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Artefact removal from micrographs with deep learning based inpainting

Authors :
Isaac Squires
Amir Dahari
Samuel J. Cooper
Steve Kench
Source :
Digital Discovery. 2:316-326
Publication Year :
2023
Publisher :
Royal Society of Chemistry (RSC), 2023.

Abstract

Imaging is critical to the characterisation of materials. However, even with careful sample preparation and microscope calibration, imaging techniques can contain defects and unwanted artefacts. This is particularly problematic for applications where the micrograph is to be used for simulation or feature analysis, as artefacts are likely to lead to inaccurate results. Microstructural inpainting is a method to alleviate this problem by replacing artefacts with synthetic microstructure with matching boundaries. In this paper we introduce two methods that use generative adversarial networks to generate contiguous inpainted regions of arbitrary shape and size by learning the microstructural distribution from the unoccluded data. We find that one benefits from high speed and simplicity, whilst the other gives smoother boundaries at the inpainting border. We also describe an open-access graphical user interface that allows users to utilise these machine learning methods in a ‘no-code’ environment.

Details

ISSN :
2635098X
Volume :
2
Database :
OpenAIRE
Journal :
Digital Discovery
Accession number :
edsair.doi.dedup.....e9b110c81f1e4e4909de0aa7fcaaa88b
Full Text :
https://doi.org/10.1039/d2dd00120a