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Imaging with highly incomplete and corrupted data

Inverse Problems (IP), 2019
Abstract

We consider the problem of imaging sparse scenes from a few noisy data using an l1l_1-minimization approach. This problem can be cast as a linear system of the form Aρ=bA \, \rho =b, where AA is an N×KN\times K measurement matrix. We assume that the dimension of the unknown sparse vector ρCK\rho \in {\mathbb{C}}^K is much larger than the dimension of the data vector bCNb \in {\mathbb{C}}^N, i.e, KNK \gg N. We provide a theoretical framework that allows us to examine under what conditions the 1\ell_1-minimization problem admits a solution that is close to the exact one in the presence of noise. Our analysis shows that l1l_1-minimization is not robust for imaging with noisy data when high resolution is required. To improve the performance of l1l_1-minimization we propose to solve instead the augmented linear system $ [A \, | \, C] \rho =b$, where the N×ΣN \times \Sigma matrix CC is a noise collector. It is constructed so as its column vectors provide a frame on which the noise of the data, a vector of dimension NN, can be well approximated. Theoretically, the dimension Σ\Sigma of the noise collector should be eNe^N which would make its use not practical. However, our numerical results illustrate that robust results in the presence of noise can be obtained with a large enough number of columns Σ10K\Sigma \approx 10 K.

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