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CNN-Based Deep Architecture for Health Monitoring of Civil and Industrial Structures Using UAVs

机译:基于CNN的防护系统健康监测的深层架构,使用无人机

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Health monitoring of civil and industrial structures has been gaining importance since the collapse of the bridge in Genoa (Italy). It is vital for the creation and maintenance of reliable infrastructure. Traditional manual inspections for this task are crucial but time consuming. We present a novel approach for combining Unmanned Aerial Vehicles (UAVs) and artificial intelligence to tackle the above-mentioned challenges. Modern architectures in Convolutional Neural Networks (CNNs) were adapted to the special characteristics of data streams gathered from UAV visual sensors. The approach allows for automated detection and localization of various damages to steel structures, coatings, and fasteners, e.g., cracks or corrosion, under uncertain and real-life environments. The proposed model is based on a multi-stage cascaded classifier to account for the variety of detail level from the optical sensor captured during an UAV flight. This allows for reconciliation of the characteristics of gathered image data and crucial aspects from a steel engineer’s point of view. To improve performance of the system and minimize manual data annotation, we use transfer learning based on the well-known COCO dataset combined with field inspection images. This approach provides a solid data basis for object localization and classification with state-of-the-art CNN architectures.
机译:自热那亚(意大利)的桥梁崩溃以来,民用和工业结构的健康监测一直是越来越重要的。对可靠基础设施的创建和维护是至关重要的。此任务的传统手动检查至关重要但耗时。我们提出了一种结合无人机(无人机)和人工智能的新方法,以解决上述挑战。卷积神经网络(CNNS)中的现代架构适用于从UAV视觉传感器收集的数据流的特殊特征。该方法允许对钢结构,涂层和紧固件的各种损伤的自动检测和定位,例如裂缝或腐蚀,在不确定和现实生活环境下。所提出的模型基于多级级联分类器,以考虑来自UAV飞行期间捕获的光学传感器的各种细节电平。这允许从钢铁工程师的角度来协调聚集图像数据的特征和关键方面。为了提高系统的性能并最​​大限度地减少手动数据注释,我们使用基于众所周知的Coco DataSet与现场检查图像相结合的传输学习。该方法为对象本地化和具有最先进的CNN架构进行分类提供了实质数据库。

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