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Research on Intelligent Identification and Grading of Nonmetallic Inclusions in Steels Based on Deep Learning

Non-metallic inclusions are unavoidable defects in steel, and their type, quantity, size, and distribution have a great impact on the quality of steel. At present, non-metallic inclusions are mainly detected manually, which features high work intensity, low efficiency, proneness to misjudgment, and...

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Autores principales: Zhu, Xiaolin, Wan, Wenhai, Qian, Ling, Cai, Yu, Chen, Xiang, Zhang, Pingze, Huang, Guanxi, Liu, Bo, Yao, Qiang, Li, Shaoyuan, Yao, Zhengjun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9959681/
https://www.ncbi.nlm.nih.gov/pubmed/36838182
http://dx.doi.org/10.3390/mi14020482
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author Zhu, Xiaolin
Wan, Wenhai
Qian, Ling
Cai, Yu
Chen, Xiang
Zhang, Pingze
Huang, Guanxi
Liu, Bo
Yao, Qiang
Li, Shaoyuan
Yao, Zhengjun
author_facet Zhu, Xiaolin
Wan, Wenhai
Qian, Ling
Cai, Yu
Chen, Xiang
Zhang, Pingze
Huang, Guanxi
Liu, Bo
Yao, Qiang
Li, Shaoyuan
Yao, Zhengjun
author_sort Zhu, Xiaolin
collection PubMed
description Non-metallic inclusions are unavoidable defects in steel, and their type, quantity, size, and distribution have a great impact on the quality of steel. At present, non-metallic inclusions are mainly detected manually, which features high work intensity, low efficiency, proneness to misjudgment, and low consistency of results. In this paper, based on deep neural network algorithm, a small number of manually labeled, low-resolution metallographic images collected by optical microscopes are used as the dataset for intelligent boundary extraction, classification, and rating of non-metallic inclusions. The training datasets are cropped into those containing only a single non-metallic inclusion to reduce the interference of background information and improve the accuracy. To deal with the unbalanced distribution of each category of inclusions, the reweighting cross entropy loss and focal loss are respectively used as the category prediction loss and boundary prediction loss of the DeepLabv3+ semantic segmentation model. Finally, the length and width of the minimum enclosing rectangle of the segmented inclusions are measured to calculate the grade of inclusions. The resulting accuracy is 90.34% in segmentation and 90.35% in classification. As is verified, the model-based rating results are consistent with those of manual labeling. For a single sample, the detection time is reduced from 30 min to 15 s, significantly improving the detection efficiency.
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spelling pubmed-99596812023-02-26 Research on Intelligent Identification and Grading of Nonmetallic Inclusions in Steels Based on Deep Learning Zhu, Xiaolin Wan, Wenhai Qian, Ling Cai, Yu Chen, Xiang Zhang, Pingze Huang, Guanxi Liu, Bo Yao, Qiang Li, Shaoyuan Yao, Zhengjun Micromachines (Basel) Article Non-metallic inclusions are unavoidable defects in steel, and their type, quantity, size, and distribution have a great impact on the quality of steel. At present, non-metallic inclusions are mainly detected manually, which features high work intensity, low efficiency, proneness to misjudgment, and low consistency of results. In this paper, based on deep neural network algorithm, a small number of manually labeled, low-resolution metallographic images collected by optical microscopes are used as the dataset for intelligent boundary extraction, classification, and rating of non-metallic inclusions. The training datasets are cropped into those containing only a single non-metallic inclusion to reduce the interference of background information and improve the accuracy. To deal with the unbalanced distribution of each category of inclusions, the reweighting cross entropy loss and focal loss are respectively used as the category prediction loss and boundary prediction loss of the DeepLabv3+ semantic segmentation model. Finally, the length and width of the minimum enclosing rectangle of the segmented inclusions are measured to calculate the grade of inclusions. The resulting accuracy is 90.34% in segmentation and 90.35% in classification. As is verified, the model-based rating results are consistent with those of manual labeling. For a single sample, the detection time is reduced from 30 min to 15 s, significantly improving the detection efficiency. MDPI 2023-02-19 /pmc/articles/PMC9959681/ /pubmed/36838182 http://dx.doi.org/10.3390/mi14020482 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Zhu, Xiaolin
Wan, Wenhai
Qian, Ling
Cai, Yu
Chen, Xiang
Zhang, Pingze
Huang, Guanxi
Liu, Bo
Yao, Qiang
Li, Shaoyuan
Yao, Zhengjun
Research on Intelligent Identification and Grading of Nonmetallic Inclusions in Steels Based on Deep Learning
title Research on Intelligent Identification and Grading of Nonmetallic Inclusions in Steels Based on Deep Learning
title_full Research on Intelligent Identification and Grading of Nonmetallic Inclusions in Steels Based on Deep Learning
title_fullStr Research on Intelligent Identification and Grading of Nonmetallic Inclusions in Steels Based on Deep Learning
title_full_unstemmed Research on Intelligent Identification and Grading of Nonmetallic Inclusions in Steels Based on Deep Learning
title_short Research on Intelligent Identification and Grading of Nonmetallic Inclusions in Steels Based on Deep Learning
title_sort research on intelligent identification and grading of nonmetallic inclusions in steels based on deep learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9959681/
https://www.ncbi.nlm.nih.gov/pubmed/36838182
http://dx.doi.org/10.3390/mi14020482
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