Incremental learning of deep neural network for robust vehicle classification

Existing single-lane free flow (SLFF) tolling systems either heavily rely on contact-based treadle sensor to detect the number of vehicle wheels or manual operator to classify vehicles. While the former is susceptible to high maintenance cost due to wear and tear, the latter is prone to human error....

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Main Authors: Mohd Zaki, Hasan Firdaus, Zainal Abidin, Zulkifli
Format: Article
Language:English
English
Published: UKM Press 2022
Subjects:
Online Access:http://irep.iium.edu.my/98750/1/2_Journal_JKeJ_Accepted.pdf
http://irep.iium.edu.my/98750/7/Acceptance%20Letter_JKeJ.pdf
http://irep.iium.edu.my/98750/
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spelling my.iium.irep.987502022-07-26T07:16:16Z http://irep.iium.edu.my/98750/ Incremental learning of deep neural network for robust vehicle classification Mohd Zaki, Hasan Firdaus Zainal Abidin, Zulkifli TA1001 Transportation engineering (General) Existing single-lane free flow (SLFF) tolling systems either heavily rely on contact-based treadle sensor to detect the number of vehicle wheels or manual operator to classify vehicles. While the former is susceptible to high maintenance cost due to wear and tear, the latter is prone to human error. This paper proposes a vision-based solution to SLFF vehicle classification by adapting a state-of-the-art object detection model as a backbone of the proposed framework and an incremental training scheme to train our VehicleDetNet in a continual manner to cater the challenging problem of continuous growing dataset in real-world environment. It involved four experiment set-ups where the first stage involved CUTe datasets. VehicleDetNet is utilized for the framework of vehicle detection, and it presents an anchorless network which enable the elimination of the bounding boxes of candidates’ anchors. The classification of vehicles is performed by detecting the vehicle's location and inferring the vehicle's class. We augment the model with a wheel detector and enumerator to add more robustness, showing improved performance. The proposed method was evaluated on live dataset collected from the Gombak toll plaza at Kuala Lumpur-Karak Expressway. The results show that within two months of observation, the mean accuracy increases from 87.3 % to 99.07 %, which shows the efficacy of our proposed method. UKM Press 2022-09 Article PeerReviewed application/pdf en http://irep.iium.edu.my/98750/1/2_Journal_JKeJ_Accepted.pdf application/pdf en http://irep.iium.edu.my/98750/7/Acceptance%20Letter_JKeJ.pdf Mohd Zaki, Hasan Firdaus and Zainal Abidin, Zulkifli (2022) Incremental learning of deep neural network for robust vehicle classification. Jurnal Kejuruteraan (Journal of Engineering), 34 (5). ISSN 0128-0198 E-ISSN 2289-7526 (In Press)
institution Universiti Islam Antarabangsa Malaysia
building IIUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider International Islamic University Malaysia
content_source IIUM Repository (IREP)
url_provider http://irep.iium.edu.my/
language English
English
topic TA1001 Transportation engineering (General)
spellingShingle TA1001 Transportation engineering (General)
Mohd Zaki, Hasan Firdaus
Zainal Abidin, Zulkifli
Incremental learning of deep neural network for robust vehicle classification
description Existing single-lane free flow (SLFF) tolling systems either heavily rely on contact-based treadle sensor to detect the number of vehicle wheels or manual operator to classify vehicles. While the former is susceptible to high maintenance cost due to wear and tear, the latter is prone to human error. This paper proposes a vision-based solution to SLFF vehicle classification by adapting a state-of-the-art object detection model as a backbone of the proposed framework and an incremental training scheme to train our VehicleDetNet in a continual manner to cater the challenging problem of continuous growing dataset in real-world environment. It involved four experiment set-ups where the first stage involved CUTe datasets. VehicleDetNet is utilized for the framework of vehicle detection, and it presents an anchorless network which enable the elimination of the bounding boxes of candidates’ anchors. The classification of vehicles is performed by detecting the vehicle's location and inferring the vehicle's class. We augment the model with a wheel detector and enumerator to add more robustness, showing improved performance. The proposed method was evaluated on live dataset collected from the Gombak toll plaza at Kuala Lumpur-Karak Expressway. The results show that within two months of observation, the mean accuracy increases from 87.3 % to 99.07 %, which shows the efficacy of our proposed method.
format Article
author Mohd Zaki, Hasan Firdaus
Zainal Abidin, Zulkifli
author_facet Mohd Zaki, Hasan Firdaus
Zainal Abidin, Zulkifli
author_sort Mohd Zaki, Hasan Firdaus
title Incremental learning of deep neural network for robust vehicle classification
title_short Incremental learning of deep neural network for robust vehicle classification
title_full Incremental learning of deep neural network for robust vehicle classification
title_fullStr Incremental learning of deep neural network for robust vehicle classification
title_full_unstemmed Incremental learning of deep neural network for robust vehicle classification
title_sort incremental learning of deep neural network for robust vehicle classification
publisher UKM Press
publishDate 2022
url http://irep.iium.edu.my/98750/1/2_Journal_JKeJ_Accepted.pdf
http://irep.iium.edu.my/98750/7/Acceptance%20Letter_JKeJ.pdf
http://irep.iium.edu.my/98750/
_version_ 1739827879963787264
score 13.211869