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Model-based electron microscopy: From images toward precise numbers for unknown structure parameters
Authors:S Van Aert  W Van den Broek  P Goos  D Van Dyck
Institution:1. Institute of Electron Microscopy and Nanoanalysis, Graz University of Technology, Steyrergasse 17, Graz 8010, Austria;2. Graz Centre for Electron Microscopy, Steyrergasse 17, Graz 8010, Austria;3. Institute of Experimental Physics, Graz University of Technology, Petersgasse 16, Graz 8010, Austria;1. Centrum Wiskunde & Informatica, Amsterdam, The Netherlands;2. Mathematical Institute, Universiteit Leiden, Leiden, The Netherlands
Abstract:Statistical parameter estimation theory is proposed as a method to quantify electron microscopy images. It aims at obtaining precise and accurate values for the unknown structure parameters including, for example, atomic column positions and types. In this theory, observations are purely considered as data planes, from which structure parameters have to be determined using a parametric model describing the images. The method enables us to measure positions of atomic columns with a precision of the order of a few picometers even though the resolution of the electron microscope is one or two orders of magnitude larger. Moreover, small differences in averaged atomic number, which cannot be distinguished visually, can be quantified using high-angle annular dark field scanning transmission electron microscopy images. Finally, it is shown how to optimize the experimental design so as to attain the highest precision. As an example, the optimization of the probe size for nanoparticle radius measurements is considered. It is also shown how to quantitatively balance signal-to-noise ratio and resolution by adjusting the probe size.
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