基于MHD-YOLO的轻量化绝缘子缺陷检测算法
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山西大学自动化与软件学院 太原 030013

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TP391.4;TN911.73

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国家自然科学基金(62473242, U24A20261)、山西省省筹资金资助回国留学人员科研项目(2022-009)资助


Lightweight insulator defect detection algorithm based on MHD-YOLO
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School of Automation and Software Engineering, Shanxi University,Taiyuan 030013, China

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    摘要:

    针对无人机巡检输电线路时航拍绝缘子图像中存在背景复杂,目标大小不一致和待检缺陷区域占比小三个问题,提出了一种轻量化的绝缘子缺陷检测算法MHD-YOLO。首先在YOLOv8的主干网络中引入特征提取网络MAFNet,使用混合卷积来增强网络在复杂背景下的特征提取能力。其次,使用特征融合网络HS-FPN来实现不同尺度的特征融合,结合轻量化的动态上采样方法DySample来提升上采样的质量和效率。然后设计了一种轻量化检测头CSH,通过使用共享卷积的方法大幅减少检测层的参数量和计算量。最后引入NWD损失函数来提高模型对小型目标的定位精确性。实验结果证明,MHD-YOLO目标检测算法与YOLOv8相比,参数量降低了43.8%,在绝缘子缺陷检测数据集上检测精度提高了5.1%。改进后的算法在检测绝缘子缺陷方面的效果有明显提升,且模型复杂度大大降低,为部署到嵌入式设备上提供了更有效的方法。

    Abstract:

    Aiming at the three problems of complex background, inconsistent target size and small proportion of defective areas to be inspected in aerial insulator images taken by UAVs during transmission line inspection, a lightweight insulator defect detection algorithm, MHD-YOLO, is proposed. Firstly, a feature extraction network MAFNet is introduced into the backbone network of YOLOv8, and hybrid convolution is used to enhance the feature extraction capability of the network under complex background. Second, a feature fusion network, HS-FPN, is used to realize feature fusion at different scales, and combined with a lightweight dynamic up-sampling method, DySample, to improve the quality and efficiency of up-sampling. Then, a lightweight detection head CSH is designed, which significantly reduces the number of parameters in the detection layer and the computation amount by using the shared convolution method. Finally, the NWD loss function is introduced to improve the localization accuracy of the model for small targets. The experimental results demonstrate that the MHD-YOLO target detection algorithm reduces the number of parameters by 43.8% compared with YOLOv8, and improves the detection accuracy by 5.1% on the insulator defect detection dataset. The improved algorithm is significantly more effective in detecting insulator defects, and the model complexity is greatly reduced, providing a more effective method for deployment on embedded devices.

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关燕鹏,傅芃博,要会娟.基于MHD-YOLO的轻量化绝缘子缺陷检测算法[J].电子测量技术,2026,49(1):80-89

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  • 在线发布日期: 2026-02-11
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