Bridge deck surface distress evaluation using S-UAS acquired high-spatial resolution aerial imagery

IF 2.7 Q1 GEOGRAPHY Annals of GIS Pub Date : 2023-01-12 DOI:10.1080/19475683.2023.2166112
Su Zhang, S. Bogus, Shirley V. Baros, P. Neville, H. Barrett, Tyler Eshelman
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Abstract

ABSTRACT Bridge decks need to be routinely inspected to ensure their serviceability, capacity, and safety under current traffic conditions. Traditionally, bridge deck inspection is performed on the ground by having inspectors either visually inspect surface conditions or interpret the acoustic feedback from hammer sounding or chain dragging to determine subsurface conditions. These traditional methods have many limitations, including but not limited to, expensive, labour-intensive, time-consuming, subjective, can exhibit a high degree of variability, requiring specialized staff on a regular basis, and unsafe. Recent advancements in remote sensing, especially small-uncrewed aircraft systems (S-UAS) based airborne imaging techniques and advanced image analysis techniques, have shown promise in improving current bridge deck inspection practices by providing an above-ground inspection method. This research explored the utility of S-UAS-based airborne imaging techniques and image processing techniques to develop a complete aerial data acquisition and analysis system to accurately detect and assess bridge deck wearing surface distresses in a timely and cost-effective manner. As part of the research project, a robust tool was also developed with the aim of being able to detect, extract, and map bridge deck wearing surface distresses with an adequate degree of accuracy while maximizing the ability to assist bridge inspectors with varying expertise. Research results revealed that the developed tool is able to effectively detect and map bridge deck wearing surface distresses at a high accuracy.
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基于S-UAS获取的高空间分辨率航空图像的桥面损伤评估
桥梁甲板需要定期检查,以确保其在当前交通条件下的可用性、容量和安全性。传统上,桥面板检查是在地面进行的,检查员要么目视检查表面状况,要么解释锤击测深或拖链产生的声波反馈,以确定地下状况。这些传统方法有许多局限性,包括但不限于,昂贵、劳动密集、耗时、主观、可能表现出高度的可变性、需要定期的专业人员、不安全。遥感技术的最新进展,特别是基于小型无人飞机系统(S-UAS)的机载成像技术和先进的图像分析技术,通过提供一种地面检测方法,显示出改善当前桥面检测实践的希望。本研究探索利用基于s -无人机的机载成像技术和图像处理技术,开发完整的航空数据采集和分析系统,及时、经济地准确检测和评估桥面磨损表面损伤。作为研究项目的一部分,还开发了一种强大的工具,目的是能够以足够的精度检测、提取和绘制桥面磨损表面的损伤,同时最大限度地帮助具有不同专业知识的桥梁检查员。研究结果表明,该工具能够有效、高精度地检测和绘制桥面磨损损伤。
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来源期刊
Annals of GIS
Annals of GIS Multiple-
CiteScore
8.30
自引率
2.00%
发文量
31
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