直近一年間の累計
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ID 115375
著者
Zhang, Jiaqiao Tokushima University|Nantong University
Ni, Hongjun Nantong University
キーワード
steel strip
defect detection
deep learning
neural network
surface technology
資料タイプ
学術雑誌論文
抄録
The steel strip is one of the essential raw materials in the machinery industry. Besides, the defects on the surface of the steel strip directly determine its performance. To achieve rapid and effective detection of surface defects on steel strips, a CP-YOLOv3-dense (classification priority YOLOv3 DenseNet) deep convolutional neural network was proposed in the present study. The model used YOLOv3 as the basic network, implemented priority classification on the target images, and then replaced the two residual network modules in the YOLOv3 network with two dense network modules. Therefore, the model can receive the multi-layer convolution features output by the dense connection block before making predictions, consequently enhancing the reuse and fusion of features. Finally, the six kinds of surface defects of steel strips were detected by the improved network model, and the results were compared with other deep learning networks. According to the results, the recognition precision of the CP-YOLOv3-dense network model is 85.7%, the recall rate is 82.3%, the mean average precision is 82.73%, and the detection time of each image is 9.68ms. The mean average precision is 6.65% higher than the original YOLO network and 10.6% higher than the DNN network. In addition, the detection speed is 1.77 times faster than the Faster RCNN network. The proposed CP-YOLOv3-dense network has stronger robustness and higher detection precision, which can be used for the identification of various steel strip surface defects.
掲載誌名
Ironmaking & Steelmaking
ISSN
03019233
17432812
cat書誌ID
AA0068431X
出版者
Institute of Materials, Minerals and Mining|Taylor & Francis
48
5
開始ページ
547
終了ページ
558
発行日
2020-09-15
備考
This is an Accepted Manuscript of an article published by Taylor & Francis in Ironmaking & Steelmaking on 15/09/2020, available online: http://www.tandfonline.com/10.1080/03019233.2020.1816806.
EDB ID
出版社版DOI
出版社版URL
フルテキストファイル
言語
eng
著者版フラグ
著者版
部局
理工学系