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面向以人为中心的疲劳裂纹检测的计算机视觉与增强现实技术

Computer Vision and Augmented Reality for Human-Centered Fatigue Crack Inspection.

机构信息

Department of Civil, Environmental and Architectural Engineering, The University of Kansas, Lawrence, KS 66045, USA.

Department of Electrical Engineering and Computer Science, The University of Kansas, Lawrence, KS 66045, USA.

出版信息

Sensors (Basel). 2024 Jun 6;24(11):3685. doi: 10.3390/s24113685.

Abstract

A significant percentage of bridges in the United States are serving beyond their 50-year design life, and many of them are in poor condition, making them vulnerable to fatigue cracks that can result in catastrophic failure. However, current fatigue crack inspection practice based on human vision is time-consuming, labor intensive, and prone to error. We present a novel human-centered bridge inspection methodology to enhance the efficiency and accuracy of fatigue crack detection by employing advanced technologies including computer vision and augmented reality (AR). In particular, a computer vision-based algorithm is developed to enable near-real-time fatigue crack detection by analyzing structural surface motion in a short video recorded by a moving camera of the AR headset. The approach monitors structural surfaces by tracking feature points and measuring variations in distances between feature point pairs to recognize the motion pattern associated with the crack opening and closing. Measuring distance changes between feature points, as opposed to their displacement changes before this improvement, eliminates the need of camera motion compensation and enables reliable and computationally efficient fatigue crack detection using the nonstationary AR headset. In addition, an AR environment is created and integrated with the computer vision algorithm. The crack detection results are transmitted to the AR headset worn by the bridge inspector, where they are converted into holograms and anchored on the bridge surface in the 3D real-world environment. The AR environment also provides virtual menus to support human-in-the-loop decision-making to determine optimal crack detection parameters. This human-centered approach with improved visualization and human-machine collaboration aids the inspector in making well-informed decisions in the field in a near-real-time fashion. The proposed crack detection method is comprehensively assessed using two laboratory test setups for both in-plane and out-of-plane fatigue cracks. Finally, using the integrated AR environment, a human-centered bridge inspection is conducted to demonstrate the efficacy and potential of the proposed methodology.

摘要

美国有相当大比例的桥梁的使用寿命已经超过了 50 年,其中许多桥梁状况不佳,容易出现疲劳裂缝,从而导致灾难性的故障。然而,目前基于人工视觉的疲劳裂缝检测实践既耗时又费力,且容易出错。我们提出了一种新颖的以人为本的桥梁检查方法,通过采用计算机视觉和增强现实(AR)等先进技术,提高疲劳裂缝检测的效率和准确性。特别是,开发了一种基于计算机视觉的算法,通过分析由 AR 耳机移动摄像机录制的短视频中的结构表面运动,实现近乎实时的疲劳裂缝检测。该方法通过跟踪特征点并测量特征点对之间的距离变化来监测结构表面,以识别与裂缝张开和闭合相关的运动模式。与改进前测量特征点的位移变化不同,测量特征点之间的距离变化可以消除对摄像机运动补偿的需求,并使用非平稳的 AR 耳机实现可靠且计算效率高的疲劳裂缝检测。此外,创建了一个 AR 环境,并将其与计算机视觉算法集成。将裂缝检测结果传输到佩戴在桥梁检查员身上的 AR 耳机中,将其转换为全息图,并在 3D 真实世界环境中固定在桥梁表面上。AR 环境还提供虚拟菜单,以支持人机协同决策,确定最佳的裂缝检测参数。这种具有改进可视化和人机协作的以人为本的方法有助于检查员在现场实时做出明智的决策。使用两个用于平面内和平面外疲劳裂缝的实验室测试设置对提出的裂缝检测方法进行了全面评估。最后,使用集成的 AR 环境进行以人为本的桥梁检查,以展示所提出方法的有效性和潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/aa5b/11175266/e2a559ea4de8/sensors-24-03685-g001.jpg

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