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Recurrent and concurrent neural networks for objects recognition

Published: 13 February 2006 Publication History

Abstract

A system based on a neural network framework is considered. We used two neural networks, an Elman network [1][2] and a Kohonen (concurrent) network [3], for a categorization task. The input of the system are objects derived from three general prototypes: circle, square, polygon. We varied the size and orientation of the objects in a continuous way. The system is trained using a new algorithm, based on recurrent version of backpropagation and Kohonen rule. The system achieves the capacity to predict the shape of the objects with a remarkable generalization [4]. We compare our results with the results using a classical Elman network. The model is implemented by a Matlab/Simulink environment.

References

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Published In

cover image Guide Proceedings
AIA'06: Proceedings of the 24th IASTED international conference on Artificial intelligence and applications
February 2006
512 pages
ISBN:0889865566

Publisher

ACTA Press

United States

Publication History

Published: 13 February 2006

Author Tags

  1. artificial neural networks
  2. artificial vision
  3. autonomous robotics
  4. object recognition
  5. recurrent neural networks

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