An automated and unbiased grain segmentation method based on directional reflectance microscopy
Identifying individual grains from sectioned polycrystalline metals is a foundational task of microstructure analysis. However, traditional grain segmentation methods applied to optical micrographs may suffer from the lack of optical contrast between grains and require the manual selection of adjust...
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sg-ntu-dr.10356-1605372022-07-26T06:58:53Z An automated and unbiased grain segmentation method based on directional reflectance microscopy Wittwer, Mallory Gaskey, Bernard Seita, Matteo School of Mechanical and Aerospace Engineering School of Materials Science and Engineering Engineering::Materials Grain Segmentation Directional Reflectance Microscopy Identifying individual grains from sectioned polycrystalline metals is a foundational task of microstructure analysis. However, traditional grain segmentation methods applied to optical micrographs may suffer from the lack of optical contrast between grains and require the manual selection of adjustable parameters to achieve acceptable segmentation results. We propose an alternative method which takes advantage of a multi-angle optical microscopy technique termed directional reflectance microscopy. By combining dimensionality reduction, similar-dissimilar classification, and multi-region merging of surface directional reflectance, our method enables fully automated and reliable grain segmentation of polycrystalline surfaces. We apply our method to metal samples with different crystal structures and grain orientation distributions. Our results suggest applicability of the method to a wide range of microstructures, enabling a more objective, robust, and universal characterization of polycrystalline metals. Ministry of Education (MOE) Published version This research was funded by the Ministry of Education of Singapore, Official Number: MOE2017-T2-2119. 2022-07-26T06:58:53Z 2022-07-26T06:58:53Z 2021 Journal Article Wittwer, M., Gaskey, B. & Seita, M. (2021). An automated and unbiased grain segmentation method based on directional reflectance microscopy. Materials Characterization, 174, 110978-. https://dx.doi.org/10.1016/j.matchar.2021.110978 1044-5803 https://hdl.handle.net/10356/160537 10.1016/j.matchar.2021.110978 2-s2.0-85101396534 174 110978 en MOE2017-T2-2-119 Materials Characterization © 2021 The Author(s). Published by Elsevier Inc. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/). application/pdf |
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Engineering::Materials Grain Segmentation Directional Reflectance Microscopy Wittwer, Mallory Gaskey, Bernard Seita, Matteo An automated and unbiased grain segmentation method based on directional reflectance microscopy |
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Identifying individual grains from sectioned polycrystalline metals is a foundational task of microstructure analysis. However, traditional grain segmentation methods applied to optical micrographs may suffer from the lack of optical contrast between grains and require the manual selection of adjustable parameters to achieve acceptable segmentation results. We propose an alternative method which takes advantage of a multi-angle optical microscopy technique termed directional reflectance microscopy. By combining dimensionality reduction, similar-dissimilar classification, and multi-region merging of surface directional reflectance, our method enables fully automated and reliable grain segmentation of polycrystalline surfaces. We apply our method to metal samples with different crystal structures and grain orientation distributions. Our results suggest applicability of the method to a wide range of microstructures, enabling a more objective, robust, and universal characterization of polycrystalline metals. |
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School of Mechanical and Aerospace Engineering |
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School of Mechanical and Aerospace Engineering Wittwer, Mallory Gaskey, Bernard Seita, Matteo |
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Article |
author |
Wittwer, Mallory Gaskey, Bernard Seita, Matteo |
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Wittwer, Mallory |
title |
An automated and unbiased grain segmentation method based on directional reflectance microscopy |
title_short |
An automated and unbiased grain segmentation method based on directional reflectance microscopy |
title_full |
An automated and unbiased grain segmentation method based on directional reflectance microscopy |
title_fullStr |
An automated and unbiased grain segmentation method based on directional reflectance microscopy |
title_full_unstemmed |
An automated and unbiased grain segmentation method based on directional reflectance microscopy |
title_sort |
automated and unbiased grain segmentation method based on directional reflectance microscopy |
publishDate |
2022 |
url |
https://hdl.handle.net/10356/160537 |
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1739837447298088960 |