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Auteurs principaux: Tayeb, Adnan Md, Khatun, Mst Ayesha, Golam, Mohtasin, Rahaman, Md Facklasur, Aouto, Ali, Angelo, Oroceo Paul, Lee, Minseon, Kim, Dong-Seong, Lee, Jae-Min, Kim, Jung-Hyeon
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2406.10128
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author Tayeb, Adnan Md
Khatun, Mst Ayesha
Golam, Mohtasin
Rahaman, Md Facklasur
Aouto, Ali
Angelo, Oroceo Paul
Lee, Minseon
Kim, Dong-Seong
Lee, Jae-Min
Kim, Jung-Hyeon
author_facet Tayeb, Adnan Md
Khatun, Mst Ayesha
Golam, Mohtasin
Rahaman, Md Facklasur
Aouto, Ali
Angelo, Oroceo Paul
Lee, Minseon
Kim, Dong-Seong
Lee, Jae-Min
Kim, Jung-Hyeon
contents Precise and prompt identification of road surface conditions enables vehicles to adjust their actions, like changing speed or using specific traction control techniques, to lower the chance of accidents and potential danger to drivers and pedestrians. However, most of the existing methods for detecting road surfaces solely rely on visual data, which may be insufficient in certain situations, such as when the roads are covered by debris, in low light conditions, or in the presence of fog. Therefore, we introduce a multimodal approach for the automated detection of road surface conditions by integrating audio and images. The robustness of the proposed method is tested on a diverse dataset collected under various environmental conditions and road surface types. Through extensive evaluation, we demonstrate the effectiveness and reliability of our multimodal approach in accurately identifying road surface conditions in real-time scenarios. Our findings highlight the potential of integrating auditory and visual cues for enhancing road safety and minimizing accident risks
format Preprint
id arxiv_https___arxiv_org_abs_2406_10128
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle SmartRSD: An Intelligent Multimodal Approach to Real-Time Road Surface Detection for Safe Driving
Tayeb, Adnan Md
Khatun, Mst Ayesha
Golam, Mohtasin
Rahaman, Md Facklasur
Aouto, Ali
Angelo, Oroceo Paul
Lee, Minseon
Kim, Dong-Seong
Lee, Jae-Min
Kim, Jung-Hyeon
Computer Vision and Pattern Recognition
Precise and prompt identification of road surface conditions enables vehicles to adjust their actions, like changing speed or using specific traction control techniques, to lower the chance of accidents and potential danger to drivers and pedestrians. However, most of the existing methods for detecting road surfaces solely rely on visual data, which may be insufficient in certain situations, such as when the roads are covered by debris, in low light conditions, or in the presence of fog. Therefore, we introduce a multimodal approach for the automated detection of road surface conditions by integrating audio and images. The robustness of the proposed method is tested on a diverse dataset collected under various environmental conditions and road surface types. Through extensive evaluation, we demonstrate the effectiveness and reliability of our multimodal approach in accurately identifying road surface conditions in real-time scenarios. Our findings highlight the potential of integrating auditory and visual cues for enhancing road safety and minimizing accident risks
title SmartRSD: An Intelligent Multimodal Approach to Real-Time Road Surface Detection for Safe Driving
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.10128