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StatSTEM: An efficient approach for accurate and precise model-based quantification of atomic resolution electron microscopy images

机译:StatSTEM:一种有效的方法,用于基于模型的原子分辨率电子显微镜图像的精确定量

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摘要

An efficient model-based estimation algorithm is introduced to quantify the atomic column positions and intensities from atomic resolution (scanning) transmission electron microscopy ((S)TEM) images. This algorithm uses the least squares estimator on image segments containing individual columns fully accounting for overlap between neighbouring columns, enabling the analysis of a large field of view. For this algorithm, the accuracy and precision with which measurements for the atomic column positions and scattering cross-sections from annular dark field (ADF) STEM images can be estimated, has been investigated. The highest attainable precision is reached even for low dose images. Furthermore, the advantages of the model-based approach taking into account overlap between neighbouring columns are highlighted. This is done for the estimation of the distance between two neighbouring columns as a function of their distance and for the estimation of the scattering cross-section which is compared to the integrated intensity from a Voronoi cell. To provide end-users this well-established quantification method, a user friendly program, StatSTEM, is developed which is freely available under a GNU public license. (C) 2016 Elsevier B.V. All rights reserved.
机译:引入了一种基于模型的有效估计算法,以根据原子分辨率(扫描)透射电子显微镜((S)TEM)图像量化原子列的位置和强度。该算法在包含单独列的图像段上使用最小二乘估计器,充分考虑了相邻列之间的重叠,从而能够分析大视野。对于此算法,已经研究了估计来自环形暗场(ADF)STEM图像的原子列位置和散射截面的测量值的准确性和精度。即使对于低剂量图像,也可以达到最高的精度。此外,强调了考虑相邻列之间重叠的基于模型的方法的优点。这样做是为了估计两个相邻列之间的距离(取决于它们的距离)以及估计散射截面,该散射截面与来自Voronoi单元的积分强度进行了比较。为了向最终用户提供这种完善的量化方法,开发了一个用户友好程序StatSTEM,该程序可在GNU公共许可证下免费获得。 (C)2016 Elsevier B.V.保留所有权利。

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