2021
DOI: 10.48550/arxiv.2105.09729
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The Adoption of Image-Driven Machine Learning for Microstructure Characterization and Materials Design: A Perspective

Abstract: The recent surge in the adoption of machine learning techniques for materials design, discovery, and characterization has resulted in an increased interest and application of Image Driven Machine Learning (IDML) approaches. In this work, we review the application of IDML to the field of materials characterization. A hierarchy of six action steps is defined which compartmentalizes a problem statement into well-defined modules. The studies reviewed in this work are analyzed through the decisions adopted by them … Show more

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