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Multidimensional Compressed Sensing MRI Using Tensor Decomposition-Based Sparsifying Transform

机译:基于基于张量分解的稀疏变换的多维压缩传感MRI

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摘要

Compressed Sensing (CS) has been applied in dynamic Magnetic Resonance Imaging (MRI) to accelerate the data acquisition without noticeably degrading the spatial-temporal resolution. A suitable sparsity basis is one of the key components to successful CS applications. Conventionally, a multidimensional dataset in dynamic MRI is treated as a series of two-dimensional matrices, and then various matrix/vector transforms are used to explore the image sparsity. Traditional methods typically sparsify the spatial and temporal information independently. In this work, we propose a novel concept of tensor sparsity for the application of CS in dynamic MRI, and present the Higher-order Singular Value Decomposition (HOSVD) as a practical example. Applications presented in the three- and four-dimensional MRI data demonstrate that HOSVD simultaneously exploited the correlations within spatial and temporal dimensions. Validations based on cardiac datasets indicate that the proposed method achieved comparable reconstruction accuracy with the low-rank matrix recovery methods and, outperformed the conventional sparse recovery methods.
机译:压缩传感(CS)已应用于动态磁共振成像(MRI),以加速数据采集,而不会显着降低时空分辨率。适当的稀疏基础是成功CS应用程序的关键组成部分之一。传统上,动态MRI中的多维数据集被视为一系列二维矩阵,然后使用各种矩阵/矢量变换来探索图像稀疏性。传统方法通常独立地稀疏空间和时间信息。在这项工作中,我们提出了张量稀疏性的新概念,用于CS在动态MRI中的应用,并提出了高阶奇异值分解(HOSVD)作为实际示例。 3维和4维MRI数据中显示的应用程序证明,HOSVD同时利用了空间和时间维内的相关性。基于心脏数据集的验证表明,所提出的方法与低秩矩阵恢复方法相比具有可比的重建精度,并且优于常规的稀疏恢复方法。

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