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Accelerated MRI Reconstruction with Dual-Domain Generative Adversarial Network

机译:用双域生成对抗网络加速MRI重建

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Fast reconstruction of under-sampled acquisitions has always been a central issue in MRI reconstruction. Recently years has seen multiple studies using deep learning as a de-aliasing framework to restore the aliased image. However, restoration of fine details is still problematic, especially when dealing with noisy image datasets. Sparked by the Fourier transform relationship, this work proposed and tested a new hypothesis: can regularization be directly added in the frequency domain to correct the high-frequency imperfection? To achieve this, discriminative networks are applied in both the image domain and the frequency domain (so-called dual-domain GAN). Evaluation on multiple datasets proved that the dual-domain GAN approach is an effective way to improve the quality of accelerated MR reconstruction.
机译:在MRI重建中,快速重建欠采集的收购一直是一个核心问题。近年来,使用深度学习作为解除校园框架来恢复混叠图像的多年来。然而,恢复细节仍然存在问题,特别是在处理嘈杂的图像数据集时。引发了傅里叶变换关系,这项工作提出并测试了一个新的假设:可以正规化直接添加在频域中以纠正高频缺陷吗?为实现这一点,在图像域和频域(所谓的双域GaN)中应用鉴别网络。多个数据集的评估证明,双域GaN方法是提高加速先生重建质量的有效途径。

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