Polynomial Preconditioners for Regularized Linear Inverse Problems
About
This work aims to accelerate the convergence of proximal gradient methods used to solve regularized linear inverse problems. This is achieved by designing a polynomial-based preconditioner that targets the eigenvalue spectrum of the normal operator derived from the linear operator. The preconditioner does not assume any explicit structure on the linear function and thus can be deployed in diverse applications of interest. The efficacy of the preconditioner is validated on three different Magnetic Resonance Imaging applications, where it is seen to achieve faster iterative convergence while achieving similar reconstruction quality.
Siddharth Srinivasan Iyer, Frank Ong, Xiaozhi Cao, Congyu Liao, Luca Daniel, Jonathan I. Tamir, Kawin Setsompop• 2022
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Compressive Sensing | BSDS500 gamma_s = 0.2 | PSNR23.01 | 9 | |
| Super-Resolution | SR RFs = 4 | PSNR11.81 | 9 | |
| Magnetic Resonance Imaging | MRI AFs = 5 | PSNR28.07 | 9 |
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