|Table of Contents|

Automatic tracking method of pavement performance decay based on deep learning(PDF)

长安大学学报(自然科学版)[ISSN:1006-6977/CN:61-1281/TN]

Issue:
2022年6期
Page:
53-65
Research Field:
桥梁工程·交通基础设施智能化运维技术专栏
Publishing date:

Info

Title:
Automatic tracking method of pavement performance decay based on deep learning
Author(s):
LI Yi-shun1 LIU Cheng-long12 CAO Jing12 LI Feng3 DU Yu-chuan12
(1. Key Laboratory of Road and Traffic Engineering of the Ministry of Education, Tongji University,Shanghai 201804, China; 2. Shanghai Engineering Research Center of Urban Infrastructure Renewal, Shanghai 200032, China; 3. School of Transportation Science and Engineering,Beihang Univeristy, Beijing 100191, China)
Keywords:
road engineering distress matching tracking deep learning pavement distress pavement deterioration law
PACS:
U411
DOI:
10.19721/j.cnki.1671-8879.2022.06.006
Abstract:
To establish continuous tracking and deterioration analysis of each single distress under the normal service state of the pavement, a spatiotemporal tracing method of pavement distress which established spatiotemporal correlations with high-frequency distress inspection data was proposed. The continuous tracking of the deterioration state of the distress level was established. Firstly, the computer vision algorithm was introduced to realize the recognition and lane-level positioning of six types of pavement distress, and then the three-level distress matching architecture of ‘scene-orientation-feature’ was introduced to realize the continuous tracking of the collected distress at different times. Specifically, it included spatial scene clustering based on improved DBSCAN, direction angle classification based on K-means clustering to distinguish upstream and downstream collected data, and single distress matching based on SIFT feature matching network. More than 7 000 images of the Hong Kong-Zhuhai-Macao Bridge, Shanghai Donghai Bridge and other bridges, tunnels and roads annotated with distress had been accumulated to train the distress detection algorithm. In order to verify the tracking methods, the high-frequency inspection data of a loop S32 in Shanghai(Shanghai-Jiaxing-Huzhou)was used to conduct experiments. The data included one-month daily inspection data on two-way 160 km expressways. The above matching tracking framework was verified by defining the maximum distance within a group, the minimum distance between groups, and the difference in azimuth distribution. The results show that the accuracy of distress matching is 84.74%. The deterioration period of distress under the action of heavy rain is as short as 2 d. In addition, the proposed method can also be used for damage assessment and status tracking of roadside safety facilities and signs, helping to accurately assess the service performance degradation status of transportation infrastructure.3 tabs, 13 figs, 34 refs.

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Last Update: 2022-12-20