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A COMPARATIVE STUDY OF CNN-BASED SUPER-RESOLUTION METHODS IN MRI RECONSTRUCTION

机译:基于CNN的超分辨率方法在MRI重建中的比较研究

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Super-resolution (SR) and MRI reconstruction are two hot topics in the field of computer vision and medical imaging, respectively. Both of them have been attacked by the recent deep learning methodology. This work aims to investigate some typical CNN-based SR algorithms and their applications in MRI reconstruction. By dividing the whole network in MRI reconstruction to be data-consistency sub-network and image prior sub-network, we investigate the reconstruction performance by utilizing various CNN-based SR networks. Experimental results demonstrate that the ResNet-like and DenseNet-like hybrid SR networks can obtain very significantly superior performance than current state-of-the-art approaches.
机译:超分辨率(SR)和MRI重建分别是计算机视野和医学成像领域的两个热门话题。他们两个都受到最近的深层学习方法的攻击。这项工作旨在调查一些基于CNN的SR算法及其在MRI重建中的应用。通过将整个网络划分为MRI重建为数据一致性子网和图像先前的子网,我们通过利用各种基于CNN的SR网络来调查重建性能。实验结果表明,Reset-limit和DenSenet的混合SR网络可以非常出色的性能,而不是当前最先进的方法。

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