MobileNet-Powered Deep Learning for Efficient Face Classification

Publications

MobileNet-Powered Deep Learning for Efficient Face Classification

Year : 2024

Publisher : Institute of Electrical and Electronics Engineers Inc.

Source Title : 2024 IEEE International Students' Conference on Electrical, Electronics and Computer Science, SCEECS 2024

Document Type :

Abstract

Facial image analysis and categorization have recently made great strides in computer vision. The current study, explores ways to help computers better recognize faces quickly and accurately, especially for tasks like security and entertainment. Identifying faces, emotions, and identities is crucial in Security and Surveillance, Access Control, user Authentication in Smart Devices, and Emotion Analysis in Human-Computer Interaction. Adopting the MobileNet deep learning model because it requires less memory works efficiently. To make it even more effective at recognizing faces, adjusted its parameters and tested it with two data sets, the CASIA 3D face data set and 105 pins data set. The study using MobileNetV2 achieved a very high accuracy of 98.71% on the CASIA 3D face data set and 99.29% on the 105 pins data set. The experimental results show that MobileNetV2 better understands faces in different situations.