综合智慧能源 ›› 2026, Vol. 48 ›› Issue (2): 1-14.doi: 10.3969/j.issn.2097-0706.2026.02.001

• 人工智能赋能的运维与巡检 •    下一篇

ADC-YOLO:面向绝缘子巡检的轻量化动态注意力检测器

梁倍宁(), 殷林飞*()   

  1. 广西大学 电气工程及其自动化学院南宁 530001
  • 收稿日期:2025-07-21 修回日期:2025-10-31 出版日期:2026-02-25
  • 通讯作者: *殷林飞(1990),男,副教授,博士生导师,博士,从事智能控制技术等方面的研究,yinlinfei@gxu.edu.cn
  • 作者简介:梁倍宁(2004),男,从事电力设备目标检测识别系统方面的研究,3228478181@qq.com
  • 基金资助:
    国家自然科学基金项目(62463001)

ADC-YOLO:A lightweight dynamic attention detector for insulator inspection

LIANG Beining(), YIN Linfei*()   

  1. School of Electrical Engineering and AutomationGuangxi UniversityNanning 530001, China
  • Received:2025-07-21 Revised:2025-10-31 Published:2026-02-25
  • Supported by:
    National Natural Science Foundation of China(62463001)

摘要:

为了解决无人机电力巡检中由于背景复杂、光照变化及缺陷微小导致的绝缘子缺陷检测精度与效率难以平衡的问题,提出了一种基于YOLOv8n的轻量化动态注意力检测器——ADC-YOLO。该模型的核心特点在于设计了一种新型的注意力动态卷积(ADC)模块。该模块将轻量化的动态卷积与坐标注意力(CA)机制在一个统一的计算单元中串联,构建了内容自适应与空间精炼相协同的特征提取范式。通过在YOLOv8n的骨干结构中嵌入ADC模块,显著提升了模型的特征提取和多尺度融合能力。试验结果表明,在自建的高分辨率绝缘子缺陷数据集(HR-IDD)上,ADC-YOLO相比YOLOv8n等主流轻量化检测器,在计算复杂度和参数量上均处于较低水平,同时在mAP@0.5和mAP@0.5∶0.95指标上分别达到了0.806和0.445,均优于其他对比模型,相较于基线模型的0.790和0.435分别提升了2.0%和2.2%,满足了绝缘子缺陷检测的需求。

关键词: 绝缘子缺陷检测, 轻量化网络, 动态卷积, 坐标注意力, 目标检测, YOLO, 无人机电力巡检

Abstract:

In UAV power inspection,due to complex backgrounds,varying lighting conditions,and tiny sizes of insulator defects,it is difficult to balance the detection accuracy and efficiency of the inspection. To address the problem,ADC-YOLO,a lightweight dynamic attention detector based on YOLOv8n was proposed. The core of the model lay in the design of an Attentive Dynamic Convolution(ADC)module that serially connected lightweight dynamic convolution with the Coordinate Attention(CA)mechanism within a unified computational unit,constructing a synergistic feature extraction paradigm that integrated content adaptation and spatial refinement. By embedding the ADC module into the backbone structure of YOLOv8n,the model's feature extraction and multi-scale fusion capabilities were significantly enhanced. Experimental results showed that compared to mainstream lightweight detectors such as YOLOv8n,ADC-YOLO maintained lower levels of computational complexity and parameter count on the self-built High-Resolution Insulator Defect Dataset(HR-IDD). ADC-YOLO achieved 0.806 and 0.445 in the mAP@0.5 and mAP@0.5∶0.95 metrics,respectively,outperforming all comparative models. Compared to the baseline model's mAP@0.5(0.790)and mAP@0.5∶0.95(0.435),the improvements were 2.0% and 2.2%,respectively,meeting the requirements for insulator defect detection.

Key words: insulator defect detection, lightweight network, dynamic convolution, coordinate attention, object detection, YOLO, UAV power inspection

中图分类号: