AEDN-YOLO:高效的带钢表面缺陷单级检测网络

Mingjun Wei, Beilong Chen, Jianuo Liu, Na Yuan, Jinyun Liu, Zhanlin Ji
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引用次数: 0

摘要

钢铁表面缺陷检测是工业生产和质量控制的关键任务之一。利用深度学习算法进行缺陷检测的研究已经取得了可喜的成果。然而,由于钢带表面缺陷图像背景复杂、缺陷大小差异大、缺陷类型多样,现有的深度学习算法难以实现精确检测。为解决这些难题,本文提出了一种名为 AEDN-YOLO 的高效检测模型。首先,设计了自适应特征提取(AFE)模块,并将其嵌入到 C2f 中,以更好地捕捉不规则形状的物体。其次,在骨干网络的底层加入三重注意模块,以增强模型准确定位缺陷特征的能力。此外,用 GSConv 代替颈部网络中的标准卷积,不仅可以加速特征融合以提高检测速度,还可以扩大模型的感受野以提高检测精度。最后,增加一个小目标检测层,以增强对微小缺陷的检测能力。该模型在 NEU-DET 和 GC10-DET 数据集上的 mAP 分别达到了 81.7% 和 72.7%,检测速度为 72.1 FPS。与主流缺陷检测算法相比,所提出的算法能准确、高效地检测出钢铁表面缺陷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AEDN-YOLO: an efficient one-stage detection network for strip steel surface defects
Steel surface defect detection is one of the key tasks in industrial production and quality control. Research on defect detection using deep learning algorithms has shown promising results. However, due to the complex backgrounds, large differences in defect sizes, and diverse defect types present in steel strip surface defect images, existing deep learning algorithms struggle to achieve precise detection. To address these challenges, this paper proposes an efficient detection model named AEDN-YOLO. Firstly, an adaptive feature extraction (AFE) module is designed, embedded into C2f to better capture irregularly shaped objects. Secondly, the Triplet Attention module is incorporated into the bottom layer of the backbone network to enhance the model's ability to locate defect features accurately. Additionally, replace the standard convolution in the neck network with GSConv, which not only accelerates feature fusion to improve detection speed but also enlarges the model's receptive field to enhance detection accuracy. Finally, add a small target detection layer to enhance the detection capability for tiny defects. The model achieves mAP of 81.7% and 72.7% on the NEU-DET and GC10-DET datasets, respectively, with a detection speed of 72.1 FPS. Compared to mainstream defect detection algorithms, the proposed algorithm enables accurate and efficient detection of steel surface defects.
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