The optimum pattern recognition and classification using neural networks

신경망을 이용한 최적 패턴인식 및 분류

  • 김진환 (경북대학교 전기공학과) ;
  • 서보혁 (경북대학교 전자전기공학과) ;
  • 박성욱 (구미1대학 응용전기학과)
  • Published : 2004.05.22

Abstract

We become an industry information society which is advanced to the altitude with the today. The information to be loading various goods each other together at a circumstance environment is increasing extremely. The restriction recognizes the data of many Quantity and it follows because the human deals the task to classify. The development of a mathematical formulation for solving a problem like this is often very difficult. But Artificial intelligent systems such as neural networks have been successfully applied to solving complex problems in the area of pattern recognition and classification. So, in this paper a neural network approach is used to recognize and classification problem was broken into two steps. The first step consist of using a neural network to recognize the existence of purpose pattern. The second step consist of a neural network to classify the kind of the first step pattern. The neural network leaning algorithm is to use error back-propagation algorithm and to find the weight and the bias of optimum. Finally two step simulation are presented showing the efficacy of using neural networks for purpose recognition and classification.

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