Comparison of performance and results in optical recognition hand written numbers using radial basis functions and memetic differential system

Authors

  • Bryan Montes Castañeda Universidad distrital Francisco José de Caldas
  • Omar David Bello Santos
  • Oscar Manuel Gómez Piragauta
  • Alvaro David Orjuela-Cañón

Abstract

The problem optical recognition of handwritten numbers has been approached by different methods, obtaining satisfactory results. In this paper, we propose fuzzy systems with memetic genetic algorithms. Results from this methodology are compared with artificial neuronal networks trained using semi-supervised learning and radial base functions (RBF). It is possible to observe that this kind of neuronal networks offer advantages regarding error rates and time-to-results of the recognition system, compared with methods based in fuzzy systems.

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Published

2014-09-08
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How to Cite

Montes Castañeda, B., Bello Santos, O. D., Gómez Piragauta, O. M., & Orjuela-Cañón, A. D. (2014). Comparison of performance and results in optical recognition hand written numbers using radial basis functions and memetic differential system. INGE@UAN - TENDENCIAS EN LA INGENIERÍA, 4(8). Retrieved from https://revistas.uan.edu.co/index.php/ingeuan/article/view/379

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Artículo de investigación científica y tecnológica

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