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Deep Learning-based Damage Detection of Miter Gates Using Synthetic Imagery from Computer Graphics

机译:使用计算机图形学中的综合图像进行基于深度学习的斜接闸门损伤检测

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Structural inspections of large, difficult-to-access infrastructure like dams and bridges are often time-consuming, laborious and unsafe. In the United States, federal and state agencies responsible for managing such infrastructure assets are investigating the use of unmanned aerial vehicles (UAV) to allow for remote data acquisition. Processing the large amounts of data acquired by the UAV remains a challenging task. Over the past four years, researchers have been investigating deep learning methods for automated damage detection through image classification and more recently, the use of semantic segmentation where each pixel in the image is given a certain label. For such algorithms to work effectively, deep neural networks need to be trained on large datasets of labelled images. The generation of these labels for semantic segmentation is a very tedious process as it requires each pixel in the image to be labelled. This paper investigates the use of computer graphics to automatically generate synthetic imagery for the purposes of training deep learning algorithms for vision-based damage detection using semantic segmentation. The significant advantage of this is the automatic generation of precise semantic labels due to the implicit information in the developed graphics models. Parametric noise-based graphics texture models are created for defects such as cracks and corrosion and for other features such as vegetation growth, and dirt. The parameterization of the texture models allows for generation of a range of different surface conditions, thereby providing increased flexibility over data generation. To demonstrate the benefits of the proposed methodology for synthetic data generation a virtual environment of inland navigation infrastructure including miter gates and tainter gate dams is created. The developed texture models are applied to the virtual environment to produce a photo-realistic model. Synthetic image data is then rendered from the developed model and used to demonstrate the efficacy for training deep learning-based semantic segmentation algorithms for damage detection.
机译:对大型,难以接近的基础设施(如水坝和桥梁)进行结构检查通常是费时,费力且不安全的。在美国,负责管理此类基础设施资产的联邦和州机构正在调查无人机的使用,以实现远程数据采集。处理无人机获取的大量数据仍然是一项艰巨的任务。在过去的四年中,研究人员一直在研究用于通过图像分类进行自动损伤检测的深度学习方法,最近还研究了语义分割的使用,其中图像中的每个像素都被赋予了特定的标签。为了使这样的算法有效地工作,需要在带有标签图像的大型数据集上训练深度神经网络。这些用于语义分割的标签的生成是一个非常繁琐的过程,因为它需要对图像中的每个像素进行标记。本文研究了使用计算机图形学自动生成合成图像的目的,目的是训练深度学习算法,用于使用语义分割的基于视觉的损伤检测。由于已开发的图形模型中的隐式信息,此方法的显着优点是可以自动生成精确的语义标签。基于参数噪声的图形纹理模型是针对缺陷(例如裂缝和腐蚀)以及其他特征(例如植物生长和污垢)创建的。纹理模型的参数化允许生成一系列不同的表面条件,从而在数据生成方面提供更大的灵活性。为了证明所提出的方法用于合成数据生成的好处,创建了一个内陆导航基础设施的虚拟环境,其中包括斜接闸门和污闸门大坝。将开发的纹理模型应用于虚拟环境以生成逼真的模型。然后,从开发的模型中渲染合成图像数据,并将其用于演示训练基于深度学习的语义分割算法以进行损伤检测的功效。

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