期刊文献+

基于SVM的输送带钢丝绳芯图像的缺陷分类 被引量:3

Defect Classification of Steel Rope Cord Conveyer Belt Images Based on SVM
在线阅读 下载PDF
导出
摘要 输送带钢丝绳芯缺陷一般分为:内部钢丝绳的划伤,钢丝绳芯的锈蚀,断裂,钢丝绳芯与胶带粘合力下降而导致的胶带脱落等故障。对常见的划伤和断裂的X光图像进行缺陷分类。使用机器学习方法学习图像特征,自动建立图像类的模型已成为一种有效的方法。采用支持向量机(SVM)方法通过训练特征向量,建立模型,对划伤和断裂的X光缺陷图像进行自动分类。实验结果表明基于SVM的算法适合X光钢丝绳芯图像的缺陷分类。 The defects of the steel rope cord conveyor belt generally are the internal steel cord's scratch, steel cord's corrosion, steel cord's fracture, tap off that result from steel cord and adhesive tape's adhesive force down and so on. Makes the classification of the X-ray images of the usual scratch and fracture. Using machine learning method to learn image features and to automati- cally construct models for image classes is a promising way. Through training feature vector and building model, uses SVM method to classifies the scratch and fracture's X-ray image defect. The experimental result shows that the algorithm based on SVM is suitable for the defect clas- sification of X-ray steel cord image.
出处 《现代计算机》 2012年第20期21-23,27,共4页 Modern Computer
基金 天津市高等学校科技发展基金重点项目(No.2006ZD38)
关键词 支持向量机 缺陷分类 输送带钢丝绳芯 SVM Defect Classification Steel Cord Conveyor Belt
  • 相关文献

参考文献7

二级参考文献40

  • 1王卫东,平西建,丁益洪.立体足迹重压面提取与描述[J].微计算机信息,2005,21(09X):103-104. 被引量:4
  • 2曾黄麟.粗集理论及其应用[M].重庆:重庆大学出版社,1998..
  • 3[1]Boser B E, Guyon I M, Vapnik V N. A training algorithm for optimal margin classifiers[A]. The 5th Annual ACM Workshop on COLT [C]. Pittsburgh:ACM Press, 1992. 144-152.
  • 4[2]Cortes C, Vapnik V N. Support vector networks[J].Machine Learning, 1995, 20(3): 273-297.
  • 5[3]Drucker H, Burges C J C, Kaufman L, et al. Support vector regression machines [A]. Advances in Neural Information Processing Systems[C]. Cambridge: MIT Press, 1997. 155-161.
  • 6[4]Vapnik V N, Golowich S, Smola A. Support vector method for function approximation, regression estimation and signal processing [A]. Advances in Neural Information Processing Systems [ C ].Cambridge: MIT Press, 1997. 281-287.
  • 7[5]Vapnik V N. The Nature of Statistical Learning Theory[M]. New York: Springer-Verlag, 1995.
  • 8[6]Vapnik V N. Statistical Learning Theory [M]. New York: Wiley, 1998.
  • 9[7]Vapnik V N. The Nature of Statistical Learning Theory [M]. 2nd edition. New York: SpringerVerlag, 1999.
  • 10[8]Platt J. Fast training of support vector machines using sequential minimal optimization [ A ]. Advances in Kernel Methods - Support Vector Learning [C].Cambridge: MIT Press, 1999. 185-208.

共引文献157

同被引文献22

引证文献3

二级引证文献7

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部