Improving night driving behavior recognition with ResNet50

The issue of driving behavior at night poses significant challenges due to reduced visibility and increased risk of accidents. Recent works have leveraged deep learning techniques to enhance night-time driving safety. However, the limited availability of high-quality training data and the lack of ro...

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Published in:Indonesian Journal of Electrical Engineering and Computer Science
Main Author: Ishak M.F.; Zaman F.H.K.; Mun N.K.; Abdullah S.A.C.; Makhtar A.K.
Format: Article
Language:English
Published: Institute of Advanced Engineering and Science 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85185613987&doi=10.11591%2fijeecs.v33.i3.pp1974-1988&partnerID=40&md5=12372801fccefc0faa9ac4ea2288f727
id 2-s2.0-85185613987
spelling 2-s2.0-85185613987
Ishak M.F.; Zaman F.H.K.; Mun N.K.; Abdullah S.A.C.; Makhtar A.K.
Improving night driving behavior recognition with ResNet50
2024
Indonesian Journal of Electrical Engineering and Computer Science
33
3
10.11591/ijeecs.v33.i3.pp1974-1988
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85185613987&doi=10.11591%2fijeecs.v33.i3.pp1974-1988&partnerID=40&md5=12372801fccefc0faa9ac4ea2288f727
The issue of driving behavior at night poses significant challenges due to reduced visibility and increased risk of accidents. Recent works have leveraged deep learning techniques to enhance night-time driving safety. However, the limited availability of high-quality training data and the lack of robustness in existing models present significant problems. In this work, we propose a novel approach to improve driving behavior recognition at night using ResNet50 with contrast limited adapted histogram equalization (CLAHE). We collected a new dataset and developed a more effective and robust model that can accurately recognize driving behaviors under low-illumination conditions, thereby reducing the likelihood of collisions and improving overall road safety. The experimental results demonstrate significant improvements in the deep learning model’s performance compared to conventional methods. Notably, the ResNet50 model delivers the best performance with accuracy rates of 90.73% using NIGHT-VIS-CLAHE data, demonstrating a 16% improvement in accuracy. For benchmark purposes, the InceptionV3, GoogleNet, and MobileNetV2 models also show enhanced accuracy through CLAHE implementation. Furthermore, NIGHT-VIS-CLAHE implementation in ResNet50 achieved 90.29% accuracy, surpassing the best NIGHT-IR InceptionV3 at 89.27%, highlighting the advantage of ResNet50 with CLAHE in low-light conditions even against infra-red sensor. © 2024 Institute of Advanced Engineering and Science. All rights reserved.
Institute of Advanced Engineering and Science
25024752
English
Article
All Open Access; Gold Open Access
author Ishak M.F.; Zaman F.H.K.; Mun N.K.; Abdullah S.A.C.; Makhtar A.K.
spellingShingle Ishak M.F.; Zaman F.H.K.; Mun N.K.; Abdullah S.A.C.; Makhtar A.K.
Improving night driving behavior recognition with ResNet50
author_facet Ishak M.F.; Zaman F.H.K.; Mun N.K.; Abdullah S.A.C.; Makhtar A.K.
author_sort Ishak M.F.; Zaman F.H.K.; Mun N.K.; Abdullah S.A.C.; Makhtar A.K.
title Improving night driving behavior recognition with ResNet50
title_short Improving night driving behavior recognition with ResNet50
title_full Improving night driving behavior recognition with ResNet50
title_fullStr Improving night driving behavior recognition with ResNet50
title_full_unstemmed Improving night driving behavior recognition with ResNet50
title_sort Improving night driving behavior recognition with ResNet50
publishDate 2024
container_title Indonesian Journal of Electrical Engineering and Computer Science
container_volume 33
container_issue 3
doi_str_mv 10.11591/ijeecs.v33.i3.pp1974-1988
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85185613987&doi=10.11591%2fijeecs.v33.i3.pp1974-1988&partnerID=40&md5=12372801fccefc0faa9ac4ea2288f727
description The issue of driving behavior at night poses significant challenges due to reduced visibility and increased risk of accidents. Recent works have leveraged deep learning techniques to enhance night-time driving safety. However, the limited availability of high-quality training data and the lack of robustness in existing models present significant problems. In this work, we propose a novel approach to improve driving behavior recognition at night using ResNet50 with contrast limited adapted histogram equalization (CLAHE). We collected a new dataset and developed a more effective and robust model that can accurately recognize driving behaviors under low-illumination conditions, thereby reducing the likelihood of collisions and improving overall road safety. The experimental results demonstrate significant improvements in the deep learning model’s performance compared to conventional methods. Notably, the ResNet50 model delivers the best performance with accuracy rates of 90.73% using NIGHT-VIS-CLAHE data, demonstrating a 16% improvement in accuracy. For benchmark purposes, the InceptionV3, GoogleNet, and MobileNetV2 models also show enhanced accuracy through CLAHE implementation. Furthermore, NIGHT-VIS-CLAHE implementation in ResNet50 achieved 90.29% accuracy, surpassing the best NIGHT-IR InceptionV3 at 89.27%, highlighting the advantage of ResNet50 with CLAHE in low-light conditions even against infra-red sensor. © 2024 Institute of Advanced Engineering and Science. All rights reserved.
publisher Institute of Advanced Engineering and Science
issn 25024752
language English
format Article
accesstype All Open Access; Gold Open Access
record_format scopus
collection Scopus
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