首页 | 本学科首页   官方微博 | 高级检索  
     检索      

基于Faster R-CNN网络模型的铁路异物侵限检测算法研究
引用本文:徐岩,陶慧青,虎丽丽.基于Faster R-CNN网络模型的铁路异物侵限检测算法研究[J].铁道学报,2020(5):91-98.
作者姓名:徐岩  陶慧青  虎丽丽
作者单位:兰州交通大学电子与信息工程学院
基金项目:国家自然科学基金(61461024)。
摘    要:行人和车辆等异物侵入铁路周边限界内的情况严重威胁了行人自身安全及铁路行车安全。针对传统铁路异物检测算法识别精度不高、分类不明确和结果易受外界环境影响等缺点,提出了一种基于Faster R-CNN网络模型的铁路异物侵限检测算法,并对该模型做适应性改进以满足铁路异物检测的现实需要。提出将全连接层用全局平均池化层替代来减少参数量;通过增加锚点个数来提高对目标区域建议的精确性;引入迁移学习思想训练网络以解决铁路异物侵限数据匮乏问题。在铁路异物侵限视频数据集上进行测试表明,本算法对于人、车及部分动物的综合检测精确度达到了97.81%。

关 键 词:铁路异物检测  卷积神经网络  FASTER  R-CNN  迁移学习  全局平均池化

Railway Foreign Body Intrusion Detection Based on Faster R-CNN Network Model
XU Yan,TAO Huiqing,HU Lili.Railway Foreign Body Intrusion Detection Based on Faster R-CNN Network Model[J].Journal of the China railway Society,2020(5):91-98.
Authors:XU Yan  TAO Huiqing  HU Lili
Institution:(School of Electronics and Information Engineering,Lanzhou Jiaotong University,Lanzhou Gansu 730070,China)
Abstract:Pedestrians,vehicles and other foreign bodies intruding into the railway boundaries seriously threaten the safety of pedestrians and railway traffic.In view of the shortcomings of the traditional railway foreign body detection algorithm,such as low recognition accuracy,unclear classification and the results susceptible to the external environment,a railway foreign body intrusion detection algorithm based on Faster R-CNN network model was proposed,and adaptive improvements were made to the model to meet the practical needs of railway foreign body intrusion detection.This paper proposed replacing the full connection layer with the global average pooling layer to reduce the number of parameters.An increase in the number of anchors of RPN network was proposed to improve the accuracy of the recommendations for the target area.The transfer learning was introduced to train the network and solve the problem of lack of data in the field of railway foreign body intrusion.The experimental results on the data set of railway foreign body intrusion collected by video show that the accuracy of the algorithm is 97.81%in the detection of people,vehicles and some animals.
Keywords:railway foreign body detection  convolutional neural network  Faster R-CNN  transfer learning  global average pooling
本文献已被 CNKI 维普 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号