Iterative Self-consistent Parallel Magnetic Resonance Imaging
Reconstruction based on Nonlocal Low-Rank Regularization
- URL: http://arxiv.org/abs/2108.04517v1
- Date: Tue, 10 Aug 2021 08:45:28 GMT
- Title: Iterative Self-consistent Parallel Magnetic Resonance Imaging
Reconstruction based on Nonlocal Low-Rank Regularization
- Authors: Ting Pan, Jizhong Duan, Junfeng Wang, Yu Liu
- Abstract summary: Iterative self-consistent parallel imaging reconstruction (SPIRiT) is an effective self-calibrated reconstruction model for PMRI.
We propose a nonlocal low-rank (NLR)-SPIRiT model by incorporating NLR regularization into the SPIRiT model.
- Score: 5.044434916475804
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Iterative self-consistent parallel imaging reconstruction (SPIRiT) is an
effective self-calibrated reconstruction model for parallel magnetic resonance
imaging (PMRI). The joint L1 norm of wavelet coefficients and joint total
variation (TV) regularization terms are incorporated into the SPIRiT model to
improve the reconstruction performance. The simultaneous two-directional
low-rankness (STDLR) in k-space data is incorporated into SPIRiT to realize
improved reconstruction. Recent methods have exploited the nonlocal
self-similarity (NSS) of images by imposing nonlocal low-rankness of similar
patches to achieve a superior performance. To fully utilize both the NSS in
Magnetic resonance (MR) images and calibration consistency in the k-space
domain, we propose a nonlocal low-rank (NLR)-SPIRiT model by incorporating NLR
regularization into the SPIRiT model. We apply the weighted nuclear norm (WNN)
as a surrogate of the rank and employ the Nash equilibrium (NE) formulation and
alternating direction method of multipliers (ADMM) to efficiently solve the
NLR-SPIRiT model. The experimental results demonstrate the superior performance
of NLR-SPIRiT over the state-of-the-art methods via three objective metrics and
visual comparison.
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