Real-Time Crack Classification with Wall-Climbing Robot Using MobileNetV2

Detecting cracks on concrete surfaces is a crucial task in civil engineering inspections, but it poses significant challenges due to the small and concealed nature of cracks. Visual detection is particularly difficult on uneven or rough concrete surfaces. To overcome these challenges, our research f...

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Published in:Communications in Computer and Information Science
Main Author: Mazni M.; Husain A.R.; Shapiai M.I.; Ibrahim I.S.; Zulkifli R.; Anggara D.W.
Format: Conference paper
Language:English
Published: Springer Science and Business Media Deutschland GmbH 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85176010753&doi=10.1007%2f978-981-99-7240-1_25&partnerID=40&md5=36abd1c6fa105a8467f3da3dd9c92b37
id 2-s2.0-85176010753
spelling 2-s2.0-85176010753
Mazni M.; Husain A.R.; Shapiai M.I.; Ibrahim I.S.; Zulkifli R.; Anggara D.W.
Real-Time Crack Classification with Wall-Climbing Robot Using MobileNetV2
2024
Communications in Computer and Information Science
1911 CCIS

10.1007/978-981-99-7240-1_25
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85176010753&doi=10.1007%2f978-981-99-7240-1_25&partnerID=40&md5=36abd1c6fa105a8467f3da3dd9c92b37
Detecting cracks on concrete surfaces is a crucial task in civil engineering inspections, but it poses significant challenges due to the small and concealed nature of cracks. Visual detection is particularly difficult on uneven or rough concrete surfaces. To overcome these challenges, our research focuses on developing an automated system that utilizes a wall-climbing robot for crack classification. Our main objective is to introduce a crack classification technique using MobileNetV2, enabling real-time classification without human intervention. The Convolution Neural Network (CNN) model used for crack classification is based on MobileNetV2, which is fine-tuned by adjusting the sensitivity of its hyperparameters. Through extensive experiments, we evaluate the performance of this CNN approach specifically designed for embedded systems. After evaluating our proposed approach of crack-detection on publicly available datasets, we have found that out of all the pre-trained CNN models MobileNetV2 yields the best performance with 99.56% detection accuracy, precision of 99.65%, recall of 99.48%, and F1-Score of 99.56%. However, it is important to note that the training time for this model is relatively high, taking 25,500 s. Future study of the study should focus on optimizing the computation time to improve efficiency. © 2024, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.
Springer Science and Business Media Deutschland GmbH
18650929
English
Conference paper

author Mazni M.; Husain A.R.; Shapiai M.I.; Ibrahim I.S.; Zulkifli R.; Anggara D.W.
spellingShingle Mazni M.; Husain A.R.; Shapiai M.I.; Ibrahim I.S.; Zulkifli R.; Anggara D.W.
Real-Time Crack Classification with Wall-Climbing Robot Using MobileNetV2
author_facet Mazni M.; Husain A.R.; Shapiai M.I.; Ibrahim I.S.; Zulkifli R.; Anggara D.W.
author_sort Mazni M.; Husain A.R.; Shapiai M.I.; Ibrahim I.S.; Zulkifli R.; Anggara D.W.
title Real-Time Crack Classification with Wall-Climbing Robot Using MobileNetV2
title_short Real-Time Crack Classification with Wall-Climbing Robot Using MobileNetV2
title_full Real-Time Crack Classification with Wall-Climbing Robot Using MobileNetV2
title_fullStr Real-Time Crack Classification with Wall-Climbing Robot Using MobileNetV2
title_full_unstemmed Real-Time Crack Classification with Wall-Climbing Robot Using MobileNetV2
title_sort Real-Time Crack Classification with Wall-Climbing Robot Using MobileNetV2
publishDate 2024
container_title Communications in Computer and Information Science
container_volume 1911 CCIS
container_issue
doi_str_mv 10.1007/978-981-99-7240-1_25
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85176010753&doi=10.1007%2f978-981-99-7240-1_25&partnerID=40&md5=36abd1c6fa105a8467f3da3dd9c92b37
description Detecting cracks on concrete surfaces is a crucial task in civil engineering inspections, but it poses significant challenges due to the small and concealed nature of cracks. Visual detection is particularly difficult on uneven or rough concrete surfaces. To overcome these challenges, our research focuses on developing an automated system that utilizes a wall-climbing robot for crack classification. Our main objective is to introduce a crack classification technique using MobileNetV2, enabling real-time classification without human intervention. The Convolution Neural Network (CNN) model used for crack classification is based on MobileNetV2, which is fine-tuned by adjusting the sensitivity of its hyperparameters. Through extensive experiments, we evaluate the performance of this CNN approach specifically designed for embedded systems. After evaluating our proposed approach of crack-detection on publicly available datasets, we have found that out of all the pre-trained CNN models MobileNetV2 yields the best performance with 99.56% detection accuracy, precision of 99.65%, recall of 99.48%, and F1-Score of 99.56%. However, it is important to note that the training time for this model is relatively high, taking 25,500 s. Future study of the study should focus on optimizing the computation time to improve efficiency. © 2024, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.
publisher Springer Science and Business Media Deutschland GmbH
issn 18650929
language English
format Conference paper
accesstype
record_format scopus
collection Scopus
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