Tensor-based Nonlocal MRI Reconstruction with Compressed Sensing

Qidi Wu, Yibing Li, Yun Lin
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引用次数: 1

Abstract

Compressed sensing(CS) is a significant technology in MRI reconstruction, which can reconstruct the image with few undersampled data and speed up the imaging. The conventional CS-based MRI is implemented on the global image, which not only loss many local structures but also fails in preserving the detail information. To improve the reconstruction quality, we proposed a novel CS-based reconstruction model, which is incorporated with nonlocal technology to gain extra details preservation. The proposed model grouped the similar patches within the nonlocal area, and stacked them to form a 3D array. Then, to process the array in a realistic 3D way, a tensor-based sparsity constraint is developed as the regularization on the reconstructed image. Experimental results show that the proposed method is more effectiveness and efficiency than the conventional ones.
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基于张量的压缩感知非局部MRI重构
压缩感知(CS)技术是磁共振成像重建中的一项重要技术,它可以利用较少的欠采样数据重建图像,提高成像速度。传统的基于cs的MRI是在全局图像上实现的,不仅丢失了许多局部结构,而且不能保留细节信息。为了提高重建质量,我们提出了一种新的基于cs的重建模型,该模型与非局部技术相结合,以获得额外的细节保留。该模型将非局部区域内的相似斑块分组,并将其堆叠形成三维阵列。然后,利用基于张量的稀疏性约束作为重构图像的正则化约束,对阵列进行真实的三维处理。实验结果表明,该方法比传统方法具有更高的有效性和效率。
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