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Blind identification of full-field vibration modes from video measurements with phase-based video motion magnification

机译:基于相位的视频运动放大倍数从视频测量中盲识别全场振动模式

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摘要

Experimental or operational modal analysis traditionally requires physically-attached wired or wireless sensors for vibration measurement of structures. This instrumentation can result in mass-loading on lightweight structures, and is costly and time-consuming to install and maintain on large civil structures, especially for long-term applications (e.g., structural health monitoring) that require significant maintenance for cabling (wired sensors) or periodic replacement of the energy supply (wireless sensors). Moreover, these sensors are typically placed at a limited number of discrete locations, providing low spatial sensing resolution that is hardly sufficient for modal-based damage localization, or model correlation and updating for larger-scale structures. Non-contact measurement methods such as scanning laser vibrometers provide high-resolution sensing capacity without the mass-loading effect; however, they make sequential measurements that require considerable acquisition time. As an alternative non-contact method, digital video cameras are relatively low-cost, agile, and provide high spatial resolution, simultaneous, measurements. Combined with vision based algorithms (e.g., image correlation, optical flow), video camera based measurements have been successfully used for vibration measurements and subsequent modal analysis, based on techniques such as the digital image correlation (DIC) and the point-tracking. However, they typically require speckle pattern or high-contrast markers to be placed on the surface of structures, which poses challenges when the measurement area is large or inaccessible. This work explores advanced computer vision and video processing algorithms to develop a novel video measurement and vision-based operational (output-only) modal analysis method that alleviate the need of structural surface preparation associated with existing vision-based methods and can be implemented in a relatively efficient and autonomous manner with little user supervision and calibration. First a multi-scale image processing method is applied on the frames of the video of a vibrating structure to extract the local pixel phases that encode local structural vibration, establishing a full-field spatiotemporal motion matrix. Then a high-spatial dimensional, yet low-modal-dimensional, over-complete model is used to represent the extracted full-field motion matrix using modal superposition, which is physically connected and manipulated by a family of unsupervised learning models and techniques, respectively. Thus, the proposed method is able to blindly extract modal frequencies, damping ratios, and full-field (as many points as the pixel number of the video frame) mode shapes from line of sight video measurements of the structure. The method is validated by laboratory experiments on a bench-scale building structure and a cantilever beam. Its ability for output (video measurements)-only identification and visualization of the weakly-excited mode is demonstrated and several issues with its implementation are discussed.
机译:传统上,实验或操作模态分析需要物理连接的有线或无线传感器来进行结构的振动测量。这种仪器可能会导致在轻型结构上的大量负载,并且在大型土木结构上安装和维护既昂贵又费时,特别是对于需要大量维护电缆(有线传感器)的长期应用(例如,结构健康监测) )或定期更换电源(无线传感器)。此外,这些传感器通常放置在有限数量的离散位置上,从而提供了低空间感测分辨率,这对于基于模态的损伤定位或模型关联以及大规模结构的更新几乎是不够的。诸如扫描激光振动计之类的非接触式测量方法可提供高分辨率的感应能力,而不会产生质量负载效应。但是,他们进行顺序测量需要大量的采集时间。作为一种可选的非接触式方法,数字摄像机成本相对较低,灵敏,并且可提供高空间分辨率的同时测量。结合基于视觉的算法(例如图像相关性,光流),基于摄像机的测量已经成功地用于振动测量以及随后的模态分析,基于诸如数字图像相关(DIC)和点跟踪的技术。但是,它们通常需要在结构的表面上放置斑点图案或高对比度标记,这在测量区域较大或难以接近时会带来挑战。这项工作探索了先进的计算机视觉和视频处理算法,以开发一种新颖的视频测量和基于视觉的操作(仅输出)模态分析方法,从而减轻了与现有基于视觉的方法相关的结构表面处理的需求,并且可以在相对高效和自治的方式,几乎不需要用户监督和校准。首先,将多尺度图像处理方法应用于振动结构的视频帧,以提取编码局部结构振动的局部像素相位,从而建立全场时空运动矩阵。然后,使用高空间维度但低模态维度的过度完成模型来表示使用模态叠加的提取的全场运动矩阵,该模型通过一系列无监督的学习模型和技术分别进行物理连接和操纵。因此,所提出的方法能够从结构的视线视频测量中盲目提取模态频率,阻尼比和全场(与视频帧的像素数一样多的点)模式形状。该方法通过在实验室规模的建筑结构和悬臂梁上的实验室实验得到验证。演示了其仅用于输出(视频测量)的识别和弱激励模式可视化的能力,并讨论了其实现的一些问题。

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