CNN Based Features Extraction for Age Estimation and Gender Classification

Authors

  • Mohammed Kamel Benkaddour university of kasdi merbah , ouargla , ALGERIA

DOI:

https://doi.org/10.31449/inf.v45i5.3262

Abstract

This paper proposes automatic age and gender predictions based on feature extraction from human facial images. In contrast to the other traditional methods on the unfiltered benchmarks show their failure to manage large degrees of variation in these types of facial images. In this work, we show that by learning representations through the use of deep convolutional neural networks (CNN), a significant increase in performance can be obtained on these tasks. The novel CNN approach used in this research is made to classify and achieve robust age group and gender classification of unconstrained images. This study has been evaluated and tested on both Essex face dataset and Adience benchmark for gender prediction and age estimation. The results obtained show that the proposed method provide a significant improvement in performance, our model obtains the state-of-the-art performance in both age and gender classification.

Author Biography

Mohammed Kamel Benkaddour, university of kasdi merbah , ouargla , ALGERIA

DR Mohammed kamel Benkaddour currently works at the Faculty of New Technologies of Information and Communication (FNTIC), Université Kasdi Merbah Ouargla. Mohammed does research in Electronic Engineering, Telecommunications Engineering and Artificial Neural Network.

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Published

2021-08-26

How to Cite

Benkaddour, M. K. (2021). CNN Based Features Extraction for Age Estimation and Gender Classification. Informatica, 45(5). https://doi.org/10.31449/inf.v45i5.3262

Issue

Section

Regular papers