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基于双稀疏模型的压缩感知磁共振图像重建

[Compressed sensing magnetic resonance image reconstruction based on double sparse model].

作者信息

Fan Xiaoyu, Lian Qiusheng

机构信息

The Department of Electronic and Communication Engineering, School of Information Science and Engineering, Yanshan University, Qinhuangdao, Hebei 066004, P.R.China;The Department of Electronic Engineering, School of Electrical and Electronic Engineering, Anhui Science and Technology University, Chuzhou, Anhui 233100, P.R.China.

The Department of Electronic and Communication Engineering, School of Information Science and Engineering, Yanshan University, Qinhuangdao, Hebei 066004,

出版信息

Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2018 Oct 25;35(5):688-696. doi: 10.7507/1001-5515.201607006.

Abstract

The medical magnetic resonance (MR) image reconstruction is one of the key technologies in the field of magnetic resonance imaging (MRI). The compressed sensing (CS) theory indicates that the image can be reconstructed accurately from highly undersampled measurements by using the sparsity of the MR image. However, how to improve the image reconstruction quality by employing more sparse priors of the image becomes a crucial issue for MRI. In this paper, an adaptive image reconstruction model fusing the double dictionary learning is proposed by exploiting sparse priors of the MR image in the image domain and transform domain. The double sparse model which combines synthesis sparse model with sparse transform model is applied to the CS MR image reconstruction according to the complementarity of synthesis sparse and sparse transform model. Making full use of the two sparse priors of the image under the synthesis dictionary and transform dictionary learning, the proposed model is tackled in stages by the iterative alternating minimization algorithm. The solution procedure needs to utilize the synthesis and transform K-singular value decomposition (K-SVD) algorithms. Compared with the existing MRI models, the experimental results show that the proposed model can more efficiently improve the quality of the image reconstruction, and has faster convergence speed and better robustness to noise.

摘要

医学磁共振(MR)图像重建是磁共振成像(MRI)领域的关键技术之一。压缩感知(CS)理论表明,利用MR图像的稀疏性,可以从高度欠采样的测量中准确重建图像。然而,如何通过采用更多图像的稀疏先验来提高图像重建质量成为MRI的一个关键问题。本文通过利用MR图像在图像域和变换域的稀疏先验,提出了一种融合双字典学习的自适应图像重建模型。根据合成稀疏模型和稀疏变换模型的互补性,将结合合成稀疏模型与稀疏变换模型的双稀疏模型应用于CS MR图像重建。该模型充分利用合成字典和变换字典学习下图像的两种稀疏先验,通过迭代交替最小化算法分阶段求解。求解过程需要利用合成和变换K奇异值分解(K-SVD)算法。与现有MRI模型相比,实验结果表明,所提模型能够更有效地提高图像重建质量,具有更快的收敛速度和更好的抗噪声鲁棒性。

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