Title :
Sparse Recovery With Orthogonal Matching Pursuit Under RIP
Author_Institution :
Stat. Dept., Rutgers Univ., New Brunswick, NJ, USA
Abstract :
This paper presents a new analysis for the orthogonal matching pursuit (OMP) algorithm. It is shown that if the restricted isometry property (RIP) is satisfied at sparsity level O(k̅), then OMP can stably recover a k̅-sparse signal in 2-norm under measurement noise. For compressed sensing applications, this result implies that in order to uniformly recover a k̅-sparse signal in Rd, only O(k̅ lnd) random projections are needed. This analysis improves some earlier results on OMP depending on stronger conditions that can only be satisfied with Ω(k̅2 lnd) or Ω(k̅1.6 lnd) random projections.
Keywords :
data compression; iterative methods; signal restoration; time-frequency analysis; OMP algorithm; RIP; compressed sensing; orthogonal matching pursuit algorithm; restricted isometry property; sparse signal recovery; sparsity level; Algorithm design and analysis; Approximation algorithms; Compressed sensing; Matching pursuit algorithms; Noise; Optimization; Signal processing algorithms; Estimation theory; feature selection; greedy algorithms; sparse recovery; statistical learning;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2011.2162263