Character Recognition Based on Adaptive Statistical Learning Algorithm

  • K.C. Koh (Sunmoon Univ.) ;
  • Park, H.J. (Sunmoon Univ.) ;
  • Kim, J.S. (Sunmoon Univ.) ;
  • K. Koh (KAIST) ;
  • H.S. Cho (KAIST)
  • Published : 2001.10.01

Abstract

In the PCB assembly lines, as components become more complex and smaller, the conventional inspection method using traditional ICT and function test show their limitations in application. The automatic optical inspection(AOI) gradually becomes the alternative in the PCB assembly line. In Particular, the PCB inspection machines need more reliable and flexible object recognition algorithms for high inspection accuracy. The conventional AOI machines use the algorithmic approaches such as template matching, Fourier analysis, edge analysis, geometric feature recognition or optical character recognition (OCR), which mostly require much of teaching time and expertise of human operators. To solve this problem, in this paper, a statistical learning based part recognition method is proposed. The performance of the ...

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