数据一致性
一致性(知识库)
计算机科学
迭代重建
噪音(视频)
人工智能
局部一致性
深度学习
约束(计算机辅助设计)
动态数据
加速度
算法
图像(数学)
数学
约束满足
物理
操作系统
经典力学
概率逻辑
程序设计语言
几何学
作者
Jing Cheng,Zhuo‐Xu Cui,Wenqi Huang,Ziwen Ke,Leslie Ying,Haifeng Wang,Yanjie Zhu,Dong Liang
标识
DOI:10.1109/tmi.2021.3096232
摘要
Magnetic resonance (MR) image reconstruction from undersampled k-space data can be formulated as a minimization problem involving data consistency and image prior. Existing deep learning (DL)-based methods for MR reconstruction employ deep networks to exploit the prior information and integrate the prior knowledge into the reconstruction under the explicit constraint of data consistency, without considering the real distribution of the noise. In this work, we propose a new DL-based approach termed Learned DC that implicitly learns the data consistency with deep networks, corresponding to the actual probability distribution of system noise. The data consistency term and the prior knowledge are both embedded in the weights of the networks, which provides an utterly implicit manner of learning reconstruction model. We evaluated the proposed approach with highly undersampled dynamic data, including the dynamic cardiac cine data with up to 24-fold acceleration and dynamic rectum data with the acceleration factor equal to the number of phases. Experimental results demonstrate the superior performance of the Learned DC both quantitatively and qualitatively than the state-of-the-art.
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