Affiliation:
1. College of Information Science and Engineering, Hebei University of Science and Technology, Shijiazhuang 050018, China
2. College of Electrical Engineering, Hebei University of Technology, Tianjin 300401, China
Abstract
In the context of power-line scenarios characterized by complex backgrounds and diverse scales and shapes of targets, and addressing issues such as large model parameter sizes, insufficient feature extraction, and the susceptibility to missing small targets in engineering-vehicle detection tasks, a lightweight detection algorithm termed CER-YOLOv5s is firstly proposed. The C3 module was restructured by embedding a lightweight Ghost bottleneck structure and convolutional attention module, enhancing the model’s ability to extract key features while reducing computational costs. Secondly, an E-BiFPN feature pyramid network is proposed, utilizing channel attention mechanisms to effectively suppress background noise and enhance the model’s focus on important regions. Bidirectional connections were introduced to optimize the feature fusion paths, improving the efficiency of multi-scale feature fusion. At the same time, in the feature fusion part, an ERM (enhanced receptive module) was added to expand the receptive field of shallow feature maps through multiple convolution repetitions, enhancing the global information perception capability in relation to small targets. Lastly, a Soft-DIoU-NMS suppression algorithm is proposed to improve the candidate box selection mechanism, addressing the issue of suboptimal detection of occluded targets. The experimental results indicated that compared with the baseline YOLOv5s algorithm, the improved algorithm reduced parameters and computations by 27.8% and 31.9%, respectively. The mean average precision (mAP) increased by 2.9%, reaching 98.3%. This improvement surpasses recent mainstream algorithms and suggests stronger robustness across various scenarios. The algorithm meets the lightweight requirements for embedded devices in power-line scenarios.
Funder
Practice Project on Higher Education Teaching Reform, Hebei Provincial Department of Education
Reference24 articles.
1. Power Transmission Line Fault Detection and Diagnosis Based on Artificial Intelligence Approach and its Development in UAV: A Review;Wong;Arab. J. Sci. Eng.,2021
2. Fault detection meth-od for YOLOv3 transmission lines based on Convolutional Block attention model;Hao;Power Grid Technol.,2021
3. Transmission line pin defect detection based on deep learning;Li;Power Grid Technol.,2021
4. Research on image detection method of insulator defects under complex environmental background;Liu;J. Electron. Meas. Instrum.,2022
5. An aerial photography small target detection algorithm based on residual network optimization;Li;Foreign Electron. Meas. Technol.,2022
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