• DocumentCode
    2940570
  • Title

    An Unsupervised Self-Organizing Neural Network for Automatic Semiconductor Wafer Defect Inspection

  • Author

    Chang, Chuan-Yu ; Chang, Jia-Wei ; Jeng, Mu Der

  • Author_Institution
    Department of Electronic Engineering National Yunlin University of Science & Technology 123, Sec. 3, University Road, Touliu, Yunlin 640, Taiwan; chuanyu@yuntech.edu.tw
  • fYear
    2005
  • fDate
    18-22 April 2005
  • Firstpage
    3000
  • Lastpage
    3005
  • Abstract
    Semiconductor wafer defect inspection is an important process before die packaging. The defective regions are usually identified through visual judgment with the aid of a scanning electron microscope. Dozens of people visually check wafers and hand-mark their defective regions. By this means, potential misjudgment may be introduced due to human fatigue. In addition, the process can incur significant personnel costs. Prior work has proposed automated post-sawing wafer defect inspection that is based on supervised neural networks. Since it requires learned patterns specific to each application, its disadvantage is the lack of product flexibility. Self-Organizing Neural Networks (SONNs) have been proven to have the capabilities of unsupervised auto-clustering. In this paper, automated wafer inspection based on a self-organizing neural network is proposed. Based on real-world data, experimental results show that the proposed method successfully identifies the defective regions on wafers with good performances.
  • Keywords
    self-organizing neural network; unsupervised learning; wafer inspection; Circuit testing; Costs; Fatigue; Humans; Image databases; Inspection; Neural networks; Personnel; Scanning electron microscopy; Semiconductor device packaging; self-organizing neural network; unsupervised learning; wafer inspection;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Robotics and Automation, 2005. ICRA 2005. Proceedings of the 2005 IEEE International Conference on
  • Print_ISBN
    0-7803-8914-X
  • Type

    conf

  • DOI
    10.1109/ROBOT.2005.1570570
  • Filename
    1570570