首页 | 本学科首页   官方微博 | 高级检索  
     

高铁摩擦片表面裂纹检测方法研究
引用本文:张景博,汪日伟,刘凤连,温显斌.高铁摩擦片表面裂纹检测方法研究[J].光电子.激光,2021,32(9):962-969.
作者姓名:张景博  汪日伟  刘凤连  温显斌
作者单位:天津理工大学计算机视觉与系统教育部重点实验室和天津市智能计算及软件新技术重点实验室,天津300384;温州大学瓯江学院,浙江温州325035
摘    要:摩擦片的裂纹数目和长度是衡量高铁制动性能的核心评定标准之一,有效的裂纹检测对高铁的安全运行具有重要意义.提出基于CSPDarkNet53主干网络架构的改进算法,实现摩擦片裂纹的在线自动检测.一方面融合双路特征提取网络以增强对于裂纹特征检测的敏感度,有效提高摩擦片裂纹检测的准确率;另一方面在YOLO检测模块预测框的去冗余计算环节中,采用目标框加权融合算法(weighted fusion algorithm of target box,WBF)降低误检率.实验结果表明,相较于当前最具有代表性几类目标检测算法,本文采用的方法准确率显著提高,平均精度提升7.64%.

关 键 词:裂纹检测  目标检测  深度学习  摩擦片
收稿时间:2021/2/16 0:00:00

Crack detection on the friction pads of high-speed rail
ZHANG Jingbo,WANG Riwei,LIU Fenglian and WE N Xianbin.Crack detection on the friction pads of high-speed rail[J].Journal of Optoelectronics·laser,2021,32(9):962-969.
Authors:ZHANG Jingbo  WANG Riwei  LIU Fenglian and WE N Xianbin
Affiliation:Key Laboratory on Computer Vision and Systems,Ministry of Education of China,Key Laboratory on Intelligence Computing and Novel Software Technology of t he City of Tianjin,Tianjin University of Technology,Tianjin 300384,China,WenZhou University OuJiang College,Wenzhou,Zhejiang 325035,China,Key Laboratory on Computer Vision and Systems,Ministry of Education of China,Key Laboratory on Intelligence Computing and Novel Software Technology of t he City of Tianjin,Tianjin University of Technology,Tianjin 300384,China and Key Laboratory on Computer Vision and Systems,Ministry of Education of China,Key Laboratory on Intelligence Computing and Novel Software Technology of t he City of Tianjin,Tianjin University of Technology,Tianjin 300384,China
Abstract:The number and length of cracks in the friction lining is one of the c ore evaluation criteria to measure the braking performance of high-speed railwa y s.Effective crack detection is of great significance to the safe operation of h igh-speed railways.This paper proposes an improved algorithm based on the back b one network architecture of CSPDarkNet53to realize online automatic detection o f friction plate cracks.Firstly,the dual-path feature extraction network is f u sed to enhance the sensitivity to crack feature detection and effectively improv e the accuracy of friction plate crack detection; Secondly,in the de-redundanc y calculation of prediction box of YOLO detection module,the weighted fusion alg orithm of target box (WBF) is used to reduce the false detection rate.The exper imental results show that compared with the current most representative types of target detection algorithms,the accuracy of the method used in this paper is s ignificantly improved,and the average accuracy is increased by 7.64%.
Keywords:crack detection  target detection  deep learning  friction flakes
本文献已被 万方数据 等数据库收录!
点击此处可从《光电子.激光》浏览原始摘要信息
点击此处可从《光电子.激光》下载全文
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