A Method of Insulator Faults Detection in Aerial Images for High-Voltage Transmission Lines Inspection
Citations Over TimeTop 10% of 2019 papers
Abstract
Insulator faults detection is an important task for high-voltage transmission line inspection. However, current methods often suffer from the lack of accuracy and robustness. Moreover, these methods can only detect one fault in the insulator string, but cannot detect a multi-fault. In this paper, a novel method is proposed for insulator one fault and multi-fault detection in UAV-based aerial images, the backgrounds of which usually contain much complex interference. The shapes of the insulators also vary obviously due to the changes in filming angle and distance. To reduce the impact of complex interference on insulator faults detection, we make full use of the deep neural network to distinguish between insulators and background interference. First of all, plenty of insulator aerial images with manually labelled ground-truth are collected to construct a standard insulator detection dataset ‘InST_detection’. Secondly, a new convolutional network is proposed to obtain accurate insulator string positions in the aerial image. Finally, a novel fault detection method is proposed that can detect both insulator one fault and multi-fault in aerial images. Experimental results on a large number of aerial images show that our proposed method is more effective and efficient than the state-of-the-art insulator fault detection methods.
Related Papers
- → An Inspection Robot for Live-Line Suspension Insulator Strings in 345-kV Power Lines(2012)59 cited
- → Research on Transmission Line Insulator Defects Detection using YOLOv7(2022)5 cited
- → Research on the Rapid Check and Identification of Insulator Faults in Transmission Lines Based on a Modified Faster RCNN Network(2023)2 cited
- → Temperature monitoring method of composite insulator for high voltage transmission line(2022)1 cited
- Selection of 500 kV Transmission Line Insulator in Jiangsu Power Network(2003)