Fault Identification of Transmission Line Shockproof Hammer Based on Improved YOLO V4

Jia Guo, Jinghai Xie, Jingzhong Yuan, Yu Jiang, Shihua Lu
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引用次数: 8

Abstract

Anti-vibration hammer, as a key fitting to suppress the periodic vibration and galloping of transmission line wires, plays a very important role in the safe operation of transmission lines. This paper takes UAV aerial images of transmission lines as the research object. Aiming at the small target characteristics of the anti-vibration hammer, a transmission line anti-vibration hammer fault identification algorithm based on the improved YOLO V4 model is proposed. First, this method merges the globalized information obtained after expanding the receptive field with the refined local information. Secondly, use multi-scale convolution kernels to obtain more refined local features, and then use different-scale hollow convolution layers to increase the receptive field and obtain more global data. Finally, the obtained information of different scales is fused. The comparison test with the original model proves that the improved model has a significant improvement in the accuracy of detection.
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基于改进型YOLO V4的输电线路防震锤故障识别
防振锤作为抑制输电线路导线周期性振动和跳动的关键配件,对输电线路的安全运行起着非常重要的作用。本文以输电线路无人机航拍图像为研究对象。针对抗振锤的小目标特性,提出了一种基于改进YOLO V4模型的输电线路抗振锤故障识别算法。首先,该方法将扩展接受域后得到的全球化信息与精炼后的局部信息融合。其次,使用多尺度卷积核获得更精细的局部特征,然后使用不同尺度的空心卷积层增加接收野,获得更多的全局数据;最后,对得到的不同尺度的信息进行融合。与原模型的对比试验表明,改进后的模型在检测精度上有明显提高。
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