this problem, we use a Lorentzian cost function instead of the L2 cost function employed by the traditional IHT algorithm. We also modify the algorithm to incorporate prior signal information in the recovery process. Specifically, we study the case of CS with partially known support. The proposed algorithm is a fast method with computational load comparable to the LS based IHT, whilst having the advantage of robustness against heavy-tailed impulsive noise. Sufficient conditions for stability are studied and a reconstruction error bound is derived. We also derive sufficient conditions for stable sparse signal recovery with partially known support. Theoretical analysis shows that including prior support information relaxes the conditions for successful reconstruction. Simulation results demonstrate that the Lorentzian-based IHT algorithm significantly outperform commonly employed sparse reconstruction techniques in impulsive environments, while providing comparable performance in less demanding, light-tailed environments. Numerical results also demonstrate that the partially known support inclusion improves the performance of the proposed algorithm, thereby requiring fewer samples to yield an approximate reconstruction.
Keywords :
Gaussian distribution; approximation theory; compressed sensing; costing; impulse noise; iterative methods; least squares approximations; signal reconstruction; vectors; CS; Gaussian assumption; IHT; LS; Lorentzian cost function; approximate reconstruction; heavier-than-Gaussian tailed distribution; heavy-tailed impulsive noise; least square based estimation; measurement vector; robust Lorentzian iterative hard thresholding algorithm; robust compressed sensing; sparse signal information recovery process; sparse signal reconstruction; stability; Compressed sensing; impulse noise; nonlinear estimation; sampling methods; signal reconstruction;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2013.2274275