Journal article

Attention recurrent residual U-Net for predicting pixel-level crack widths in concrete surfaces

AS Rao, T Nguyen, ST Le, M Palaniswami, T Ngo

Structural Health Monitoring | SAGE PUBLICATIONS LTD | Published : 2022

Abstract

Cracks in concrete structures are one of the most important indicators of structural damage, and it is a necessity to detect and measure cracks for ensuring safety and integrity of concrete structures. The widely practised approach in inspecting the structures is by performing visual inspections followed by manual estimation of crack widths. This approach is not only time-consuming, laborious, and time-intensive but also prone to subjective errors and inefficient. To address these issues, we propose a novel deep learning framework for detecting cracks and then estimating crack widths in concrete surface images. Our framework handles both small- and large-sized images and provides a predictio..

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Grants

Funding Acknowledgements

The author(s) disclosed receipt of the following financial support for the research, authorship, and/or publication of this article: This work was supported by the CRC-P for Advanced Manufacturing of High Performance Building Envelope project, funded by the CRCP program of the Department of Industry, Innovation and Science, Australia and funded by the Australian Academy of Science, Australia (the Asia Pacific Research Network for Resilient and Affordable Housing (APRAH)).