Wavelet regularization in parallel imaging

Amel Korti, A. Bessaid
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Abstract

Both Compressed Sensing (CS) and parallel MRI (pMRI) techniques can accelerate MRI scans; the CS method by reducing the acquired dataset sizes and the pMRI method by acquiring simultaneously undersampled k-space data. In this paper, we relate CS to accelerated parallel imaging reconstruction. Medical images can have a sparser representation in a wavelet domain. We study in the first, the effect of various wavelet types on the reconstructions and we show then the performance of the CS-pMRI method using more advanced techniques L1-wavelet regularization to suppress noise in the reconstruction, in comparison with CS and pMRI methods.
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并行成像中的小波正则化
压缩感知(CS)和并行MRI (pMRI)技术都可以加速MRI扫描;CS方法通过减少获取的数据集大小,pMRI方法通过同时获取欠采样k空间数据。在本文中,我们将CS与加速并行成像重建联系起来。医学图像在小波域中具有更稀疏的表示。首先,我们研究了不同小波类型对重建的影响,然后我们展示了CS-pMRI方法与CS和pMRI方法相比,使用更先进的l1 -小波正则化技术来抑制重建中的噪声。
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