Dynamic Cardiac MRI Reconstruction Using Combined Tensor Nuclear Norm
and Casorati Matrix Nuclear Norm Regularizations
- URL: http://arxiv.org/abs/2206.00831v1
- Date: Thu, 2 Jun 2022 02:08:05 GMT
- Title: Dynamic Cardiac MRI Reconstruction Using Combined Tensor Nuclear Norm
and Casorati Matrix Nuclear Norm Regularizations
- Authors: Yinghao Zhang, Yue Hu
- Abstract summary: We introduce a combined TNN and Casorati MNN regularizations framework to reconstruct dMRI.
The proposed method simultaneously exploits the spatial structure and the temporal correlation of the dynamic MR data.
Numerical experiments based on cardiac cine MRI and perfusion MRI data demonstrate the performance improvement over the traditional Casorati nuclear norm regularization method.
- Score: 6.101233798770526
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Low-rank tensor models have been applied in accelerating dynamic magnetic
resonance imaging (dMRI). Recently, a new tensor nuclear norm based on t-SVD
has been proposed and applied to tensor completion. Inspired by the different
properties of the tensor nuclear norm (TNN) and the Casorati matrix nuclear
norm (MNN), we introduce a combined TNN and Casorati MNN regularizations
framework to reconstruct dMRI, which we term as TMNN. The proposed method
simultaneously exploits the spatial structure and the temporal correlation of
the dynamic MR data. The optimization problem can be efficiently solved by the
alternating direction method of multipliers (ADMM). In order to further improve
the computational efficiency, we develop a fast algorithm under the Cartesian
sampling scenario. Numerical experiments based on cardiac cine MRI and
perfusion MRI data demonstrate the performance improvement over the traditional
Casorati nuclear norm regularization method.
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