Image Processing Techniques for Dynamic Surface Velocity Measurement in Rivers

The measurement of dynamic surface velocities in rivers holds significant importance for hydrological studies, environmental monitoring, and water resource management. With the rapid evolution of image processing technologies, methods based on imagery for velocity measurement have garnered widesprea...

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Veröffentlicht in:Traitement du signal 2024-02, Vol.41 (1), p.363-372
Hauptverfasser: Cheng, Xiaolong, Zhang, Xujin
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description The measurement of dynamic surface velocities in rivers holds significant importance for hydrological studies, environmental monitoring, and water resource management. With the rapid evolution of image processing technologies, methods based on imagery for velocity measurement have garnered widespread attention due to their non-intrusive nature and operational simplicity. Addressing the invasive nature, limited measurement capabilities, and poor adaptability to complex environments inherent in traditional velocity measurement techniques, a novel technical scheme is proposed. Initially, an enhanced Mean shift algorithm is employed for effective tracking of river surface targets, overcoming stability and accuracy issues faced by conventional algorithms in complex aquatic environments. Subsequently, a new velocity measurement method, integrating optical flow techniques with calibration technology, is introduced to augment accuracy and mitigate environmental interferences. This research not only enhances the reliability of non-contact velocity measurement technologies but also offers new perspectives and tools for river monitoring, contributing significantly to the sustainable management and utilization of water resources.
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subjects Accuracy
Algorithms
Aquatic environment
Environmental management
Environmental monitoring
Image enhancement
Image processing
Measurement methods
Methods
Morphology
Optical flow (image analysis)
Probability distribution
River ecology
Rivers
Statistical analysis
Surface stability
Tracking
Velocity
Velocity measurement
Water resources management
title Image Processing Techniques for Dynamic Surface Velocity Measurement in Rivers
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