Open Access
Using genetic algorithm feature selection in neural classification systems for image pattern recognition Implementación de selección de características con algoritmos genéticos en clasificadores neuronales para reconocimiento de patrones en imágenes
C. G. Quintero
- 01 Jan 2013
TL;DR: This paper presents an approach to feature selection by using genetic algorithms with regard to digital image recognition and quality control, and the proposed approach performed better than the other methods.
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Abstract: Pattern recognition performance depends on variations during extraction, selection and classification stages. This paper presents an approach to feature selection by using genetic algorithms with regard to digital image recognition and quality control. Error rate and kappa coefficient were used for evaluating the genetic algorithm approach Neural networks were used for classification, involving the features selected by the genetic algorithms. The neural network approach was compared to a K-nearest neighbour classifier. The proposed approach performed better than the other methods.
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