基于改进YOLOv7的异源绝缘子的故障检测与识别

Fault Detection and Identification of Multi-Source Insulators Based on Improved YOLOv7

  • 摘要: 为提高复杂背景下异源绝缘子的故障检测准确率,本文提出一种基于异源图像下的改进YOLOv7模型的绝缘子故障识别方法。为突出绝缘子的位置以及故障信息对异源绝缘子图像进行配准融合,为降低计算复杂度以及获得更高的可移植性,将原YOLOv7的主干特征提取网络换为MOBELINET网络,为减少复杂背景下绝缘子的漏检、误检等问题,将原YOLOv7的损失函数由Complete-intersection-Over-Union(CIOU)改为FOICAL-EIOU进一步提高模型预测框的回归效果。最后在YOLOv7检测头部分引入可变形卷积Deformable Convolution Network2(DCNv2)加强对不同尺度大小绝缘子发热故障区域的适应能力。实验结果表明改进的模型Mean Average Precision(mAP)值为96.6%,比原YOLOv7模型mAP值提高9.9%,参数量下降了30.5%,浮点运算数下降了49.2%,较YOLOV5、YOLOV8目标检测模型mAP值分别提高12.2%、12.4%。所提出的改进模型可以有效实现异源绝缘子的故障检测与识别。

     

    Abstract: To improve the accuracy of fault detection for heterogeneous insulators with complex backgrounds, an improved YOLOv7 model-based insulator fault recognition method based on heterogeneous images is proposed in this paper. An image of a heterogeneous insulator was registered and fused to highlight the location of the insulators and fault information. Then, to reduce the computational complexity and improve portability, the original backbone feature extraction network of YOLOv7 was replaced by the MOBELINET network. To reduce the problems of missing and false detections of insulators in complex backgrounds, the original loss function of YOLOv7 was changed from CIOU to FOICAL-EIOU to further improve the regression effect of the model prediction box. Finally, a deformable convolutional DCNv2 was introduced in the YOLOv7 detection head to enhance its adaptability to insulator heating fault areas of different scales. The experimental results show that the mAP value of the improved model is 96.6%, which is 9.9% higher than that of the original YOLOv7 model, the number of parameters decreases by 30.5%, and the floating-point operator decreases by 49.2%, which are 12.2% and 12.4% higher than those of the YOLOV5 and YOLOV8 target detection models, respectively. The proposed improved model could effectively detect and identify heterogeneous insulators.

     

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