Graph Regularized Sparse Coding Method for Highly Undersampled MRI Reconstruction
The imaging speed is a bottleneck for magnetic resonance imaging( MRI) since it appears. To alleviate this difficulty,a novel graph regularized sparse coding method for highly undersampled MRI reconstruction( GSCMRI) was proposed. The graph regularized sparse coding showed the potential in maintaini...
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| Published in | 东华大学学报(英文版) Vol. 32; no. 3; pp. 434 - 441 |
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| Main Author | |
| Format | Journal Article |
| Language | English |
| Published |
Department of Electronic Information Engineering, Nanchang University, Nanchang 330031, China
30.06.2015
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| Subjects | |
| Online Access | Get full text |
| ISSN | 1672-5220 |
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| Summary: | The imaging speed is a bottleneck for magnetic resonance imaging( MRI) since it appears. To alleviate this difficulty,a novel graph regularized sparse coding method for highly undersampled MRI reconstruction( GSCMRI) was proposed. The graph regularized sparse coding showed the potential in maintaining the geometrical information of the data. In this study, it was incorporated with two-level Bregman iterative procedure that updated the data term in outer-level and learned dictionary in innerlevel. Moreover,the graph regularized sparse coding and simple dictionary updating stages derived by the inner minimization made the proposed algorithm converge in few iterations, meanwhile achieving superior reconstruction performance. Extensive experimental results have demonstrated GSCMRI can consistently recover both real-valued MR images and complex-valued MR data efficiently,and outperform the current state-of-the-art approaches in terms of higher PSNR and lower HFEN values. |
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| Bibliography: | 31-1920/N ZHANG Ming-hui , YIN Zi-rui, LU Hong-yang , WU Jian-hua , LIU Qie-gen( Department of Electronic Information Engineering, Nanchang University, Nanchang 330031, China) The imaging speed is a bottleneck for magnetic resonance imaging( MRI) since it appears. To alleviate this difficulty,a novel graph regularized sparse coding method for highly undersampled MRI reconstruction( GSCMRI) was proposed. The graph regularized sparse coding showed the potential in maintaining the geometrical information of the data. In this study, it was incorporated with two-level Bregman iterative procedure that updated the data term in outer-level and learned dictionary in innerlevel. Moreover,the graph regularized sparse coding and simple dictionary updating stages derived by the inner minimization made the proposed algorithm converge in few iterations, meanwhile achieving superior reconstruction performance. Extensive experimental results have demonstrated GSCMRI can consistently recover both real-valued MR images and complex-valued MR data efficiently,and outperform the current state-of-the-art approaches in terms of higher PSNR and lower HFEN values. magnetic resonance imaging; graph regularized sparsecoding; Bregman iterative method; dictionary updating; alternatingdirection method |
| ISSN: | 1672-5220 |