Contactless Surveillance for Preventing Wind-Borne Disease using Deep Learning Approach

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Abstract

Covid-19 has been marked as a pandemic worldwide caused by the SARS-CoV-2 virus. Different studies are being conducted with a view to preventing and lessening the infections caused by covid-19. In future, many other wind-borne diseases may also appear and even emerge as “pandemic”. To prevent this, various measures should be an integral part of our daily life such as wearing face masks. It is tough to manually ensure individuals safety. The goal of this paper is to automate the process of contactless surveillance so that substantial prevention can be ensured against all kinds of wind-borne diseases. For automating the process, real time analysis and object detection is a must for which deep learning is the most efficient approach. In this paper, a deep learning model is used to check if a person takes any preventive measures. In our experimental analysis, we considered real time face mask detection as a preventive measure. We proposed a new face mask detection dataset. The accuracy of detecting a face mask along with the identity of a person achieved accuracy of 99.5%. The proposed model decreases time consumption as no human intervention is needed to check an individual person. This model helps to decrease infection risk by using a contactless automation system.

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APA

Joy, M. M. A., Bushra, I. J., Ayshee, R., Hasan, S., Hassan, S. B., Ali, M. S., … Islam, M. (2022). Contactless Surveillance for Preventing Wind-Borne Disease using Deep Learning Approach. International Journal of Advanced Computer Science and Applications, 13(11), 775–783. https://doi.org/10.14569/IJACSA.2022.0131190

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