An Algorithm for Detecting Surface Defects in Steel Strips Based on an Improved Lightweight Network

Dao Hua Zhan, Han Wang, Xiu Ding Yang, Wei Cheng Ou, Ren Bin Huang, Jian Lin, Kunran Yi, Bei Zhou
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Abstract

In recent years, surface defect detection methods based on deep learning have been widely applied to steel plate surface defect detection. By locating and classifying defects on the surface of steel plates, production efficiency can be improved. However, there is still a conflict between speed and accuracy in the defect detection process. To address this issue, we propose a high-precision, low-latency surface defect detection algorithm called the GhostConv-ECA-YOLOv5 Network (GEA-Net). The GEA-Net model can predict defect categories without compromising classification and detection accuracy. Experimental results show that our proposed improved model has higher performance compared to other comparative models, achieving a 75.6% mAP on the NEU-DET dataset.
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基于改进型轻量级网络的钢带表面缺陷检测算法
近年来,基于深度学习的表面缺陷检测方法被广泛应用于钢板表面缺陷检测。通过对钢板表面缺陷进行定位和分类,可以提高生产效率。然而,在缺陷检测过程中,速度与精度之间仍存在矛盾。针对这一问题,我们提出了一种高精度、低延迟的表面缺陷检测算法,即 GhostConv-ECA-YOLOv5 网络(GEA-Net)。GEA-Net 模型可以在不影响分类和检测精度的情况下预测缺陷类别。实验结果表明,与其他比较模型相比,我们提出的改进模型具有更高的性能,在 NEU-DET 数据集上实现了 75.6% 的 mAP。
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