STRUCTURAL DAMAGE DETECTION, LOCALIZATION, AND QUANTIFICATION VIA UAV-BASED 3D IMAGING

Xin Peng, Gaofeng Su, ZhiQiang Chen, Raja Sengupta
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Abstract

Visual damage inspection for civil structures is a labor-intensive and timeconsuming task. We propose an autonomous UAV-based pipeline for crack and spalling detection, localization, and quantification. Through fusing 3-dimensional (3D) reconstruction and 2D damage detection after performing UAV-based imaging for an engineering structure, the process generates a damage-annotated 3D information model with rich metadata, including the size and type of damage and its location relative to the structure. The pipeline is composed of four steps: image acquisition via UAV, 3D scene reconstruction, crack/spalling detection and extraction using a deep neural network, and 3D damage localization and quantification. To validate this process, UAV images from three full-scale concrete columns are processed, and results are evaluated in this paper. The results demonstrate that the proposed pipeline can provide accurate and informative 3D condition mapping for civil structures. The authors envision that by employing this UAV-based automatic process, structural damage inspection can be conducted much frequently and rapidly with a significantly low cost.
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结构损伤检测,定位和量化,通过基于无人机的三维成像
土木结构目测损伤检测是一项费时费力的工作。我们提出了一个自主的基于无人机的管道,用于裂纹和剥落检测,定位和量化。该过程通过对工程结构进行基于无人机的成像后的三维(3D)重建和二维损伤检测融合,生成具有丰富元数据的损伤注释三维信息模型,包括损伤的大小、类型及其相对于结构的位置。该流程由四个步骤组成:通过无人机获取图像,3D场景重建,使用深度神经网络进行裂纹/剥落检测和提取,以及3D损伤定位和量化。为了验证这一过程,本文对三根全尺寸混凝土柱的无人机图像进行了处理,并对结果进行了评估。结果表明,所提出的管道可以为土建结构提供准确、信息丰富的三维状态映射。作者设想,通过采用这种基于无人机的自动过程,可以以极低的成本更频繁、更快速地进行结构损伤检测。
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NONLINEAR BULK WAVE PROPAGATION IN A MATERIAL WITH RANDOMLY DISTRIBUTED SYMMETRIC AND ASYMMETRIC HYSTERETIC NONLINEARITY SPATIAL FILTERING TECHNIQUE-BASED ENHANCEMENT OF THE RECONSTRUCTION ALGORITHM FOR THE PROBABILISTIC INSPECTION OF DAMAGE (RAPID) KOOPMAN OPERATOR BASED FAULT DIAGNOSTIC METHODS FOR MECHANICAL SYSTEMS ON THE APPLICATION OF VARIATIONAL AUTO ENCODERS (VAE) FOR DAMAGE DETECTION IN ROLLING ELEMENT BEARINGS INTELLIGENT IDENTIFICATION OF RIVET CORROSION ON STEEL TRUSS BRIDGE BY SINGLE-STAGE DETECTION NETWORK
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