论文标题
基于自动视觉形状聚类的检测方法,用于传输线中的销钉缺陷
Detection Method Based on Automatic Visual Shape Clustering for Pin-Missing Defect in Transmission Lines
论文作者
论文摘要
螺栓是传输线中最多的紧固件,容易丢失拆分销。如何实现传输线中螺栓的自动销钉缺陷检测以实现及时有效的故障射击是一个困难的问题,也是电力系统的长期研究目标。在本文中,构建了一个称为自动视觉形状聚类网络(AVSCNET)的自动检测模型,用于销毁PIN失误缺陷。首先,提出了一种无监督的聚类方法,用于螺栓的视觉形状,并应用于构建可以学习视觉形状差异的缺陷检测模型。接下来,在模型中使用了三种深卷积神经网络优化方法:特征增强,特征融合和区域特征提取。缺陷检测结果是通过将回归计算和分类应用于区域特征获得的。在本文中,使用不同网络的对象检测模型来测试由来自多个位置的传输线的航空图像构成的销钉中的缺陷数据集,并通过各种指标对其进行评估,并经过充分验证。结果表明,我们的方法可以达到相当令人满意的检测效果。
Bolts are the most numerous fasteners in transmission lines and are prone to losing their split pins. How to realize the automatic pin-missing defect detection for bolts in transmission lines so as to achieve timely and efficient trouble shooting is a difficult problem and the long-term research target of power systems. In this paper, an automatic detection model called Automatic Visual Shape Clustering Network (AVSCNet) for pin-missing defect is constructed. Firstly, an unsupervised clustering method for the visual shapes of bolts is proposed and applied to construct a defect detection model which can learn the difference of visual shape. Next, three deep convolutional neural network optimization methods are used in the model: the feature enhancement, feature fusion and region feature extraction. The defect detection results are obtained by applying the regression calculation and classification to the regional features. In this paper, the object detection model of different networks is used to test the dataset of pin-missing defect constructed by the aerial images of transmission lines from multiple locations, and it is evaluated by various indicators and is fully verified. The results show that our method can achieve considerably satisfactory detection effect.