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Subgrid Variational Optimized Optical Flow Estimation Algorithm for Image Velocimetry

Haoxuan Xu, Jianping Wang, Ya Zhang, Zhang Guo, Zhao‐Long Xiong

2022Sensors12 citationsDOIOpen Access PDF

Abstract

The variational optical flow model is used in this work to investigate a subgrid-scale optimization approach for modeling complex fluid flows in image sequences and estimating their two-dimensional velocity fields. To solve the problem of lack of sub-grid small-scale structure information in variational optical flow estimation, we combine the motion laws of incompressible fluids. Introducing the idea of large eddy simulation, the instantaneous motion can be decomposed into large-scale motion and a small-scale turbulence in the data term. The Smagorinsky model is used to model and solve the small-scale turbulence. The improved subgrid scale Horn-Schunck (SGS-HS) optical flow algorithm provides better results in velocity field estimation of turbulent image sequences than the traditional Farneback dense optical flow algorithm. To make the SGS-HS algorithm equally competent for the open channel flow measurement task, a velocity gradient constraint is chosen for the canonical term of the model, which is used to improve the accuracy of the SGS-HS algorithm in velocimetric experiments in the case of the relatively uniform flow direction of the open channel flow field. The experimental results show that our algorithm has better performance in open channel velocimetry compared with the conventional algorithm.

Topics & Concepts

AlgorithmOptical flowTurbulenceOpen-channel flowFlow (mathematics)Vector fieldScale (ratio)Particle image velocimetryVelocimetryChannel (broadcasting)MathematicsComputer scienceImage (mathematics)Artificial intelligenceGeometryPhysicsMechanicsQuantum mechanicsComputer networkAdvanced Vision and ImagingAdvanced Image Processing TechniquesImage Enhancement Techniques
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