ID-Det:从无人机检查输电设施的图像中检测绝缘子爆裂缺陷

Drones Pub Date : 2024-07-05 DOI:10.3390/drones8070299
Shan Sun, Chi Chen, Bisheng Yang, Zhengfei Yan, Zhiye Wang, Yong He, Shaolong Wu, Liuchun Li, Jing Fu
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引用次数: 0

摘要

全球电力需求的增长需要大量的输电基础设施,其中绝缘子在确保输电系统安全运行方面发挥着至关重要的作用。然而,绝缘体容易出现爆裂缺陷,从而危及系统安全。为解决这一问题,我们提出了绝缘体缺陷检测框架 ID-Det,该框架由两个主要部分组成,即绝缘体分割网络 (ISNet) 和绝缘体突发检测器 (IBD)。 (1) ISNet 包含一个新颖的绝缘体剪切模块 (ICM),可提高绝缘体分割性能。(2) IBD 利用边角提取方法和边角的周期性分布特征,便于提取绝缘体掩膜上的关键边角和准确定位突发缺陷。此外,我们还构建了一个由 1614 幅绝缘体图像组成的绝缘体缺陷数据集(ID Dataset)。在该数据集上进行的实验表明,ID-Det 的准确率为 97.38%,精确率为 97.38%,召回率为 94.56%,比一般缺陷检测方法的准确率提高了 4.33%,精确率提高了 5.26%,召回率提高了 2.364%。与基线相比,ISNet 的平均精度 (AP) 也提高了 27.2%。这些结果表明,ID-Det 在电力检测的实际应用中具有巨大的潜力。
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ID-Det: Insulator Burst Defect Detection from UAV Inspection Imagery of Power Transmission Facilities
The global rise in electricity demand necessitates extensive transmission infrastructure, where insulators play a critical role in ensuring the safe operation of power transmission systems. However, insulators are susceptible to burst defects, which can compromise system safety. To address this issue, we propose an insulator defect detection framework, ID-Det, which comprises two main components, i.e., the Insulator Segmentation Network (ISNet) and the Insulator Burst Detector (IBD). (1) ISNet incorporates a novel Insulator Clipping Module (ICM), enhancing insulator segmentation performance. (2) IBD leverages corner extraction methods and the periodic distribution characteristics of corners, facilitating the extraction of key corners on the insulator mask and accurate localization of burst defects. Additionally, we construct an Insulator Defect Dataset (ID Dataset) consisting of 1614 insulator images. Experiments on this dataset demonstrate that ID-Det achieves an accuracy of 97.38%, a precision of 97.38%, and a recall rate of 94.56%, outperforming general defect detection methods with a 4.33% increase in accuracy, a 5.26% increase in precision, and a 2.364% increase in recall. ISNet also shows a 27.2% improvement in Average Precision (AP) compared to the baseline. These results indicate that ID-Det has significant potential for practical application in power inspection.
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