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Image analysis method for crack distribution and width estimation for reinforced concrete structures
Affiliation:1. Department of Civil Engineering, National Taipei University of Technology, 1 Sec 3 Zhongxiao E Rd, Taipei, Taiwan;2. National Center for Research on Earthquake Engineering, 200 Sect 3 Xinhai Rd 106, Taipei, Taiwan;3. Department of Civil and Environmental Engineering, University of Houston, N114 Engineering Building 1, Houston, TX 77204-4003, USA;1. School of Urban and Environmental Engineering, Ulsan National Institute of Science and Technology (UNIST), Ulsan, Republic of Korea;2. Department of Civil Engineering, University of Seoul, Seoul, Republic of Korea
Abstract:Crack observation is important for evaluating the structural performance and safety of reinforced concrete (RC) structures. Most of the existing image-based crack detection methods are based on edge detection algorithms, which detect cracks that are wide enough to present dark areas in the obtained images. Cracks initiate as thin cracks, generally having width less than the width of a pixel in images; such cracks are generally undetectable by edge detection-based methods.An image analysis method is proposed to observe the development and distribution of thin cracks on RC surfaces; it also allows estimation of crack widths. Image matching based on optical flow and subpixel is employed to analyze slight concrete surface displacements. Camera calibration is included to eliminate perspective effects and lens distortion. Geometric transformation is adopted so that cameras do not need to be perpendicular to the observed surface or specified positions. Formulas are proposed to estimate the width of shear crack opening. The proposed method was then applied to a cyclic test of an RC structure. The crack widths and their development analyzed by the image analysis were verified with human inspection in the test. In addition, concrete surface cracks that appeared at a very early stage of the test could be observed by the proposed method before they could be detected by the naked eye. The results thus demonstrate that the proposed image analysis method offers an efficient way applicable not only for structural tests but also for crack-based structural-health-monitoring applications.
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