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AN ENVIRONMENTALLY FRIENDLY DEFECT DETECTION METHOD FOR SMALL FITTINGS OF TRANSMISSION LINES BASED ON FASTER R-CNN

机译:基于更快的R-CNN的传输线小型配件的环保缺陷检测方法

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With the in-depth development of artificial intelligence (AI),big data and other fields,more and more people apply this technology to power systems to save energy and protect the environment.Concentrating on the issue that the locking pin fault has an effect on the normal operation of transmission lines and even leads to the unsafe operation of lines,an improved detection method of locking pin fault is proposed based on UAV image and Faster R-CNN theory.The proposed algorithm is based on the basic framework of Faster R-CNN.ResNext101 is exploited as feature extraction network.In what follows,three improved methods,Deformable Convolutional Networks V2 (DCNv2),Feature Pyramid Networks (FPN) and Online Hard Example Mining (OHEM) are utilized to optimize the algorithm.The experimental results show that the developed algorithm can significantly improve the detection accuracy of lock pin fault compared with other object detection algorithms such as Cascade R-CNN,Grid R-CNN and RetinaNet.We believe that the development of artificial intelligence will make a huge contribution to environmental protection.
机译:随着人工智能(AI)的深入发展,大数据和其他领域,越来越多的人将这种技术应用于电力系统以节省能源并保护环境.Centrating锁定引脚故障对锁定引脚故障具有效果的问题。传输线的正常运行甚至导致线路的不安全操作,基于UAV图像提出了一种改进的锁定引脚故障检测方法,更快的R-CNN理论提出。该算法基于更快的R-的基本框架CNN.Resnext101被利用为特征提取网络。在此之后,三种改进的方法可变形卷积网络V2(DCNV2),特征金字塔网络(FPN)和在线硬示例挖掘(OHEM)用于优化该算法。实验结果表明,与其他对象检测算法相比,开发算法可以显着提高锁定引脚故障的检测精度,例如级联R-CNN,网格R-CNN和Retinanet.we B.澄清人工智能的发展将为环境保护做出巨大贡献。

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