Learning Regularization Parameter-Maps for Variational Image Reconstruction using Deep Neural Networks and Algorithm Unrolling

We introduce a method for fast estimation of data-adapted, spatio-temporally dependent regularization parameter-maps for variational image reconstruction, focusing on total variation (TV)-minimization. Our approach is inspired by recent developments in algorithm unrolling using deep neural networks...

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Veröffentlicht in:arXiv.org 2023-01
Hauptverfasser: Kofler, Andreas, Altekrüger, Fabian, Fatima Antarou Ba, Kolbitsch, Christoph, Papoutsellis, Evangelos, Schote, David, Sirotenko, Clemens, Zimmermann, Felix Frederik, Papafitsoros, Kostas
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creator Kofler, Andreas
Altekrüger, Fabian
Fatima Antarou Ba
Kolbitsch, Christoph
Papoutsellis, Evangelos
Schote, David
Sirotenko, Clemens
Zimmermann, Felix Frederik
Papafitsoros, Kostas
description We introduce a method for fast estimation of data-adapted, spatio-temporally dependent regularization parameter-maps for variational image reconstruction, focusing on total variation (TV)-minimization. Our approach is inspired by recent developments in algorithm unrolling using deep neural networks (NNs), and relies on two distinct sub-networks. The first sub-network estimates the regularization parameter-map from the input data. The second sub-network unrolls \(T\) iterations of an iterative algorithm which approximately solves the corresponding TV-minimization problem incorporating the previously estimated regularization parameter-map. The overall network is trained end-to-end in a supervised learning fashion using pairs of clean-corrupted data but crucially without the need of having access to labels for the optimal regularization parameter-maps. We prove consistency of the unrolled scheme by showing that the unrolled energy functional used for the supervised learning \(\Gamma\)-converges as \(T\) tends to infinity, to the corresponding functional that incorporates the exact solution map of the TV-minimization problem. We apply and evaluate our method on a variety of large scale and dynamic imaging problems in which the automatic computation of such parameters has been so far challenging: 2D dynamic cardiac MRI reconstruction, quantitative brain MRI reconstruction, low-dose CT and dynamic image denoising. The proposed method consistently improves the TV-reconstructions using scalar parameters and the obtained parameter-maps adapt well to each imaging problem and data by leading to the preservation of detailed features. Although the choice of the regularization parameter-maps is data-driven and based on NNs, the proposed algorithm is entirely interpretable since it inherits the properties of the respective iterative reconstruction method from which the network is implicitly defined.
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subjects Algorithms
Artificial neural networks
Computed tomography
Exact solutions
Image reconstruction
Iterative algorithms
Iterative methods
Machine learning
Magnetic resonance imaging
Medical imaging
Neural networks
Optimization
Parameters
Regularization
Supervised learning
title Learning Regularization Parameter-Maps for Variational Image Reconstruction using Deep Neural Networks and Algorithm Unrolling
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