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Author:
Gopalakrishnan, Kasthurira, author. Iowa State University.
Title:
Machine-Vision-Based Roadway Health Monitoring and Assessment : Development of a Shape-Based Pavement-Crack-Detection Approach Kasthurirangan Gopalakrishnan, Arun Somani, Omar Smadi, Teng Wang, Halil Ceylan
Publisher:
Institute for TransportationIowa State University
Copyright Date:
2016
Description:
34 pages ( 49 pages in PDF file) illustrations, charts (color)
Subject:
Pavements, Concrete--Cracking--Iowa.
Algorithms
Asphalt pavements
Data collection
Image analysis
Pavement cracking
Other Authors:
Somani, Arun, author. Iowa State University.
Smadi, Omar, author. Iowa State University.
Wang, Teng, author. Iowa State University.
Ceylan, Halil, author. Iowa State University.
Iowa State University. Institute for Transportation, performing body.
Iowa. Midwest Transportation Center, sponsoring body.
United States. Department of Transportation, sponsoring body.
Notes:
"Part of DTRT13-G-UTC37 January 2016 -- Technical Report Documentation Page Includes bibliographic references (pages 33- 34) Catalogers note: This record is for the full-length report. A 2-page tech transfer summary is also available, at a link in this record. The summary is not cataloged individually.
Scope Note:
Final Report
Summary:
State highway agencies (SHAs) routinely employ semi-automated and automated image-based methods for network-level pavement-cracking data collection, and there are different types of pavement-cracking data collected by SHAs for reporting and management purposes. The main objective of this proof-of-concept research was to develop a shape-based pavement-crack-detection approach for the reliable detection and classification of cracks from acquired two-dimensional (2D) concrete and asphalt pavement surface images. The developed pavement-crack-detection algorithm consists of four stages: local filtering, maximum component extraction, polynomial fitting of possible crack pixels, and shape metric computation and filtering. After completing the crack-detection process, the width of each crack segment is computed to classify the cracks. In order to verify the developed crack-detection approach, a series of experiments was conducted on real pavement images without and with cracks at different severities. The developed shape-based pavement crack detection algorithm was able to detect cracks at different severities from both asphalt and concrete pavement images. Further, the developed algorithm was able to compute crack widths from the images for crack classification and reporting purposes. Additional research is needed to improve the robustness and accuracy of the developed approach in the presence of anomalies and other surface irregularities.
OCLC:
(OCoLC)945989477
Locations:
IAOX771 -- State Library of Iowa (Des Moines)

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