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arxiv: 1007.1035 · v3 · pith:ZSNPFJHZnew · submitted 2010-07-07 · 🧮 math.OC · math.AP

Anisotropic Total Variation Regularized L¹-Approximation and Denoising/Deblurring of 2D Bar Codes

classification 🧮 math.OC math.AP
keywords codesdeblurringdenoisingfunctionalsanisotropicfidelityfindtotal
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We consider variations of the Rudin-Osher-Fatemi functional which are particularly well-suited to denoising and deblurring of 2D bar codes. These functionals consist of an anisotropic total variation favoring rectangles and a fidelity term which measure the L^1 distance to the signal, both with and without the presence of a deconvolution operator. Based upon the existence of a certain associated vector field, we find necessary and sufficient conditions for a function to be a minimizer. We apply these results to 2D bar codes to find explicit regimes ---in terms of the fidelity parameter and smallest length scale of the bar codes--- for which a perfect bar code is recoverable via minimization of the functionals. Via a discretization reformulated as a linear program, we perform numerical experiments for all functionals demonstrating their denoising and deblurring capabilities.

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