具有强费多罗夫型假对称性的噪声晶体图案的客观晶体学对称性分类及其最佳图像质量增强。

IF 2.1 3区 社会学 Q2 SOCIOLOGY
Qualitative Sociology Pub Date : 2022-05-01 Epub Date: 2022-04-28 DOI:10.1107/S2053273322000845
Peter Moeck
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引用次数: 0

摘要

在存在近似高斯分布噪声的情况下,利用基于信息论的方法获得了统计上合理的晶体学对称性分类。以一组具有强费多罗夫型假对称性和不同数量噪声的三个合成图案为例。与使用 CRISP 等图像处理程序进行晶体学对称性分类的传统方法不同,该分类过程无需人工监督,在几何模型选择过程中也没有任何主观设定的阈值。这样就能对二维(2D)或多或少具有周期性的数字图像(也称为晶体图案)进行晶体学对称性分类,这些图像是用不同类型的扫描探针和透射电子显微镜以足够的结构分辨率从各种晶体样品中记录下来的。正确的对称性分类有助于对这些图像进行最佳晶体学处理。这种处理包括对所选图像区域内所有晶胞中的所有不对称单元进行平均处理,可显著提高晶体显微研究的信噪比和结构分辨率。对于足够复杂的晶体图案,信息论对称性分类方法比人类专家的目视分类和电子晶体学中一种流行的晶体图像处理程序的建议都更加准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Objective crystallographic symmetry classifications of a noisy crystal pattern with strong Fedorov-type pseudosymmetries and its optimal image-quality enhancement.

Statistically sound crystallographic symmetry classifications are obtained with information-theory-based methods in the presence of approximately Gaussian distributed noise. A set of three synthetic patterns with strong Fedorov-type pseudosymmetries and varying amounts of noise serve as examples. Contrary to traditional crystallographic symmetry classifications with an image processing program such as CRISP, the classification process does not need to be supervised by a human being and is free of any subjectively set thresholds in the geometric model selection process. This enables crystallographic symmetry classification of digital images that are more or less periodic in two dimensions (2D), also known as crystal patterns, as recorded with sufficient structural resolution from a wide range of crystalline samples with different types of scanning probe and transmission electron microscopes. Correct symmetry classifications enable the optimal crystallographic processing of such images. That processing consists of the averaging over all asymmetric units in all unit cells in the selected image area and significantly enhances both the signal-to-noise ratio and the structural resolution of a microscopic study of a crystal. For sufficiently complex crystal patterns, the information-theoretic symmetry classification methods are more accurate than both visual classifications by human experts and the recommendations of one of the popular crystallographic image processing programs of electron crystallography.

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来源期刊
CiteScore
3.60
自引率
0.00%
发文量
17
期刊介绍: Qualitative Sociology is dedicated to the qualitative interpretation and analysis of social life. The journal does not restrict theoretical or analytical orientation and welcomes manuscripts based on research methods such as interviewing, participant observation, ethnography, historical analysis, content analysis and others which do not rely primarily on numerical data.
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