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Compass: a joint framework for Parallel Imaging and Compressive Sensing in MRI

机译:指南针:MRI并行成像和压缩感测的联合框架

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Parallel Imaging MRI (pMRI) and Compressive Sensing (CS) are two reconstruction techniques that have recently been applied to increase MRI performance. In this paper we demonstrate that a combined analysis of the pMRI and CS problems leads to a conceptually simple, yet effective technique that outperforms independent approaches to both reconstruction problems. We argue that the proposed technique is also naturally resilient to noise, due to its relation to the MAP image denoising formulation. A modified Basis Pursuit (BP) formulation of the CS-MRI problem allows it to handle the pMRI problem at the same time. We also present an exact solution to this BP problem, using the split Bregman technique, with discrete shearlet transform (DST) regularization. The DST is an excellent choice for natural image applications, due to its optimal sparsity property. Results show that this Compressive Parallel Sensing (COMPASS) reconstruction algorithm outperforms more traditional MRI reconstruction algorithms in both pMRI and CS experiments.
机译:并行成像MRI(pMRI)和压缩感测(CS)是最近被用于提高MRI性能的两种重建技术。在本文中,我们证明了对pMRI和CS问题的综合分析导致了一种概念上简单而有效的技术,其性能优于针对这两个重建问题的独立方法。我们认为,由于所提出的技术与MAP图像降噪公式有关,因此它对噪声也具有自然的适应性。 CS-MRI问题的改进的基本追求(BP)公式使它可以同时处理pMRI问题。我们还提出了使用分离Bregman技术以及离散剪切波变换(DST)正则化的BP问题的精确解决方案。由于DST具有最佳的稀疏特性,因此它是自然图像应用的绝佳选择。结果表明,在pMRI和CS实验中,这种压缩并行传感(COMPASS)重建算法均优于传统的MRI重建算法。

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