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Adaptive vision-based crack detection using 3D scene reconstruction for condition assessment of structures

机译:基于3D场景重建的基于视觉的自适应裂缝检测,用于结构状态评估

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摘要

Current inspection standards require an inspector to travel to a target structure site and visually assess the structure's condition. This approach is labor-intensive, yet highly qualitative. A less time-consuming and inexpensive alternative to current monitoring methods is to use a robotic system that could inspect structures more frequently, and perform autonomous damage detection. In this paper, a vision-based crack detection methodology is introduced. The proposed approach processes 2D digital images (image processing) by considering the geometry of the scene (computer vision). The crack segmentation parameters are adjusted automatically based on depth parameters. The depth perception is obtained using 3D scene reconstruction. This system extracts the whole crack from its background, where the regular edge-based approaches just segment the crack edges. This characteristic is appropriate for the development of a crack thickness quantification system. Experimental tests have been carried out to evaluate the performance of the proposed system.
机译:当前的检查标准要求检查员前往目标结构场所并目视评估结构状况。这种方法是劳动密集型的,但质量很高。当前监视方法的一种更省时,更便宜的替代方案是使用机器人系统,该机器人系统可以更频繁地检查结构并执行自主损伤检测。本文介绍了一种基于视觉的裂纹检测方法。所提出的方法通过考虑场景的几何形状(计算机视觉)来处理2D数字图像(图像处理)。裂缝分割参数会根据深度参数自动调整。使用3D场景重建可获得深度感知。该系统从其背景中提取整个裂纹,而常规的基于边缘的方法只是将裂纹边缘进行分割。该特性适合于裂纹厚度量化系统的开发。已经进行了实验测试以评估所提出系统的性能。

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