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  5. Traffic density estimation and mapping using IP-CCTV networks: a campus-based approach
 
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Traffic density estimation and mapping using IP-CCTV networks: a campus-based approach

Journal
International Conference on Biomedical Engineering (ICoBE 2021)
ISSN
0094-243X
Date Issued
2023
Author(s)
Roy Francis Navea
De la Salle University, Manila, Philippines
John Carl Bautista
De la Salle University, Manila, Philippines
Adrian Giuseppe Francis Fernan
De la Salle University, Manila, Philippines
Zendrel Gacuya
De la Salle University, Manila, Philippines
Saidatul Ardeenawatie Awang
Universiti Malaysia Perlis
DOI
10.1063/5.0111785
Handle (URI)
https://pubs.aip.org/aip/acp/article-abstract/2562/1/060006/2873525/Traffic-density-estimation-and-mapping-using-IP?redirectedFrom=fulltext
https://pubs.aip.org/aip
https://hdl.handle.net/20.500.14170/15184
Abstract
Closed Circuit Television (CCTV) systems are widely used in monitoring and security surveillance applications to assess status and implement measures necessary to address problems and concerns. CCTV nowadays are visible in roads for monitoring and analyzing traffic behavior and conditions. Multiple cameras are utilized to capture the different angles of the road. This is useful in improving traffic management systems, determination of road traffic density, accident reviews, and in some advanced applications, contactless apprehension. Small to medium scale community areas like industrial parks, villages, hospitals, and even academic campuses require traffic monitoring systems. In this study, a network of IP-CCTV cameras was designed to capture vehicular movement, density, and road condition in a campus setting. The network is composed of eight IP-CCTV cameras processed by four Raspberry Pi computer boards in a 2:1 camera-to-computer ratio. A graphical user interface displays the video feed of the cameras, time customizable traffic report, and the road map visualization and notifications. All computer boards can send and receive data and can create visual traffic maps displayed in the user interface. Color-coding is used in the road segments to indicate light, moderate, or heavy traffic conditions. The vehicle detection accuracy of the system is 93% while its status notification accuracy is 84%. In a campus-based application, especially those with medical and health research institutes, this model suffices its requirements in monitoring, analyzing, basis for emergency rerouting, and improvements in traffic management.
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Traffic density estimation and mapping using IP-CCTV networks A campus-based approach.pdf (103.76 KB)
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Mar 5, 2026
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