학술논문

Equilibrated Zeroth-Order Unrolled Deep Network for Parallel MR Imaging
Document Type
Periodical
Source
IEEE Transactions on Medical Imaging IEEE Trans. Med. Imaging Medical Imaging, IEEE Transactions on. 42(12):3540-3554 Dec, 2023
Subject
Bioengineering
Computing and Processing
Mathematical models
Noise measurement
Image reconstruction
Data models
Symbols
Robustness
Interference
Deep equilibrium models
unrolling
parallel MR imaging
inverse problem
convergence
robustness
Language
ISSN
0278-0062
1558-254X
Abstract
In recent times, model-driven deep learning has evolved an iterative algorithm into a cascade network by replacing the regularizer’s first-order information, such as the (sub)gradient or proximal operator, with a network module. This approach offers greater explainability and predictability compared to typical data-driven networks. However, in theory, there is no assurance that a functional regularizer exists whose first-order information matches the substituted network module. This implies that the unrolled network output may not align with the regularization models. Furthermore, there are few established theories that guarantee global convergence and robustness (regularity) of unrolled networks under practical assumptions. To address this gap, we propose a safeguarded methodology for network unrolling. Specifically, for parallel MR imaging, we unroll a zeroth-order algorithm, where the network module serves as a regularizer itself, allowing the network output to be covered by a regularization model. Additionally, inspired by deep equilibrium models, we conduct the unrolled network before backpropagation to converge to a fixed point and then demonstrate that it can tightly approximate the actual MR image. We also prove that the proposed network is robust against noisy interferences if the measurement data contain noise. Finally, numerical experiments indicate that the proposed network consistently outperforms state-of-the-art MRI reconstruction methods, including traditional regularization and unrolled deep learning techniques.