디지털 영상처리와 신경망을 이용한 2차원 평면 물체 품질 제어

Quality Control of Two Dimensions Using Digital Image Processing and Neural Networks

  • 김진환 (경북대학교 전기공학과) ;
  • 서보혁 (경북대학교 전기공학과) ;
  • 박성욱 (구미1대학 컴퓨터응용전기전공)
  • 발행 : 2004.07.14

초록

In this paper, a Neural Network(NN) based approach for classification of two dimensions images. The proposed algorithm is able to apply in the actual industry. The described diagnostic algorithm is presented to defect surface failures on tiles. A way to get data for a digital image process is several kinds of it. The tiles are scanned and the digital images are preprocessed and classified using neural networks. It is important to reduce the amount of input data with problem specific preprocessing. The auto-associative neural network is used for feature generation and selection while the probabilistic neural network is used for classification. The proposed algorithm is evaluated experimentally using one hundred of the real tile images. Sample image data to preprocess have histogram. The histogram is used as input value of probabilistic neural network. Auto-associative neural network compress input data and compressed data is classified using probabilistic neural network. Classified sample images are determined by human state. So it is intervened human subjectivity. But digital image processing and neural network are better than human classification ability. Therefore it is very useful of quality control improvement.

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