An Improved Model Based on YOLO v5s for Intelligent Detection of Center Porosity in Round Bloom
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- Xiao Zi-xuan
- School of Metallurgical Engineering, Anhui University of Technology
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- Zhu Zheng-hai
- School of Metallurgical Engineering, Anhui University of Technology
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- Wei Guang-xu
- School of Metallurgical Engineering, Anhui University of Technology
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- Liang Shang-Dong
- School of Metallurgical Engineering, Anhui University of Technology
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- Yang Cheng-cheng
- School of Metallurgical Engineering, Anhui University of Technology
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- Zheng Xiang
- School of Metallurgical Engineering, Anhui University of Technology
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- Huang Dong-jian
- School of Metallurgical Engineering, Anhui University of Technology
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- He Fei
- School of Metallurgical Engineering, Anhui University of Technology
Abstract
<p>To address the problem that speed and accuracy cannot be taken into account in intelligent detection models of center porosity in round bloom, an improved model for it based on YOLO v5s (the fifth version of You only look once) was determined by establishing a data set of about 10000 images, setting up a contrast experiment and an ablation experiment embedded with Coordinate Attention and Slim-neck modules. The results show that the improved YOLO v5s has good detection performance: mAP@0.5 of the verification set reaches 99.17%, which is respectively 0.2%, 0.1%, 2.9% and 1.7% higher than Faster RCNN, SSD, YOLO v3-Tiny and YOLO v5s; the detection speed is 86 fps, which is respectively 514.2%, 168.8% higher than Faster RCNN, SSD and maintains the speed of the original YOLO v5s while its accuracy is improved. The operation time of a single picture in the testing set is only 0.015 s, which could be implemented the achieve real-time and accurate location of center porosity in round bloom. This study provides a new method for the research of detecting center porosity, which is helpful to the development of intelligent detection of defects in continuous casting billet.</p>
Journal
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- ISIJ International
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ISIJ International 64 (1), 76-83, 2024-01-15
The Iron and Steel Institute of Japan
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Keywords
Details 詳細情報について
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- CRID
- 1390861770527817856
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- ISSN
- 13475460
- 09151559
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- Text Lang
- en
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- Data Source
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- JaLC
- Crossref
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- Abstract License Flag
- Disallowed