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An improvement of the Space-Time Image Velocimetry combined with a new denoising method for estimating river discharge

Haoyuan Zhao, Hua Chen, Bingyi Liu, Weigao Liu, Chong‐Yu Xu, Shenglian Guo, Jun Wang

2020Flow Measurement and Instrumentation49 citationsDOIOpen Access PDF

Abstract

The Space-Time Image Velocimetry (STIV) is a time-averaged velocity measurement method, which takes river surface images as the analysis object, and detects the Main Orientation of Texture (MOT) in a generated Space-Time Image (STI) to obtain one-dimensional velocities on the water surface. The STIV has great potential in real-time monitoring of river flow owing to its high spatial resolution and low time complexity. However, the generated STI contains a lot of noise and interference texture, which is inevitable in practical applications. The practicality of the STIV is severely limited by the low-quality STI. To solve this problem, a denoising method based on the filtering technology is proposed and combined with different texture detection algorithms in this paper. The accuracy of this method is verified through a comparative field experiment with an impellor-style current meter. The experimental results show: (1) By using this new denoising method, the robustness and accuracy of the STIV are significantly improved no matter what kind of texture detection algorithm is adopted; (2) Among all the texture detection algorithms, the FFT-based STIV combined with the new denoising method performs best. The relative errors of the surface velocities are controlled within 6%, and the relative errors of the discharges are controlled within ±4%.

Topics & Concepts

Noise reductionArtificial intelligenceComputer scienceComputer visionRobustness (evolution)AlgorithmBiochemistryGeneChemistryHydrology and Sediment Transport ProcessesFlood Risk Assessment and ManagementHydraulic flow and structures