Ethnic Characterization in Amalgamated People for Airport Security Using a Repository of Images and Pigeon-Inspired Optimization (PIO) Algorithm for the Improvement of Their Results
Resumen
Nowadays, the latent danger that there is a terrorist attack in an airport
anywhere in the world is a matter of first importance, that is why biometrics plays
a vital role in our daily life—In our case it can determine the Facial characteristics
of an individual, including their ethnicity. Given that this type of intelligent applications
that detect and determine the facial attributes of people is highly safe and
convenient, our society makes use of this technology almost everywhere, from the
surveillance in the airport, as has been mentioned, to smart homes. in general in any
aspect related to a smart city. In comparison with other biometric solutions, facial
recognition produces greater advantages, since it does not require interaction or the
permission of the subject. From this point of view, it represents a fast and effective
way to increase our level of security, especially in open and crowded places.
Automated facial recognition is a modern concept, and novel research related to
image analysis. It was born in the 1960s and is still in permanent development. In
2006, the project “Facial Recognition Grand Challenge” (FRGC) evaluated the facial
recognition algorithms available at that time. Tests with 3D scanners, high-quality
images, and iris photographs. The FRGC showed that the algorithms available at that
time were 10 times more accurate than those of 2002 and 100 better than those of
1995. Some recognition methods were able to overcome humans in face recognition
and could even distinguish between twins identical In our case and using a novel
algorithm called Pigeon-Inspired Optimization (PIO) Algorithm.
Colecciones
- Capítulo en libro [232]
El ítem tiene asociados los siguientes archivos de licencia: