Résumé:
This thesis presents the development of an innovative access control system that
verifies kinship based on facial characteristics from images. The main objective is to
design a robust and accurate method to determine the relationship between
individuals. This system has applications in residential security, access control to
restricted areas, and identification within a family environment. The thesis utilizes
convolutional neural networks (CNN) to classify similarities and differences among
family members. The proposed method achieved an accuracy of 91.75% on the
KinFaceW-II database.