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Recognition of Patterns and Marks on the Glass Panel of Computer Monitor  

Ahn, In-Mo (마산대학 컴퓨터전기공학부)
Lee, Kee-Sang (단국대학교 전기전자컴퓨터공학부)
Publication Information
The Transactions of the Korean Institute of Electrical Engineers P / v.52, no.1, 2003 , pp. 35-41 More about this Journal
Abstract
In this paper, a machine vision system for recognizing and classifying the patterns and marks engraved by die molding or laser marking on the glass panels of computer monitors is suggested and evaluated experimentally. The vision system is equipped with a neural network and an NGC pattern classifier including searching process based on normalized grayscale correlation and adaptive binarization. This system is found to be applicable even to the cases in which the segmentation of the pattern area from the background using ordinary blob coloring technique is quite difficult. The inspection process is accomplished by the use of the NGC hypothesis and ANN verification. The proposed pattern recognition system is composed of three parts: NGC matching process and the preprocessing unit for acquiring the best quality of binary image data, a neural network-based recognition algorithm, and the learning algorithm for the neural network. Another contribution of this paper is the method of generating the training patterns from only a few typical product samples in place of real images of all types of good products.
Keywords
NGC; Neural network; Glass panel; Pattern recognition; Adaptive binarization; Noise model;
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