International audienceConvolutional Neural Networks (CNNs) have been proven very effective for human demographics estimation by a number of recent studies. However, the proposed solutions significantly vary in different aspects leaving many open questions on how to choose an optimal CNN architecture and which training strategy to use. In this work, we shed light on some of these questions improving the existing CNN-based approaches for gender and age prediction and providing practical hints for future studies. In particular, we analyse four important factors of the CNN training for gender recognition and age estimation: (1) the target age encoding and loss function, (2) the CNN depth, (3) the need for pretraining, and (4) the training strat...
Age estimation from face images can be profitably employed in several applications, ranging from dig...
Automated age and gender estimation became of great importance for many potential applications rangi...
The recent progress in artificial neural networks (rebranded as deep learning) has significantly boo...
Abstract: Automatic age and gender prediction from face images has lately attracted much attention d...
Automatic age and gender classification has become rel-evant to an increasing amount of applications...
Age estimation of unrestricted imaging circumstances has attracted an augmented recognition as it is...
Age and gender identification have grown to be important components of the biometric system, protect...
Age and gender predictions of unfiltered faces classify unconstrained real-world facial images into ...
Recently, deep neural networks have demonstrated excellent performances in recognizing the age and g...
Abstract Automatic Age Estimation (AAE) has attracted attention due to the wide variety of possible...
Abstract: Age and gender classification has been around for a long time, and efforts are still being...
The problem of gender and age identification has been addressed by many researchers, however, the at...
Artificial Intelligence is a technique that imitates the human insight which deciphers and percepts ...
Age and gender classification has become relevant to an increasing amount of applications, particula...
Automated estimation of demographic attributes, such as gender and age, became of great importance f...
Age estimation from face images can be profitably employed in several applications, ranging from dig...
Automated age and gender estimation became of great importance for many potential applications rangi...
The recent progress in artificial neural networks (rebranded as deep learning) has significantly boo...
Abstract: Automatic age and gender prediction from face images has lately attracted much attention d...
Automatic age and gender classification has become rel-evant to an increasing amount of applications...
Age estimation of unrestricted imaging circumstances has attracted an augmented recognition as it is...
Age and gender identification have grown to be important components of the biometric system, protect...
Age and gender predictions of unfiltered faces classify unconstrained real-world facial images into ...
Recently, deep neural networks have demonstrated excellent performances in recognizing the age and g...
Abstract Automatic Age Estimation (AAE) has attracted attention due to the wide variety of possible...
Abstract: Age and gender classification has been around for a long time, and efforts are still being...
The problem of gender and age identification has been addressed by many researchers, however, the at...
Artificial Intelligence is a technique that imitates the human insight which deciphers and percepts ...
Age and gender classification has become relevant to an increasing amount of applications, particula...
Automated estimation of demographic attributes, such as gender and age, became of great importance f...
Age estimation from face images can be profitably employed in several applications, ranging from dig...
Automated age and gender estimation became of great importance for many potential applications rangi...
The recent progress in artificial neural networks (rebranded as deep learning) has significantly boo...