TraVis: Web-based vehicle classification and counter using computer vision

Some traffic monitoring systems that have been deployed lack accessibility and understandability in terms of the information they provide. There are also cases where the traffic is not well monitored due to human limitations. With this in mind, TraVis is developed as a traffic monitoring system that...

Full description

Saved in:
Bibliographic Details
Main Authors: Aguirre, Nino Byron F., Alcantara, Jan Andre R., Trinidad, John Ferdinand C.
Format: text
Language:English
Published: Animo Repository 2015
Subjects:
Online Access:https://animorepository.dlsu.edu.ph/etd_bachelors/11375
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: De La Salle University
Language: English
id oai:animorepository.dlsu.edu.ph:etd_bachelors-12020
record_format eprints
spelling oai:animorepository.dlsu.edu.ph:etd_bachelors-120202021-10-07T02:10:11Z TraVis: Web-based vehicle classification and counter using computer vision Aguirre, Nino Byron F. Alcantara, Jan Andre R. Trinidad, John Ferdinand C. Some traffic monitoring systems that have been deployed lack accessibility and understandability in terms of the information they provide. There are also cases where the traffic is not well monitored due to human limitations. With this in mind, TraVis is developed as a traffic monitoring system that makes use of a web-based environment and utilizes accessible traffic cameras with less human interaction. Systems that would serve as references in this research are VIVET [7] and VISTA [20]. VIVET is a vision-based vehicle tracking system while VISTA is based on VIVET which focuses on data acquisition of traffic parameters. TraVisf is a semi real time traffic monitoring system that tracks, classifies and counts vehicles in a selected traffic video recorded through a traffic camera. Vehicle tracking was implemented using Kalman Filter to estimate the vehicle locations. Tracked vehicles are then classified into different types (such as small, medium and large vehicles) based from their area properties. A vehicle is counted the first time it is detected. Speed estimation was done in the form of traffic flow that was based on the number of tracked vehicles per minute with six (6) frames per second as the frame rate of Archers Eye cameras. The videos that the users can choose from are the recorded traffic videos from the DLSU Archers Eye obtained through the help of Information Technology Services and the Administrators of the Archers Eye. The system utilizes its generated traffic statistics such as the vehicle counts per type and in total, the average traffic flow as to how many vehicles have passed in the surveyed road section in one minute, and the estimated traffic congestion levels. Congestion levels are directly influenced by the number of vehicles tracked and their classification. Also, to address common challenges among traffic systems such as vehicle occlusions and varying lighting conditions, TraVis was designed to use an empty background model that is continuously updated every one minute of the recorded video. In testing Travis for its vehicle detection, two types of background modeling was used: Frequent BG Modeling and One-Time BG Modeling. The Frequent BG Modeling showed 87.50% of accuracy in contract to One-Time BG Modeling that only garnered -51.30% in accuracy. 2015-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_bachelors/11375 Bachelor's Theses English Animo Repository Traffic monitoring--Technological innovations. Intelligent transportation systems Traffic engineering--Information technology. Motor vehicles--Classification. Computer Sciences
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
topic Traffic monitoring--Technological innovations. Intelligent transportation systems
Traffic engineering--Information technology. Motor vehicles--Classification.
Computer Sciences
spellingShingle Traffic monitoring--Technological innovations. Intelligent transportation systems
Traffic engineering--Information technology. Motor vehicles--Classification.
Computer Sciences
Aguirre, Nino Byron F.
Alcantara, Jan Andre R.
Trinidad, John Ferdinand C.
TraVis: Web-based vehicle classification and counter using computer vision
description Some traffic monitoring systems that have been deployed lack accessibility and understandability in terms of the information they provide. There are also cases where the traffic is not well monitored due to human limitations. With this in mind, TraVis is developed as a traffic monitoring system that makes use of a web-based environment and utilizes accessible traffic cameras with less human interaction. Systems that would serve as references in this research are VIVET [7] and VISTA [20]. VIVET is a vision-based vehicle tracking system while VISTA is based on VIVET which focuses on data acquisition of traffic parameters. TraVisf is a semi real time traffic monitoring system that tracks, classifies and counts vehicles in a selected traffic video recorded through a traffic camera. Vehicle tracking was implemented using Kalman Filter to estimate the vehicle locations. Tracked vehicles are then classified into different types (such as small, medium and large vehicles) based from their area properties. A vehicle is counted the first time it is detected. Speed estimation was done in the form of traffic flow that was based on the number of tracked vehicles per minute with six (6) frames per second as the frame rate of Archers Eye cameras. The videos that the users can choose from are the recorded traffic videos from the DLSU Archers Eye obtained through the help of Information Technology Services and the Administrators of the Archers Eye. The system utilizes its generated traffic statistics such as the vehicle counts per type and in total, the average traffic flow as to how many vehicles have passed in the surveyed road section in one minute, and the estimated traffic congestion levels. Congestion levels are directly influenced by the number of vehicles tracked and their classification. Also, to address common challenges among traffic systems such as vehicle occlusions and varying lighting conditions, TraVis was designed to use an empty background model that is continuously updated every one minute of the recorded video. In testing Travis for its vehicle detection, two types of background modeling was used: Frequent BG Modeling and One-Time BG Modeling. The Frequent BG Modeling showed 87.50% of accuracy in contract to One-Time BG Modeling that only garnered -51.30% in accuracy.
format text
author Aguirre, Nino Byron F.
Alcantara, Jan Andre R.
Trinidad, John Ferdinand C.
author_facet Aguirre, Nino Byron F.
Alcantara, Jan Andre R.
Trinidad, John Ferdinand C.
author_sort Aguirre, Nino Byron F.
title TraVis: Web-based vehicle classification and counter using computer vision
title_short TraVis: Web-based vehicle classification and counter using computer vision
title_full TraVis: Web-based vehicle classification and counter using computer vision
title_fullStr TraVis: Web-based vehicle classification and counter using computer vision
title_full_unstemmed TraVis: Web-based vehicle classification and counter using computer vision
title_sort travis: web-based vehicle classification and counter using computer vision
publisher Animo Repository
publishDate 2015
url https://animorepository.dlsu.edu.ph/etd_bachelors/11375
_version_ 1713388518583042048