A new framework for quantifying alongshore variability of swash motion using fully convolutional networks

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Date
2024-05-24
Authors
Salatin, Reza
Chen, Qin
Raubenheimer, Britt
Elgar, Steve
Gorrell, Levi
Li, Xin
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DOI
10.1016/j.coastaleng.2024.104542
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Keywords
Computer vision
Machine learning
Fully convolutional networks
Swash
Runup
Alongshore variation
Abstract
Waves running up and down the beach (‘swash’) at the landward edge of the ocean can cause changes to the beach topology, can erode dunes, and can result in inland flooding. Despite the importance of swash, field observations are difficult to obtain in the thin, bubbly, and potentially sediment laden fluid layers. Here, swash excursions along an Atlantic Ocean beach are estimated with a new framework, V-BeachNet, that uses a fully convolutional network to distinguish between sand and the moving edge of the wave in rapid sequences of images. V-BeachNet is trained with 16 randomly selected and manually segmented images of the swash zone, and is used to estimate swash excursions along 200 m of the shoreline by automatically segmenting four 1-h sequences of images that span a range of incident wave conditions. Data from a scanning lidar system are used to validate the swash estimates along a cross-shore transect within the camera field of view. V-BeachNet estimates of swash spectra, significant wave heights, and wave-driven setup (increases in the mean water level) agree with those estimated from the lidar data.
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© The Author(s), 2024. This article is distributed under the terms of the Creative Commons Attribution License. The definitive version was published in Salatin, R., Chen, Q., Raubenheimer, B., Elgar, S., Gorrell, L., & Li, X. (2024). A new framework for quantifying alongshore variability of swash motion using fully convolutional networks. Coastal Engineering, 192, 104542, https://doi.org/10.1016/j.coastaleng.2024.104542.
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Salatin, R., Chen, Q., Raubenheimer, B., Elgar, S., Gorrell, L., & Li, X. (2024). A new framework for quantifying alongshore variability of swash motion using fully convolutional networks. Coastal Engineering, 192, 104542.
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