Subspace Recycling for Sequences of Shifted Systems with Applications in Image Recovery
Misha E. Kilmer, Eric de Sturler

TL;DR
This paper introduces advanced Krylov subspace recycling methods tailored for sequences of shifted linear systems in image reconstruction, significantly reducing computational effort and improving convergence in nonlinear regularization contexts.
Contribution
It develops a novel inner-outer recycling approach with tailored recycle spaces for shifted systems within nonlinear image reconstruction, enhancing efficiency and convergence.
Findings
Reduces total matrix-vector products in shifted system sequences
Improves convergence speed with tailored initial guesses
Applicable to positive semi-definite matrix sequences
Abstract
For many applications involving a sequence of linear systems with slowly changing system matrices, subspace recycling, which exploits relationships among systems and reuses search space information, can achieve huge gains in iterations across the total number of linear system solves in the sequence. However, for general (i.e., non-identity) shifted systems with the shift value varying over a wide range, the properties of the linear systems vary widely as well, which makes recycling less effective. If such a sequence of systems is embedded in a nonlinear iteration, the problem is compounded, and special approaches are needed to use recycling effectively. In this paper, we develop new, more efficient, Krylov subspace recycling approaches for large-scale image reconstruction and restoration techniques that employ a nonlinear iteration to compute a suitable regularization matrix. For each…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Numerical methods in inverse problems · Medical Imaging Techniques and Applications
