Score: 0

Advancing atomic electron tomography with neural networks

Published: June 19, 2025 | arXiv ID: 2506.16104v1

By: Juhyeok Lee, Yongsoo Yang

Potential Business Impact:

See tiny atoms in 3D for new materials.

Business Areas:
Nanotechnology Science and Engineering

Accurate determination of three-dimensional (3D) atomic structures is crucial for understanding and controlling the properties of nanomaterials. Atomic electron tomography (AET) offers non-destructive atomic imaging with picometer-level precision, enabling the resolution of defects, interfaces, and strain fields in 3D, as well as the observation of dynamic structural evolution. However, reconstruction artifacts arising from geometric limitations and electron dose constraints can hinder reliable atomic structure determination. Recent progress has integrated deep learning, especially convolutional neural networks, into AET workflows to improve reconstruction fidelity. This review highlights recent advances in neural network-assisted AET, emphasizing its role in overcoming persistent challenges in 3D atomic imaging. By significantly enhancing the accuracy of both surface and bulk structural characterization, these methods are advancing the frontiers of nanoscience and enabling new opportunities in materials research and technology.

Country of Origin
🇰🇷 Korea, Republic of

Page Count
12 pages

Category
Condensed Matter:
Materials Science