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Hardware Detection Method of Transmission Line Patrol Inspection Image Based on Improved YOLOV4 Model

机译:基于改进的YOLOV4模型的传输线巡逻检查图像的硬件检测方法

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In order to solve the problem of intelligent hardware detection in aerial images, a hardware target detection method based on improved YOLOV4 model is proposed. In order to solve the problems of dense hardware and occlusion in aerial images, the improved network based on channel and spatial hybrid attention mechanism can further improve the detection effect of dense occlusion hardware and reduce image false detection and missed detection. In order to solve the problem that there is a great error in the position of the detection frame caused by the interference between the hardware and the hardware and between the hardware and the background, the prior frame is optimized by K-means++, and it is determined that the anchors generated by K=12 is the best, and the detection boxes are more suitable for the target. The experimental results show that the proposed method solves the problems of missing detection, misdetection and inaccurate detection frame to some extent, in which the mAP (mean Average Precision) value of the performance index is increased from 65.03% to 70.72%. The research can lay a good foundation for further state detection and fault diagnosis of typical hardware.
机译:为了解决空中图像中智能硬件检测问题,提出了一种基于改进的YOLOV4模型的硬件目标检测方法。为了解决空中图像中密集硬件和闭塞的问题,基于信道和空间混合注意力的改进网络可以进一步提高密集遮挡硬件的检测效果,降低图像假检测和错过检测。为了解决问题的问题,即通过硬件和硬件之间的干扰以及硬件和背景之间的干扰引起的检测帧的位置存在很大错误,通过k-means ++优化了先前的帧,它是确定由k = 12产生的锚是最好的,并且检测盒更适合于目标。实验结果表明,该方法解决了在一定程度上缺少检测,误和和不准确的检测框架的问题,其中性能指数的地图(平均平均精度)值从65.03%增加到70.72%。该研究可以为典型硬件的进一步状态检测和故障诊断奠定良好的基础。

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