Enhancing joint reconstruction and segmentation with non-convex Bregman iteration

All imaging modalities such as computed tomography, emission tomography and magnetic resonance imaging require a reconstruction approach to produce an image. A common image processing task for applications that utilise those modalities is image segmentation, typically performed posterior to the reco...

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Published inInverse problems Vol. 35; no. 5; pp. 55001 - 55034
Main Authors Corona, Veronica, Benning, Martin, Ehrhardt, Matthias J, Gladden, Lynn F, Mair, Richard, Reci, Andi, Sederman, Andrew J, Reichelt, Stefanie, Schönlieb, Carola-Bibiane
Format Journal Article
LanguageEnglish
Published IOP Publishing 01.05.2019
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ISSN0266-5611
1361-6420
DOI10.1088/1361-6420/ab0b77

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Summary:All imaging modalities such as computed tomography, emission tomography and magnetic resonance imaging require a reconstruction approach to produce an image. A common image processing task for applications that utilise those modalities is image segmentation, typically performed posterior to the reconstruction. Recently, the idea of tackling both problems jointly has been proposed. We explore a new approach that combines reconstruction and segmentation in a unified framework. We derive a variational model that consists of a total variation regularised reconstruction from undersampled measurements and a Chan-Vese-based segmentation. We extend the variational regularisation scheme to a Bregman iteration framework to improve the reconstruction and therefore the segmentation. We develop a novel alternating minimisation scheme that solves the non-convex optimisation problem with provable convergence guarantees. Our results for synthetic and real data show that both reconstruction and segmentation are improved compared to the classical sequential approach.
Bibliography:IP-101859.R2
ISSN:0266-5611
1361-6420
DOI:10.1088/1361-6420/ab0b77