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The Parameter Learning Method for Similar Image Rating Using Pulse Coupled Neural Network

  • 투고 : 2016.12.15
  • 심사 : 2016.12.31
  • 발행 : 2016.12.31

초록

The Pulse Coupled Neural Network (PCNN) is a kind of neural network models that consists of spiking neurons and local connections. The PCNN was originally proposed as a model that can reproduce the synchronous phenomena of the neurons in the cat visual cortex. Recently, the PCNN has been applied to the various image processing applications, e.g., image segmentation, edge detection, pattern recognition, and so on. The method for the image matching using the PCNN had been proposed as one of the valuable applications of the PCNN. In this method, the Genetic Algorithm is applied to the PCNN parameter learning for the image matching. In this study, we propose the method of the similar image rating using the PCNN. In our method, the Genetic Algorithm based method is applied to the parameter learning of the PCNN. We show the performance of our method by simulations. From the simulation results, we evaluate the efficiency and the general versatility of our parameter learning method.

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참고문헌

  1. R. Eckhorn, H. J. Reitboeck, M. Arndt, and P. Dicke, " Feature linking via synchronization among distributed assemblies," Neural Computation, Vol.2, pp.293-307,1990. https://doi.org/10.1162/neco.1990.2.3.293
  2. R. Eckhorn, "Neural Mechanisms of Scene Segmentati on: Recording from the Visual Cortex Suggest Basic C ircuits for Linking Field Model," IEEE Trans. Neural Network, vol.10, no.3, pp.464-479, 1999. https://doi.org/10.1109/72.761705
  3. J.L. Johnson and M.L. Padgett, "PCNN Models a nd Applications," IEEE Transactions on Neural Ne twork, vol. 10, no. 3, pp.480-498, 1999. https://doi.org/10.1109/72.761706
  4. H.S. Ranganth and G. Kuntimad, "Image segment ation using pulse coupled neural networks," in Proceedings of the international Conference on N eural Networks, Orlando, vol. 2, 1285-1290, 1994.
  5. T. Lindblad and J. M. Kinser, Image processing using pulse-coupled neural networks, Springer-Verlag, 2005.
  6. H. Kurokawa, S. Kaneko, and M. Yonekawa, "A Color Image Segmentation using Inhibitory Connec ted Pulse Coupled Neural Network" in Proceedings of the international conference on Artificial neural network, Limassol, pp.776-783, 2009.
  7. M. Yonekawa and H. Kurokawa, "The parameter opti mization of the pulse coupled neural network for the p attern recognition," in Proceedings of the international conference on Artificial neural network, Thessaloniki , pp.179-187, 2010.
  8. M. Yonekawa and H. Kurokawa, "An evaluation of the image recognition method using pulse coupled neural network," in Proceedings of the international confere nce on Artificial neural networks, Espoo, pp.217-224, 2011.
  9. A.H.Weight, "Genetic algorithms for real parameter optimization," Foundations of Genetic Algorithms, vol. 1, pp. 205-218, 1991.