A Deep Learning-based Approach for Real-time Facemask Detection
- URL: http://arxiv.org/abs/2110.08732v1
- Date: Sun, 17 Oct 2021 06:12:02 GMT
- Title: A Deep Learning-based Approach for Real-time Facemask Detection
- Authors: Wadii Boulila, Ayyub Alzahem, Aseel Almoudi, Muhanad Afifi, Ibrahim
Alturki, Maha Driss
- Abstract summary: The COVID-19 pandemic is causing a global health crisis. Public spaces need to be safeguarded from the adverse effects of this pandemic.
Wearing a facemask becomes one of the effective protection solutions adopted by many governments.
The goal of this paper is to use deep learning (DL), which has shown excellent results in many real-life applications, to ensure efficient real-time facemask detection.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The COVID-19 pandemic is causing a global health crisis. Public spaces need
to be safeguarded from the adverse effects of this pandemic. Wearing a facemask
becomes one of the effective protection solutions adopted by many governments.
Manual real-time monitoring of facemask wearing for a large group of people is
becoming a difficult task. The goal of this paper is to use deep learning (DL),
which has shown excellent results in many real-life applications, to ensure
efficient real-time facemask detection. The proposed approach is based on two
steps. An off-line step aiming to create a DL model that is able to detect and
locate facemasks and whether they are appropriately worn. An online step that
deploys the DL model at edge computing in order to detect masks in real-time.
In this study, we propose to use MobileNetV2 to detect facemask in real-time.
Several experiments are conducted and show good performances of the proposed
approach (99% for training and testing accuracy). In addition, several
comparisons with many state-of-the-art models namely ResNet50, DenseNet, and
VGG16 show good performance of the MobileNetV2 in terms of training time and
accuracy.
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