Deep learning for identification and face, gender, expression
recognition under constraints
- URL: http://arxiv.org/abs/2111.01930v1
- Date: Tue, 2 Nov 2021 22:45:09 GMT
- Title: Deep learning for identification and face, gender, expression
recognition under constraints
- Authors: Ahmad B. Hassanat, Abeer Albustanji, Ahmad S. Tarawneh, Malek
Alrashidi, Hani Alharbi, Mohammed Alanazi, Mansoor Alghamdi, Ibrahim S
Alkhazi, V. B. Surya Prasath
- Abstract summary: Deep convolutional neural network (CNN) is used in this work to extract the features from veiled-person face images.
The main objective of this work is to test the ability of deep learning based automated computer system to identify not only persons, but also to perform recognition of gender, age, and facial expressions such as eye smile.
- Score: 1.2647816797166165
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Biometric recognition based on the full face is an extensive research area.
However, using only partially visible faces, such as in the case of
veiled-persons, is a challenging task. Deep convolutional neural network (CNN)
is used in this work to extract the features from veiled-person face images. We
found that the sixth and the seventh fully connected layers, FC6 and FC7
respectively, in the structure of the VGG19 network provide robust features
with each of these two layers containing 4096 features. The main objective of
this work is to test the ability of deep learning based automated computer
system to identify not only persons, but also to perform recognition of gender,
age, and facial expressions such as eye smile. Our experimental results
indicate that we obtain high accuracy for all the tasks. The best recorded
accuracy values are up to 99.95% for identifying persons, 99.9% for gender
recognition, 99.9% for age recognition and 80.9% for facial expression (eye
smile) recognition.
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