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publication name A hybrid deep transfer learning model with machine learning methods for face mask detection in the era of the COVID-19 pandemic
Authors MohamedLoey; Gunasekaran Manogaran; Mohamed Hamed N.Tahad; Nour Eldeen M.Khalifa
year 2020
keywords COVID-19; Masked face; Deep transfer learning; Classical machine learning
journal Measurement
volume 167
issue Not Available
pages Not Available
publisher Elsevier
Local/International International
Paper Link https://www.sciencedirect.com/science/article/pii/S0263224120308289?via%3Dihub#!
Full paper download
Supplementary materials Not Available
Abstract

The coronavirus COVID-19 pandemic is causing a global health crisis. One of the effective protection methods is wearing a face mask in public areas according to the World Health Organization (WHO). In this paper, a hybrid model using deep and classical machine learning for face mask detection will be presented. The proposed model consists of two components. The first component is designed for feature extraction using Resnet50. While the second component is designed for the classification process of face masks using decision trees, Support Vector Machine (SVM), and ensemble algorithm. Three face masked datasets have been selected for investigation. The Three datasets are the Real-World Masked Face Dataset (RMFD), the Simulated Masked Face Dataset (SMFD), and the Labeled Faces in the Wild (LFW). The SVM classifier achieved 99.64% testing accuracy in RMFD. In SMFD, it achieved 99.49%, while in LFW, it achieved 100% testing accuracy.

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