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arxiv: 1407.5465 · v3 · pith:U2LGQTGAnew · submitted 2014-07-21 · 🧮 math.OC

Euclid in a Taxicab: Sparse Blind Deconvolution with Smoothed l1/l2 Regularization

classification 🧮 math.OC
keywords blindfunctiondeconvolutioncontextpenaltyproblemsrecentregularization
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The l1/l2 ratio regularization function has shown good performance for retrieving sparse signals in a number of recent works, in the context of blind deconvolution. Indeed, it benefits from a scale invariance property much desirable in the blind context. However, the l1/l2 function raises some difficulties when solving the nonconvex and nonsmooth minimization problems resulting from the use of such a penalty term in current restoration methods. In this paper, we propose a new penalty based on a smooth approximation to the l1/l2 function. In addition, we develop a proximal-based algorithm to solve variational problems involving this function and we derive theoretical convergence results. We demonstrate the effectiveness of our method through a comparison with a recent alternating optimization strategy dealing with the exact l1/l2 term, on an application to seismic data blind deconvolution.

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