An efficient semismooth* Newton method is presented for minimizing Tikhonov functionals with total variation regularization, offering superlinear convergence for large-scale tomographic imaging problems.
citation dossier
Convex Tikhonov regularization in Banach spaces: new results on conver- gence rates.J
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math.NAtop field · 1 papers
UNVERDICTEDtop verdict bucket · 1 papers
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Efficient TV regularization of large-scale linear inverse problems via the SCD semismooth* Newton method with applications in tomography
An efficient semismooth* Newton method is presented for minimizing Tikhonov functionals with total variation regularization, offering superlinear convergence for large-scale tomographic imaging problems.