Efficient machine learning method for spatio-temporal water surface waves reconstruction from polarimetric images
Abstract Accurate and cost-effective sea state measurements, in terms of spatio-temporal distribution of water surface elevation (water waves), is of great interest for scientific research and various engineering, industrial, and recreational applications. To this end, numerous measurement technique...
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Published in | Measurement science & technology Vol. 34; no. 5; p. 55801 |
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Main Authors | , , , |
Format | Journal Article |
Language | English |
Published |
01.05.2023
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Online Access | Get full text |
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Summary: | Abstract
Accurate and cost-effective sea state measurements, in terms of spatio-temporal distribution of water surface elevation (water waves), is of great interest for scientific research and various engineering, industrial, and recreational applications. To this end, numerous measurement techniques have been developed over the years. None of these techniques, however, are universally applicable across various ocean and laboratory conditions and none provide near-real-time data. We utilized the latest advances in polarimetric imaging to develop a new remote sensing method based on machine learning methodology and polarimetric reflection measurements for inferring surface waves elevation and slope. The method utilizes a newly available, inexpensive polarimetric camera providing images of the water surface in a high spatio-temporal resolution at several linear polarization angles. Algorithms based on artificial neural networks (
ANN
s) are then trained to obtain high-resolution reconstructions of the water surface slope state from those images. The
ANN
s are trained on laboratory-collected supervised datasets of prescribed mechanically generated monochromatic wave trains and tested on a stochastic wave field of JONSWAP spectral shape. The proposed method, based on inferring the surface slope from polarimetric images, provides a dense estimate of the water surface. The results of this study pave the way for the development of accurate and cost-effective near-real-time remote sensing tools for both laboratory and open sea wave measurements. |
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ISSN: | 0957-0233 1361-6501 |
DOI: | 10.1088/1361-6501/acb3eb |