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- Title
Deep Learning Based Face Mask Detection in Religious Mass Gathering During COVID-19 Pandemic.
- Authors
AL-Ghamdi, Abdullah S. AL-Malaise; Alshammari, Sultanah M.; Ragab, Mahmoud
- Abstract
Notwithstanding the religious intention of billions of devotees, the religious mass gathering increased major public health concerns since it likely became a huge super spreading event for the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). Most attendees ignored preventive measures, namely maintaining physical distance, practising hand hygiene, and wearing facemasks. Wearing a face mask in public areas protects people from spreading COVID-19. Artificial intelligence (AI) based on deep learning (DL) and machine learning (ML) could assist in fighting covid-19 in several ways. This study introduces a new deep learning-based Face Mask Detection in Religious Mass Gathering (DLFMD-RMG) technique during the COVID-19 pandemic. The DLFMD-RMG technique focuses mainly on detecting face masks in a religious mass gathering. To accomplish this, the presented DLFMD-RMG technique undergoes two pre-processing levels: Bilateral Filtering (BF) and Contrast Enhancement. For face detection, the DLFMD-RMG technique uses YOLOv5 with a ResNet-50 detector. In addition, the face detection performance can be improved by the seeker optimization algorithm (SOA) for tuning the hyperparameter of the ResNet-50 module, showing the novelty of the work. At last, the faces with and without masks are classified using the Fuzzy Neural Network (FNN) model. The stimulation study of the DLFMD-RMG algorithm is examined on a benchmark dataset. The results highlighted the remarkable performance of the DLFMD-RMG model algorithm in other recent approaches.
- Subjects
PUBLIC health; RELIGIOUS gatherings; COVID-19 pandemic; MACHINE learning; DEEP learning
- Publication
Computer Systems Science & Engineering, 2023, Vol 46, Issue 2, p1863
- ISSN
0267-6192
- Publication type
Article
- DOI
10.32604/csse.2023.035869