葛召, 李洪文, 刘海峰, 贾志辉, 周开峰, 邢雨辰. 基于YOLO-GSS的输电线路边缘端实时缺陷检测方法[J]. 高电压技术, 2025, 51(2): 669-677. DOI: 10.13336/j.1003-6520.hve.20232175
引用本文: 葛召, 李洪文, 刘海峰, 贾志辉, 周开峰, 邢雨辰. 基于YOLO-GSS的输电线路边缘端实时缺陷检测方法[J]. 高电压技术, 2025, 51(2): 669-677. DOI: 10.13336/j.1003-6520.hve.20232175
GE Zhao, LI Hongwen, LIU Haifeng, JIA Zhihui, ZHOU Kaifeng, XING Yuchen. Real-time Defect Detection Method for Edge-end of Transmission Line Based on YOLO-GSS[J]. High Voltage Engineering, 2025, 51(2): 669-677. DOI: 10.13336/j.1003-6520.hve.20232175
Citation: GE Zhao, LI Hongwen, LIU Haifeng, JIA Zhihui, ZHOU Kaifeng, XING Yuchen. Real-time Defect Detection Method for Edge-end of Transmission Line Based on YOLO-GSS[J]. High Voltage Engineering, 2025, 51(2): 669-677. DOI: 10.13336/j.1003-6520.hve.20232175

基于YOLO-GSS的输电线路边缘端实时缺陷检测方法

Real-time Defect Detection Method for Edge-end of Transmission Line Based on YOLO-GSS

  • 摘要: 边缘端设备与输电线路智能巡检结合,可以满足现场实时缺陷检测的需求,但当前针对适用于低算力、低内存的边缘端设备的算法研究较少。鉴于此,该文提出了一种基于YOLO-GSS输电线路边缘端实时缺陷检测方法。首先,采用Mosaic-9对YOLOv8网络的输入端进行改进,提高了算法的输入特征数量,增强了算法的鲁棒性;然后,引入GhostNet及S-FPN对Backbone及Neck部分进行改进,在提高算法推理速度的同时修正了精度;最后,采用SIoU对YOLOv8的CIoU损失函数进行修正,进一步提高了算法的检测精度。试验结果表明:相较于原版YOLOv8,该文提出的方法在精度未下降过多的情况下,实现了在Nvidia Jetson NX边缘端设备上的推理速度提升4倍,可以满足输电线路现场缺陷实时检测的需求。

     

    Abstract: The combination of edge-end devices and transmission line intelligent inspection can meet the needs of real-time defect detection in the field. However, the current research on algorithms for edge-end devices applicable to low-computing-power, low-memory devices is rarely available. Aiming at the above problems, this paper proposes a real-time defect detection method based on YOLO-GSS transmission line edge-end. Firstly, Mosaic-9 is used to improve the input end of YOLOv8 network, which improves the number of input features of the algorithm and enhances the robustness of the algorithm. Then, GhostNet and S-FPN are introduced to improve the Backbone and Neck part, which improves the inference speed of the algorithm and corrects the accuracy at the same time. Finally, SIoU is used to correct the YOLOv8's CIoU loss function to further improve the detection accuracy of the algorithm. The experimental results show that, compared with the original YOLOv8, the method proposed in this paper can be adopted to realize a quattuor increase in inference speed on Nvidia Jetson NX edge-end devices without too much decrease in accuracy, which can meet the demand for real-time detection of defects on transmission line sites.

     

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