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Insulator condition using local binary patterns combined with support vector machines

机译:使用局部二进制模式结合支持向量机的绝缘子条件

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Insulator is an important component in the power grid. Therefore, faulty insulator can cause a great damage to the power grid that would lead to leakage currents flowing through line supports. This leads to increase in electrical loses, voltage drop and put human safety to risk. Hence, it is very important to monitor the condition of an insulator before resulting to a great damage in the power grid. Computer vision is recognized as a means to solve this problem safely, speedily and accurately instead of the manual method of monitoring. This paper presents insulator condition using local binary patterns combined with support vector machines. Experiments show an improved performance when local binary patterns is used as a feature extraction method over gray level co-occurrence matrix combined with support vector machines. Results obtained are presented and discussed.
机译:绝缘子是电网中的重要组成部分。因此,绝缘子故障会严重损坏电网,从而导致漏电流流经线路支架。这导致电损耗,电压下降的增加,并使人身安全受到威胁。因此,在对电网造成巨大损害之前监视绝缘子的状况非常重要。计算机视觉被认为是安全,快速,准确地解决此问题的一种方法,而不是手动的监视方法。本文介绍了使用局部二进制模式结合支持向量机的绝缘子状况。实验表明,在结合支持向量机的灰度共生矩阵上使用局部二进制模式作为特征提取方法时,性能得到了改善。介绍并讨论了获得的结果。

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