樊鑫

个人信息Personal Information

教授

博士生导师

硕士生导师

主要任职:软件学院、大连理工大学-立命馆大学国际信息与软件学院院长、党委副书记

性别:男

毕业院校:西安交通大学

学位:博士

所在单位:软件学院、国际信息与软件学院

学科:软件工程. 计算数学

电子邮箱:xin.fan@dlut.edu.cn

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A Deep Framework Assembling Principled Modules for CS-MRI: Unrolling Perspective, Convergence Behaviors, and Practical Modeling

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论文类型:期刊论文

发表时间:2021-04-12

发表刊物:IEEE TRANSACTIONS ON MEDICAL IMAGING

卷号:39

期号:12

页面范围:4150-4163

ISSN号:0278-0062

关键字:Compressed sensing; MRI reconstruction; deep learning; optimization; parallel imaging; Rician noise

摘要:Compressed Sensing Magnetic Resonance Imaging (CS-MRI) significantly accelerates MR acquisition at a sampling rate much lower than the Nyquist criterion. A major challenge for CS-MRI lies in solving the severely ill-posed inverse problem to reconstruct aliasing-free MR images from the sparse k-space data. Conventional methods typically optimize an energy function, producing restoration of high quality, but their iterative numerical solvers unavoidably bring extremely large time consumption. Recent deep techniques provide fast restoration by either learning direct prediction to final reconstruction or plugging learned modules into the energy optimizer. Nevertheless, these data-driven predictors cannot guarantee the reconstruction following principled constraints underlying the domain knowledge so that the reliability of their reconstruction process is questionable. In this paper, we propose a deep framework assembling principled modules for CS-MRI that fuses learning strategy with the iterative solver of a conventional reconstruction energy. This framework embeds an optimal condition checking mechanism, fostering efficient and reliable reconstruction. We also apply the framework to three practical tasks, i.e., complex-valued data reconstruction, parallel imaging and reconstruction with Rician noise. Extensive experiments on both benchmark and manufacturer-testing images demonstrate that the proposed method reliably converges to the optimal solution more efficiently and accurately than the state-of-the-art in various scenarios.