A study of Optimum Sampling Pattern for Reconstruction of MR Images using Compressive Sensing

G. Shrividya, S. Bharathi
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引用次数: 4

Abstract

Magnetic Resonance (MR) imaging is a non invasive medical imaging technique used widely for diagnosis. The data collected by MRI scanner is placed in the k-space. Various algorithms are developed to sample the k-space and reconstruct the image from the compressive sampled k-space data. The k-space sampling pattern plays an important role in optimizing compressed sensing magnetic resonance imaging. CS technique violates the Nyquist’s sampling theory by sampling signals at lower rate than conventional sampling rate. CS can reduce scanning time in MRI applications by acquiring very few samples. This paper analyses the Cartesian variable density k-space data sampling pattern with the radial sampling scheme. Qualitative and quantitative analysis are performed on the reconstructed MR Image for different sampling percentages.
基于压缩感知的磁共振图像重构最佳采样模式研究
磁共振成像是一种广泛应用于诊断的无创医学成像技术。将MRI扫描仪采集的数据放在k空间中。开发了各种算法对k空间进行采样,并从压缩采样的k空间数据中重建图像。k空间采样模式在优化压缩感知磁共振成像中起着重要作用。CS技术违背了奈奎斯特的采样理论,以比传统采样率更低的速率对信号进行采样。CS可以通过获取很少的样本来减少MRI应用中的扫描时间。本文用径向抽样方案分析了笛卡儿变密度k空间数据的抽样模式。对不同采样百分比下重构的磁共振图像进行定性和定量分析。
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