An efficient face recognition model using multiple angular images and deep neural network architecture
Abstract
Face surface information in three dimensions is one of the promising biometric
modality that can improve the identification and increase the accuracy of verification
of face recognition systems in challenging situations.This study proposed a system
that recognizes faces from multiple angular images and deep neural networks.The
proposed model can be divided into three steps: image acquisition, processing, and
recognition.In acquisition part we take multiple angular images of the face which was
taken by us and the angle was (0° to 180°)whereas right side was considered as pos itive(0° to +90°) and left side was considered as negative(0°to -90°). After that the
images using Haar cascade and MTCNN algorithm segment the image, specially the
face area.Then we used deep learning model VGG16,VGG19,InceptionNetV3 and
ResNet50 to determine the face of person where the accuracy were 97%,92%,98%and
98% respectively.This article aggregates data from openly available multiple angle
face databases to enable future research easier. The proposed system achieved more
accuracy than the existing face recognition models when angle or motion is consid ered. That’s why we came up with an idea of various multiple angles which can
detect a person in motion. The proposed system enables efficient face recognition
in dynamic motion as well as with different angular deviations.It achieved higher
accuracy than the existing 2D face recognition systems when the target object is in
motion.