Region‐based fully convolutional networks with deformable convolution and attention fusion for steel surface defect detection in industrial Internet of Things

Author:

Fu Meixia1ORCID,Wu Jiansheng1ORCID,Wang Qu1,Sun Lei1ORCID,Ma Zhangchao1,Zhang Chaoyi1,Guan Wanqing2,Li Wei2,Chen Na3,Wang Danshi4,Wang Jianquan1

Affiliation:

1. School of Automation and Electrical Engineering Institute of Industrial Internet University of Science and Technology Beijing Beijing China

2. School of Science and Communication Engineering University of Science and Technology Beijing Beijing China

3. The Graduate School of Science and Technology Nara Institute of Science and Technology Ikoma Japan

4. State Key Laboratory of Information Photonics and Optical Communications Beijing University of Posts and Telecommunications Beijing China

Abstract

AbstractNext‐generation 6G networks will fully drive the development of the industrial Internet of Things. Steel surface defect detection as an important application in industrial Internet of Things has recently received increasing attention from the military industry, the aviation industry and other fields, which is closely related to the quality of industrial production products. However, many typical convolutional neural networks‐based methods are insensitive to the problem of unclear boundaries. In this article, the authors develop a region‐based fully convolutional networks with deformable convolution and attention fusion to adaptively learn salient features for steel surface defect detection. Specifically, deformable convolution is applied into selectively replace the standard convolution in the backbone of the region‐based fully convolutional networks, which performs significantly in scenarios with unclear defect boundaries. Moreover, convolutional block attention module is utilised in region proposal network to further enhance detection accuracy. The proposed architecture is demonstrated on two popular steel defect detection benchmarks, including NEU‐DET and GC10‐DET, which can effectively present the performance of steel surface defect detection by abundant experiments. The mean average precision on two datasets reaches 80.9% and 66.2%. The average precision of defect crazing, inclusion, patches, pitted‐surface, rolled‐in scale and scratches on NEU‐DET is 58.2%, 82.3%, 95.7%, 85.6%, 75.9%, and 87.9% respectively.

Publisher

Institution of Engineering and Technology (IET)

Subject

Electrical and Electronic Engineering,Signal Processing

Cited by 8 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. MCF: Multi-scale Context Fusion for Strip Steel Surface Detection;2024 International Joint Conference on Neural Networks (IJCNN);2024-06-30

2. Rtsds:a real-time and efficient method for detecting surface defects in strip steel;Journal of Real-Time Image Processing;2024-06-19

3. Thermal fault diagnosis of complex electrical equipment based on infrared image recognition;Scientific Reports;2024-03-06

4. High-Precision Surface Crack Detection for Rolling Steel Production Equipment in ICPS;IEEE Internet of Things Journal;2024-02-01

5. MFAM-Net:A Surface Defect Detection Network for Strip Steel via Multiscale Feature Fusion and Attention Mechanism;2023 International Conference on New Trends in Computational Intelligence (NTCI);2023-11-03

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