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Recoverability of Group Sparse Signals from Corrupted Measurements via Robust Group Lasso

Abstract

This paper considers the problem of recovering a group sparse signal matrix Y=[y1,,yL]\mathbf{Y} = [\mathbf{y}_1, \cdots, \mathbf{y}_L] from sparsely corrupted measurements M=[A(1)y1,,A(L)yL]+S\mathbf{M} = [\mathbf{A}_{(1)}\mathbf{y}_{1}, \cdots, \mathbf{A}_{(L)}\mathbf{y}_{L}] + \mathbf{S}, where A(i)\mathbf{A}_{(i)}'s are known sensing matrices and S\mathbf{S} is an unknown sparse error matrix. A robust group lasso (RGL) model is proposed to recover Y\mathbf{Y} and S\mathbf{S} through simultaneously minimizing the 2,1\ell_{2,1}-norm of Y\mathbf{Y} and the 1\ell_1-norm of S\mathbf{S} under the measurement constraints. We prove that Y\mathbf{Y} and S\mathbf{S} can be exactly recovered from the RGL model with a high probability for a very general class of A(i)\mathbf{A}_{(i)}'s.

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