Materials property mapping from atomic scale imaging via machine learning based sub-pixel processing

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Abstract

Direct visualization of the atomic structure in scanning transmission electron microscopy has led to a comprehensive understanding of the structure-property relationship. However, a reliable characterization of the structural transition on a picometric scale is still challenging because of the limited spatial resolution and noise. Here, we demonstrate that the primary segmentation of atomic signals from background, succeeded by a denoising process, enables structural analysis in a sub-pixel accuracy. Poisson noise is eliminated using the block matching and three-dimensional filtering with Anscombe transformation, and remnant noise is removed via morphological filtering, which results in an increase of peak signal-to-noise ratio from 7 to 11 dB. Extracting the centroids of atomic columns segmented via K-means clustering, an unsupervised method for robust thresholding, achieves an average error of less than 0.7 pixel, which corresponds to 4.6 pm. This study will contribute to a profound understanding of the local structural dynamics in crystal structures.

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Han, J., Go, K. J., Jang, J., Yang, S., & Choi, S. Y. (2022). Materials property mapping from atomic scale imaging via machine learning based sub-pixel processing. Npj Computational Materials, 8(1). https://doi.org/10.1038/s41524-022-00880-x

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