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Estimation of high voltage insulator contamination using a combined image processing and artificial neural networks

机译:结合图像处理和人工神经网络估算高压绝缘子的污染

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摘要

In this paper, contamination level estimation tool for high voltage insulators has been developed. A digital camera has been used to capture pictures. Image processing has been used to extract needed features form the captured images. Two types of features were considered. The first is “histogram based statistical feature” while the second is “singular value decomposition theorem based linear algebraic feature”. Using extracted features, a neural network has been successfully designed to correlate the insulator captured image and the contamination level. Testing of the developed estimation tool showed a very high successful rate in estimating the contamination level of unseen insulators. It is expected that a successful deployment of the developed tool will eliminate the need of human intervention in determining the time and location of insulators to be washed.
机译:在本文中,已经开发了用于高压绝缘子的污染水平估计工具。数码相机已被用来拍摄照片。图像处理已用于从捕获的图像中提取所需的特征。考虑了两种类型的特征。第一个是“基于直方图的统计特征”,第二个是“基于奇异值分解定理的线性代数特征”。使用提取的特征,已经成功设计了神经网络,以将绝缘子捕获的图像与污染程度相关联。对开发的估算工具的测试表明,在估算看不见的绝缘子的污染程度方面,成功率很高。可以预期,成功部署开发的工具将消除人工干预来确定要清洗的绝缘子的时间和位置的需要。

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