电网中异物检测的数据扩展

Shi Jintao, Gu Chaoyue, Sun Hui, Shen Jiangang, Li Zhe
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引用次数: 7

摘要

深度学习算法在电力巡检工作中的应用已经有了一些研究。以现有的一些目标检测算法为核心,构建电网图像识别系统,对电网中的异常运行或异物入侵进行检测,可以节省人力物力,提高电网的安全性。深度学习需要大量有效样本才能工作。真实的隐患形象少之又少,无法满足需求。本文旨在探索一种可行的数据扩展方案。一种可能的方法是根据一定的规则将目标与上下文背景图像合并。另一种方法是通过GAN(生成对抗网络)生成样本。实验结果表明,使用扩展训练集可以提高电网图像识别系统的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Expansion for Foreign Object Detection in Power Grid
There have been some researches on the use of deep learning algorithm in the work of power patrol inspection. With some current object detection algorithms as the core, a power grid image recognition system can be built to detect abnormal operation or foreign invasion in the power grid, which could save manpower and material resources and improve the security of the power grid. Deep learning requires a number of effective samples to work. There are few real images of hidden dangers, which cannot meet the demand. This paper aims to explore a feasible data expansion scheme. One possible way is to merge the target with the context background image according to some rules. Another method is to generate samples via GAN (Generative adversarial network). Experiments results show that the performance of the power grid image recognition system is improved by using the extended training set.
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