Preliminary Studies On Training And Fine-Tuning Deep Denoiser Neural Networks In Learned D-Amp For Undersampled Real Mr Measurements

Hanvit Kim, Dong Un Kang, S. Chun
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引用次数: 1

Abstract

Recently, deep learning based MR image reconstructions have shown outstanding performance. While there have been many direct mapping based methods by deep neural networks without taking advantage of known physical model of medical imaging modality, some groups investigated combining conventional model-based image reconstruction (MBIR) and learning based method to enhance performance and computation speed of MBIR. Here, we investigated learned denoiser-based approximate message passing (LDAMP) with undersampled MR measurements. LDAMP yielded favorable performance over BM3D-based AMP even though ground truth images were noisy and deep denoisers were trained only for Gaussian noise, not for undersampling artifacts. We further investigated the feasibility of using Stein’s unbiased risk estimator (SURE) to fine-tune deep denoisers with given undersampled MR measurement. Our proposed SURE based unsupervised fine-tuning method faithfully reconstructed images corresponding to the measurement and demonstrated the potential of enhancing the image quality of LDAMP results on real MRI dataset.
欠采样实际Mr测量中学习D-Amp深度去噪神经网络的训练与微调的初步研究
近年来,基于深度学习的MR图像重建表现出了优异的成绩。虽然目前已有许多基于深度神经网络的直接映射方法没有利用医学成像模式的已知物理模型,但一些研究小组将传统的基于模型的图像重建(MBIR)与基于学习的方法相结合,以提高MBIR的性能和计算速度。在这里,我们研究了基于学习去噪的近似消息传递(LDAMP)与欠采样MR测量。LDAMP比基于bm3d的AMP产生了良好的性能,即使地面真实图像是有噪声的,并且深度去噪器只针对高斯噪声进行训练,而不是针对过采样伪影。我们进一步研究了使用Stein无偏风险估计器(SURE)对给定欠采样MR测量的深度去噪器进行微调的可行性。我们提出的基于SURE的无监督微调方法忠实地重建了与测量相对应的图像,并证明了在真实MRI数据集上提高LDAMP结果图像质量的潜力。
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