Published on 01 January 2024

Experimental data

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Sadri, Alireza;Petersen, Tim;Terzoudis-Lumsden, Emmanuel;Esser, Bryan;Etheridge, Joanne;Findlay, Scott

Description

By simultaneously achieving high spatial and angular sampling resolution, four dimensional scanning transmission electron microscopy (4D STEM) is enabling new analysis techniques that provide unprecedented insight into the atomic structure of materials. Applying these techniques to scientifically and technologically significant beam-sensitive materials remains challenging because the low doses needed to minimise beam damage lead to noisy data. We demonstrate an unsupervised deep learning model that leverages the continuity and coupling between the probe position and the electron scattering distribution to denoise 4D STEM data: By restricting the network complexity it can learn the geometric flow present but not the noise. Through experimental and simulated case studies, we demonstrate that denoising as a preprocessing step enables 4D STEM analysis techniques to succeed at lower doses, broadening the range of materials that can be studied using these powerful structure characterization techniques.This repository contains the experimental datasets collected for the paper "Unsupervised deep denoising for four-dimensional scanning transmission electron microscopy"

Citations (1)

Mentions (0)

Metrics

Dataset Index

1.2

FAIR Score

81%

Citations

1

Mentions

0

Metrics Over Time

Publication Details

DOI

Publisher

Monash University

Assigned Domain

Subfield

Structural Biology

Field

Biochemistry, Genetics and Molecular Biology

Domain

Life Sciences

Confidence Score

63%

Source

Scholar Data Model

Keywords

Molecular imaging (incl. electron microscopy and neutron diffraction)Machine learning not elsewhere classified

Normalization Factors

FT

30.77

CTw

1.00

MTw

1.00