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Quantitative annular dark-field imaging of single-layer graphene-II: atomic-resolution image contrast

We have investigated how accurately atomic-resolution annular dark-field (ADF) images match between experiments and simulations to conduct more reliable crystal structure analyses. Quantitative ADF imaging, in which the ADF intensity at each pixel represents the fraction of the incident probe curren...

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Bibliographic Details
Published in:Microscopy 2015-12, Vol.64 (6), p.409-418
Main Authors: Yamashita, Shunsuke, Koshiya, Shogo, Nagai, Takuro, Kikkawa, Jun, Ishizuka, Kazuo, Kimoto, Koji
Format: Article
Language:English
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Summary:We have investigated how accurately atomic-resolution annular dark-field (ADF) images match between experiments and simulations to conduct more reliable crystal structure analyses. Quantitative ADF imaging, in which the ADF intensity at each pixel represents the fraction of the incident probe current, allows us to perform direct comparisons with simulations without the use of fitting parameters. Although the conventional comparison suffers from experimental uncertainties such as an amorphous surface layer and specimen thickness, in this study we eliminated such uncertainties by using a single-layer graphene as a specimen. Furthermore, to reduce image distortion and shot noises in experimental images, multiple acquisitions with drift correction were performed, and the atomic ADF contrast was quantitatively acquired. To reproduce the experimental ADF contrast, we used three distribution functions as the effective source distribution in simulations. The optimum distribution function and its full-width at half-maximum were evaluated by measuring the residuals between the experimental and simulated images. It was found that the experimental images could be explained well by a linear combination of a Gaussian function and a Lorentzian function with a longer tail than the Gaussian function.
ISSN:2050-5698
2050-5701
DOI:10.1093/jmicro/dfv053