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首页> 外文期刊>Journal of structural engineering >Dynamic Imaging: Real-Time Detection of Local Structural Damage with Blind Separation of Low-Rank Background and Sparse Innovation
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Dynamic Imaging: Real-Time Detection of Local Structural Damage with Blind Separation of Low-Rank Background and Sparse Innovation

机译:动态成像:通过盲分离低等级背景和稀疏创新来实时检测局部结构损坏

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摘要

Real-time close-up imaging (filming or video surveillance) of structures is used to automate detection of local component-level damage by exploiting the spatiotemporal data structure of the multiple temporal frames of structures. Specifically, the multiple frames are decomposed into a superposition of a low-rank background component and a sparse innovation (dynamic) component by a technique called principal component pursuit (PCP, or robust principal component analysis). The low-rank component represents the irrelevant, temporally correlated background of the multiple frames, whereas the sparse innovation component indicates the salient, evolutionary damage-induced information. The sparse innovation component is then quantitatively measured for continuous alert and indication of the damage evolution. It is a data-driven and unsupervised (blind) approach that requires no parametric model or prior structural information for calibration. In addition, PCP has an overwhelming probability of success under broad conditions and can be implemented by an efficient convex optimization program without tuning parameters. Laboratory experiments on concrete structures demonstrate that the proposed dynamic imaging method can efficiently and effectively track and indicate the evolution of small or severe damage by the recovered outstanding sparse innovation component (with the low-rank background subtracted from the original images). The proposed method has the potential to benefit real-time automated local damage surveillance and diagnosis of structures where experts' visual inspection is not needed or not possible. (C) 2015 American Society of Civil Engineers.
机译:通过利用结构的多个时间帧的时空数据结构,结构的实时特写成像(电影或视频监视)可用于自动检测局部组件级损坏。具体而言,通过称为主成分追踪(PCP或鲁棒主成分分析)的技术,将多个帧分解为低阶背景成分和稀疏创新(动态)成分的叠加。低阶成分代表多个帧的不相关,时间相关的背景,而稀疏创新成分则指示出显着的,进化性的损伤诱导信息。然后对稀疏的创新组件进行定量测量,以持续发出警报并指示损害的演变。它是一种数据驱动和无监督(盲)方法,不需要参数模型或先前的结构信息即可进行校准。此外,PCP在宽泛的条件下具有压倒性的成功几率,并且可以通过高效的凸优化程序来实现,而无需调整参数。在混凝土结构上进行的实验室实验表明,所提出的动态成像方法可以有效地跟踪并指示由回收的突出稀疏创新成分(从原始图像中减去低等级背景)引起的小损害或严重损害的演变。所提出的方法具有潜在的优势,可以在不需要或不可能进行外观检查的情况下,对结构的实时自动化局部损坏进行监视和诊断。 (C)2015年美国土木工程师学会。

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