Automatic Recognition of Electrical Grid Elements using Convolutional Neural Networks

L. A. Z. Silva, V. Vidal, M. F. Silva, M. F. Santos, A. L. Carvalho, A. Cerqueira, L. Honório, H. B. Rezende, J. M. S. Ribeiro, A. Pancoti, B. A. Regina
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引用次数: 2

Abstract

Due to the extensive proportions of Brazilian railways, there is a high demand for remote and automatic diagnose tools. This work proposes a scene selection method using Deep Learning techniques, namely Convolutional Neural Networks (CNN), to recognize the poles, which gathers objects of interest to be inspected in the railway power network. Videos were obtained through the railway and the data divided and preprocessed for the network training and testing. A VGG network architecture served as a starting point, and after exhaustive search and comparisons of many techniques, two network topologies are presented and compared in field tests. The results yield more than 93% efficiency for both proposed topologies.
基于卷积神经网络的电网元素自动识别
由于巴西铁路的广泛分布,对远程和自动诊断工具的需求很高。这项工作提出了一种使用深度学习技术,即卷积神经网络(CNN)来识别极点的场景选择方法,该方法收集了铁路电网中要检查的感兴趣对象。通过铁路获取视频,对数据进行分割和预处理,用于网络训练和测试。以VGG网络架构为出发点,在对多种技术进行了详尽的搜索和比较后,提出了两种网络拓扑结构,并在现场测试中进行了比较。这两种拓扑的效率都超过93%。
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