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

Author:

Rao Aravinda S1ORCID,Nguyen Tuan2ORCID,Le Son T2,Palaniswami Marimuthu1,Ngo Tuan2ORCID

Affiliation:

1. Department of Electrical and Electronic Engineering, the University of Melbourne, Melbourne, VIC, Australia

2. Department of Infrastructure Engineering, the University of Melbourne, Melbourne, VIC, Australia

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 prediction of crack width at locations specified by the user. The proposed framework uses Attention Recurrent Residual U-Net (Attention R2U-Net) with Random Forest regressor to predict crack width with the mean prediction error of ±0.31 mm for crack widths varying from 0 to 8.95 mm and produces the lowest absolute maximum error of 1.3 mm. Our model has a coefficient of determination ( R2) of 0.91, showing a non-linear mapping function with low prediction errors. We compare our model with a combination of four other segmentation models and regression models. Our proposed model has superior performance compared to other models, and one can easily adopt our framework to a variety of Structural Health Monitoring applications using Internet of Things sensors.

Funder

Australian Academy of Science

Department of Industry, Innovation and Science, Australian Government

Publisher

SAGE Publications

Subject

Mechanical Engineering,Biophysics

Reference54 articles.

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3. Review Paper: Health Monitoring of Civil Infrastructure

4. Tikka J, Hedman R, Silijander A. Strain gauge capabilities in crack detection. In: 4th International Workshop on Structural Health Monitoring, Stanford, USA, 15-17 September 2003 pp. 15–17.

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