MEA-YOLO:基于多尺度边缘增强与注意力融合的钢材缺陷检测
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山东理工大学机械工程学院 淄博 255022

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TN911

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山东省博士后创新项目(SDCX-ZG-202400240)资助


MEA-YOLO: Steel surface defect detection via multi-scale edge enhancement and attention fusion
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School of Mechanical Engineering,Shandong University of Technology,Zibo 255022, China

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    摘要:

    钢材表面缺陷检测对工业质量控制具有重要意义,但复杂纹理与多尺度特征增加了检测难度。为此,提出了一种基于多尺度边缘增强与注意力融合的轻量化检测网络(MEA-YOLO)。所提方法以StarNet替代YOLOv11主干以降低复杂度,设计多尺度边缘信息增强模块结合双域选择机制强化边界与上下文特征,并在检测头中引入空间增强前馈网络提升细粒度识别能力。实验结果表明,所提方法在钢材缺陷检测任务中的mAP50达到74.58%,较YOLOv11n提升2.01%,同时参数量与GFLOPs分别减少14.3%和10.1%。此外,在GC10-DET数据集上的对比实验同样取得了精度与速度的同步提升,进一步证明了模型的跨数据集泛化能力与工业实时检测的适用性。

    Abstract:

    Steel surface defect detection plays a vital role in industrial quality control, yet complex textures and multi-scale characteristics increase the difficulty of accurate detection. To address this, a lightweight detection network named MEA-YOLO, based on multi-scale edge enhancement and attention fusion, is proposed. The approach replaces the YOLOv11 backbone with StarNet to reduce computational complexity, introduces a multi-scale edge information enhancement module combined with a dual-domain selection mechanism to strengthen boundary and contextual features, and incorporates a spatially enhanced feedforward network in the detection head to improve fine-grained recognition. Experimental results show that the proposed method achieves an mAP50 of 74.58% on steel defect detection tasks, outperforming YOLOv11n by 2.01%, while reducing the number of parameters and GFLOPs by 14.3% and 10.1%, respectively. Additional evaluations on the GC10-DET dataset further demonstrate consistent improvements in both accuracy and inference speed, confirming the model′s robustness, generalization capability, and suitability for real-time industrial inspection.

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曹万里,刘强,马圆捷,解峪坤. MEA-YOLO:基于多尺度边缘增强与注意力融合的钢材缺陷检测[J].电子测量技术,2026,49(9):22-31

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  • 在线发布日期: 2026-06-08
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