论文标题
在原子分辨率显微镜中学习图案及其层次结构
Learning Motifs and their Hierarchies in Atomic Resolution Microscopy
论文作者
论文摘要
高通量材料合成和高通量计算的发展,功能材料发现的进展已加速。但是,仍然缺乏互补的健壮且高吞吐量的结构表征框架。机器学习领域中的新方法和工具表明,基于原子级成像的高度自动化的高通量结构框架可以建立结构和宏观属性之间的关键统计联系。在这里,我们将机器学习框架针对这个目标。我们的框架在具有Zernike多项式的图像中捕获了局部结构特征,这显然是噪声,灵活和准确的。然后将这些特征分为易于解释的结构基序,并具有分层主动学习方案,该方案由新型无监督的两阶段放松聚类方案提供动力。我们通过绘制了各种结构缺陷的范围,包括各种2D材料的扫描传输电子显微镜(STEM)图像中的整个结构缺陷,包括点缺陷,线缺陷和平面缺陷,成功地证明了所提出的方法的准确性和效率,并在现有方法上具有大大改善的分离性。我们的技术可以轻松,灵活地应用于具有复杂特征的其他类型的显微镜数据,为自动,多尺度特征分析提供了坚实的基础,并具有很高的真实性。
Progress in functional materials discovery has been accelerated by advances in high throughput materials synthesis and by the development of high-throughput computation. However, a complementary robust and high throughput structural characterization framework is still lacking. New methods and tools in the field of machine learning suggest that a highly automated high-throughput structural characterization framework based on atomic-level imaging can establish the crucial statistical link between structure and macroscopic properties. Here we develop a machine learning framework towards this goal. Our framework captures local structural features in images with Zernike polynomials, which is demonstrably noise-robust, flexible, and accurate. These features are then classified into readily interpretable structural motifs with a hierarchical active learning scheme powered by a novel unsupervised two-stage relaxed clustering scheme. We have successfully demonstrated the accuracy and efficiency of the proposed methodology by mapping a full spectrum of structural defects, including point defects, line defects, and planar defects in scanning transmission electron microscopy (STEM) images of various 2D materials, with greatly improved separability over existing methods. Our techniques can be easily and flexibly applied to other types of microscopy data with complex features, providing a solid foundation for automatic, multiscale feature analysis with high veracity.