Semi-propeller compressed sensing MR image super-resolution reconstruction

K. Malczewski, M. Buczkowski
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引用次数: 1

Abstract

Magnetic Resonance Imaging (MRI) reconstruction algorithm using semi-PROPELLER compressed sensing is presented in this paper. It is exhibited that introduced algorithm for estimating data shifts is feasible when super-resolution is applied. The offered approach utilizes MRI PROPELLER sequences and improves MR images spatial resolution in circumstances when highly undersampled k-space trajectories are applied. Compressed Sensing (CS) aims at signal and images reconstructing from significantly fewer measurements than were conventionally assumed necessary. This diagnostic modality struggles with an inherently slow data acquisition process. The use of CS to MRI leads to substantial scan time reductions and visible benefits for patients and economic factors. In this report the objective is to combine Super-Resolution image enhancement algorithm with both PROPELLER sequence and CS framework. All the techniques emphasize on maximizing image sparsity on known sparse transform domain and minimizing fidelity. The motion estimation algorithm being a part of super resolution reconstruction (SRR) estimates shifts for all blades jointly, emphasizing blade-pair correlations that are both strong and more robust to noise.
半螺旋桨压缩感知MR图像超分辨率重建
提出了一种基于半螺旋桨压缩感知的磁共振成像(MRI)重建算法。结果表明,在超分辨率条件下,所引入的数据位移估计算法是可行的。所提供的方法利用MRI PROPELLER序列,并在应用高度欠采样k空间轨迹的情况下提高MR图像的空间分辨率。压缩感知(CS)旨在通过比传统假设所需的更少的测量来重建信号和图像。这种诊断模式与固有的缓慢数据采集过程作斗争。将CS应用于MRI,大大缩短了扫描时间,对患者和经济因素都有明显的好处。本文的目标是将超分辨率图像增强算法与PROPELLER序列和CS框架相结合。所有的技术都强调在已知的稀疏变换域上最大化图像的稀疏性和最小化图像的保真度。运动估计算法是超分辨率重建(SRR)的一部分,同时估计所有叶片的移位,强调叶片对的相关性强且对噪声更强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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