Edge Detection Using Integrate and Fire Neuron Model

Edge detection is one of the most basic stages of image processing and have been used in many areas. Its purpose is to determine the pixels formed the objects. Many researchers have aimed to determine objects' edges correctly, like as they are determined by the human eye. In this study, a new edge detection technique based on spiking neural network is proposed. The proposed model has a different receptor structure than the ones found in literature and also does not use gray level values of the pixels in the receptive field directly. Instead, it takes the gray level differences between the pixel in the center of the receptive field and others as input. The model is tested by using BSDS train dataset. Besides, the obtained results are compared with the results calculated by Canny edge detection method.

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[1] Canny, J. A. 1986. Computational Approach to Edge-detection. IEEE Transactions on Pattern Analysis and Machine Intelligence, 8(6), 679- 698.

[2] Demirci, R. 2007. Similarity Relation MatrixBased Color Edge Detection. AEU-International Journal of Electronics and Communications, 61(7), 469-477.

[3] Gonzalez, R.C., Woods, R.E. 2008. Digital Image Processing, 3rd Ed. Pearson/Prentice Hall, New Jersey.

[4] Wandell, B. A. 1995. Foundations of Vision. Sinauer Associates, Inc., Sunderland, MA, 476s.

[5] Kaiser, P. K., Boynton, R. 1996. Human Color Vision, 2nd edition. Optical Society of America, Washington, DC, 652s.

[6] Nadenau, M.J., Winkler, S., Alleysson, D., Kunt, M., 2000. Human vision models for perceptually optimized image processing–a review. Proceedings of the IEEE, 32.

[7] Kerr, D., Mcginnity, T.M., Coleman, S., Clogenson, M. 2015. A Biologically Inspired Spiking Model of Visual Processing for Image Feature Detection. Neurocomputing, 158, 268-280.

[8] Kandel, E. R., Schwartz, J. H., Jessell, T. M. 2000. Principles of Neural Science. 4nd edition, McGraw-Hill, New York, 1760s.

[9] Hosoya, T., Baccus, S. A., Meister, M. 2005. Dynamic Predictive Coding by the Retina. Nature, 436, 71 – 77.

[10] Wu, Q., McGinnity, M., Maguire, L., Belatreche, A., Glackin, B., 2007, August. Edge detection based on spiking neural network model. In International Conference on Intelligent Computing (pp. 26-34). Springer, Berlin, Heidelberg.

[11] DiCarlo, J., Zoccolan, D., Rust, N.C. 2012. How does the Brain Solve Visual Object Recognition? Neuron 73(3), 415–434.

[12] Clarke, A., Tyler, L.K., 2015. Understanding what we see: how we derive meaning from vision. Trends in cognitive sciences, 19(11), 677-687.

[13] Ghahari, A., Enderle, J. D. 2015 Models of Horizontal Eye Movements: Part4, A Multiscale Neuron and Muscle Fiber-Based Linear Saccade Model. Synthesis Lectures on Biomedical Engineering, Morgan & Claypool Publishers.

[14] Kunkle, D. R., Merrigan, C. 2002. Pulsed Neural Networks and Their Application. Computer Science Dept., College of Computing and Information Sciences, Rochester Institute of Technology.

[15] Ghosh-Dastidar, S., Adeli, H., 2009. Spiking neural networks. International journal of neural systems, 19(04), 295-308.

[16] Ponulak, F. and Kasinski, A., 2011. Introduction to spiking neural networks: Information processing, learning and applications. Acta neurobiologiae experimentalis, 71(4), 409-433.

[17] Rozenberg, G., Bäck, T., Kok, J. N. 2011. Handbook of Natural Computing. Springer, Berlin, 2052s.

[18] Yedjour, H., Meftah, B., Lézoray, O., Benyettou, A., 2017. Edge detection based on Hodgkin–Huxley neuron model simulation. Cognitive processing, 18(3), 315-323.

[19] Wu, Q., McGinnity, M., Maguire, L., Glackin, B., Belatreche, A., 2007. Learning mechanisms in networks of spiking neurons. In Trends in Neural Computation (pp. 171-197). Springer, Berlin, Heidelberg.

[20] Meftah, B., Lezoray, O., Benyettou, A., 2010. Segmentation and edge detection based on spiking neural network model. Neural Processing Letters, 32(2), 131-146.

[21] Kerr, D., Coleman, S., McGinnity, M., Wu, Q. X., Clogenson, M. 2011. Biologically Inspired Edge Detection. 11th International Conference on Intelligent Systems Design and Applications, 22- 24 November, Cordoba, Spain.

[22] Díaz-Pernas, F.J., Antón-Rodríguez, M., de la Torre-Díez, I., Martínez-Zarzuela, M., GonzálezOrtega, D., Boto-Giralda, D., Díez-Higuera, J.F., 2011. Surround suppression and recurrent interactions V1–V2 for natural scene boundary detection. Image segmentation. INTECH Publisher, pp.99-118.

[23] Azzopardi, G., Petkov, N., 2012. A CORF computational model of a simple cell that relies on LGN input outperforms the Gabor function model. Biological cybernetics, 106(3), 177-189.

[24] Hodgkin, A.L., Huxley, A.F., 1952. A quantitative description of membrane current and its application to conduction and excitation in nerve. The Journal of physiology, 117(4), 500- 544.

[25] Nelson, M. E., 2004. Electrophysiological Models. Koslow, S., Subramaniam, S., (Eds.) In Data Basing the Brain: From Data To Knowledge. Wiley, New York, 480s.

[26] FitzHugh, R. 1969. Mathematical Models of Excitation and Propagation in Nerve. McGraw Hill, New York.

[27] Nagumo, J., Sato, S. 1972. On a Response Characteristic of Mathematical Neuron Model. Kybernetik, 10(3), 155-164.

[28] Gerstner, W., Kistler, W. M. 2002. Spiking Neuron Models: Single Neurons, Populations, Plasticity. Cambridge Univ. Press, United Kingdom, 496s.

[29] Izhikevich, E. M. 2003. Simple Model of Spiking Neurons. IEEE Trans. Neural Networks, 14, 1569–1572.

[30] Maass, W., Bishop, C. M. 1999. Pulsed Neural Networks. MIT Press, Cambridge, MA, 377s.

[31] Richardson, M. J. E., Gerstner, W. 2003. Conductance Versus Current-Based Integrateand-Fire Neurons: Is There Qualitatively New Behaviour? Lausanne lecture.

[32] Mainen, Z. F. 1995. Mechanisms of spike generation in neocortical neurons. University of California, Doctoral dissertation, 72s, San Diego.

[33] Destexhe, A., 1997. Conductance-based integrate-and-fire models. Neural Computation, 9(3), 503-514.

[34] Koch, C. 1999. Biophysics of Computation: Information Processing in Single Neurons. Oxford University Press, New York, 588s.

[35] Dayan, P., Abbott, L. F. 2001. Theoretical Neuroscience: Computational and Mathematical Modeling of Neural Systems. The MIT Press, Cambridge, 480s.

[36] Müller, E. 2003. Simulation of high-conductance states in cortical neural networks. University of Heidelberg, Master’s Thesis, Germany, 41s.
Süleyman Demirel Üniversitesi Fen Bilimleri Enstitüsü Dergisi-Cover
  • ISSN: 1300-7688
  • Yayın Aralığı: Yılda 3 Sayı
  • Başlangıç: 1995
  • Yayıncı: Süleyman Demirel Üniversitesi
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