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Machine learning and digital image processing for non-contact modal parameters identification of structures

机译:机器学习和数字图像处理用于结构的非接触式模态参数识别

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This study introduces an innovative non-contact sensing technique for vision-based displacement measurement. Existing vision-based displacement measurement techniques utilizes physical target panels or physical features to compute relative displacement between the target and the observation point. Instead, the proposed method exploits the optical reference of a speckle pattern. A coherent light that is diffusely reflected on the surface of the target structure creates the speckle pattern. In this study, a camera records the changes in the speckle pattern in real time. Because the speckle pattern is sensitive to small changes of surface, the ambient vibration is enough to affect it. To estimate the displacement of the target from the raw speckle images, speckle contrast imaging (SCI), speckle flow imaging (SFI), and k-means clustering algorithm were used. After SCI and SFI quantifies the blurring effect in each image, the k-means clustering algorithm creates virtual sensing node from each image. The connection of virtual nodes from frame to frame highlights the displacements of the surface in time domain. Because the algorithms are time-consuming and computationally intensive, a GPU executes the entire post-processing operation in parallel and identifies the natural frequencies of the structure.
机译:这项研究介绍了一种创新的非接触式传感技术,用于基于视觉的位移测量。现有的基于视觉的位移测量技术利用物理目标面板或物理特征来计算目标与观察点之间的相对位移。取而代之的是,所提出的方法利用了斑点图案的光学参考。在目标结构的表面上漫反射的相干光创建斑点图案。在这项研究中,摄像机实时记录了斑点图案的变化。由于斑点图案对表面的微小变化敏感,因此周围的振动足以影响它。为了从原始散斑图像估计目标的位移,使用了散斑对比成像(SCI),散斑流成像(SFI)和k-均值聚类算法。在SCI和SFI量化每个图像中的模糊效果之后,k均值聚类算法会根据每个图像创建虚拟传感节点。虚拟节点从一帧到另一帧的连接突出了表面在时域中的位移。由于算法耗时且计算量大,因此GPU会并行执行整个后处理操作,并识别结构的固有频率。

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