Abstract
Faces are a crucial environmental trigger. They communicate information about several key features, including identity. However, the 2019 coronavirus pandemic (COVID-19) significantly affected how we process faces. To prevent viral spread, many governments ordered citizens to wear masks in public. In this research, we focus on identifying individuals from images or videos by comparing facial features, identifying a person’s biometrics, and reducing the weaknesses of person recognition technology, for example when a person does not look directly at the camera, the lighting is poor, or the person has effectively covered their face. Consequently, we propose a hybrid approach of detecting either a person with or without a mask, a person who covers large parts of their face, and a person based on their gait via deep and machine learning algorithms. The experimental results are excellent compared to the current face and gait detectors. We achieved success of between 97% and 100% in the detection of face and gait based on F1 score, precision, and recall. Compared to the baseline CNN system, our approach achieves extremely high recognition accuracy.
Funder
Deputyship for Research & Innovation, Ministry of Education
Publisher
Public Library of Science (PLoS)
Reference59 articles.
1. Public Awareness and Compliance with Preventive Measures for the Novel Coronavirus (COVID-19) Pandemic in Jazan Area, KSA;WH Bashir;International Journal of Nursing Education,2021
2. Pandemic disease detection through wireless communication using infrared image based on deep learning;M Alhameed;Math Biosci Eng,2023
3. Deng J, Guo J, An X, Zhu Z, Zafeiriou S. Masked face recognition challenge: The insightface track report. In: Proceedings of the IEEE/CVF International Conference on Computer Vision; 2021. p. 1437–1444.
4. Are estimates of faces’ ages less accurate when they wear sunglasses or face masks and do these disguises make it harder to later recognise the faces when undisguised?;C Thorley;Cognitive Research: Principles and Implications,2022
5. Face masks reduce emotion-recognition accuracy and perceived closeness;F Grundmann;Plos one,2021