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2022
Journal Article
Title
Addressing materials' microstructure diversity using transfer learning
Abstract
Materials' microstructures are signatures of their alloying composition and processing history. Automated, quantitative analyses of microstructural constituents were lately accomplished through deep learning approaches. However, their shortcomings are poor data efficiency and domain generalizability across data sets, inherently conflicting the expenses associated with annotating data through experts, and extensive materials diversity. To tackle both, we propose to apply a sub-class of transfer learning methods called unsupervised domain adaptation (UDA). UDA addresses the task of finding domain-invariant features when supplied with annotated source data and unannotated target data, such that performance on the latter is optimized. Exemplarily, this study is conducted on a lath-shaped bainite segmentation task in complex phase steel micrographs. Domains to bridge are selected to be different metallographic specimen preparations and distinct imaging modalities. We show that a state-of-the-art UDA approach substantially fosters the transfer between the investigated domains, underlining this technique's potential to cope with materials variance.
Author(s)
Müller, Martin
Department of Materials Science, Saarland University; Material Engineering Center Saarland
Britz, Dominik
Department of Materials Science, Saarland University; Material Engineering Center Saarland
Kerfriden, Pierre
Mines ParisTech PSL University, Centre des Matériaux; Cardiff University, School of Engineering, Cardiff, UK