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IOT Based Social Distancing & Monitoring Robot For Queue’s

T.V Sripriya, D. Akhila, K. Shravan, L.V.R Chaitanya Prasad

Abstract


Social distancing is very important for stop spreading  I gift a unique technique to mechanically discover pairs of humans in an exceedingly jammed situation in agency aren't adhering to the social distance constraint, i.e., concerning six feet of area between them. Our approach can make no assumption concerning the group density or pedestrian walking directions. The automaton consists of a three-wheel style system want to drive the robotic vehicle.. The robotic vehicle uses ir sensors for detective work distance between two people in an exceedingly queue. It any two people area unit found having but three feet distance between them, the automaton instantly sounds buzzer and tuned in to inform concerning the violation. Also, it sends alerts of those violations together with send message victimisation GSM to tell the upper authorities/head workplace to update them concerning violations with proof thus instant disciplinary action is taken. Covid-19 outbreak has brought many differences in our daily routine which is a major change for everybody but it also teaches us how to escape from this virus with necessary precautions like social distancing, this social distancing will help stop the virus without spreading. Monitoring also helps to spread more awareness. This project shows how the Robot can help with the social distancing which is very important for these days.


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References


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T.V.Sripriya, Block diagram for IOT social distancing and monitoring robot. 2022 May,22. Figure 1, Block diagram.

T.V. Sripriya, Social distancing monitoring detector. 2022 May,22. Figure 2, Social distancing detector.

T.V.Sripriya, TCP Telnet Terminal app. 2022 May,22. Figure 3,TCP Telnet app


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