An improved age invariant face recognition using data augmentation
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Bulletin of Electrical Engineering and Informatics
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Abstract
In spite of the significant advancement in face recognition expertise,
accurately recognizing the face of the same individual across different ages
still remains an open research question. Face aging causes intra-subject
variations (such as geometric changes during childhood & adolescence,
wrinkles and saggy skin in old age) which negatively affects the accuracy of
face recognition systems. Over the years, researchers have devised different
techniques to improve the accuracy of age invariant face recognition (AIFR)
systems. In this paper, the face and gesture recognition network (FG-NET)
aging dataset was adopted to enable the benchmarking of experimental
results. The FG-Net dataset was augmented by adding four different types of
noises at the preprocessing phase in order to improve the trait aging face
features extraction and the training model used at the classification stages,
thus addressing the problem of few available training aging for face
recognition dataset. The developed model was an adaptation of a pre-trained
convolution neural network architecture (Inception-ResNet-v2) which is
a very robust noise. The proposed model on testing achieved a 99.94%
recognition accuracy, a mean square error of 0.0158 and a mean absolute
error of 0.0637. The results obtained are significant improvements in
comparison with related works.