Engineering and Technologynpj Computational Materials
Defect detection in atomic-resolution images via unsupervised learning with translational invariance
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Explore groundbreaking research by Yueming Guo and colleagues as they unveil a novel unsupervised machine learning technique for defect detection in complex materials using scanning transmission electron microscopy. This method leverages one-class support vector machines to classify defects, eliminating the need for human-labeled data.
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