Bayesian approach to time-resolved tomography
Author(s) -
Glenn R. Myers,
Matthew Geleta,
Andrew Kingston,
Benoît Recur,
Adrian Sheppard
Publication year - 2015
Publication title -
optics express
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.394
H-Index - 271
ISSN - 1094-4087
DOI - 10.1364/oe.23.020062
Subject(s) - computer science , data acquisition , tomography , image quality , bayesian probability , phase (matter) , noise (video) , signal to noise ratio (imaging) , computer vision , artificial intelligence , prior probability , contrast (vision) , iterative reconstruction , algorithm , optics , physics , image (mathematics) , telecommunications , quantum mechanics , operating system
Conventional X-ray micro-computed tomography (μCT) is unable to meet the need for real-time, high-resolution, time-resolved imaging of multi-phase fluid flow. High signal-to-noise-ratio (SNR) data acquisition is too slow and results in motion artefacts in the images, while fast acquisition is too noisy and results in poor image contrast. We present a Bayesian framework for time-resolved tomography that uses priors to drastically reduce the required amount of experiment data. This enables high-quality time-resolved imaging through a data acquisition protocol that is both rapid and high SNR. Here we show that the framework: (i) encompasses our previous, algorithms for imaging two-phase flow as limiting cases; (ii) produces more accurate results from imperfect (i.e. real) data, where it can be compared to our previous work; and (iii) is generalisable to previously intractable systems, such as three-phase flow.
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