Options
Deep Learning Methods for Breaking Ocean Waves
Author(s)
Date Issued
2026
Date Available
2026-02-06T15:49:39Z
Abstract
Breaking ocean waves evolve through a complex and turbulent process which dissipates large amounts of energy in short periods of time. This thesis examines this
process through the use of images and computer vision models. Training strategies for models of classification and segmentation tasks are examined and compared. Segmentation models of the breaking region are developed and a self-supervised pre-training task is assessed in improving the generalisation of models when training with limited labelled data. A stereo vision experiment is deployed in challenging conditions in a remote location on Inishmaan, one of the Aran Islands in Galway bay off the West coast of Ireland. The difficulties encountered are documented and recommendations for improvements on the stereo setup are presented. An alternate dataset of stereo images are reconstructed to a three dimensional representation of the sea surface and the directional spectra is estimated using a wavelet based method.
process through the use of images and computer vision models. Training strategies for models of classification and segmentation tasks are examined and compared. Segmentation models of the breaking region are developed and a self-supervised pre-training task is assessed in improving the generalisation of models when training with limited labelled data. A stereo vision experiment is deployed in challenging conditions in a remote location on Inishmaan, one of the Aran Islands in Galway bay off the West coast of Ireland. The difficulties encountered are documented and recommendations for improvements on the stereo setup are presented. An alternate dataset of stereo images are reconstructed to a three dimensional representation of the sea surface and the directional spectra is estimated using a wavelet based method.
Type of Material
Doctoral Thesis
Qualification Name
Doctor of Philosophy (Ph.D.)
Publisher
University College Dublin. School of Mathematics and Statistics
Copyright (Published Version)
2026 the Author
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
File(s)
Loading...
Name
PhD_Thesis-revised.pdf
Size
113.26 MB
Format
Adobe PDF
Checksum (MD5)
be8a7d54c3f8c8ee91bb2a0452d5ae24
Owning collection