Title :
Oracle-Order Recovery Performance of Greedy Pursuits With Replacement Against General Perturbations
Author :
Laming Chen ; Yuantao Gu
Author_Institution :
Dept. of Electron. Eng., Tsinghua Univ., Beijing, China
Abstract :
Applying the theory of compressive sensing in practice always takes different kinds of perturbations into consideration. In this paper, the recovery performance of greedy pursuits with replacement for sparse recovery is analyzed when both the measurement vector and the sensing matrix are contaminated with additive perturbations. Specifically, greedy pursuits with replacement include three algorithms, compressive sampling matching pursuit (CoSaMP), subspace pursuit (SP), and iterative hard thresholding (IHT), where the support estimation is evaluated and updated in each iteration. Based on restricted isometry property, a unified form of the error bounds of these recovery algorithms is derived under general perturbations for compressible signals. The results reveal that the recovery performance is stable against both perturbations. In addition, these bounds are compared with that of oracle recovery-least squares solution with the locations of some largest entries in magnitude known a priori. The comparison shows that the error bounds of these algorithms only differ in coefficients from the lower bound of oracle recovery for some certain signal and perturbations, as reveals that oracle-order recovery performance of greedy pursuits with replacement is guaranteed. Numerical simulations are performed to verify the conclusions.
Keywords :
compressed sensing; greedy algorithms; iterative methods; least squares approximations; matrix algebra; signal reconstruction; CoSaMP; IHT; additive perturbations; compressible signals; compressive sampling matching pursuit; compressive sensing; general perturbations; greedy pursuits; iterative hard thresholding; measurement vector; numerical simulations; oracle recovery-least squares solution; oracle-order recovery performance; sensing matrix; sparse recovery; subspace pursuit; support estimation; Algorithm design and analysis; Matching pursuit algorithms; Pollution measurement; Sensors; Signal processing algorithms; Sparse matrices; Vectors; Compressive sampling matching pursuit; compressive sensing; general perturbations; greedy pursuits; iterative hard thresholding; oracle recovery; performance analysis; restricted isometry property; sparse recovery; subspace pursuit;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2013.2272551