Estimation of density level of people with wearable devices in a room
In our daily lives, there have been many tourist attractions places that we often visit such as Botanic Gardens, Orchard Road, Sentosa, Chinatown, Nature Parks & Nature Reserves, etc. which are prone to crowd disasters. In addition, the current ongoing coronavirus pandemic are also similar...
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Format: | Final Year Project |
Language: | English |
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Nanyang Technological University
2021
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Online Access: | https://hdl.handle.net/10356/149654 |
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Institution: | Nanyang Technological University |
Language: | English |
Summary: | In our daily lives, there have been many tourist attractions places that we often visit
such as Botanic Gardens, Orchard Road, Sentosa, Chinatown, Nature Parks & Nature
Reserves, etc. which are prone to crowd disasters. In addition, the current ongoing
coronavirus pandemic are also similar as crowd disasters occur due to the high
densities level within people in a room. This research aims to estimate the density
level of people with wearable devices in crowded places and also to direct and
control the people to better alternative options to reduce such issues. We will be
using a simulation software to predict and conclude the results so that we can avoid
such crowded areas. This report will be applying various different methods such as
machine learning algorithms to avoid the crowd and lead the user to a better
way/road to the destination as it will predict the crowded areas base on Bluetooth
devices within an area range of 10m. In addition, the response of the human agent
model to the wearable device will also be examined in this report. For future work, a
mobile application can be develop to make it just like the NPark website. |
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