The method of insulator recognition based on deep learning

Yue Liu, Jun Yong, Liang Liu, Jinlong Zhao, Zongyu Li
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引用次数: 33

Abstract

The insulator is an import part of transmission line, and the defects detection of insulator rely deeply on the insulators' position. Traditional methods about insulator recognition task are depend on color features and geometric features, those methods would be influenced by lots of factors, such as illumination and background in result getting poor generalization ability. In this paper, we propose a method to recognize insulator based on deep learning algorithm. Firstly, we construct the training dataset which includes insulator, background and tower three categories. Secondly, we initialize the convolution neural networks as a six-level network, and adjust training parameters to train the model. Lastly, the trained model is used to predict the candidate insulator position. With the help of non-maximum suppression algorithm and line fitting method, we can get the exactly location of insulator. The experiment results on UAV dataset show the proposed method can effective localize the insulator and improve generalization ability significantly.
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基于深度学习的绝缘子识别方法
绝缘子是输电线路的重要部件,绝缘子的缺陷检测很大程度上依赖于绝缘子的位置。传统的绝缘体识别方法依赖于颜色特征和几何特征,受光照和背景等因素的影响较大,泛化能力较差。本文提出了一种基于深度学习算法的绝缘子识别方法。首先,我们构建了包含绝缘子、背景和塔三大类的训练数据集。其次,我们将卷积神经网络初始化为一个六层网络,并调整训练参数来训练模型。最后,利用训练好的模型对候选绝缘子位置进行预测。利用非极大值抑制算法和直线拟合方法,可以得到绝缘子的准确位置。在无人机数据集上的实验结果表明,该方法可以有效地定位绝缘子,显著提高泛化能力。
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