Multi-layer Convolutional Sparse Coding Framework for Restoration of Under-sampled MR Images

A. Wahid, Abdul Wahab Usman Ullah, K. Kadir, Syeda Saadain.
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引用次数: 1

Abstract

Magnetic Resonance Imaging (MRI) plays an important role in the diagnosis of different pathologies associated with human anatomy. The need to acquire images with higher temporal and spatial resolution require longer scan times resulting in patient fatigue and claustrophobia. In addition to scan times, the induced motion artifacts in acquired MRI images further necessitate the reduction in scan time for better image quality in case the process is repeated. To circumvent the longer scan time problem, Parallel Imaging (PI) and Compressive Sensing (CS) techniques have been proposed for scan time accelerations. The emergence of deep learning-based techniques that rely on fully sampled MR images to learn image priors and key parameters for non-linear mappings between fully sampled and undersampled MR images have enabled compressive sensing-magnetic resonance imaging (CS-MRI) restoration architectures that are much better than the traditional regularization-based restoration techniques. In this article, we propose a multilayer convolutional sparse coding (ML-CSC) based framework utilizing layered basis pursuit for CS-MRI reconstruction and demonstrate its effectiveness on brain MR images with different acceleration factors. The proposed generic architecture is shown to provide successful reconstruction from undersampled MR images that can be further used for clinical interpretations.
基于多层卷积稀疏编码框架的低采样MR图像恢复
磁共振成像(MRI)在与人体解剖学相关的各种病理诊断中发挥着重要作用。需要获得具有更高的时间和空间分辨率的图像需要更长的扫描时间,导致患者疲劳和幽闭恐惧症。除了扫描时间外,所获得的MRI图像中的诱发运动伪影进一步需要减少扫描时间,以便在重复该过程时获得更好的图像质量。为了解决扫描时间较长的问题,平行成像(PI)和压缩感知(CS)技术被提出用于扫描时间加速。基于深度学习的技术的出现,依赖于全采样的MR图像来学习图像先验和全采样和欠采样MR图像之间非线性映射的关键参数,使得压缩感知-磁共振成像(CS-MRI)恢复架构比传统的基于正则化的恢复技术要好得多。在本文中,我们提出了一种基于多层卷积稀疏编码(ML-CSC)的框架,利用分层基追求进行CS-MRI重构,并证明了其在不同加速因子的脑MR图像上的有效性。所提出的通用架构被证明可以从采样不足的MR图像中提供成功的重建,可以进一步用于临床解释。
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