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Synthetic environments for vision-based structural condition assessment of Japanese high-speed railway viaducts

机译:基于视觉的日本高速铁路高架桥视觉结构条件评估的合成环境

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摘要

Civil infrastructure condition assessment using visual recognition methods has shown significant potential for automating various aspects of the problem, including identification and localization of critical structural components, as well as detection and quantification of structural damage. The application of those methods typically requires large amounts of training data that consists of images and corresponding ground truth annotations. However, obtaining such datasets is challenging, because the images are annotated manually in most existing approaches. With the limited availability of datasets, development of effective visual recognition systems that can extract all required information is not straightforward. This research leverages synthetic environments to develop a unified system for automated vision-based structural condition assessment that can identify and localize critical structural components, and then detect and quantify damage of those components. The synthetic environments can produce images and associated ground truth annotations for semantic segmentation of structural components and damage, as well as monocular depth estimation for structural component localization. To illustrate the approach, automated vision-based structural condition assessment of reinforced concrete railway viaducts for a Japanese high-speed railway line (the Tokaido Shinkansen) is explored. The effectiveness of the synthetic environments and the generated dataset (the Tokaido dataset) is demonstrated by training fully convolutional network-based semantic segmentation and monocular depth estimation algorithms, and then testing the networks using both synthetic and real-world images. Finally, all trained algorithms are combined to realize an automated system for structural condition assessment.
机译:使用视觉识别方法的民事基础设施条件评估显示了自动化问题的各个方面的显着潜力,包括临界结构部件的识别和定位,以及结构损伤的检测和量化。这些方法的应用通常需要大量的培训数据,包括图像和相应的地面真相注释。但是,获得此类数据集是具有挑战性的,因为图像在大多数现有方法中手动注释。随着数据集的可用性有限,开发可以提取所有所需信息的有效视觉识别系统并不简单。本研究利用了综合性环境来开发统一的系统,以实现基于视觉的结构条件评估,可以识别和定位关键结构组件,然后检测和量化这些组件的损坏。合成环境可以生产用于结构部件和损坏的语义分割的图像和相关的地面真理注释,以及用于结构部件定位的单眼深度估计。为了说明该方法,探讨了日本高速铁路线(Tokaido Shinkansen)的钢筋混凝土铁路高架桥的自动视觉的结构条件评估。通过培训基于完全卷积的网络的语义分割和单眼深度估计算法来展示合成环境和生成的数据集(Tokaido DataSet)的有效性,然后使用合成和实际图像测试网络。最后,组合所有培训的算法以实现用于结构条件评估的自动化系统。

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