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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >TACK PROJECT: TUNNEL AND BRIDGE AUTOMATIC CRACK MONITORING USING DEEP LEARNING AND PHOTOGRAMMETRY
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TACK PROJECT: TUNNEL AND BRIDGE AUTOMATIC CRACK MONITORING USING DEEP LEARNING AND PHOTOGRAMMETRY

机译:Tack项目:隧道和桥梁自动裂纹监测使用深度学习和摄影测量

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Civil infrastructures, such as tunnels and bridges, are directly related to the overall economic and demographic growth of countries. The aging of these infrastructures increases the probability of catastrophic failures that results in loss of lives and high repair costs; all over the world, these factors drive the need for advanced infrastructure monitoring systems. For these reasons, in the last years, different types of devices and innovative infrastructure monitoring techniques have been investigated to automate the process and overcome the main limitation of standard visual inspections that are used nowadays. This paper presents some preliminary findings of an ongoing research project, named TACK, that combines advanced deep learning techniques and innovative photogrammetric algorithms to develop a monitoring system. Specifically, the project focuses on the development of an automatic procedure for crack detection and measurement using images of tunnels and bridges acquired with a mobile mapping system. In this paper, some preliminary results are shown to investigate the potential of a deep learning algorithm in detecting cracks occurred in concrete material. The model is a CNN (Convolutional Neural Network) based on the U-Net architecture; in this study, we tested the transferability of the model that has been trained on a small available labeled dataset and tested on a large set of images acquired using a customized mobile mapping system. The results have shown that it is possible to effectively detect cracks in unseen imagery and that the primary source of errors is the false positive detection of crack-like objects (i.e., contact wires, cables and tile borders).
机译:隧道和桥梁等民事基础设施与国家的整体经济和人口增长直接相关。这些基础设施的老化增加了灾难性失败的可能性,导致生命丧失和高维修费用;在世界各地,这些因素推动了对高级基础设施监控系统的需求。由于这些原因,在过去几年中,已经研究了不同类型的设备和创新的基础设施监测技术,以自动化该过程,并克服了现在使用的标准视觉检查的主要限制。本文介绍了一个名为Tack的持续研究项目的一些初步调查结果,它结合了先进的深度学习技术和创新的摄影测量算法来开发监控系统。具体而言,该项目侧重于使用使用移动映射系统获取的隧道和桥梁的图像的裂纹检测和测量的自动过程的开发。在本文中,示出了一些初步结果来研究在混凝土材料中检测裂缝中的深度学习算法的潜力。该模型是基于U-Net架构的CNN(卷积神经网络);在这项研究中,我们测试了模型的可转换性,该模型已经在小型可用标记的数据集上培训并在使用自定义移动映射系统获取的大量图像上进行测试。结果表明,可以有效地检测看不见图像中的裂缝,并且主要误差源是裂纹状物体的假阳性检测(即,接触线,电缆和瓦片边界)。

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