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首页> 外文期刊>Water resources research >Streamflow Observations From Cameras: Large-Scale Particle Image Velocimetry or Particle Tracking Velocimetry?
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Streamflow Observations From Cameras: Large-Scale Particle Image Velocimetry or Particle Tracking Velocimetry?

机译:摄像机的流量观察:大型粒子图像测速还是粒子跟踪测速?

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摘要

Image-based methodologies, such as large scale particle image velocimetry (LSPIV) and particle tracking velocimetry (PTV), have increased our ability to noninvasively conduct streamflow measurements by affording spatially distributed observations at high temporal resolution. However, progress in optical methodologies has not been paralleled by the implementation of image-based approaches in environmental monitoring practice. We attribute this fact to the sensitivity of LSPIV, by far the most frequently adopted algorithm, to visibility conditions and to the occurrence of visible surface features. In this work, we test both LSPIV and PTV on a data set of 12 videos captured in a natural stream wherein artificial floaters are homogeneously and continuously deployed. Further, we apply both algorithms to a video of a high flow event on the Tiber River, Rome, Italy. In our application, we propose a modified PTV approach that only takes into account realistic trajectories. Based on our findings, LSPIV largely underestimates surface velocities with respect to PTV in both favorable (12 videos in a natural stream) and adverse (high flow event in the Tiber River) conditions. On the other hand, PTV is in closer agreement than LSPIV with benchmark velocities in both experimental settings. In addition, the accuracy of PTV estimations can be directly related to the transit of physical objects in the field of view, thus providing tangible data for uncertainty evaluation.
机译:基于图像的方法,例如大规模粒子图像测速(LSPIV)和粒子跟踪测速(PTV),通过提供高时间分辨率的空间分布观测值,提高了我们无创地进行流量测量的能力。但是,光学方法学的进步并没有与环境监测实践中基于图像的方法的实现并行。我们将此事实归因于LSPIV的灵敏度(迄今为止最常用的算法),可见度条件和可见表面特征的出现。在这项工作中,我们在自然流中捕获的12个视频的数据集上测试LSPIV和PTV,其中人工漂浮物均匀且连续地部署。此外,我们将两种算法都应用于意大利罗马台伯河上发生高流量事件的视频。在我们的应用程序中,我们提出了一种经过修改的PTV方法,该方法仅考虑了现实轨迹。根据我们的发现,LSPIV在有利的条件下(自然流中有12个视频)和不利的条件(在台伯河中发生高流量事件)都大大低估了相对于PTV的表面速度。另一方面,在两个实验设置中,PTV与LSPIV的基准速度都更接近。此外,PTV估计的准确性可以直接与视野中物理对象的通过相关,从而为不确定性评估提供了切实的数据。

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  • 来源
    《Water resources research》 |2017年第12期|10374-10394|共21页
  • 作者单位

    Univ Tuscia, Dept Innovat Biol Agrofood & Forest Syst, Viterbo, Italy;

    Univ Tuscia, Dept Innovat Biol Agrofood & Forest Syst, Viterbo, Italy;

    Univ Tuscia, Dept Innovat Biol Agrofood & Forest Syst, Viterbo, Italy;

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