Image-Based Iron Slag Segmentation via Graph Convolutional Networks

Slagging-off (i.e., slag removal) is an important preprocessing operation of steel-making to improve the purity of iron. Current manual-operated slag removal schemes are inefficient and labor-intensive. Automatic slagging-off is desirable but challenging as the reliable recognition of iron and slag...

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Main Authors: Wang Long, Zheng Junfeng, Yu Hong, Ding Meng, Li Jiangyun
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/6691117
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spelling doaj-3dfb9be9872946d4abf2f737a26fc17e2021-02-15T12:52:52ZengHindawi-WileyComplexity1076-27871099-05262021-01-01202110.1155/2021/66911176691117Image-Based Iron Slag Segmentation via Graph Convolutional NetworksWang Long0Zheng Junfeng1Yu Hong2Ding Meng3Li Jiangyun4State Key Laboratory of Advanced Special Steel & Shanghai Key Laboratory of Advanced Ferrometallurgy & School of Materials Science and Engineering, Shanghai University, Shanghai, ChinaSchool of Automation & Electrical Engineering, University of Science and Technology Beijing, Beijing 100083, ChinaSchool of Automation & Electrical Engineering, University of Science and Technology Beijing, Beijing 100083, ChinaScoop Medical, Inc., Houston 77007, TX, USASchool of Automation & Electrical Engineering, University of Science and Technology Beijing, Beijing 100083, ChinaSlagging-off (i.e., slag removal) is an important preprocessing operation of steel-making to improve the purity of iron. Current manual-operated slag removal schemes are inefficient and labor-intensive. Automatic slagging-off is desirable but challenging as the reliable recognition of iron and slag is difficult. This work focuses on realizing an efficient and accurate recognition algorithm of iron and slag, which is conducive to realize automatic slagging-off operation. Motivated by the recent success of deep learning techniques in smart manufacturing, we introduce deep learning methods to this field for the first time. The monotonous gray value of industry images, poor image quality, and nonrigid feature of iron and slag challenge the existing fully convolutional networks (FCNs). To this end, we propose a novel spatial and feature graph convolutional network (SFGCN) module. SFGCN module can be easily inserted in FCNs to improve the reasoning ability of global contextual information, which is helpful to enhance the segmentation accuracy of small objects and isolated areas. To verify the validity of the SFGCN module, we create an industrial dataset and conduct extensive experiments. Finally, the results show that our SFGCN module brings a consistent performance boost for a wide range of FCNs. Moreover, by adopting a lightweight network as backbone, our method achieves real-time iron and slag segmentation. In the future work, we will dedicate our efforts to the weakly supervised learning for quick annotation of big data stream to improve the generalization ability of current models.http://dx.doi.org/10.1155/2021/6691117
collection DOAJ
language English
format Article
sources DOAJ
author Wang Long
Zheng Junfeng
Yu Hong
Ding Meng
Li Jiangyun
spellingShingle Wang Long
Zheng Junfeng
Yu Hong
Ding Meng
Li Jiangyun
Image-Based Iron Slag Segmentation via Graph Convolutional Networks
Complexity
author_facet Wang Long
Zheng Junfeng
Yu Hong
Ding Meng
Li Jiangyun
author_sort Wang Long
title Image-Based Iron Slag Segmentation via Graph Convolutional Networks
title_short Image-Based Iron Slag Segmentation via Graph Convolutional Networks
title_full Image-Based Iron Slag Segmentation via Graph Convolutional Networks
title_fullStr Image-Based Iron Slag Segmentation via Graph Convolutional Networks
title_full_unstemmed Image-Based Iron Slag Segmentation via Graph Convolutional Networks
title_sort image-based iron slag segmentation via graph convolutional networks
publisher Hindawi-Wiley
series Complexity
issn 1076-2787
1099-0526
publishDate 2021-01-01
description Slagging-off (i.e., slag removal) is an important preprocessing operation of steel-making to improve the purity of iron. Current manual-operated slag removal schemes are inefficient and labor-intensive. Automatic slagging-off is desirable but challenging as the reliable recognition of iron and slag is difficult. This work focuses on realizing an efficient and accurate recognition algorithm of iron and slag, which is conducive to realize automatic slagging-off operation. Motivated by the recent success of deep learning techniques in smart manufacturing, we introduce deep learning methods to this field for the first time. The monotonous gray value of industry images, poor image quality, and nonrigid feature of iron and slag challenge the existing fully convolutional networks (FCNs). To this end, we propose a novel spatial and feature graph convolutional network (SFGCN) module. SFGCN module can be easily inserted in FCNs to improve the reasoning ability of global contextual information, which is helpful to enhance the segmentation accuracy of small objects and isolated areas. To verify the validity of the SFGCN module, we create an industrial dataset and conduct extensive experiments. Finally, the results show that our SFGCN module brings a consistent performance boost for a wide range of FCNs. Moreover, by adopting a lightweight network as backbone, our method achieves real-time iron and slag segmentation. In the future work, we will dedicate our efforts to the weakly supervised learning for quick annotation of big data stream to improve the generalization ability of current models.
url http://dx.doi.org/10.1155/2021/6691117
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AT zhengjunfeng imagebasedironslagsegmentationviagraphconvolutionalnetworks
AT yuhong imagebasedironslagsegmentationviagraphconvolutionalnetworks
AT dingmeng imagebasedironslagsegmentationviagraphconvolutionalnetworks
AT lijiangyun imagebasedironslagsegmentationviagraphconvolutionalnetworks
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