论文标题
基于Centermask的变电站绝缘子缺陷的智能检测
Intelligent detect for substation insulator defects based on CenterMask
论文作者
论文摘要
随着智能操作和变电站维护的发展,对变电站的日常检查需要处理大量的视频和图像数据。这对缺陷检测的处理速度和准确性提出了更高的要求。基于端到端的学习范式,本文提出了一种基于Centermask的变电站绝缘体缺陷的智能检测方法。首先,根据剩余连接和ESE模块,骨干网络Vovnet得到了改进,该模块有效地解决了深层网络饱和和梯度信息丢失的问题。在此基础上,提出了一种基于空间注意机制的绝缘体面膜生成方法。具有复杂图像背景的绝缘体被准确分割。然后,引入了三种像素回归预测的策略:多尺度特征和中心度。无锚的单级目标检测器准确地定位了绝缘子的缺陷点。最后,通过在某个领域的电源公司的变电站检查图像进行了示例分析,以验证所提出方法的有效性和鲁棒性。
With the development of intelligent operation and maintenance of substations, the daily inspection of substations needs to process massive video and image data. This puts forward higher requirements on the processing speed and accuracy of defect detection. Based on the end-to-end learning paradigm, this paper proposes an intelligent detection method for substation insulator defects based on CenterMask. First, the backbone network VoVNet is improved according to the residual connection and eSE module, which effectively solves the problems of deep network saturation and gradient information loss. On this basis, an insulator mask generation method based on a spatial attentiondirected mechanism is proposed. Insulators with complex image backgrounds are accurately segmented. Then, three strategies of pixel-wise regression prediction, multi-scale features and centerness are introduced. The anchor-free single-stage target detector accurately locates the defect points of insulators. Finally, an example analysis is carried out with the substation inspection image of a power supply company in a certain area to verify the effectiveness and robustness of the proposed method.