The L1-Potts functional for robust jump-sparse reconstruction
Abstract: We investigate the non-smooth and non-convex $L1$-Potts functional in discrete and continuous time. We show $\Gamma$-convergence of discrete $L1$-Potts functionals towards their continuous counterpart and obtain a convergence statement for the corresponding minimizers as the discretization gets finer. For the discrete $L1$-Potts problem, we introduce an $O(n2)$ time and $O(n)$ space algorithm to compute an exact minimizer. We apply $L1$-Potts minimization to the problem of recovering piecewise constant signals from noisy measurements $f.$ It turns out that the $L1$-Potts functional has a quite interesting blind deconvolution property. In fact, we show that mildly blurred jump-sparse signals are reconstructed by minimizing the $L1$-Potts functional. Furthermore, for strongly blurred signals and known blurring operator, we derive an iterative reconstruction algorithm.
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