A Complex Quasi-Newton Proximal Method for Image Reconstruction in Compressed Sensing MRI
About
Model-based methods are widely used for reconstruction in compressed sensing (CS) magnetic resonance imaging (MRI), using regularizers to describe the images of interest. The reconstruction process is equivalent to solving a composite optimization problem. Accelerated proximal methods (APMs) are very popular approaches for such problems. This paper proposes a complex quasi-Newton proximal method (CQNPM) for the wavelet and total variation based CS MRI reconstruction. Compared with APMs, CQNPM requires fewer iterations to converge but needs to compute a more challenging proximal mapping called weighted proximal mapping (WPM). To make CQNPM more practical, we propose efficient methods to solve the related WPM. Numerical experiments on reconstructing non-Cartesian MRI data demonstrate the effectiveness and efficiency of CQNPM.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Superresolution | CelebA-HQ (test) | PSNR25.66 | 25 | |
| CT Reconstruction | LIDC 512 x 512 x 256 (test) | PSNR29.38 | 21 | |
| CT Reconstruction | LIDC 256 x 256 x 256 (test) | PSNR29.43 | 21 | |
| CT Reconstruction | AAPM 256 x 256 x 256 (test) | PSNR31.28 | 18 | |
| Deblurring | CelebA-HQ (test) | PSNR28.22 | 16 | |
| CT Reconstruction | CT 8 views (test) | PSNR23.09 | 11 | |
| CT Reconstruction | CT 20 views (test) | PSNR26.82 | 11 | |
| Sparse-View CT Reconstruction | SVCT 8-view | Runtime (s)6 | 6 | |
| CT Reconstruction | 60 Views (test) | PSNR30.93 | 4 | |
| CT Reconstruction | Fan Beam (test) | PSNR25.78 | 4 |