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The inspection of cracks on structural surface is an essential component of structural condition assessment. Recent advancements in image-based techniques aim to automate this process and reduce the associated costs. However, these methods typically focus on localized planar cracks, neglecting the more severe and complex multi-planar cracks. Moreover, accurate global positioning and quantification of these complex cracks pose challenges due to image distortions. To tackle these challenges, this paper proposes a point cloud-based framework for the automatic detection and quantification of complex cracks on concrete surfaces. The proposed framework involves generating a semantic point cloud for crack positioning and quantification by integrating a pixel-level crack segmentation network with 3D reconstruction algorithms. With the establishment of the semantic point clouds, a crack skeletonization based crack length quantification method and a crack width quantification algorithm are proposed to facilitate the automated and effective crack quantification. Experimental evaluations are conducted on a test beam with five characteristic flexural cracks. The results demonstrate the superior performance of the proposed framework over conventional methods with a mean relative error of merely 1.3 % in length quantification and a median of absolute errors less than 0.15 mm in crack width measurements. The efficacy and precision of the proposed framework enhance the potential applications of vision techniques for crack inspection. • Propose a point cloud-based framework for automated concrete crack detection and quantification. • Combine crack segmentation and 3D reconstruction to generate semantic point clouds. • Develop a skeletonization-based method for efficient crack quantification. • Enable precise crack localization and high-accuracy length and width measurements. • The effectiveness and accuracy of the proposed approach are demonstrated experimentally.
Chen et al. (Wed,) studied this question.