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Dynamic MR Image Reconstruction From Highly Undersampled (k, t)-Space Data Exploiting Low Tensor Train Rank and Sparse Prior

机译:来自高度缺点(K,T) - 空间数据的动态MR图像重建利用低张力列车等级和稀疏

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摘要

Dynamic magnetic resonance imaging (dynamic MRI) is used to visualize living tissues and their changes over time. In this paper, we propose a new tensor-based dynamic MRI approach for reconstruction from highly undersampled (k, t)-space data, which combines low tensor train rankness and temporal sparsity constraints. Considering tensor train (TT) decomposition has superior performance in dealing with high-dimensional tensors, we introduce TT decomposition and utilize the low rankness of TT matrices to exploit the inner structural prior information of dynamic MRI data. First, ket augmentation (KA) scheme is used to permute the 3-order (k, t)-space data to a high order tensor and low rankness of each TT matrix is enforced with different weights. To reduce the computational complexity, we replace the nuclear norm of TT matrices with the minimum Frobenius norm of two factorization matrices to avoid singular value decomposition. Secondly, the l1 norm of the Fourier coefcients along the temporal dimension is added as a sparsity constraint to further improve the reconstruction. Lastly, an effective algorithm based on the alternating direction method of multipliers (ADMM) is developed to solve the proposed optimization problem. Numerous experiments have been conducted on three dynamic MRI data sets to estimate the performance of our proposed method. The experimental results and comparisons with several state-of-the-art imaging methods demonstrate the superior performance of the proposed method.
机译:动态磁共振成像(动态MRI)用于可视化活组织及其随时间的变化。在本文中,我们提出了一种新的基于张量的动态MRI方法,用于重建高强度(K,T) - 空间数据,这与低张力列车排名和时间稀疏限制相结合。考虑到张量火车(TT)分解在处理高维张量方面具有卓越的性能,我们介绍了TT分解并利用TT矩阵的低排名来利用动态MRI数据的内部结构先前信息。首先,使用激光增强(KA)方案将3阶(K,T) - 空间数据置于到高阶张量,并且每个TT矩阵的低排位性具有不同的权重。为了降低计算复杂性,我们用两个分解矩阵的最小Frobenius规范替换TT矩阵的核标准,以避免奇异值分解。其次,沿着时间尺寸的傅立叶聚焦的L1标准作为稀疏限制添加,以进一步改善重建。最后,开发了一种基于乘法器(ADMM)的交替方向方法的有效算法来解决所提出的优化问题。在三个动态MRI数据集中进行了许多实验,以估计我们提出的方法的性能。具有若干最先进的成像方法的实验结果和比较证明了所提出的方法的优越性。

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