The Dantzig selector: Recovery of Signal via ℓ_1-αℓ_2 Minimization

05/29/2021
by   Huanmin Ge, et al.
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In the paper, we proposed the Dantzig selector based on the ℓ_1-αℓ_2 (0< α≤1) minimization for the signal recovery. In the Dantzig selector, the constraint A^⊤( b- A x)_∞≤η for some small constant η>0 means the columns of A has very weakly correlated with the error vector e= A x- b. First, recovery guarantees based on the restricted isometry property (RIP) are established for signals. Next, we propose the effective algorithm to solve the proposed Dantzig selector. Last, we illustrate the proposed model and algorithm by extensive numerical experiments for the recovery of signals in the cases of Gaussian, impulsive and uniform noise. And the performance of the proposed Dantzig selector is better than that of the existing methods.

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