Improving grazing-incidence small-angle X-ray scattering–computed tomography images by total variation minimization

カテゴリ:研究業績 

2020年2月1日

Title:
Improving grazing-incidence small-angle X-ray scattering–computed tomography images by total variation minimization

 

Authors:
H. Ogawa, S. Ono, Y. Nishikawa, A. Fujiwara, T. Kabe, M. Takenaka

 

Abstract:
Grazing-incidence small-angle X-ray scattering (GISAXS) coupled with computed tomography (CT) has enabled the visualization of the spatial distribution of nanostructures in thin films. 2D GISAXS images are obtained by scanning along the direction perpendicular to the X-ray beam at each rotation angle. Because the intensities at the q positions contain nanostructural information, the reconstructed CT images individually represent the spatial distributions of this information (e.g. size, shape, surface, characteristic length). These images are reconstructed from the intensities acquired at angular intervals over 180°, but the total measurement time is prolonged. This increase in the radiation dosage can cause damage to the sample. One way to reduce the overall measurement time is to perform a scanning GISAXS measurement along the direction perpendicular to the X-ray beam with a limited interval angle. Using filtered back-projection (FBP), CT images are reconstructed from sinograms with limited interval angles from 3 to 48° (FBP-CT images). However, these images are blurred and have a low image quality. In this study, to optimize the CT image quality, total variation (TV) regularization is introduced to minimize sinogram image noise and artifacts. It is proposed that the TV method can be applied to downsampling of sinograms in order to improve the CT images in comparison with the FBP-CT images.

 

Link (OPEN ACCESS):
J. Appl. Cryst. 53 (2020) 140 – 147.
DOI: 10.1107/S1600576719016558

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