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arxiv: 1308.2536 · v2 · pith:LQVSY4H4new · submitted 2013-08-12 · 🧮 math.NA

Convergence Rates for Inverse Problems with Impulsive Noise

classification 🧮 math.NA
keywords noisefidelityimpulsiveregularizationanalysisconvergencedataerror
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We study inverse problems F(f) = g with perturbed right hand side g^{obs} corrupted by so-called impulsive noise, i.e. noise which is concentrated on a small subset of the domain of definition of g. It is well known that Tikhonov-type regularization with an L^1 data fidelity term yields significantly more accurate results than Tikhonov regularization with classical L^2 data fidelity terms for this type of noise. The purpose of this paper is to provide a convergence analysis explaining this remarkable difference in accuracy. Our error estimates significantly improve previous error estimates for Tikhonov regularization with L^1-fidelity term in the case of impulsive noise. We present numerical results which are in good agreement with the predictions of our analysis.

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