An iterative thresholding algorithm for linear inverse problems with a sparsity constraint
About
We consider linear inverse problems where the solution is assumed to have a sparse expansion on an arbitrary pre-assigned orthonormal basis. We prove that replacing the usual quadratic regularizing penalties by weighted l^p-penalties on the coefficients of such expansions, with 1 < or = p < or =2, still regularizes the problem. If p < 2, regularized solutions of such l^p-penalized problems will have sparser expansions, with respect to the basis under consideration. To compute the corresponding regularized solutions we propose an iterative algorithm that amounts to a Landweber iteration with thresholding (or nonlinear shrinkage) applied at each iteration step. We prove that this algorithm converges in norm. We also review some potential applications of this method.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Denoising | Kodak24 | PSNR (sigma=50)23.04 | 48 | |
| Image Denoising | Urban100 | PSNR (sigma=50)21.65 | 30 | |
| Image Denoising | McMaster | PSNR (σ=25)27.99 | 24 | |
| CSI Restoration | WiPose | NMSE (dB)-15.64 | 22 | |
| CSI Restoration | MM-Fi | NMSE (dB)-8.42 | 22 | |
| Sparse Signal Recovery | Ultrasound FMC measurements Noiseless (test) | PAE0.92 | 8 | |
| Sparse Signal Recovery | Ultrasound FMC measurements SNR = 20 dB (test) | PAE (%)0.93 | 8 | |
| Sparse Signal Recovery | Ultrasound FMC measurements SNR = 5 dB (test) | PAE (%)0.95 | 8 | |
| Image Denoising | CBSD68 | PSNR (sigma_n=15)29.38 | 5 |