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Application of Crack Identification Techniques for an Aging Concrete Bridge Inspection Using an Unmanned Aerial Vehicle

机译:裂纹识别技术在无人机混凝土桥梁老化检测中的应用

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摘要

Bridge inspection using unmanned aerial vehicles (UAV) with high performance vision sensors has received considerable attention due to its safety and reliability. As bridges become obsolete, the number of bridges that need to be inspected increases, and they require much maintenance cost. Therefore, a bridge inspection method based on UAV with vision sensors is proposed as one of the promising strategies to maintain bridges. In this paper, a crack identification method by using a commercial UAV with a high resolution vision sensor is investigated in an aging concrete bridge. First, a point cloud-based background model is generated in the preliminary flight. Then, cracks on the structural surface are detected with the deep learning algorithm, and their thickness and length are calculated. In the deep learning method, region with convolutional neural networks (R-CNN)-based transfer learning is applied. As a result, a new network for the 384 collected crack images of 256 × 256 pixel resolution is generated from the pre-trained network. A field test is conducted to verify the proposed approach, and the experimental results proved that the UAV-based bridge inspection is effective at identifying and quantifying the cracks on the structures.
机译:由于其安全性和可靠性,使用带有高性能视觉传感器的无人机(UAV)进行桥梁检查受到了广泛的关注。随着桥梁变得过时,需要检查的桥梁数量增加,并且它们需要大量的维护成本。因此,提出了一种基于无人机与视觉传感器的桥梁检查方法,作为桥梁维修的有前途的策略之一。在本文中,研究了使用带有高分辨率视觉传感器的商用无人机在老化的混凝土桥梁中进行裂缝识别的方法。首先,在预备飞行中生成基于点云的背景模型。然后,使用深度学习算法检测结构表面上的裂纹,并计算其厚度和长度。在深度学习方法中,应用了基于卷积神经网络(R-CNN)的区域学习。结果,从预训练的网络中生成了一个新的网络,用于收集384个256×256像素分辨率的裂纹图像。进行了现场测试以验证所提出的方法,并且实验结果证明了基于无人机的桥梁检查可以有效地识别和量化结构上的裂缝。

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