期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
Catenary dropper fault identification based on improved FCOS algorithm
1
作者 GU Guimei WEN Bokang +1 位作者 JIA Yaohua ZHANG Cunjun 《Journal of Measurement Science and Instrumentation》 CAS CSCD 2024年第4期571-578,共8页
The contact network dropper works in a harsh environment,and suffers from the impact effect of pantographs during running of trains,which may lead to faults such as slack and broken of the dropper wire and broken of t... The contact network dropper works in a harsh environment,and suffers from the impact effect of pantographs during running of trains,which may lead to faults such as slack and broken of the dropper wire and broken of the current-carrying ring.Due to the low intelligence and poor accuracy of the dropper fault detection network,an improved fully convolutional one-stage(FCOS)object detection network was proposed to improve the detection capability of the dropper condition.Firstly,by adjusting the parameterαin the network focus loss function,the problem of positive and negative sample imbalance in the network training process was eliminated.Secondly,the generalized intersection over union(GIoU)calculation was introduced to enhance the network’s ability to recognize the relative spatial positions of the prediction box and the bounding box during the regression calculation.Finally,the improved network was used to detect the status of dropper pictures.The detection speed was 150 sheets per millisecond,and the MAP of different status detection was 0.9512.Through the simulation comparison with other object detection networks,it was proved that the improved FCOS network had advantages in both detection time and accuracy,and could identify the state of dropper accurately. 展开更多
关键词 catenary dropper fully convolutional one-stage(FCOS)network defect identification generalized intersection over union(GIoU) focal loss
在线阅读 下载PDF
基于机器视觉的指针式仪表检测 被引量:11
2
作者 赵辉 姜立锋 +1 位作者 王红君 岳有军 《科学技术与工程》 北大核心 2021年第34期14665-14672,共8页
提出了一种基于机器视觉的变电站指针式仪表检测算法。该算法基于YOLO v3神经网络,引入Res2Net残差模块以及采用特征层融合的方式,采用更少的模块和网络层数获取更高的特征提取效率,通过增加空间池化金字塔(spatial pyramid pooling,SPP... 提出了一种基于机器视觉的变电站指针式仪表检测算法。该算法基于YOLO v3神经网络,引入Res2Net残差模块以及采用特征层融合的方式,采用更少的模块和网络层数获取更高的特征提取效率,通过增加空间池化金字塔(spatial pyramid pooling,SPP)模块融合多重感受野,使用GIoU(generalized intersection over union)损失函数代替原有的损失函数。此外,针对数据集的不同,采取k-means++聚类算法重新选择锚点框的尺寸。实验结果证明,在保证精度的前提下,相对于Faster R-CNN和原始的YOLO v3网络,速度分别提升了73.7%和45.8%。 展开更多
关键词 YOLO v3 Res2Net 空间池化金字塔(SPP) GIou(generalized intersection over union) k-means++ 速度 检测识别
在线阅读 下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部