Age classification from facial images: Is frontalization necessary?

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Abstract

In the majority of the methods proposed for age classification from facial images, the preprocessing steps consist of alignment and illumination correction followed by the extraction of features, which are forwarded to a classifier to estimate the age group of the person in the image. In this work, we argue that face frontalization, which is the correction of the pitch, yaw, and roll angles of the headpose in the 3D space, should be an integral part of any such algorithm as it unveils more discriminative features. Specifically, we propose a method for age classification which integrates a frontalization algorithm before feature extraction. Numerical experiments on the widely used FGnet Aging Database confirmed the importance of face frontalization achieving an average increment in accuracy of 4.43%.

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Báez-Suárez, A. B., Nikou, C., Nolazco-Flores, J. A., & Kakadiaris, I. A. (2016). Age classification from facial images: Is frontalization necessary? In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 10072 LNCS, pp. 769–778). Springer Verlag. https://doi.org/10.1007/978-3-319-50835-1_69

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