Title of article :
Optimized features selection for gender classification using optimization algorithms
Author/Authors :
KHAN, Sajid Ali Szabist University - Department of Computer Science, Pakistan , NAZIR, Muhammad National University of Computer Emerging Sciences, Pakistan , RIAZ, Naveed Szabist University - Department of Computer Science, Pakistan
Abstract :
Optimized feature selection is an important task in gender classification. The optimized features not only reduce the dimensions, but also reduce the error rate. In this paper, we have proposed a technique for the extraction of facial features using both appearance-based and geometric-based feature extraction methods. The extracted features are then optimized using particle swarm optimization (PSO) and the bee algorithm. The geometric-based features are optimized by PSO with ensemble classifier optimization by the genetic algorithm. Using this approach, we have obtained promising results in terms of the classification error rate and computation time minimization. Moreover, our optimized feature-based method is robust to illumination, noise, and occlusion changes.
Keywords :
Gender classification , facial features , particle swarm optimization , genetic algorithm , bee algorithm
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences