Pseudo-linear convergence of an additive Schwarz method for dual total variation minimization

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In this paper, we propose an overlapping additive Schwarz method for total variation minimization based on a dual formulation. The O(1=n)-energy convergence of the proposed method is proven, where n is the number of iterations. In addition, we introduce an interesting convergence property of the proposed method called pseudo-linear convergence; the energy decreases as fast as for linearly convergent algorithms until it reaches a particular value. It is shown that this particular value depends on the overlapping width δ, and the proposed method becomes as efficient as linearly convergent algorithms if δ is large. As the latest domain decomposition methods for total variation minimization are sublinearly convergent, the proposed method outperforms them in the sense of the energy decay. Numerical experiments which support our theoretical results are provided.
Publisher
KENT STATE UNIVERSITY
Issue Date
2021-02
Language
English
Article Type
Article
Citation

ELECTRONIC TRANSACTIONS ON NUMERICAL ANALYSIS, v.54, pp.176 - 197

ISSN
1068-9613
DOI
10.1553/ETNA_VOL54S176
URI
http://hdl.handle.net/10203/286270
Appears in Collection
RIMS Journal Papers
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