• Title/Summary/Keyword: discrete-time cellular neural network (DTCNN)

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The Structure of Reversible DTCNN (Discrete-Time Celluar Neural Networks) for Digital Image Copyright Labeling (디지털영상의 저작권보호 라벨링을 위한 Reversible DTCNN(Discrete-Time Cellular Neural Network) 구조)

  • Lee, Gye-Ho;Han, Seung-jo
    • Journal of the Korea Institute of Information and Communication Engineering
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    • v.7 no.3
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    • pp.532-543
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    • 2003
  • In this paper, we proposed structure of a reversible discrete-time cellular neural network (DTCNN) for labeling digital images to protect copylight. First, we present the concept and the structure of reversible DTCNN, which can be used to generate 2D binary pseudo-random images sequences. We presented some, output examples of different kinds of reversible DTCNNs to show their complex behaviors. Then both the original image and the copyright label, which is often another binary image, are used to generate a binary random key image. The key image is then used to scramble the original image. Since the reversibility of a reversible DTCNN, the same reversible DTCNN can recover the copyright label from a labeled image. Due to the high speed of a DTCNN chip, our method can be used to label image sequences, e.g., video sequences, in real time. Computer simulation results are presented.

Stereopsis with cellular neural networks (국소적인 연결을 갖는 신경회로망을 이용한 스테레오 정합)

  • 박성진;채수익
    • Journal of the Korean Institute of Telematics and Electronics B
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    • v.31B no.12
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    • pp.124-131
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    • 1994
  • In this paper, we propose a new approach of solving the stereopsis problem with a discrete-time cellular neural network(DTCNN) where each node has connections only with its local neithbors. Because the matching process of stereo correspondence depends on its geometrically local characteristics, the DTCNN is suitable for the stereo correspondence. Moreover, it can be easily implemented in VLSI. Therefore, we employed a two-layer DTCNN with dual templates, which are determined with the back propagation learning rule. Based on evaluation of the proposed approach for several random-dot stereograms, its performance is better than that of the Marr-Poggio algorithm.

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