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Elizabeth A. Holm

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Microstructure Generation via Generative Adversarial Network for Heterogeneous, Topologically Complex 3D Materials

Jun 22, 2020
Tim Hsu, William K. Epting, Hokon Kim, Harry W. Abernathy, Gregory A. Hackett, Anthony D. Rollett, Paul A. Salvador, Elizabeth A. Holm

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Overview: Computer vision and machine learning for microstructural characterization and analysis

May 28, 2020
Elizabeth A. Holm, Ryan Cohn, Nan Gao, Andrew R. Kitahara, Thomas P. Matson, Bo Lei, Srujana Rao Yarasi

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High throughput quantitative metallography for complex microstructures using deep learning: A case study in ultrahigh carbon steel

May 04, 2018
Brian L. DeCost, Toby Francis, Elizabeth A. Holm

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A comparative study of feature selection methods for stress hotspot classification in materials

Apr 19, 2018
Ankita Mangal, Elizabeth A. Holm

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Building Data-driven Models with Microstructural Images: Generalization and Interpretability

Nov 01, 2017
Julia Ling, Maxwell Hutchinson, Erin Antono, Brian DeCost, Elizabeth A. Holm, Bryce Meredig

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