物联网图像处理的表面波测量

IF 2.4 3区 环境科学与生态学 Q2 ENGINEERING, CIVIL
Yuying Wei , Dharma Sree , Chun Yang , Adrian Wing-Keung Law
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引用次数: 2

摘要

本研究发展了两种不同的方法来进行表面波剖面的时间和空间测量,用于透明波槽的实验研究。两者都基于物联网(IoT)系统的图像采集和处理,该系统由三套GoPro相机和树莓派在本地局域网中无线连接在一起。第一种方法使用先进的边缘算法,对多个摄像头进行透视变换进行检测,而第二种方法采用卷积神经网络(CNN)算法,利用安装的额外离散探头的信息对处理后的图像数据进行训练。在不同波高和周期的规则波和不规则波的一系列实验条件下,基于由预测水面剖面的平均误差以及波峰和波谷的位置误差组成的度量,评估了它们的准确性。研究了图像采集频率、相机分辨率和相机位置对测量精度的影响。结果表明,较高的波陡通常会导致较大的探测误差,并且不规则波的测量也更具挑战性。此外,将相机放置在靠近波槽侧壁的位置,可以获得预期的更好的检测结果,特别是在分辨波峰和波谷时,尽管视野同时缩小了。然而,由于图像处理中的锯齿性,更高的视频频率和相机分辨率不一定能提高与通常期望相反的精度。总的来说,这两种方法都是可行的,可以在实验室中测量波浪剖面。第一种方法在实现方面更为直接,并且在常规波浪条件下表现良好。第二种方法需要对神经网络进行更复杂的训练,但其精度明显更高,特别是对于不规则波。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surface wave measurements with IoT image processing

This study develops two different approaches to perform temporal and spatial measurements of surface wave profile for experimental studies in transparent wave flumes. Both are based on image acquisition and processing with an Internet of Things (IoT) system consisting of three sets of GoPro camera cum Raspberry Pi connected wirelessly together in a local LAN. The first approach uses advanced edge algorithms with perspective transformation of the multiple cameras for the detection, while the second approach adopts Convolutional Neural Network (CNN) algorithms instead with training of the processed image data using information from additional discrete probes installed. Their accuracy is assessed under a range of experimental conditions of regular and irregular waves with different wave heights and periods, based on metrics that consist of the average errors of the predicted water surface profile as well as position errors for wave crests and troughs. The effects on the measurement accuracy due to the image acquisition frequency, camera resolution and camera location are also investigated. The results show that higher wave steepnesses generally lead to larger detection errors, and measurements for irregular waves are also more challenging. In addition, positioning the cameras closer to the wave flume sidewalls yields better detection results as expected, particularly in resolving wave crests and troughs, although the field of view narrows at the same time. However, higher video frequencies and camera resolutions might not necessarily improve the accuracy contrary to common expectation due to jaggedness in the image processing. Overall, both approaches are shown to be viable for the measurement of wave profile in the laboratory. The first approach is more straight forward in terms of implementation, and it performs well for regular wave conditions. The second approach requires more complex training of the neural networks, but its accuracy is significantly higher particularly for irregular waves.

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来源期刊
Journal of Hydro-environment Research
Journal of Hydro-environment Research ENGINEERING, CIVIL-ENVIRONMENTAL SCIENCES
CiteScore
5.80
自引率
0.00%
发文量
34
审稿时长
98 days
期刊介绍: The journal aims to provide an international platform for the dissemination of research and engineering applications related to water and hydraulic problems in the Asia-Pacific region. The journal provides a wide distribution at affordable subscription rate, as well as a rapid reviewing and publication time. The journal particularly encourages papers from young researchers. Papers that require extensive language editing, qualify for editorial assistance with American Journal Experts, a Language Editing Company that Elsevier recommends. Authors submitting to this journal are entitled to a 10% discount.
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