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Gradient-Based Low Rank Method for Highly Undersampled Magnetic Resonance Imaging Reconstruction

Gradient-Based Low Rank Method for Highly Undersampled Magnetic Resonance Imaging Reconstruction
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摘要 Recently, exploiting low rank property of the data accomplished by the non-convex optimization has shown great potential to decrease measurements for compressed sensing. In this paper, the low rank regularization is adopted to gradient similarity minimization, and applied for highly undersampled magnetic resonance imaging(MRI) reconstruction, termed gradient-based low rank MRI reconstruction(GLRMRI). In the proposed method,by incorporating the spatially adaptive iterative singular-value thresholding(SAIST) to optimize our gradient scheme, the deterministic annealing iterates the procedure efficiently and superior reconstruction performance is achieved. Extensive experimental results have consistently demonstrated that GLRMRI recovers both realvalued MR images and complex-valued MR data accurately, especially in the edge preserving perspective, and outperforms the current state-of-the-art approaches in terms of higher peak signal to noise ratio(PSNR) and lower high-frequency error norm(HFEN) values. Recently, exploiting low rank property of the data accomplished by the non-convex optimization has shown great potential to decrease measurements for compressed sensing. In this paper, the low rank regularization is adopted to gradient similarity minimization, and applied for highly undersampled magnetic resonance imaging (MRI) reconstruction, termed gradient-based low rank MRI reconstruction (GLRMRI). In the proposed method, by incorporating the spatially adaptive iterative singular-value thresholding (SAIST) to optimize our gradient scheme, the deterministic annealing iterates the procedure efficiently and superior reconstruction performance is achieved. Extensive experimental results have consistently demonstrated that GLRMRI recovers both realvalued MR images and complex-valued MR data accurately, especially in the edge preserving perspective, and outperforms the current state-of-the-art approaches in terms of higher peak signal to noise ratio (PSNR) and lower high-frequency error norm (HFEN) values.
作者 XU Xiaoling LIU Yiling LIU Qiegen LU Hongyang ZHANG Minghui 徐晓玲;刘沂玲;刘且根;卢红阳;张明辉(Department of Electronic Information Engineering, Nanchang University)
出处 《Journal of Shanghai Jiaotong university(Science)》 EI 2018年第3期384-391,共8页 上海交通大学学报(英文版)
基金 the National Natural Science Foundation of China(Nos.61362001,61503176,61661031) Jiangxi Advanced Project for Post-Doctoral Research Fund(No.2014KY02)
关键词 magnetic resonance imaging(MRI) low rank image gradients sparse representation deterministic annealing magnetic resonance imaging (MRI) low rank image gradients sparse representation deterministicannealing
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