Informatics and Applications
2020, Volume 14, Issue 2, pp 2632
ASYMPTOTICS OF THE MEANSQUARE RISK ESTIMATE IN THE PROBLEM OF INVERTING THE RADON TRANSFORM FROM PROJECTIONS REGISTERED ON A RANDOM GRID
Abstract
When reconstructing tomographic images, it is necessary to use regularization methods, since the problem of inverting the Radon transform, which is the basis of mathematical models of most tomographic experiments, is illposed. Regularization methods based on wavelet analysis have become popular due to their adaptation to local image features and computational efficiency. The analysis of errors in tomographic images is an important practical task, since it makes it possible to evaluate the quality of both the methods themselves and the equipment used. Sometimes, it is not possible to register projection data on a uniform grid of samples. If sample points for each coordinate form a variation series based on a sample from a uniform distribution, then the use of the usual threshold processing procedure is adequate. In this paper, the author analyzes the estimate of the meansquare risk in the Radon transform inversion problem and demonstrates that if the image function is uniformly Lipschitzregular, then this estimate is strongly consistent and asymptotically normal.
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[+] About this article
Title
ASYMPTOTICS OF THE MEANSQUARE RISK ESTIMATE IN THE PROBLEM OF INVERTING THE RADON TRANSFORM FROM PROJECTIONS REGISTERED ON A RANDOM GRID
Journal
Informatics and Applications
2020, Volume 14, Issue 2, pp 2632
Cover Date
20200630
DOI
10.14357/19922264200204
Print ISSN
19922264
Publisher
Institute of Informatics Problems, Russian Academy of Sciences
Additional Links
Key words
threshold processing; Radon transform; random grid; meansquare risk estimate
Authors
O.V Shestakov ,
Author Affiliations
Department of Mathematical Statistics, Faculty of Computational Mathematics and Cybernetics, M. V Lomonosov Moscow State University, 152 Leninskiye Gory, GSP1, Moscow 119991, Russian Federation
Institute of Informatics Problems, Federal Research Center "Computer Science and Control" of the Russian Academy of Sciences, 442 Vavilov Str., Moscow 119333, Russian Federation
