Low-pass U-Net: a segmentation method to improve strip steel defect detection

被引:9
作者
Liu, Bo [1 ,2 ]
Yang, Bin [2 ]
Zhao, Yelong [2 ]
Li, Jianqiang [2 ]
机构
[1] Massey Univ, Sch Math & Computat Sci, Auckland, New Zealand
[2] Beijing Univ Technol, Fac Informat Technol, Beijing, Peoples R China
基金
中国国家自然科学基金;
关键词
deep learning; semantic segmentation; strip steel; defect detection;
D O I
10.1088/1361-6501/aca34a
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The detection of strip steel surface defects is critical to ensuring the quality of strip steel products. Many deep learning-based methods have been presented and can achieve outstanding performance. However, most of these methods ignore the frequency information among defect areas, which plays an important role in defect detection. This paper proposes a deep learning method to further improve defect segmentation effects based on existing methods, called low-pass U-Net. Since most defects in strip steel are located in high-frequency areas, we implement a low-pass filter before downsampling in the encoder, which prevents aliasing and separates out high-frequency information. The high-frequency feature is transferred into the decoder to assist segmentation. Following previous studies, we propose an adaptive variance Gaussian low-pass layer to generate different filters according to each spatial location of the feature map, with lower computing resource use. Furthermore, to detect defects at significantly different scales, an improved Hypercolumn module is adopted at the end of the decoder to upsample and fuse the feature maps in different resolutions, where Subpixel replaces the bilinear interpolation to refine the upsampled results. The proposed method is validated on practical datasets and achieves considerable performance improvement (with a best Dice coefficient of 0.903), which demonstrates the effectiveness of low-pass U-Net. The introduction of the adaptive variance Gaussian low-pass filter layer results in a 3% increase in Dice coefficient in a comparative inference time, which achieves a balance in performance, inference time and complexity.
引用
收藏
页数:9
相关论文
共 28 条
[1]   Surface Detection of Continuous Casting Slabs Based on Curvelet Transform and Kernel Locality Preserving Projections [J].
Ai Yong-hao ;
Xu Ke .
JOURNAL OF IRON AND STEEL RESEARCH INTERNATIONAL, 2013, 20 (05) :80-86
[2]   Deep Learning-Based Crack Damage Detection Using Convolutional Neural Networks [J].
Cha, Young-Jin ;
Choi, Wooram ;
Buyukozturk, Oral .
COMPUTER-AIDED CIVIL AND INFRASTRUCTURE ENGINEERING, 2017, 32 (05) :361-378
[3]   Detection of Pinholes in Steel Slabs Using Gabor Filter Combination and Morphological Features [J].
Chol, Doo-chul ;
Jeon, Yong-Ju ;
Kim, Seung Hun ;
Moon, Seokbae ;
Yun, Jong Pil ;
Kim, Sang Woo .
ISIJ INTERNATIONAL, 2017, 57 (06) :1045-1053
[4]  
Djukic D., 2007, Image Vis Comput, P158
[5]   Automatic Defect Segmentation in X-Ray Images Based on Deep Learning [J].
Du, Wangzhe ;
Shen, Hongyao ;
Fu, Jianzhong .
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2021, 68 (12) :12912-12920
[6]   A deep-learning-based approach for fast and robust steel surface defects classification [J].
Fu, Guizhong ;
Sun, Peize ;
Zhu, Wenbin ;
Yang, Jiangxin ;
Cao, Yanlong ;
Yang, Michael Ying ;
Cao, Yanpeng .
OPTICS AND LASERS IN ENGINEERING, 2019, 121 :397-405
[7]  
Hariharan B, 2015, PROC CVPR IEEE, P447, DOI 10.1109/CVPR.2015.7298642
[8]   Deep Residual Learning for Image Recognition [J].
He, Kaiming ;
Zhang, Xiangyu ;
Ren, Shaoqing ;
Sun, Jian .
2016 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2016, :770-778
[9]  
Liu LY, 2021, Arxiv, DOI arXiv:1908.03265
[10]  
Long J., 2015, P IEEE C COMP VIS PA, P3431