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Dr. mona abdelbaset :: Publications:

Title:
Real-Time Facemask Detection for Preventing COVID-19 Spread Using Transfer Learning Based Deep Neural Network
Authors: Mona AS Ai, Anitha Shanmugam, Suresh Muthusamy, Chandrasekaran Viswanathan, Hitesh Panchal, Mahendran Krishnamoorthy, Diaa Salama Abd Elminaam, Rasha Orban
Year: 2022
Keywords: Not Available
Journal: Electronics
Volume: Not Available
Issue: Not Available
Pages: Not Available
Publisher: Multidisciplinary Digital Publishing Institute
Local/International: International
Paper Link:
Full paper Not Available
Supplementary materials Not Available
Abstract:

The COVID-19 pandemic disrupted people’s livelihoods and hindered global trade and transportation. During the COVID-19 pandemic, the World Health Organization mandated that masks be worn to protect against this deadly virus. Protecting one’s face with a mask has become the standard. Many public service providers will encourage clients to wear masks properly in the foreseeable future. On the other hand, monitoring the individuals while standing alone in one location is exhausting. This paper offers a solution based on deep learning for identifying masks worn over faces in public places to minimize the coronavirus community transmission. The main contribution of the proposed work is the development of a real-time system for determining whether the person on a webcam is wearing a mask or not. The ensemble method makes it easier to achieve high accuracy and makes considerable strides toward enhancing detection speed. In addition, the implementation of transfer learning on pretrained models and stringent testing on an objective dataset led to the development of a highly dependable and inexpensive solution. The findings provide validity to the application’s potential for use in real-world settings, contributing to the reduction in pandemic transmission. Compared to the existing methodologies, the proposed method delivers improved accuracy, specificity, precision, recall, and F-measure performance in three-class outputs. These metrics include accuracy, specificity, precision, and recall. An appropriate balance is kept between the number of necessary parameters and the time needed to conclude the various models.

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