Improved Accuracy of Vehicle Counter for Real-Time Traffic Monitoring System
This research proposes a background subtraction method with the truncate threshold to improve the accuracy of vehicle detection and tracking in real-time video streams. In previous research, vehicle detection accuracy still needs to be optimized, so it needed to be improved. In the vehicle detection...
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Online Access: | https://doi.org/10.2478/ttj-2020-0010 |
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doaj-5c7cc646ce404adebd7a5fa260529d162021-09-05T21:24:16ZengSciendoTransport and Telecommunication1407-61792020-04-0121212513310.2478/ttj-2020-0010ttj-2020-0010Improved Accuracy of Vehicle Counter for Real-Time Traffic Monitoring SystemSetiadi De Rosal Ignatius Moses0Fratama Rizki Ramadhan1Partiningsih Nurul Diyah Ayu2Department of Informatics Engineering, Dian Nuswantoro University, 207 Imam Bonjol Street, Semarang 50131, IndonesiaDepartment of Informatics Engineering, Dian Nuswantoro University, 207 Imam Bonjol Street, Semarang 50131, IndonesiaDepartment of Informatics Engineering, Dian Nuswantoro University, 207 Imam Bonjol Street, Semarang 50131, IndonesiaThis research proposes a background subtraction method with the truncate threshold to improve the accuracy of vehicle detection and tracking in real-time video streams. In previous research, vehicle detection accuracy still needs to be optimized, so it needed to be improved. In the vehicle detection method, there are several parts that greatly affect, one of which is the thresholding technique. Different thresholding methods can affect the results of the background and foreground separation. Based on the results of testing the proposed method can improve accuracy by more than 20% compared to the previous method. The thresholding method has a considerable influence on the final result of vehicle object detection. The results of the average accuracy of the three types of time, i.e. morning, daytime, and afternoon reached 96.01%. These results indicate that the vehicle counting accuracy is very satisfying, moreover, the method has also been implemented in a real way and can run smoothly.https://doi.org/10.2478/ttj-2020-0010traffic monitoringbackground subtractiontruncate thresholdreal-time trackingvehicle detection |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Setiadi De Rosal Ignatius Moses Fratama Rizki Ramadhan Partiningsih Nurul Diyah Ayu |
spellingShingle |
Setiadi De Rosal Ignatius Moses Fratama Rizki Ramadhan Partiningsih Nurul Diyah Ayu Improved Accuracy of Vehicle Counter for Real-Time Traffic Monitoring System Transport and Telecommunication traffic monitoring background subtraction truncate threshold real-time tracking vehicle detection |
author_facet |
Setiadi De Rosal Ignatius Moses Fratama Rizki Ramadhan Partiningsih Nurul Diyah Ayu |
author_sort |
Setiadi De Rosal Ignatius Moses |
title |
Improved Accuracy of Vehicle Counter for Real-Time Traffic Monitoring System |
title_short |
Improved Accuracy of Vehicle Counter for Real-Time Traffic Monitoring System |
title_full |
Improved Accuracy of Vehicle Counter for Real-Time Traffic Monitoring System |
title_fullStr |
Improved Accuracy of Vehicle Counter for Real-Time Traffic Monitoring System |
title_full_unstemmed |
Improved Accuracy of Vehicle Counter for Real-Time Traffic Monitoring System |
title_sort |
improved accuracy of vehicle counter for real-time traffic monitoring system |
publisher |
Sciendo |
series |
Transport and Telecommunication |
issn |
1407-6179 |
publishDate |
2020-04-01 |
description |
This research proposes a background subtraction method with the truncate threshold to improve the accuracy of vehicle detection and tracking in real-time video streams. In previous research, vehicle detection accuracy still needs to be optimized, so it needed to be improved. In the vehicle detection method, there are several parts that greatly affect, one of which is the thresholding technique. Different thresholding methods can affect the results of the background and foreground separation. Based on the results of testing the proposed method can improve accuracy by more than 20% compared to the previous method. The thresholding method has a considerable influence on the final result of vehicle object detection. The results of the average accuracy of the three types of time, i.e. morning, daytime, and afternoon reached 96.01%. These results indicate that the vehicle counting accuracy is very satisfying, moreover, the method has also been implemented in a real way and can run smoothly. |
topic |
traffic monitoring background subtraction truncate threshold real-time tracking vehicle detection |
url |
https://doi.org/10.2478/ttj-2020-0010 |
work_keys_str_mv |
AT setiadiderosalignatiusmoses improvedaccuracyofvehiclecounterforrealtimetrafficmonitoringsystem AT fratamarizkiramadhan improvedaccuracyofvehiclecounterforrealtimetrafficmonitoringsystem AT partiningsihnuruldiyahayu improvedaccuracyofvehiclecounterforrealtimetrafficmonitoringsystem |
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