Huang Jinhong, Guo Li, Feng Qianjin, Chen Wufan, Feng Yanqiu
Guangdong Provincial Key Laboratory of Medical Image Processing, School of Biomedical Engineering, Southern Medical University, Guangzhou, People's Republic of China. School of Mathematics and Computer Science, Gannan Normal University, Ganzhou, People's Republic of China.
Phys Med Biol. 2015 Jul 21;60(14):5359-80. doi: 10.1088/0031-9155/60/14/5359. Epub 2015 Jun 25.
Image reconstruction from undersampled k-space data accelerates magnetic resonance imaging (MRI) by exploiting image sparseness in certain transform domains. Employing image patch representation over a learned dictionary has the advantage of being adaptive to local image structures and thus can better sparsify images than using fixed transforms (e.g. wavelets and total variations). Dictionary learning methods have recently been introduced to MRI reconstruction, and these methods demonstrate significantly reduced reconstruction errors compared to sparse MRI reconstruction using fixed transforms. However, the synthesis sparse coding problem in dictionary learning is NP-hard and computationally expensive. In this paper, we present a novel sparsity-promoting orthogonal dictionary updating method for efficient image reconstruction from highly undersampled MRI data. The orthogonality imposed on the learned dictionary enables the minimization problem in the reconstruction to be solved by an efficient optimization algorithm which alternately updates representation coefficients, orthogonal dictionary, and missing k-space data. Moreover, both sparsity level and sparse representation contribution using updated dictionaries gradually increase during iterations to recover more details, assuming the progressively improved quality of the dictionary. Simulation and real data experimental results both demonstrate that the proposed method is approximately 10 to 100 times faster than the K-SVD-based dictionary learning MRI method and simultaneously improves reconstruction accuracy.
通过利用某些变换域中的图像稀疏性,从欠采样k空间数据进行图像重建可加速磁共振成像(MRI)。在学习字典上采用图像块表示具有适应局部图像结构的优点,因此比使用固定变换(如小波变换和全变差)能更好地使图像稀疏化。字典学习方法最近已被引入到MRI重建中,与使用固定变换的稀疏MRI重建相比,这些方法的重建误差显著降低。然而,字典学习中的合成稀疏编码问题是NP难问题且计算成本高昂。在本文中,我们提出了一种新颖的促进稀疏性的正交字典更新方法,用于从高度欠采样的MRI数据进行高效图像重建。施加在学习字典上的正交性使得重建中的最小化问题能够通过一种高效的优化算法来解决,该算法交替更新表示系数、正交字典和缺失的k空间数据。此外,假设字典质量逐渐提高,在迭代过程中,使用更新字典的稀疏度水平和稀疏表示贡献都会逐渐增加,以恢复更多细节。仿真和实际数据实验结果均表明,所提出的方法比基于K-SVD的字典学习MRI方法快约10到100倍,同时提高了重建精度。