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A Scale Invariant Approach for Sparse Signal Recovery

20 December 2018
Yaghoub Rahimi
Chao Wang
Hongbo Dong
Y. Lou
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Abstract

In this paper, we study the ratio of the L1L_1 L1​ and L2L_2 L2​ norms, denoted as L1/L2L_1/L_2L1​/L2​, to promote sparsity. Due to the non-convexity and non-linearity, there has been little attention to this scale-invariant model. Compared to popular models in the literature such as the LpL_pLp​ model for p∈(0,1)p\in(0,1)p∈(0,1) and the transformed L1L_1L1​ (TL1), this ratio model is parameter free. Theoretically, we present a strong null space property (sNSP) and prove that any sparse vector is a local minimizer of the L1/L2L_1 /L_2 L1​/L2​ model provided with this sNSP condition. Computationally, we focus on a constrained formulation that can be solved via the alternating direction method of multipliers (ADMM). Experiments show that the proposed approach is comparable to the state-of-the-art methods in sparse recovery. In addition, a variant of the L1/L2L_1/L_2L1​/L2​ model to apply on the gradient is also discussed with a proof-of-concept example of the MRI reconstruction.

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