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Compact representations of microstructure images using triplet networks

Michiel Larmuseau, Michael Sluydts, Koenraad Theuwissen, Lode Duprez, Tom Dhaene, Stefaan Cottenier

2020npj Computational Materials28 citationsDOIOpen Access PDF

Abstract

Abstract The microstructure of a material, typically characterized through a set of microscopy images of two-dimensional cross-sections, is a valuable source of information about the material and its properties. Every pixel of the image is a degree of freedom causing the dimensionality of the information space to be extremely high. This makes it difficult to recognize and extract all relevant information from the images. Human experts circumvent this by manually creating a lower-dimensional representation of the microstructure. However, the question of how a microstructure image can be best represented remains open. From the field of deep learning, we present triplet networks as a method to build highly compact representations of the microstructure, condensing the relevant information into a much smaller number of dimensions. We demonstrate that these representations can be created even with a limited amount of example images, and that they are able to distinguish between visually very similar microstructures. We discuss the interpretability and generalization of the representations. Having compact microstructure representations, it becomes easier to establish processing–structure–property links that are key to rational materials design.

Topics & Concepts

InterpretabilityRepresentation (politics)Computer scienceMicrostructureGeneralizationCurse of dimensionalityPixelArtificial intelligenceSet (abstract data type)Computer visionMathematicsMaterials scienceMathematical analysisLawProgramming languagePoliticsMetallurgyPolitical scienceMachine Learning in Materials ScienceCell Image Analysis TechniquesImage Processing Techniques and Applications
Compact representations of microstructure images using triplet networks | Litcius