Model-corrected learned primal-dual models for fast limited-view
photoacoustic tomography
- URL: http://arxiv.org/abs/2304.01963v1
- Date: Tue, 4 Apr 2023 17:13:22 GMT
- Title: Model-corrected learned primal-dual models for fast limited-view
photoacoustic tomography
- Authors: Andreas Hauptmann and Jenni Poimala
- Abstract summary: Learned iterative reconstructions hold promise to accelerate tomographic imaging with empirical robustness to model perturbations.
Computational feasibility can be obtained by the use of fast approximate models, but a need to compensate model errors arises.
We advance the methodological and theoretical basis for model corrections in learned image reconstructions by embedding the model correction in a learned primal-dual framework.
- Score: 2.631277214890658
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Learned iterative reconstructions hold great promise to accelerate
tomographic imaging with empirical robustness to model perturbations.
Nevertheless, an adoption for photoacoustic tomography is hindered by the need
to repeatedly evaluate the computational expensive forward model. Computational
feasibility can be obtained by the use of fast approximate models, but a need
to compensate model errors arises. In this work we advance the methodological
and theoretical basis for model corrections in learned image reconstructions by
embedding the model correction in a learned primal-dual framework. Here, the
model correction is jointly learned in data space coupled with a learned
updating operator in image space within an unrolled end-to-end learned
iterative reconstruction approach. The proposed formulation allows an extension
to a primal-dual deep equilibrium model providing fixed-point convergence as
well as reduced memory requirements for training. We provide theoretical and
empirical insights into the proposed models with numerical validation in a
realistic 2D limited-view setting. The model-corrected learned primal-dual
methods show excellent reconstruction quality with fast inference times and
thus providing a methodological basis for real-time capable and scalable
iterative reconstructions in photoacoustic tomography.
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