Correction of Electron Back-scattered Diffraction datasets using an evolutionary algorithm
Florian Strub, Marie-Agathe Charpagne, Tresa M. Pollock

TL;DR
This paper introduces an unsupervised evolutionary algorithm-based method to correct distortions in EBSD datasets, significantly improving phase differentiation in materials science imaging.
Contribution
The novel approach uses CMA-ES to automatically correct EBSD distortions without human input, applicable to large datasets and various materials.
Findings
Effective distortion correction in multiphase materials
Improved phase differentiation in EBSD maps
Applicable to datasets with features as small as 1 μm
Abstract
In materials science and particularly electron microscopy, Electron Back-scatter Diffraction (EBSD) is a common and powerful mapping technique for collecting local crystallographic data at the sub-micron scale. The quality of the reconstruction of the maps is critical to study the spatial distribution of phases and crystallographic orientation relationships between phases, a key interest in materials science. However, EBSD data is known to suffer from distortions that arise from several instrument and detector artifacts. In this paper, we present an unsupervised method that corrects those distortions, and enables or enhances phase differentiation in EBSD data. The method uses a segmented electron image of the phases of interest (laths, precipitates, voids, inclusions) gathered using detectors that generate less distorted data, of the same area than the EBSD map, and then searches for…
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Taxonomy
TopicsX-ray Diffraction in Crystallography · Advanced Electron Microscopy Techniques and Applications · Microstructure and mechanical properties
