Complex-Phase Steel Microstructure Segmentation Using UNet: Analysis across Different Magnifications and Steel Types

Author:

Swain Bishal Ranjan1ORCID,Cho Dahee2,Park Joongcheul2,Roh Jae-Seung3,Ko Jaepil1

Affiliation:

1. Department of Computer & AI Convergence Engineering, Kumoh National Institute of Technology, Gumi-si 39177, Republic of Korea

2. Research Institute of Science and Technology, Pohang-si 790660, Republic of Korea

3. School of Materials Science and Engineering, Kumoh National Institute of Technology, Gumi-si 39177, Republic of Korea

Abstract

The quantification of the phase fraction is critical in materials science, bridging the gap between material composition, processing techniques, microstructure, and resultant properties. Traditional methods involving manual annotation are precise but labor-intensive and prone to human inaccuracies. We propose an automated segmentation technique for high-tensile strength alloy steel, where the complexity of microstructures presents considerable challenges. Our method leverages the UNet architecture, originally developed for biomedical image segmentation, and optimizes its performance via careful hyper-parameter selection and data augmentation. We employ Electron Backscatter Diffraction (EBSD) imagery for complex-phase segmentation and utilize a combined loss function to capture both textural and structural characteristics of the microstructures. Additionally, this work is the first to examine the scalability of the model across varying magnifications and types of steel and achieves high accuracy in terms of dice scores demonstrating the adaptability and robustness of the model.

Funder

National Research Foundation of Korea grant, funded by the Korean Government

Publisher

MDPI AG

Subject

General Materials Science

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4. Szeliski, R. (2010). Computer Vision: Algorithms and Applications, Springer. [1st ed.].

5. Calculation of phase fraction in steel microstructure images using random forest classifier;Paul;IET Image Process.,2018

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