Abstract

The problem of gender and age identification has been addressed by many researchers, however, the attention given to it compared to the other related problems of face recognition in particular is far less. The success achieved in this domain has not seen much improvement compared to the other face recognition problems. Any language in the world has a separate set of words and grammatical rules when addressing people of different ages. The decision associated with its usage, relies on our ability to demarcate these individual characteristics like gender and age from the facial appearances at one glance. With the rapid usage of Artificial Intelligence (AI) based systems in different fields, we expect that such decision making capability of these systems match as much as to the human capability. To this end, in this work, we have designed a deep learning based model, called GRA_Net (Gated Residual Attention Network), for the prediction of age and gender from the facial images. This is a modified and improved version of Residual Attention Network where we have included the concept of Gate in the architecture. Gender identification is a binary classification problem whereas prediction of age is a regression problem. We have decomposed this regression problem into a combination of classification and regression problems for achieving better accuracy. Experiments have been done on five publicly available standard datasets namely FG-Net, Wikipedia, AFAD, UTKFAce and AdienceDB. Obtained results have proven its effectiveness for both age and gender classification, thus making it a proper candidate for the same against any other state-of-the-art methods.

Highlights

  • Age identification and gender classification play a pivotal role in our social lives

  • The final model consisted of 33 million trainable parameters

  • Identifying the age and gender of the individuals we come across in our daily lives has an important role in our social lives too

Read more

Summary

Introduction

Age identification and gender classification play a pivotal role in our social lives. Every language in the world reserves different salutations for men and women, and very often different vocabularies are used when addressing elders compared to young people. These customs are largely dependent on one’s ability to estimate these individual traits of a person: age and gender, which are obtained from the. Human’s face contains features that determine identity, age, gender, emotions, and the ethnicity of people. Among these features, age and gender identification can be especially helpful in several real-world applications including visual surveillance, medical diagnosis (premature facial aging), human-computer interaction system, access control or soft biometrics, demographic. In most of the cases, the images were collected by scanning photographs of subjects found in personal collections

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call