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Human age classification using facial skin aging features and artificial neural network
Institution:1. Computer Science and Engineering Department, University of Bridgeport, Bridgeport, CT 06604, USA;2. Electrical Engineering Department, University of Bridgeport, Bridgeport, CT 06604, USA;1. SETIT, ENIG, Gabes, Tunisia;2. FSG, Gabes, Tunisia;3. SETIT, High Institute of Biotechnology, Sfax, Tunisia
Abstract:In this paper a novel method based on facial skin aging features and Artificial Neural Network (ANN) is proposed to classify the human face images into four age groups. The facial skin aging features are extracted by using Local Gabor Binary Pattern Histogram (LGBPH) and wrinkle analysis. The ANN classifier is designed by using two layer feedforward backpropagation neural networks. The proposed age classification framework is trained and tested with face images from PAL face database and shown considerable improvement in the age classification accuracy up to 94.17% and 93.75% for male and female respectively.
Keywords:Skin aging features  Artificial Neural Network (ANN)  Local Gabor Binary Pattern Histogram (LGBPH)  Wrinkle analysis  Age classification
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