Identifying local structural states in atomic imaging by computer vision

IF 3.56 Q1 Medicine
Nouamane Laanait, Maxim Ziatdinov, Qian He, Albina Borisevich
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引用次数: 17

Abstract

The availability of atomically resolved imaging modalities enables an unprecedented view into the local structural states of materials, which manifest themselves by deviations from the fundamental assumptions of periodicity and symmetry. Consequently, approaches that aim to extract these local structural states from atomic imaging data with minimal assumptions regarding the average crystallographic configuration of a material are indispensable to advances in structural and chemical investigations of materials. Here, we present an approach to identify and classify local structural states that is rooted in computer vision. This approach introduces a definition of a structural state that is composed of both local and nonlocal information extracted from atomically resolved images, and is wholly untethered from the familiar concepts of symmetry and periodicity. Instead, this approach relies on computer vision techniques such as feature detection, and concepts such as scale invariance. We present the fundamental aspects of local structural state extraction and classification by application to simulated scanning transmission electron microscopy images, and analyze the robustness of this approach in the presence of common instrumental factors such as noise, limited spatial resolution, and weak contrast. Finally, we apply this computer vision-based approach for the unsupervised detection and classification of local structural states in an experimental electron micrograph of a complex oxides interface, and a scanning tunneling micrograph of a defect-engineered multilayer graphene surface.

Abstract Image

利用计算机视觉识别原子成像中的局部结构状态
原子分辨率成像模式的可用性使人们能够前所未有地观察材料的局部结构状态,这些状态通过偏离周期性和对称性的基本假设而表现出来。因此,旨在从原子成像数据中提取这些局部结构状态的方法,对材料的平均晶体构型的最小假设,对于材料的结构和化学研究的进步是必不可少的。在这里,我们提出了一种基于计算机视觉的方法来识别和分类局部结构状态。这种方法引入了结构状态的定义,该结构状态由从原子分辨图像中提取的局部和非局部信息组成,并且完全不受熟悉的对称和周期性概念的束缚。相反,这种方法依赖于计算机视觉技术,如特征检测,以及尺度不变性等概念。我们介绍了局部结构状态提取和分类的基本方面,并通过应用于模拟扫描透射电子显微镜图像,分析了该方法在常见仪器因素(如噪声、有限空间分辨率和弱对比度)存在下的鲁棒性。最后,我们将这种基于计算机视觉的方法应用于复杂氧化物界面的实验电子显微照片和缺陷工程多层石墨烯表面的扫描隧道显微照片中的局部结构状态的无监督检测和分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Advanced Structural and Chemical Imaging
Advanced Structural and Chemical Imaging Medicine-Radiology, Nuclear Medicine and Imaging
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