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JOURNALS // Computer Optics // Archive

Computer Optics, 2019 Volume 43, Issue 6, Pages 1008–1020 (Mi co726)

This article is cited in 7 papers

IMAGE PROCESSING, PATTERN RECOGNITION

Joint image reconstruction and segmentation: Comparison of two algorithms for few-view tomography

V. V. Vlasov, A. B. Konovalov, S. V. Kolchugin

Russian Federal Nuclear Center – Zababakhin Institute of Applied Physics, Chelyabinsk Region, Snezhinsk, 456770, Russia, 13 Vasiliev Str.

Abstract: Two algorithms of few-view tomography are compared, specifically, the iterative Potts minimization algorithm (IPMA) and the algebraic reconstruction technique with TV-regularization and adaptive segmentation (ART-TVS). Both aim to reconstruct piecewise-constant structures, use the compressed sensing theory, and combine image reconstruction and segmentation procedures. Using a numerical experiment, it is shown that either algorithm can exactly reconstruct the Shepp-Logan phantom from as small as 7 views with noise characteristic of the medical applications of X-ray tomography. However, if an object has a complicated high-frequency structure (QR-code), the minimal number of views required for its exact reconstruction increases to 17–21 for ART-TVS and to 32–34 for IPMA. The ART-TVS algorithm developed by the authors is shown to outperform IPMA in reconstruction accuracy and speed and in resistance to abnormally high noise as well. ART-TVS holds good potential for further improvement.

Keywords: few-view tomography, image reconstruction and segmentation, compressed sensing, Potts functional, total variation, Shepp-Logan phantom, QR-code, correlation coefficient, deviation factor.

Received: 10.04.2019
Accepted: 14.07.2019

DOI: 10.18287/2412-6179-2019-43-6-1008-1020



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