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The State-of-the-Art Review on Applications of Intrusive Sensing, Image Processing Techniques, and Machine Learning Methods in Pavement Monitoring and Analysis
Engineering, Volume: 7, Issue: 6, Pages: 845 - 856
Swansea University Author: Yue Hou
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DOI (Published version): 10.1016/j.eng.2020.07.030
Abstract
In modern transportation, pavement is one of the most important civil infrastructures for the movement of vehicles and pedestrians. Pavement service quality and service life are of great importance for civil engineers as they directly affect the regular service for the users. Therefore, monitoring t...
Published in: | Engineering |
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ISSN: | 2095-8099 1558-0016 |
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Elsevier BV
2021
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URI: | https://cronfa.swan.ac.uk/Record/cronfa61799 |
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2022-11-28T15:51:05.7538167 v2 61799 2022-11-07 The State-of-the-Art Review on Applications of Intrusive Sensing, Image Processing Techniques, and Machine Learning Methods in Pavement Monitoring and Analysis 92bf566c65343cb3ee04ad963eacf31b Yue Hou Yue Hou true false 2022-11-07 CIVL In modern transportation, pavement is one of the most important civil infrastructures for the movement of vehicles and pedestrians. Pavement service quality and service life are of great importance for civil engineers as they directly affect the regular service for the users. Therefore, monitoring the health status of pavement before irreversible damage occurs is essential for timely maintenance, which in turn ensures public transportation safety. Many pavement damages can be detected and analyzed by monitoring the structure dynamic responses and evaluating road surface conditions. Advanced technologies can be employed for the collection and analysis of such data, including various intrusive sensing techniques, image processing techniques, and machine learning methods. This review summarizes the state-of-the-art of these three technologies in pavement engineering in recent years and suggests possible developments for future pavement monitoring and analysis based on these approaches. Journal Article Engineering 7 6 845 856 Elsevier BV 2095-8099 1558-0016 Pavement monitoring and analysis; The state-of-the-art review; Intrusive sensing; Image processing techniques; Machine learning methods 1 6 2021 2021-06-01 10.1016/j.eng.2020.07.030 COLLEGE NANME Civil Engineering COLLEGE CODE CIVL Swansea University This work was supported by the National Key R&D Program of China (2017YFF0205600), the International Research Cooperation Seed Fund of Beijing University of Technology (2018A08), Science and Technology Project of Beijing Municipal Commission of Transport (2018-kjc-01-213), and the Construction of Service Capability of Scientific and Technological Innovation-Municipal Level of Fundamental Research Funds (Scientific Research Categories) of Beijing City (PXM2019_014204_500032). 2022-11-28T15:51:05.7538167 2022-11-07T19:24:44.7514559 Faculty of Science and Engineering School of Aerospace, Civil, Electrical, General and Mechanical Engineering - Civil Engineering Yue Hou 1 Qiuhan Li 2 Chen Zhang 3 Guoyang Lu 4 Zhoujing Ye 5 Yihan Chen 6 Linbing Wang 7 Dandan Cao 0000-0002-4277-5942 8 61799__25939__ed4bd6d957ff4fd090e2eec7d1c02a51.pdf 61799.pdf 2022-11-28T15:48:20.3360805 Output 1233507 application/pdf Version of Record true Copyright 2021 The Authors. This is an open access article under the CC BY-NC-ND license true eng http://creativecommons.org/licenses/by-nc-nd/4.0/ |
title |
The State-of-the-Art Review on Applications of Intrusive Sensing, Image Processing Techniques, and Machine Learning Methods in Pavement Monitoring and Analysis |
spellingShingle |
The State-of-the-Art Review on Applications of Intrusive Sensing, Image Processing Techniques, and Machine Learning Methods in Pavement Monitoring and Analysis Yue Hou |
title_short |
The State-of-the-Art Review on Applications of Intrusive Sensing, Image Processing Techniques, and Machine Learning Methods in Pavement Monitoring and Analysis |
title_full |
The State-of-the-Art Review on Applications of Intrusive Sensing, Image Processing Techniques, and Machine Learning Methods in Pavement Monitoring and Analysis |
title_fullStr |
The State-of-the-Art Review on Applications of Intrusive Sensing, Image Processing Techniques, and Machine Learning Methods in Pavement Monitoring and Analysis |
title_full_unstemmed |
The State-of-the-Art Review on Applications of Intrusive Sensing, Image Processing Techniques, and Machine Learning Methods in Pavement Monitoring and Analysis |
title_sort |
The State-of-the-Art Review on Applications of Intrusive Sensing, Image Processing Techniques, and Machine Learning Methods in Pavement Monitoring and Analysis |
author_id_str_mv |
92bf566c65343cb3ee04ad963eacf31b |
author_id_fullname_str_mv |
92bf566c65343cb3ee04ad963eacf31b_***_Yue Hou |
author |
Yue Hou |
author2 |
Yue Hou Qiuhan Li Chen Zhang Guoyang Lu Zhoujing Ye Yihan Chen Linbing Wang Dandan Cao |
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Journal article |
container_title |
Engineering |
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7 |
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845 |
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2021 |
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Swansea University |
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2095-8099 1558-0016 |
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10.1016/j.eng.2020.07.030 |
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Elsevier BV |
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Faculty of Science and Engineering |
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School of Aerospace, Civil, Electrical, General and Mechanical Engineering - Civil Engineering{{{_:::_}}}Faculty of Science and Engineering{{{_:::_}}}School of Aerospace, Civil, Electrical, General and Mechanical Engineering - Civil Engineering |
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description |
In modern transportation, pavement is one of the most important civil infrastructures for the movement of vehicles and pedestrians. Pavement service quality and service life are of great importance for civil engineers as they directly affect the regular service for the users. Therefore, monitoring the health status of pavement before irreversible damage occurs is essential for timely maintenance, which in turn ensures public transportation safety. Many pavement damages can be detected and analyzed by monitoring the structure dynamic responses and evaluating road surface conditions. Advanced technologies can be employed for the collection and analysis of such data, including various intrusive sensing techniques, image processing techniques, and machine learning methods. This review summarizes the state-of-the-art of these three technologies in pavement engineering in recent years and suggests possible developments for future pavement monitoring and analysis based on these approaches. |
published_date |
2021-06-01T04:20:54Z |
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1763754381706002432 |
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11.036706 |