Compressively Sampled MR Image Reconstruction Using Hyperbolic Tangent-Based Soft-Thresholding

被引:0
|
作者
Jawad Shah
I. M. Qureshi
Julio Proano
Yiming Deng
机构
[1] University of Colorado Denver and Anschutz Medical Campus,Department of Electrical Engineering
[2] Air University,Department of Electrical Engineering, Institute of Signals, Systems and Soft computing (ISSS)
来源
Applied Magnetic Resonance | 2015年 / 46卷
关键词
Phantom Image; Recovered Image; Thresholding Function; Iterative Thresholding Algorithm; Original Magnetic Resonance Image;
D O I
暂无
中图分类号
学科分类号
摘要
The application of compressed sensing (CS) to magnetic resonance (MR) images utilizes the transformed domain sparsity to enable the reconstruction from an under-sampled k-space (Fourier) data using a non-linear recovery algorithm. In order to estimate the missing k-space data from the partial Fourier samples, the reconstruction algorithms minimize an objective function based on mixed l1 − l2 norms. Iterative-shrinkage algorithms, such as parallel coordinate descent (PCD) and separable surrogate functional, provide an efficient numerical technique to minimize the l1-regularized least square optimization problem. These algorithms require a thresholding step to induce sparsity in the solution, which is an essential requirement of the CS recovery. This paper introduces a novel soft-thresholding method based on the hyperbolic tangent function. It has been shown that by using the proposed thresholding function in the sparsifying domain and a data consistency step in the k-space, the iterative-shrinkage algorithms can be used effectively to recover the under-sampled MR images. For the purpose of demonstration, we use the proposed soft-thresholding and data consistency with the PCD algorithm and compare its performance with the conventional PCD, projection onto convex sets and low-resolution reconstruction methods. The metrics used to compare the various algorithms are the artifact power, the peak signal-to-noise ratio, the correlation and the structural similarity index. The experimental results are validated using Shepp–Logan phantom image as well as real human head MR images taken from the MRI scanner at St. Mary’s Hospital, London.
引用
收藏
页码:837 / 851
页数:14
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