基于尺度多样化改进的钢材表面缺陷检测算法
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An Improved Steel Surface Defect Detection Algorithm Based on Multi-Scale Features Algorithm Based on Dual-Feature Fusion
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    :目的 钢材表面缺陷一直是工业生产和安全的难题之一,为解决钢材表面缺陷检测精度低,容易出现误检和 漏检的问题,提出了一种基于多尺度特征的钢材表面缺陷检测算法,命名为 GPDN-Yolov5。 方法 首先,针对部分 缺陷容易与背景相混淆的问题,通过在骨干网络中加入改进后的坐标注意力机制(GJ-CA),加强对缺陷特征的关 注。 其次,针对钢材表面缺陷具有尺寸大小不一的特点,引入多尺度卷积块 PKI Block,加强了网络的多尺度特征 提取能力。 然后,采用 Dynamic head 检测头作为改进算法的检测头,增强了检测头的表达能力和对多尺度特征的 检测能力。 随后,将 NWD(Normalized Wasserstein Distance)损失函数与 WIOU 损失函数加权融合来替代 CIOU 损 失函数,解决了原模型专注于简单样本和对低像素缺陷位置偏差敏感的问题。 结果 GPDN-Yolov5 算法在 NEUDET 数据集中的平均精度均值达到 80. 5%,比 Yolov5 算法提升了 6. 9%,检测结果优于其他经典检测模型。 同时, 该算法在 GC10-DET 数据集上的平均精度比 Yolov5 提升了 4. 7%,这证明了算法在不同数据集上检测效果均有提 升。 结论 GPDN-Yolov5 算法在精度上明显提高,对钢材表面缺陷检测具有一定价值。

    Abstract:

    Objective Surface defects in steel remain a critical challenge for industrial production and safety. To address the problems of low accuracy false detection and missed detection in steel surface defect detection a steel surface defect detection algorithm based on multi-scale features named GPDN-Yolov5 is proposed. Methods First to tackle the problem of certain defects blending with the background an improved coordinate attention mechanism GJ-CA was incorporated into the backbone network to enhance focus on defect features. Second considering the wide variation in defect sizes a multi-scale convolutional block PKI Block was introduced to strengthen the network?? s ability to extract multi-scale features. Then a Dynamic head was applied as the detection head of the improved algorithm which strengthened the expression ability of the detection head and the detection ability of multi-scale features. Finally the CIOU loss function was replaced by a weighted combination of the normalized Wasserstein distance NWD loss function and the WIOU loss function thereby addressing the original model?? s bias toward easy samples and its high sensitivity to positional deviation in low-pixel defects. Results The GPDN-Yolov5 algorithm achieves a mean average precision mAP of 80. 5% on the NEU-DET dataset representing a 6. 9% improvement over the baseline Yolov5 algorithm and outperforms other classical detection models. Moreover on the GC10-DET dataset the algorithm improves the mean average precision by 4. 7% over Yolov5 demonstrating its consistent performance gain across different datasets. Conclusion The GPDN-Yolov5 algorithm provides a significant improvement in detection accuracy and holds certain value for steel defect detection.

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周孟然a,蔡 睿b,范桃春b,王 宁b.基于尺度多样化改进的钢材表面缺陷检测算法[J].重庆工商大学学报(自然科学版),2026,43(3):70-80
ZHOU Mengrana, CAI Ruib, FAN Taochunb, WANG Ningb. An Improved Steel Surface Defect Detection Algorithm Based on Multi-Scale Features Algorithm Based on Dual-Feature Fusion[J]. Journal of Chongqing Technology and Business University(Natural Science Edition),2026,43(3):70-80

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  • 在线发布日期: 2026-05-19
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