Deep unrolling networks with recurrent momentum acceleration for nonlinear inverse problems

Qingping Zhou, Jiayu Qian, Junqi Tang, Jinglai Li*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

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Abstract

Combining the strengths of model-based iterative algorithms and data-driven deep learning solutions, deep unrolling networks (DuNets) have become a popular tool to solve inverse imaging problems. Although DuNets have been successfully applied to many linear inverse problems, their performance tends to be impaired by nonlinear problems. Inspired by momentum acceleration techniques that are often used in optimization algorithms, we propose a recurrent momentum acceleration (RMA) framework that uses a long short-term memory recurrent neural network (LSTM-RNN) to simulate the momentum acceleration process. The RMA module leverages the ability of the LSTM-RNN to learn and retain knowledge from the previous gradients. We apply RMA to two popular DuNets—the learned proximal gradient descent (LPGD) and the learned primal-dual (LPD) methods, resulting in LPGD-RMA and LPD-RMA, respectively. We provide experimental results on two nonlinear inverse problems: a nonlinear deconvolution problem, and an electrical impedance tomography problem with limited boundary measurements. In the first experiment we have observed that the improvement due to RMA largely increases with respect to the nonlinearity of the problem. The results of the second example further demonstrate that the RMA schemes can significantly improve the performance of DuNets in strongly ill-posed problems.
Original languageEnglish
Article number055014
Number of pages20
JournalInverse Problems
Volume40
Issue number5
Early online date2 Apr 2024
DOIs
Publication statusE-pub ahead of print - 2 Apr 2024

Bibliographical note

Acknowledgments:
The work is supported by the National Natural Science Foundation of China under Grant 12101614, and the Natural Science Foundation of Hunan Province, China, under Grant 2021JJ40715. We are grateful to the High Performance Computing Center of Central South University for assistance with the computations.

Keywords

  • inverse problems
  • learned proximal gradient descent
  • recurrent neural network
  • learned primal-dual
  • momentum acceleration
  • deep unrolling networks

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