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Optimization of Artificial Neural Networks with Genetic Algorithms for Biometric Pattern Recognition

Optimization of Artificial Neural Networks with Genetic Algorithms for Biometric Pattern Recognition AbstractThe process of pattern recognition in the biometrics is particularly important. The patterns can differ from each other a lot, and even the samples can be significantly different from the templates. The Artificial Neural Networks can be applied as a universal approximator to recognize the patterns with more flexibility. However the topology of the networks determines the processing time and complexity of the hardware of the physical environments. The Genetic Algorithms can be used with success in optimization problems like in this situation, the topology of the neural network is more optimal if we apply the Genetic Algorithms. This study introduce an algorithm in which a tailor made algorithm correcting the topology to enhance the effectiveness of the process. http://www.deepdyve.com/assets/images/DeepDyve-Logo-lg.png Land Forces Academy Review de Gruyter

Optimization of Artificial Neural Networks with Genetic Algorithms for Biometric Pattern Recognition

Land Forces Academy Review , Volume 24 (3): 9 – Sep 1, 2019

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Publisher
de Gruyter
Copyright
© 2019 Gábor Werner et al., published by Sciendo
eISSN
2247-840X
DOI
10.2478/raft-2019-0031
Publisher site
See Article on Publisher Site

Abstract

AbstractThe process of pattern recognition in the biometrics is particularly important. The patterns can differ from each other a lot, and even the samples can be significantly different from the templates. The Artificial Neural Networks can be applied as a universal approximator to recognize the patterns with more flexibility. However the topology of the networks determines the processing time and complexity of the hardware of the physical environments. The Genetic Algorithms can be used with success in optimization problems like in this situation, the topology of the neural network is more optimal if we apply the Genetic Algorithms. This study introduce an algorithm in which a tailor made algorithm correcting the topology to enhance the effectiveness of the process.

Journal

Land Forces Academy Reviewde Gruyter

Published: Sep 1, 2019

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