Abstract
This study considers the issue of automated segmentation of scanning transmission electron microscopy (STEM) datasets using unsupervised machine learning approaches. To this end, a systematic comparison of two clustering workflows that had been established in previous literature was performed on two distinct material systems—an experimentally acquired Co2FeSi Heusler alloy and a simulated Au-matrix and Al2Cu precipitate. The cluster outputs were evaluated using a variety of unsupervised clustering metrics measuring separation and cohesion. It was found that the cluster output of a variational autoencoder (VAE) performed better compared to a more conventional latent transformation via Uniform Manifold Approximation & Projection (UMAP) on 4D-STEM data alone. However, the UMAP workflow applied to merged 4D-STEM and STEM-energy dispersive x-ray (STEM-EDX) data produced the best cluster output overall, indicating that the correlated information provides beneficial constraints to the latent space. A potential general workflow for analyzing merged datasets to identify structural-composition changes across different material systems is proposed.
Original language | English |
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Article number | 010901 |
Journal | APL Materials |
Volume | 13 |
Issue number | 1 |
DOIs | |
Publication status | Published - 1 Jan 2025 |
Bibliographical note
Publisher Copyright:© 2025 Author(s).