Vehicles Speed Estimation Model from Video Streams for Automatic Traffic Flow Analysis Systems

Image and video processing have been widely used to provide traffic parameters, which will be used to improve certain areas of traffic operations. This research aims to develop a model for estimating vehicle speed from video streams to support traffic flow analysis (TFA) systems. Subsequently, this...

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Main Authors: Arriffin, Maizatul Najihah, A. Mostafa, Salama, Umar Farooq Khattak, Umar Farooq Khattak, Musa Jaber, Mustafa, Baharum, Zirawani, Defni, Defni, Taufik Gusman, Taufik Gusman
Format: Article
Language:English
Published: JOIV 2023
Subjects:
Online Access:http://eprints.uthm.edu.my/9534/1/J16056_63a9f1205a1b5cb523ed59f37644040b.pdf
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author Arriffin, Maizatul Najihah
A. Mostafa, Salama
Umar Farooq Khattak, Umar Farooq Khattak
Musa Jaber, Mustafa
Baharum, Zirawani
Defni, Defni
Taufik Gusman, Taufik Gusman
author_facet Arriffin, Maizatul Najihah
A. Mostafa, Salama
Umar Farooq Khattak, Umar Farooq Khattak
Musa Jaber, Mustafa
Baharum, Zirawani
Defni, Defni
Taufik Gusman, Taufik Gusman
author_sort Arriffin, Maizatul Najihah
collection UTHM
description Image and video processing have been widely used to provide traffic parameters, which will be used to improve certain areas of traffic operations. This research aims to develop a model for estimating vehicle speed from video streams to support traffic flow analysis (TFA) systems. Subsequently, this paper proposes a vehicle speed estimation model with three main stages of achieving speed estimation: (1) pre-processing, (2) segmentation, and (3) speed detection. The model uses a bilateral filter in the pre-processing strategy to provide free-shadow image quality and sharpen the image. Gaussian filter and active contour are used to detect and track objects of interest in the image. The Pinhole model is used to assess the real distance of the item within the image sequence for speed estimation. Kalman filter and optical flow are used to flatten vehicle speed and acceleration uncertainties. This model is evaluated with a dataset that consists of video recordings of moving vehicles at traffic light junctions on the urban roadway. The average percentage for speed estimation error is 20.86%. The average percentage for accuracy obtained is 79.14%, and the overall average precision of 0.08.
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spelling uthm.eprints-95342023-08-02T03:46:43Z http://eprints.uthm.edu.my/9534/ Vehicles Speed Estimation Model from Video Streams for Automatic Traffic Flow Analysis Systems Arriffin, Maizatul Najihah A. Mostafa, Salama Umar Farooq Khattak, Umar Farooq Khattak Musa Jaber, Mustafa Baharum, Zirawani Defni, Defni Taufik Gusman, Taufik Gusman T Technology (General) Image and video processing have been widely used to provide traffic parameters, which will be used to improve certain areas of traffic operations. This research aims to develop a model for estimating vehicle speed from video streams to support traffic flow analysis (TFA) systems. Subsequently, this paper proposes a vehicle speed estimation model with three main stages of achieving speed estimation: (1) pre-processing, (2) segmentation, and (3) speed detection. The model uses a bilateral filter in the pre-processing strategy to provide free-shadow image quality and sharpen the image. Gaussian filter and active contour are used to detect and track objects of interest in the image. The Pinhole model is used to assess the real distance of the item within the image sequence for speed estimation. Kalman filter and optical flow are used to flatten vehicle speed and acceleration uncertainties. This model is evaluated with a dataset that consists of video recordings of moving vehicles at traffic light junctions on the urban roadway. The average percentage for speed estimation error is 20.86%. The average percentage for accuracy obtained is 79.14%, and the overall average precision of 0.08. JOIV 2023 Article PeerReviewed text en http://eprints.uthm.edu.my/9534/1/J16056_63a9f1205a1b5cb523ed59f37644040b.pdf Arriffin, Maizatul Najihah and A. Mostafa, Salama and Umar Farooq Khattak, Umar Farooq Khattak and Musa Jaber, Mustafa and Baharum, Zirawani and Defni, Defni and Taufik Gusman, Taufik Gusman (2023) Vehicles Speed Estimation Model from Video Streams for Automatic Traffic Flow Analysis Systems. INTERNATIONAL JOURNAL ON INFORMATICS VISUALIZATION, 7 (2). pp. 295-300.
spellingShingle T Technology (General)
Arriffin, Maizatul Najihah
A. Mostafa, Salama
Umar Farooq Khattak, Umar Farooq Khattak
Musa Jaber, Mustafa
Baharum, Zirawani
Defni, Defni
Taufik Gusman, Taufik Gusman
Vehicles Speed Estimation Model from Video Streams for Automatic Traffic Flow Analysis Systems
title Vehicles Speed Estimation Model from Video Streams for Automatic Traffic Flow Analysis Systems
title_full Vehicles Speed Estimation Model from Video Streams for Automatic Traffic Flow Analysis Systems
title_fullStr Vehicles Speed Estimation Model from Video Streams for Automatic Traffic Flow Analysis Systems
title_full_unstemmed Vehicles Speed Estimation Model from Video Streams for Automatic Traffic Flow Analysis Systems
title_short Vehicles Speed Estimation Model from Video Streams for Automatic Traffic Flow Analysis Systems
title_sort vehicles speed estimation model from video streams for automatic traffic flow analysis systems
topic T Technology (General)
url http://eprints.uthm.edu.my/9534/1/J16056_63a9f1205a1b5cb523ed59f37644040b.pdf
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