Broken Power Strand Detection with Aerial Images: A Machine Learning based Approach

Yifeng Pan, F. Liu, Ji Yang, Wei Zhang, Yong Li, Chun Sing Lai, Xiaomei Wu, L. Lai, Binzhuo Hong
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引用次数: 4

Abstract

Power lines are essential for electricity transmission between power plant and consumption point. Periodical inspection and assessment of the power line damages are critical to ensure the uninterrupted power delivery and grid stability. With the recent development of the unmanned aerial vehicles technology, the aerial images of power lines are adopted for broken strand detection. A huge challenge is the lack of the fatal but rare broken strand images. Thus, an oversampling strategy is proposed to increase the data diversity and reduce the data imbalance between the normal and broken lines. In addition, image background noises are filtered through image transformation to facilitate the anomaly detection. After that, five popular machine learning models are trained on four representative views of the aerial images. The experiments results show that the models can achieve a remarkable performance when they are trained and specialized for images from the same view. Second, the model can be generalized from one view to the other views sharing similar features, where the neural network solutions show remarkable knowledge transfer capability. Third, the impact of data size is discussed. More data does help promote the detection accuracy, but the performance gain diminishes in data size.
航空图像断链检测:一种基于机器学习的方法
电力线是电厂与用电点之间电力传输的重要线路。定期对电力线路进行损伤检测和评估,是保障电力不间断输送和电网稳定的重要手段。近年来,随着无人机技术的发展,利用航拍图像对电力线进行断线检测。一个巨大的挑战是缺乏致命但罕见的断链图像。为此,提出了一种过采样策略,以增加数据的多样性,减少法线和折线之间的数据不平衡。此外,通过图像变换滤除图像背景噪声,便于异常检测。之后,在航空图像的四个代表性视图上训练五种流行的机器学习模型。实验结果表明,对该模型进行训练并对同一视图的图像进行专门处理后,该模型可以取得很好的效果。其次,该模型可以从一个视图推广到具有相似特征的其他视图,其中神经网络解决方案显示出显著的知识转移能力。第三,讨论了数据大小的影响。更多的数据确实有助于提高检测的准确性,但是性能的提高会随着数据量的增加而降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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