输电线金属配件设备检测的改进YOLOV7算法:集成注意机制的改进算法

Junnan Li, Qiumei Wang, Siyuan Hong, Liang Fan, Xiying Chen, Chuan Ai
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引用次数: 1

摘要

金属配件设备在电网系统中应用广泛。为了提高人员检测输电线路的速度和准确性,广泛检测各种金属配件设备的电弧灼伤,本文设计了一种基于改进的YOLOV7的金属配件设备检测算法。该方法在YOLOV7的网络结构中增加了CA关注机制,增强了网络模型中硬件设备的特征提取。同时,减少了复杂背景对网络模型提取硬件设备特征的干扰,使网络模型能够更详细地提取特征,从而提高了网络模型对硬件设备的检测泛化。实验结果表明,改进后的YOLOV7方法将金属配件设备的检测精度从78.6%提高到81.3%,测试集的召回率从77.3%提高到79.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved YOLOV7 Algorithm for Transmission Line Metal Fittings Equipment Detection: Algorithm Improvement for Integrating Attention Mechanism
Metal fittings equipment is widely used in the power grid system. In order to improve the speed and accuracy of personnel's inspection of transmission lines, and to widely detect arc burns of various metal fittings equipment, this paper designs a metal fittings equipment detection algorithm based on improved YOLOV7. This method adds a CA attention mechanism to the network structure of YOLOV7 to enhance the feature extraction of hardware devices in the network model. At the same time, it reduces the interference of complex backgrounds on the network model to extract features of hardware devices, allowing the network model to extract features in detail, thereby improving the network model's detection generalization for hardware devices. The experimental results showed that the improved YOLOV7 method improved the Precision of detecting metal fittings equipment from 78.6% to 81.3%, and the Recall in the test set increased from 77.3% to 79.6%.
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