Towards vision-based structural modal identification at low frame rate using blind source separation

Shivank Mittal , Ayan Sadhu
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Abstract

With increasing availability of cost-effective and high-resolution cameras, their use as a non-contact sensing tool has rapidly progressed for structural health monitoring. The cameras offer unique capabilities to provide full-field measurement with high spatial density at low cost. However, extracting high-density temporal data is challenging, as a high-speed camera increases the monitoring cost with high-rate data processing. Recently, motion magnification (MM) has shown significant success in analyzing low-amplitude motion of structural systems. However, previous studies observed that MM methodology performs poorly at low frame rates for modal identifications. In this paper, the influence of low frame rate on phased-based motion magnification (PMM) has been investigated. A novel technique is proposed by combining PMM with zero mean-normalization cross-correlation tracker to determine vibrational responses, and then the spatial Wigner-Ville spectrum-based time-frequency blind source separation method is explored for modal identification using the extracted vibrational responses obtained from the video data. The experimental data of a lumped mass experimental model and a steel bridge is used to test the accuracy of the proposed method. The original and motion-magnified image response data is compared with accelerometer data for modal identification. The proposed method is able to extract the modal parameters with high accuracy for motion-magnified images, even for low frame rates.

利用盲源分离实现基于视觉的低帧频结构模态识别
随着高性价比、高分辨率照相机的日益普及,其作为非接触式传感工具在结构健康监测领域的应用得到了快速发展。照相机具有独特的功能,能以低成本提供高空间密度的全场测量。然而,提取高密度的时间数据却具有挑战性,因为高速摄像机在进行高速数据处理时会增加监测成本。最近,运动放大(MM)技术在分析结构系统的低振幅运动方面取得了巨大成功。然而,之前的研究发现,运动放大法在低帧频模态识别方面表现不佳。本文研究了低帧频对基于相位的运动放大(PMM)的影响。本文提出了一种新技术,将 PMM 与零均值归一化交叉相关跟踪器相结合来确定振动响应,然后探索了基于空间 Wigner-Ville 频谱的时频盲源分离方法,利用从视频数据中提取的振动响应进行模态识别。利用一个质量块实验模型和一座钢桥的实验数据来测试所提方法的准确性。原始和运动放大的图像响应数据与加速度计数据进行了比较,以进行模态识别。即使帧频较低,所提出的方法也能高精度地提取运动放大图像的模态参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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