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基于无人机巡检图像的输电线路部件缺陷检测:一种自监督HC-ViT方法

Transmission Line Component Defect Detection Based on UAV Patrol Images: A Self-Supervised HC-ViT Method

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2024
被引 29 · 同刊同年前 8%
ABS 3

中文导读

提出一种结合层级卷积视觉Transformer和自监督对比掩码自编码器的方法,利用大量无标签正常样本提升输电线路部件缺陷检测精度,减少人工标注需求。

Abstract

The unmanned aerial vehicle (UAV) patrol inspection has become an efficient method to ensure the operation condition of transmission lines. The detection of key components with defects in transmission lines is a critical task in maintaining a power system’s stability. However, the complex inspection environment and the imbalance between the number of normal component samples and that of defect samples significantly affect the detection accuracy. In this article, we present a novel method for defect detection in UAV patrol images, based on a hierarchical convolutional vision transformer (HC-ViT) and a simple contrastive masked autoencoder (SC-MAE). The HC-ViT backbone integrates the advantages of vision transformer and convolution, while the SC-MAE is a self-supervised learning method that extracts useful features from normal samples. By introducing the normal features into the backbone, we enhance the performance of the defect detection task. We demonstrate the effectiveness of our method through experiments, and show that it can leverage a large amount of unlabeled normal images, reducing the need for manual annotation. Our method offers a new way to exploit the potential features of patrol inspection images.

电力系统计算机视觉深度学习缺陷检测无人机巡检