Chrome Extension
WeChat Mini Program
Use on ChatGLM

River flow estimation using video data

Imaging Systems and Techniques(2014)

Cited 3|Views7
No score
Abstract
An image-based framework for river flow monitoring based on a statistical estimation technique for fluid flow estimation is presented. This approach uses subsequent gray-scale video frames along with a statistical estimation method to extract the optical flow. An average velocity estimate is computed using the velocity vectors of the main motion trend, which is extracted using classification methods. The corresponding real-world surface velocity is computed using velocity-area transformations. The use of only two subsequent video frames and the lack of tracers in the flow are the key features of this technique in order to extract an accurate estimate of the real surface velocity. We compare our real-world surface velocity estimate with traditional current meter measurements, made on the site of Pinios river, Thessaly, Greece using the Q-liner 2 Doppler device.
More
Translated text
Key words
estimation theory,geophysical image processing,image colour analysis,image sequences,remote sensing,rivers,statistical analysis,video signal processing,pinios river,q-liner 2 doppler device,average velocity estimate,classification methods,current meter measurement,fluid flow estimation,gray-scale video frames,image-based framework,optical flow,real surface velocity,real-world surface velocity estimate,river flow estimation,river flow monitoring,statistical estimation method,statistical estimation technique,velocity vector,velocity-area transformation,video data
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined