IoT based automated entry system with integration of Covid-19 symptom detection
Abstract
COVID-19 has stopped the normal life since December 2019. We still cannot go out without
worrying about getting infected by this deadly virus. Although offices and other work places have
started to open, they have to maintain a health protocol set by WHO (World Health Organization).
The main reason for this outbreak is the irresponsibility of the people and the authorities regarding
maintaining the health protocols. As people do not maintain the health protocols properly, the
safety in a work environment is breached and the virus starts to spread. After extended period of
lockdown, the world is again returning to its old state by gradually opening the educational
institutions and offices. So, to maintain the health protocol with notable integrity, the development
of an Internet of Things (IoT)-based Automated Entry System with COVID-19 Symptom
Detection is an attempt to reduce COVID-19's spread through making aware people of their
conditions. This is accomplished by first developing an RFID-based entry and log data base, then
employing a machine learning model to recognize face masks so that the device can detect
unauthorized intruder and distinguish between mask and non-mask users. After that the non contact temperature sensor and an oximeter sensor will take physical data to cross check with
COVID-19 symptoms. This way the device can determine the risk factor of being a COVID-19
virus carrier.