基于改进YOLOv9的高压电缆缺陷检测算法研究

Research on defect detection algorithm for high-voltage transmission line based on improved YOLOv9

  • 摘要: 2023年,全国电能消耗占终端能源消耗比重达到 28%。电缆作为电能传输过程中关键组件。然而,在高空环境下,电缆表层易受环境侵蚀,及时对电缆进行高效检测尤为重要。目前主流检测采用无人机巡检,通过快速获取高空图像并传输至网络模型进行检测。YOLO算法因其高效检测能力,已广泛应用于无人机任务中。但高空电缆表层缺陷微小、恶劣天气拍摄图像质量低,导致无人机巡检准确性和效率降低。因此,提出了基于改进 YOLOv9 的电缆故障检测模型 YOLOv9-SED。首先在原始 YOLOv9 模型中加入去雾网络 UnfogNet,有效增强模型在高空复杂恶劣环境下的图像清晰度;同时引入SEAM 注意力机制和 Shape-IoU损失函数,提升模型对小目标的特征提取能力;最后采用 DualConv 卷积替换原有 Conv 卷积层,在增强模型性能的同时减低模型复杂度。采用包含多种故障类型的电缆图像数据集进行针对性训练实验,结果表明,优化后的YOLOv9-SED模型在电缆故障检测任务中表现出色,相比原YOLOv9模型,精确率提升了1.7%,平均精度均值提升了3.5%,同时模型权重减少13MB,GFLOPS 减少了 16 个单位,为无人机在恶劣高空环境下电缆缺陷检测提供了一种新的方案。

     

    Abstract: In 2023, the proportion of electricity consumption in the country's final energy consumption will reach 28%. Cables are used as a key component in the transmission of electrical energy. However, in high-altitude environments, the surface layer of the cable is susceptible to environmental erosion, and it is particularly important to carry out efficient detection of the cable in time. At present, the mainstream detection uses unmanned aerial vehicles (UAVs) to quickly obtain high-altitude images and transmit them to the network model for detection. The YOLO algorithm has been widely used in UAV missions because of its efficient detection ability. However, the surface defects of high-altitude cables are small and the image quality of bad weather shooting is low, which leads to the reduction of the accuracy and efficiency of UAV inspection. Therefore, a cable fault detection model based on improved YOLOv9, YOLOv9-SED, was proposed. Firstly, the dehazing network UnfogNet was added to the original YOLOv9 model to effectively enhance the image clarity of the model in the complex and harsh environment at high altitude. At the same time, the SEAM attention mechanism and the Shape-IoU loss function are introduced to improve the model's feature extraction ability for small targets. Finally, the DualConv convolution layer is used to replace the original Conv convolutional layer, which can enhance the performance of the model and reduce the complexity of the model. Compared with the original YOLOv9 model, the accuracy is increased by 1.7%, the average accuracy is increased by 3.5%, the model weight is reduced by 13MB, and the GFLOPS is reduced by 16 units, which provides a new scheme for the detection of cable defects in harsh high-altitude environments.

     

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