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作者
Yan, Xunguang; Wang, Wenrui; Lu, Fanglin; Fan, Hongyong; Wu, Bo; Yu, Jianfeng
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刊物名称
CMC-COMPUTERS MATERIALS & CONTINUA
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年、卷、文献号
2025, 1,
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关键词
Yan, Xunguang; Wang, Wenrui; Lu, Fanglin; Fan, Hongyong; Wu, Bo; Yu, Jianfeng
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摘要
To maintain the reliability of power systems, routine inspections using drones equipped with advanced object detection algorithms are essential for preempting power-related issues. The increasing resolution of drone-captured images has posed a challenge for traditional target detection methods, especially in identifying small objects in high-resolution images. This study presents an enhanced object detection algorithm based on the Faster Region- based Convolutional Neural Network (Faster R-CNN) framework, specifically tailored for detecting small-scale electrical components like insulators, shock hammers, and screws in transmission line. The algorithm features an improved backbone network for Faster R-CNN, which significantly boosts the feature extraction network's ability to detect fine details. The Region Proposal Network is optimized using a method of guided feature refinement (GFR), which achieves a balance between accuracy and speed. The incorporation of Generalized Intersection over Union (GIOU) and Region of Interest (ROI) Align further refines the model's accuracy. Experimental results demonstrate a notable improvement in mean Average Precision, reaching 89.3%, an 11.1% increase compared to the standard Faster R-CNN. This highlights the effectiveness of the proposed algorithm in identifying electrical components in high-resolution aerial images.