TY - JOUR
T1 - A face mask wearing detection technique to protect against coronavirus in metro stations
AU - Choi, Minje
AU - Ku, Donggyun
AU - Jeong, Hyeri
AU - Lee, Seungjae
N1 - Publisher Copyright:
© 2023 Emerald Publishing Limited: All rights reserved.
PY - 2023/4/20
Y1 - 2023/4/20
N2 - The spread of coronavirus (COVID-19) has resulted in several changes worldwide. In particular, border closures and economic stagnation have significantly affected societies. Although the implementation of preventive measures has improved the pandemic scenario in several countries, the effectiveness of vaccines has decreased with the emergence of mutant viruses. With this background, the use of masks is considered the best method for preventing the spread of the virus. Notably, public transportation is closely related to socioeconomic activities, and the spread of infectious diseases is more likely in these closed, dense and congested areas. Moreover, the probability of infection during public transportation also depends on the proportion of commuters wearing masks. Based on the closed-circuit television footage of various public transportation spaces, the number of mask wearers can be analysed using artificial intelligence deep learning, and the probability of COVID-19 spread can be predicted by determining the proportion of mask wearers among the commuters. In this study, the importance of masks in controlling the spread of the virus is confirmed. In conclusion, appropriate measures can be implemented by determining the probability of infection according to the mask-wearing rate in public transportation spaces.
AB - The spread of coronavirus (COVID-19) has resulted in several changes worldwide. In particular, border closures and economic stagnation have significantly affected societies. Although the implementation of preventive measures has improved the pandemic scenario in several countries, the effectiveness of vaccines has decreased with the emergence of mutant viruses. With this background, the use of masks is considered the best method for preventing the spread of the virus. Notably, public transportation is closely related to socioeconomic activities, and the spread of infectious diseases is more likely in these closed, dense and congested areas. Moreover, the probability of infection during public transportation also depends on the proportion of commuters wearing masks. Based on the closed-circuit television footage of various public transportation spaces, the number of mask wearers can be analysed using artificial intelligence deep learning, and the probability of COVID-19 spread can be predicted by determining the proportion of mask wearers among the commuters. In this study, the importance of masks in controlling the spread of the virus is confirmed. In conclusion, appropriate measures can be implemented by determining the probability of infection according to the mask-wearing rate in public transportation spaces.
KW - public health
KW - rail & bus stations
KW - transport planning
UR - http://www.scopus.com/inward/record.url?scp=85159638751&partnerID=8YFLogxK
U2 - 10.1680/jmuen.22.00037
DO - 10.1680/jmuen.22.00037
M3 - Article
AN - SCOPUS:85159638751
SN - 0965-0903
VL - 176
SP - 150
EP - 160
JO - Proceedings of the Institution of Civil Engineers: Municipal Engineer
JF - Proceedings of the Institution of Civil Engineers: Municipal Engineer
IS - 3
ER -