Paper
6 October 2017 Multispectral x-ray CT: multivariate statistical analysis for efficient reconstruction
Mina Kheirabadi, Wail Mustafa, Mark Lyksborg, Ulrik Lund Olsen, Anders Bjorholm Dahl
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Abstract
Recent developments in multispectral X-ray detectors allow for an efficient identification of materials based on their chemical composition. This has a range of applications including security inspection, which is our motivation. In this paper, we analyze data from a tomographic setup employing the MultiX detector, that records projection data in 128 energy bins covering the range from 20 to 160 keV. Obtaining all information from this data requires reconstructing 128 tomograms, which is computationally expensive. Instead, we propose to reduce the dimensionality of projection data prior to reconstruction and reconstruct from the reduced data. We analyze three linear methods for dimensionality reduction using a dataset with 37 equally-spaced projection angles. Four bottles with different materials are recorded for which we are able to obtain similar discrimination of their content using a very reduced subset of tomograms compared to the 128 tomograms that would otherwise be needed without dimensionality reduction.
© (2017) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Mina Kheirabadi, Wail Mustafa, Mark Lyksborg, Ulrik Lund Olsen, and Anders Bjorholm Dahl "Multispectral x-ray CT: multivariate statistical analysis for efficient reconstruction", Proc. SPIE 10391, Developments in X-Ray Tomography XI, 1039113 (6 October 2017); https://doi.org/10.1117/12.2273338
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Cited by 3 scholarly publications.
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KEYWORDS
CT reconstruction

Reconstruction algorithms

Sensors

Data acquisition

Image analysis

X-rays

Dimension reduction

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