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High-Speed Compressed Sensing Reconstruction in Dynamic Parallel MRI Using Augmented Lagrangian and Parallel Processing

机译:增强拉格朗日和并行处理技术在动态并行MRI中进行高速压缩感知重建

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摘要

Magnetic resonance imaging (MRI) is one of the fields that the compressed sensing theory is well utilized to reduce the scan time significantly leading to faster imaging or higher resolution images. It has been shown that a small fraction of the overall measurements are sufficient to reconstruct images with the combination of compressed sensing and parallel imaging. Various reconstruction algorithms have been proposed for compressed sensing, among which augmented Lagrangian based methods have been shown to often perform better than others for many different applications. In this paper, we propose new augmented Lagrangian based solutions to the compressed sensing reconstruction problem with analysis and synthesis prior formulations. We also propose a computational method which makes use of properties of the sampling pattern and the singular value decomposition of the system transfer function to significantly improve the speed of the reconstruction for the proposed algorithms in Cartesian sampled MRI. The proposed algorithms are shown to outperform earlier methods especially for the case of dynamic MRI for which the transfer function tends to be a very large matrix and significantly ill conditioned. It is also demonstrated that the proposed algorithm can be accelerated much further than other methods in case of a parallel implementation with graphics processing units.
机译:磁共振成像(MRI)是充分利用压缩传感理论来减少扫描时间的领域之一,从而显着提高了成像速度或分辨率。已经表明,整体测量的一小部分足以通过压缩传感和并行成像的组合来重建图像。已经提出了用于压缩感测的各种重建算法,其中已经示出了基于增强的拉格朗日方法在许多不同应用中通常比其他方法表现更好。在本文中,我们提出了新的基于增强拉格朗日方法的解决方案,用于压缩感知重建问题,其中包括分析和综合现有公式。我们还提出了一种计算方法,该方法利用采样模式的属性和系统传递函数的奇异值分解来显着提高笛卡尔采样MRI中所提出算法的重建速度。已显示出所提出的算法优于早期方法,尤其是对于动态MRI而言,因为动态MRI的传递函数往往是非常大的矩阵且病情严重。还证明了在与图形处理单元并行实现的情况下,所提出的算法可以比其他方法进一步加速。

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