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Structural displacement monitoring using deep learning-based full field optical flow methods

机译:基于深度学习的全场光学流动方法的结构位移监测

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摘要

Current vision-based displacement measurement methods have limitations such as being in need of manual targets and parameter adjustment, and significant user involvement to reach the desired result. This study proposes a novel structural displacement measurement method using deep learning-based full field optical flow methods. The performance of the proposed method is verified via a laboratory experiment conducted on a grandstand structure with a comparative study, where the same data samples are analysed with a commonly used vision-based method, and a displacement sensor measurement is used as the ground truth. Statistical analysis of the comparative results show that the proposed method gives higher accuracy than the traditional optical flow algorithm and shows consistent results in compliance with displacement sensor measurements. Image collection, tracking, and non-uniform sampling are investigated in the experimental data and suggestions are made to obtain more accurate displacement measurements. A field-validation on a footbridge showed that the measurement error induced by the camera motion is mitigated by a camera motion subtraction procedure. The proposed method has good potential to be applied by structural engineers, who have little or no experience in computer vision and image processing, to do vision-based displacement measurements.
机译:基于视觉的位移测量方法具有限制,例如需要手动目标和参数调整,以及显着的用户参与以达到所需的结果。本研究提出了一种使用基于深度学习的全场光学流动方法的新型结构位移测量方法。通过对比较研究的正面结构进行的实验室实验验证了所提出的方法的性能,其中通过常用的基于视觉的方法分析相同的数据样本,并且使用位移传感器测量作为地面真理。对比结果的统计分析表明,该方法比传统光学流量算法提供更高的精度,并显示一致的结果符合位移传感器测量。在实验数据中研究了图像集合,跟踪和非均匀抽样,并提出了更准确的位移测量。人桥上的场验证显示,通过相机运动减法过程减轻了相机运动引起的测量误差。所提出的方法具有由结构工程师应用的良好潜力,他们在计算机视觉和图像处理中几乎没有经验,以做基于视觉的位移测量。

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