Road enforcement monitoring system based on vehicle type recognition using sparse filtering convolutional neural network with layer skipping strategy (SFCNNLS)

Road Enforcement Monitoring System (REMS) is one of the traffic monitoring systems to monitor the enforcement of a specific route for public transportation in cities. The aim of this system is to automatically and efficiently monitor the enforcement to ensure it is adhered by the traffic users. This...

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Main Authors: Suryanti, Awang, Nik Mohamad Aizuddin, Nik Azmi, Ngahzaifa, Ab. Ghani
Format: Conference or Workshop Item
Language:English
English
Published: Institute of Electrical and Electronics Engineers Inc. (IEEE) 2019
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/24574/
http://umpir.ump.edu.my/id/eprint/24574/1/10.%20Road%20enforcement%20monitoring%20system%20based%20on%20vehicle.pdf
http://umpir.ump.edu.my/id/eprint/24574/2/10.1%20Road%20enforcement%20monitoring%20system%20based%20on%20vehicle.pdf
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author Suryanti, Awang
Nik Mohamad Aizuddin, Nik Azmi
Ngahzaifa, Ab. Ghani
author_facet Suryanti, Awang
Nik Mohamad Aizuddin, Nik Azmi
Ngahzaifa, Ab. Ghani
author_sort Suryanti, Awang
building UMP Institutional Repository
collection Online Access
description Road Enforcement Monitoring System (REMS) is one of the traffic monitoring systems to monitor the enforcement of a specific route for public transportation in cities. The aim of this system is to automatically and efficiently monitor the enforcement to ensure it is adhered by the traffic users. This aim is difficult to be achieved in current practice that relied on human observation by the authorities. Due to that, we proposed to combine REMS with vehicle type recognition (VTR) method known as Sparse-Filtered Convolutional Neural Network with Layer Skipping-strategy (SF-CNNLS). The purpose of using this method is to recognize and classify the vehicles that use the specific route. It is to prevent any vehicle other than public transportations use that route. The output from VTR will be used by REMS to trigger an immediate message to the authorities for further action. The major challenge of our method is to differentiate taxi and bus as public transportations with car and truck. This is because these vehicles have almost similar features. We tested our method with a self-obtained video that captured from a mounted-camera to observe if the challenge is able to be overcome. For the initial stage, the test is deployed on 4 major vehicle classes; car, taxi, truck and bus. The highest accuracy is obtained from car class with 92.5% and an average accuracy is 81.76%. Based on the test, we proved that our method is able to recognize and classify the vehicle classes although the vehicles are sharing almost similar features.
first_indexed 2025-11-15T02:35:21Z
format Conference or Workshop Item
id ump-24574
institution Universiti Malaysia Pahang
institution_category Local University
language English
English
last_indexed 2025-11-15T02:35:21Z
publishDate 2019
publisher Institute of Electrical and Electronics Engineers Inc. (IEEE)
recordtype eprints
repository_type Digital Repository
spelling ump-245742024-01-08T04:22:16Z http://umpir.ump.edu.my/id/eprint/24574/ Road enforcement monitoring system based on vehicle type recognition using sparse filtering convolutional neural network with layer skipping strategy (SFCNNLS) Suryanti, Awang Nik Mohamad Aizuddin, Nik Azmi Ngahzaifa, Ab. Ghani QA76 Computer software Road Enforcement Monitoring System (REMS) is one of the traffic monitoring systems to monitor the enforcement of a specific route for public transportation in cities. The aim of this system is to automatically and efficiently monitor the enforcement to ensure it is adhered by the traffic users. This aim is difficult to be achieved in current practice that relied on human observation by the authorities. Due to that, we proposed to combine REMS with vehicle type recognition (VTR) method known as Sparse-Filtered Convolutional Neural Network with Layer Skipping-strategy (SF-CNNLS). The purpose of using this method is to recognize and classify the vehicles that use the specific route. It is to prevent any vehicle other than public transportations use that route. The output from VTR will be used by REMS to trigger an immediate message to the authorities for further action. The major challenge of our method is to differentiate taxi and bus as public transportations with car and truck. This is because these vehicles have almost similar features. We tested our method with a self-obtained video that captured from a mounted-camera to observe if the challenge is able to be overcome. For the initial stage, the test is deployed on 4 major vehicle classes; car, taxi, truck and bus. The highest accuracy is obtained from car class with 92.5% and an average accuracy is 81.76%. Based on the test, we proved that our method is able to recognize and classify the vehicle classes although the vehicles are sharing almost similar features. Institute of Electrical and Electronics Engineers Inc. (IEEE) 2019-05 Conference or Workshop Item PeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/24574/1/10.%20Road%20enforcement%20monitoring%20system%20based%20on%20vehicle.pdf pdf en http://umpir.ump.edu.my/id/eprint/24574/2/10.1%20Road%20enforcement%20monitoring%20system%20based%20on%20vehicle.pdf Suryanti, Awang and Nik Mohamad Aizuddin, Nik Azmi and Ngahzaifa, Ab. Ghani (2019) Road enforcement monitoring system based on vehicle type recognition using sparse filtering convolutional neural network with layer skipping strategy (SFCNNLS). In: 6th IEEE International Conference on Industrial Engineering and Applications, ICIEA 2019 , 12 - 15 April 2018 , Waseda University, Tokyo, Japan. pp. 475-479.. ISBN 978-172810851-3 (Published) https://doi.org/10.1109/IEA.2019.8715122
spellingShingle QA76 Computer software
Suryanti, Awang
Nik Mohamad Aizuddin, Nik Azmi
Ngahzaifa, Ab. Ghani
Road enforcement monitoring system based on vehicle type recognition using sparse filtering convolutional neural network with layer skipping strategy (SFCNNLS)
title Road enforcement monitoring system based on vehicle type recognition using sparse filtering convolutional neural network with layer skipping strategy (SFCNNLS)
title_full Road enforcement monitoring system based on vehicle type recognition using sparse filtering convolutional neural network with layer skipping strategy (SFCNNLS)
title_fullStr Road enforcement monitoring system based on vehicle type recognition using sparse filtering convolutional neural network with layer skipping strategy (SFCNNLS)
title_full_unstemmed Road enforcement monitoring system based on vehicle type recognition using sparse filtering convolutional neural network with layer skipping strategy (SFCNNLS)
title_short Road enforcement monitoring system based on vehicle type recognition using sparse filtering convolutional neural network with layer skipping strategy (SFCNNLS)
title_sort road enforcement monitoring system based on vehicle type recognition using sparse filtering convolutional neural network with layer skipping strategy (sfcnnls)
topic QA76 Computer software
url http://umpir.ump.edu.my/id/eprint/24574/
http://umpir.ump.edu.my/id/eprint/24574/
http://umpir.ump.edu.my/id/eprint/24574/1/10.%20Road%20enforcement%20monitoring%20system%20based%20on%20vehicle.pdf
http://umpir.ump.edu.my/id/eprint/24574/2/10.1%20Road%20enforcement%20monitoring%20system%20based%20on%20vehicle.pdf