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Density Compensated Unrolled Networks For Non-Cartesian MRI Reconstruction

机译:密度补偿非笛卡尔MRI重建的展开网络

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Deep neural networks have recently been thoroughly investigated as a powerful tool for MRI reconstruction. There is a lack of research, however, regarding their use for a specific setting of MRI, namely non-Cartesian acquisitions. In this work, we introduce a novel kind of deep neural networks to tackle this problem, namely density compensated unrolled neural networks, which rely on Density Compensation to correct the uneven weighting of the k-space. We assess their efficiency on the publicly available fastMRI dataset, and perform a small ablation study. Our results show that the density-compensated unrolled neural networks outperform the different baselines, and that all parts of the design are needed. We also open source our code, in particular a Non-Uniform Fast Fourier transform for TensorFlow.
机译:最近,深度神经网络已被彻底调查为MRI重建的强大工具。 然而,关于他们对MRI的具体设定的用途缺乏研究,即非笛卡尔获取。 在这项工作中,我们介绍了一种新颖的深度神经网络来解决这个问题,即密度补偿展开神经网络,依赖于密度补偿以校正k空间的不均匀加权。 我们评估其在公开的FastMri DataSet上的效率,并进行小型消融研究。 我们的结果表明,密度补偿的展开神经网络优于不同的基线,并且需要所有部件。 我们还开源我们的代码,特别是对于Tensorflow的非均匀快速傅里叶变换。

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