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<title>Aliyas Thomas</title>
<link>http://hdl.handle.net/123456789/9900</link>
<description>Crowd Detection And Social Distancing Tracker</description>
<pubDate>Thu, 16 Apr 2026 18:01:22 GMT</pubDate>
<dc:date>2026-04-16T18:01:22Z</dc:date>
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<title>Crowd Detection And Social Distancing Tracker</title>
<link>http://hdl.handle.net/123456789/9901</link>
<description>Crowd Detection And Social Distancing Tracker
Thomas, Aliyas
The corona virus COVID-19 pandemic is causing a global health crisis so the&#13;
effective protection methods is maintain social distance in public areas&#13;
according to the World Health Organization (WHO). The COVID-19&#13;
pandemic forced governments across the world to impose lockdowns to&#13;
prevent virus transmissions. Reports indicate that maintaining social distance&#13;
at work clearly reduces the risk of transmission.&#13;
We will use the dataset to build a COVID-19 social distance detector with&#13;
computer vision using Python, OpenCV, and Tensor Flow and Yolo. In our&#13;
proposed system we will use live video stream and finally in output it shows&#13;
the number of violations when someone not maintaining social distance. Our&#13;
goal is to identify whether the person on image/video stream is maintaining&#13;
social distance or not with the help of computer vision, machine learning and&#13;
deep learning.&#13;
The proposed method presented in this paper is mainly for crowd surveillance&#13;
and security maintenance. This system can be utilized for events, private&#13;
property or places that have massive streams of people entering and leaving the&#13;
area, which necessitates vigilant tracking and identification of all individuals&#13;
within the premises. With deep learning, particularly CNN, the model is able&#13;
to train and learn to identify human beings using the database customized.
</description>
<pubDate>Sat, 11 Jun 2022 00:00:00 GMT</pubDate>
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<dc:date>2022-06-11T00:00:00Z</dc:date>
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