首页 | 官方网站   微博 | 高级检索  
     

激光视觉传感的焊缝表面缺陷识别与分类
引用本文:丁晓东,黎扬进,高向东,张艳喜,游德勇,张南峰.激光视觉传感的焊缝表面缺陷识别与分类[J].电焊机,2019,49(7):78-83.
作者姓名:丁晓东  黎扬进  高向东  张艳喜  游德勇  张南峰
作者单位:广东工业大学广东省焊接工程技术研究中心,广东广州,510006;广东工业大学广东省焊接工程技术研究中心,广东广州510006;黄埔海关,广东广州510730
基金项目:国家自然科学基金;教育厅创新团队项目
摘    要:为实现焊缝表面质量的自动检测,研究线激光视觉传感的焊缝表面质量检测方法,分析焊缝表面缺陷特征提取算法及焊缝缺陷分类模型。针对焊缝表面中的凹陷、咬边和气孔等缺陷,分析不同类型缺陷在焊缝激光条纹图像中的几何形态及空间分布特点,并结合斜率截距法与分段区间检测法提取焊缝表面缺陷的特征点。利用特征提取方法识别焊缝表面缺陷的7个特征参数,设计基于三层BP神经网络的焊缝缺陷分类模型,将提取的缺陷特征作为网络的特征输入进行网络训练。试验结果表明,所建立的焊缝缺陷分类模型可识别凹陷、咬边、气孔等焊缝表面缺陷,整体识别率达91.51%。

关 键 词:线激光视觉传感  焊缝缺陷  图像处理  缺陷识别  神经网络

Detection and classification of weld surface defects based on laser vision sensor
DING Xiaodong,LI Yangjin,GAO Xiangdong,ZHANG Yanxi,YOU Deyong,ZHANG Nanfeng.Detection and classification of weld surface defects based on laser vision sensor[J].Electric Welding Machine,2019,49(7):78-83.
Authors:DING Xiaodong  LI Yangjin  GAO Xiangdong  ZHANG Yanxi  YOU Deyong  ZHANG Nanfeng
Affiliation:(Guangdong Provincial Welding Engineering Technology Research Center,Guangdong University of Technology,Guangzhou 510006,China;Huangpu Customs,Guangzhou 510730,China)
Abstract:In order to realize the automatic detection of weld surface defects,a weld surface quality detection method based on line laser vision sensor is studied,the extraction algorithm of weld surface defect characteristics and a classification model of weld defects are analyzed. For the defects such as pit,undercut and blowhole in the weld surface,the geometric shape and spatial distribution characteristics of different defects in laser stripe images are analyzed. Also,the feature points of weld defects are extracted by slope intercept method and segmented interval detection method. Seven characteristic parameters of weld defects are detected by feature extraction method to design a weld defect classification model based on three-layer BP neural network. These extracted seven defect characteristics are input for network training as the network characteristics. The results show that the proposed method can detect the weld surface defects such as pit, undercut and gas pore,and the overall recognition rate of the classification model can reach 91.51%.
Keywords:line laser vision sensing  weld defects  digital image processing  defect detection  neural network
本文献已被 维普 万方数据 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-23

京公网安备 11010802026262号