基于YOLOv5s神经网络的配电网绝缘子故障检测

Zengrui Huang, Shilin Hu, Lei Zhang
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引用次数: 1

摘要

针对当前配电网绝缘子检测图像背景复杂,检测目标小,缺陷形式多样,容易被设备或阴影遮挡,造成误检和漏检,检测精度低。提出了一种分级检测方法。首先使用YOLOv5s网络对绝缘子区域进行定位,在此基础上再使用DenseNet201网络进一步判断绝缘子区域是否存在故障。实验结果表明,与原有的YOLOv5s网络相比,基于yolov5的配电网绝缘子缺陷分类检测方法能够更好地识别遮挡下特征表达能力不足的故障绝缘子,消除背景误检。它能有效地实现配电线路检测图像中绝缘子的识别和缺陷检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Detection of insulator in distribution network Based on YOLOv5s Neural Network
In view of the complex background of the current distribution network insulator inspection image, the detection target is small, the defect forms are various, and it is easy to be blocked by equipment or shadows, resulting in false detection and missed detection, and the detection accuracy is low. A grading detection method is proposed. First, the YOLOv5s network is used to locate the insulator area, and on this basis, the DenseNet201 network is used to further distinguish whether there is a fault in the insulator area. The experimental results show that compared with the original YOLOv5s network, the YOLOv5s-based distribution network insulator defect classification detection method can better identify faulty insulators with insufficient feature expression ability under occlusion, and eliminates false detection of background. It can effectively realize the identification and defect detection of insulators in the inspection images of distribution lines.
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