A Novel Regularization Based on the Error Function for Sparse Recovery

JOURNAL OF SCIENTIFIC COMPUTING(2021)

引用 16|浏览35
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摘要
Regularization plays an important role in solving ill-posed problems by adding extra information about the desired solution, such as sparsity. Many regularization terms usually involve some vector norms. This paper proposes a novel regularization framework that uses the error function to approximate the unit step function. It can be considered as a surrogate function for the L_0 norm. The asymptotic behavior of the error function with respect to its intrinsic parameter indicates that the proposed regularization can approximate the standard L_0 , L_1 norms as the parameter approaches to 0 and ∞ , respectively. Statistically, it is also less biased than the L_1 approach. Incorporating the error function, we consider both constrained and unconstrained formulations to reconstruct a sparse signal from an under-determined linear system. Computationally, both problems can be solved via an iterative reweighted L_1 (IRL1) algorithm with guaranteed convergence. A large number of experimental results demonstrate that the proposed approach outperforms the state-of-the-art methods in various sparse recovery scenarios.
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关键词
Error function,Iterative reweighted L_1,Compressed sensing,Sparsity,Biaseness
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