Developing Novel Monocular-Vision-Based Standard Operational Procedures for Nondestructive Inspection on Constructed Concrete Cracks
Publication: Journal of Performance of Constructed Facilities
Volume 34, Issue 2
Abstract
To mitigate the limitations in traditional concrete crack-measuring methods such as low degree in automation and high cost, this study aims to develop a novel method with standard operational procedures (SOP) for nondestructive inspection and automeasure on bridge concrete cracks based on monocular vision and the Harris algorithm. Through experiments in four scenarios using commercially available software as the programming and imaging-processing interface, a novel method, named Mono-Harris, with high automation, high detection speed, and high precision for nondestructive inspection and automeasure of bridge concrete cracks based on monocular vision and the Harris algorithm was developed. There were three main criteria in the experiments, including the shooting angle (parallel and not parallel), shooting distance (far and near), and checkerboard target positioning. Results revealed positively that the combination of monocular vision and image processing technique could effectively measure bridge concrete cracks and the Mono-Harris method developed in this study was efficient and effective.
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Data Availability Statement
All data, models, and code generated or used during the study appear in the published article.
Acknowledgments
Authors are grateful to the Tongjiang Scholar Special Funding for financial support through grant number (605-50X17234), Quanzhou science and technology bureau for financial support through grant number (2018Z010), and Huaqiao University through grant number (17BS201).
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©2020 American Society of Civil Engineers.
History
Received: Apr 29, 2019
Accepted: Aug 28, 2019
Published online: Jan 28, 2020
Published in print: Apr 1, 2020
Discussion open until: Jun 28, 2020
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