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Augmented NETT regularization of inverse problems

Authors :
Obmann, Daniel
Nguyen, Linh
Schwab, Johannes
Haltmeier, Markus
Obmann, Daniel [0000-0002-7130-5464]
Nguyen, Linh [0000-0003-0776-9480]
Apollo - University of Cambridge Repository
Publication Year :
2021
Publisher :
Apollo - University of Cambridge Repository, 2021.

Abstract

We propose aNETT (augmented NETwork Tikhonov) regularization as a novel data-driven reconstruction framework for solving inverse problems. An encoder-decoder type network defines a regularizer consisting of a penalty term that enforces regularity in the encoder domain, augmented by a penalty that penalizes the distance to the signal manifold. We present a rigorous convergence analysis including stability estimates and convergence rates. For that purpose, we prove the coercivity of the regularizer used without requiring explicit coercivity assumptions for the networks involved. We propose a possible realization together with a network architecture and a modular training strategy. Applications to sparse-view and low-dose CT show that aNETT achieves results comparable to state-of-the-art deep-learning-based reconstruction methods. Unlike learned iterative methods, aNETT does not require repeated application of the forward and adjoint models during training, which enables the use of aNETT for inverse problems with numerically expensive forward models. Furthermore, we show that aNETT trained on coarsely sampled data can leverage an increased sampling rate without the need for retraining.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....d0452659d9e2c47521495d013c5e550f
Full Text :
https://doi.org/10.17863/cam.76387