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

IF 1.1 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Meixia Fu, Jiansheng Wu, Qu Wang, Lei Sun, Zhangchao Ma, Chaoyi Zhang, Wanqing Guan, Wei Li, Na Chen, Danshi Wang, Jianquan Wang
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引用次数: 3

Abstract

Next-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.

Abstract Image

基于区域的可变形卷积和注意力融合的全卷积网络用于工业物联网中的钢材表面缺陷检测
下一代6G网络将全面推动工业物联网的发展。钢材表面缺陷检测作为工业物联网的重要应用,近年来越来越受到军工、航空等领域的关注,这与工业生产产品的质量密切相关。然而,许多典型的基于卷积神经网络的方法对边界不清楚的问题不敏感。在本文中,作者开发了一种具有可变形卷积和注意力融合的基于区域的全卷积网络,以自适应地学习钢表面缺陷检测的显著特征。具体而言,可变形卷积被应用于选择性地取代基于区域的全卷积网络主干中的标准卷积,该网络在缺陷边界不清楚的场景中表现显著。此外,在区域建议网络中使用了卷积块注意力模块,进一步提高了检测精度。所提出的架构在两个流行的钢缺陷检测基准上进行了验证,包括NEU-DET和GC10-DET,通过丰富的实验可以有效地呈现钢表面缺陷检测的性能。两个数据集的平均精度分别达到80.9%和66.2%。NEU-DET上缺陷裂纹、夹杂物、补片、麻面、轧屑和划痕的平均精度依次为58.2%、82.3%、95.7%、85.6%、75.9%和87.9%。
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来源期刊
IET Signal Processing
IET Signal Processing 工程技术-工程:电子与电气
CiteScore
3.80
自引率
5.90%
发文量
83
审稿时长
9.5 months
期刊介绍: IET Signal Processing publishes research on a diverse range of signal processing and machine learning topics, covering a variety of applications, disciplines, modalities, and techniques in detection, estimation, inference, and classification problems. The research published includes advances in algorithm design for the analysis of single and high-multi-dimensional data, sparsity, linear and non-linear systems, recursive and non-recursive digital filters and multi-rate filter banks, as well a range of topics that span from sensor array processing, deep convolutional neural network based approaches to the application of chaos theory, and far more. Topics covered by scope include, but are not limited to: advances in single and multi-dimensional filter design and implementation linear and nonlinear, fixed and adaptive digital filters and multirate filter banks statistical signal processing techniques and analysis classical, parametric and higher order spectral analysis signal transformation and compression techniques, including time-frequency analysis system modelling and adaptive identification techniques machine learning based approaches to signal processing Bayesian methods for signal processing, including Monte-Carlo Markov-chain and particle filtering techniques theory and application of blind and semi-blind signal separation techniques signal processing techniques for analysis, enhancement, coding, synthesis and recognition of speech signals direction-finding and beamforming techniques for audio and electromagnetic signals analysis techniques for biomedical signals baseband signal processing techniques for transmission and reception of communication signals signal processing techniques for data hiding and audio watermarking sparse signal processing and compressive sensing Special Issue Call for Papers: Intelligent Deep Fuzzy Model for Signal Processing - https://digital-library.theiet.org/files/IET_SPR_CFP_IDFMSP.pdf
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