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Image processing for hydraulic jump free-surface detection: coupled gradient/machine learning model

机译:液压跳跃自由表面检测的图像处理:耦合梯度/机器学习模型

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摘要

High-frequency oscillations and high surface aeration, induced by strong turbulence, make water depth measurement for hydraulic jumps a persistently challenging task. The investigation of hydraulic jump behaviour continues to be an important research theme, particularly with regards to the stilling basin design. Reliable knowledge of time-averaged and extreme values along a depth profile can help develop an adequate design of a stilling basin, improve safety, and aid the understanding of the jump phenomenon. This paper presents an attempt to mitigate certain limitations of existing depth measurement methods by adopting a non-intrusive computer vision-based approach to measuring the water depth profile of a hydraulic jump. The proposed method analyses video data in order to detect the boundary between the air-water mixture and the laboratory flume wall. This is achieved by coupling two computer vision methods: (1) analysis of the vertical image gradients, and (2) general-purpose edge detection using a deep neural network model. While the gradient analysis technique alone can provide adequate results, its performance can be significantly improved in combination with a neural network model which incorporates a 'human-like' vision within the algorithm. The model coupling reduces the likelihood of false detections and improves the overall detection accuracy. The proposed method is tested in two experiments with different degrees of jump aeration. Results show that the coupled model can reliably and accurately capture the instantaneous depth profile along the jump, with low sensitivity to image noise and flow aeration. The coupled model presented fewer false detections than the gradient-based model, and offered consistent performance in regions of high as well as low aeration. The proposed approach allows for automated detection of the free-surface interface and expands the potential of computer vision-based measurement methods in hydraulics.
机译:通过强大的湍流引起的高频振荡和高表面曝气,使液压的水深测量跳跃持续具有挑战性的任务。液压跳跃行为的调查仍然是一个重要的研究主题,特别是关于盆地盆地设计。沿着深度配置文件可靠地了解时间平均和极端值,可以帮助开发静脉盆地的充分设计,提高安全性,帮助了解跳跃现象。本文通过采用非侵入式计算机视觉的方法来测量液压跳跃的水深度轮廓来试图减轻现有深度测量方法的某些限制。该方法分析了视频数据,以检测空水混合物和实验室水壳之间的边界。这是通过耦合两种计算机视觉方法来实现的:(1)对垂直图像梯度的分析,以及使用深神经网络模型的通用边缘检测。虽然单独的梯度分析技术可以提供足够的结果,但是其性能可以与神经网络模型的组合显着改善,该神经网络模型结合在算法内结合了“人类类似”视觉。模型耦合降低了假检测的可能性并提高了整体检测精度。该方法在两个实验中测试了不同程度的跳跃曝气。结果表明,耦合模型可以可靠地精确地沿跳转捕获瞬时深度曲线,对图像噪声和流量通气具有低灵敏度。耦合模型呈现比基于梯度的模型更少的错误检测,并在高通气的区域中提供一致的性能。所提出的方法允许自动检测自由表面界面,并扩大液压系统中基于计算机视觉的测量方法的潜力。

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