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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >Dynamic MRI reconstruction from highly undersampled (k, t)-space data using weighted Schatten p-norm regularizer of tensor
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Dynamic MRI reconstruction from highly undersampled (k, t)-space data using weighted Schatten p-norm regularizer of tensor

机译:使用张量的加权Schatten P-Norm规范器的高强度(K,T) - 空间数据的动态MRI重建

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摘要

Combination of the low-rankness and sparsity has been successfully used to reconstruct desired dynamic magnetic resonance image (MRI) from highly-undersampled (k, t)-space data. However, nuclear norm, as a convex relaxation of the rank function, can cause the solution deviating from the original solution of low-rank problem. Moreover, equally treating different rank component is not flexible to deal with real applications. In this paper, an efficient reconstruction model is proposed to efficiently reconstruct dynamic MRI. First, we treat dynamic MRI as a 3rd-order tensor, and formulate the low-rankness via non-convex Schatten p-norm of matrices unfolded from the tensor. Secondly, we assign different weight for each rank component in Schatten p-norm. Furthermore, we combine the proposed weighted Schatten p-norm of a tensor as low-rank regularizer, and spatiotemporal total variation as sparse regularizer to formulate the reconstruction model for dynamic MRI. Thirdly, to efficiently solve the formulated reconstruction model, we derive an algorithm based on Bregman iterations with alternating direction multiplier. Over two public data sets of dynamic MRI, experiments demonstrate that the proposed method achieves much better quality. (C) 2016 Elsevier Inc. All rights reserved.
机译:低秩和稀疏性的组合已成功地用于从高度上采样(K,T) - 空间数据中重建所需的动态磁共振图像(MRI)。然而,作为等级功能的凸面放松的核规范可能导致溶液偏离较原始的低级问题。此外,同样处理不同的等级组件对于处理真实应用而言不灵活。本文提出了一种有效的重建模型,以有效地重建动态MRI。首先,我们将动态MRI视为3r阶张量,并通过从张量展开的矩阵的非凸分裂P-Norm来制定低级别。其次,我们为Schatten P-Norm中的每个等级组件分配不同的权重。此外,我们将张量的提出的加权Schatten P-Norm组合为低秩规则器,以及时空总变化,作为稀疏常规器,以制定动态MRI的重建模型。第三,为了有效解决配制的重建模型,我们通过交替方向乘数基于Bregman迭代的算法。在两个公共数据集的动态MRI中,实验表明,所提出的方法实现了更好的质量。 (c)2016年Elsevier Inc.保留所有权利。

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