Due to the difficulty and expense of collecting bathymetric data, modeling is the primary tool to produce detailed maps of the ocean floor. Current modeling practices typically utilize only one interpolator; the industry standard is splines-in-tension. In this dissertation we introduce a new nominal-informed ensemble interpolator designed to improve modeling accuracy in regions of sparse data. The method is guided by a priori domain knowledge provided by artificially intelligent classifiers. We recast such geomorphological classifications, such as ‘seamount’ or ‘ridge’, as nominal data which we utilize as foundational shapes in an expanded ordinary least squares regression-based algorithm. To our knowledge we are the first to utilize the ou...
This work demonstrates an example of the importance of an adequate method to sub-sample model result...
This study examines the use of a machine learning framework for predicting seafloor depth and coastl...
AbstractGiven the depth of 14 arbitrary points in a rectangular region of the ocean. our team create...
There is a growing demand in the geophysical community for better regional representations of the wo...
This work is concerned with the viability of Machine Learning (ML) in training models for predicting...
There is a growing demand in the geophysical community for better regional representations of the wo...
We address the problem of compiling bathymetric data sets with heterogeneous coverage and a range of...
Digital elevation models (DEMs) are the framework for the modeling of numerous coastal processes inc...
The first part of this thesis deals with studying the effect of the specified bathymetric resolution...
Accurate interpolation when compiling bathymetric maps is essential in any water depth study. In the...
Quantitative mapping of seafloor sediment properties (eg. grain size) requires the input of comprehe...
Seabed sediment texture can be mapped by geostatistical prediction from limited direct observations ...
In ocean acoustics and seismology, the Earth’s subsurface is imaged using acoustic and seismic waves...
The past century has seen remarkable advances in technologies associated with positioning and the me...
Mapping shallow bathymetry by means of optical remote sensing has been a challenging task of growing...
This work demonstrates an example of the importance of an adequate method to sub-sample model result...
This study examines the use of a machine learning framework for predicting seafloor depth and coastl...
AbstractGiven the depth of 14 arbitrary points in a rectangular region of the ocean. our team create...
There is a growing demand in the geophysical community for better regional representations of the wo...
This work is concerned with the viability of Machine Learning (ML) in training models for predicting...
There is a growing demand in the geophysical community for better regional representations of the wo...
We address the problem of compiling bathymetric data sets with heterogeneous coverage and a range of...
Digital elevation models (DEMs) are the framework for the modeling of numerous coastal processes inc...
The first part of this thesis deals with studying the effect of the specified bathymetric resolution...
Accurate interpolation when compiling bathymetric maps is essential in any water depth study. In the...
Quantitative mapping of seafloor sediment properties (eg. grain size) requires the input of comprehe...
Seabed sediment texture can be mapped by geostatistical prediction from limited direct observations ...
In ocean acoustics and seismology, the Earth’s subsurface is imaged using acoustic and seismic waves...
The past century has seen remarkable advances in technologies associated with positioning and the me...
Mapping shallow bathymetry by means of optical remote sensing has been a challenging task of growing...
This work demonstrates an example of the importance of an adequate method to sub-sample model result...
This study examines the use of a machine learning framework for predicting seafloor depth and coastl...
AbstractGiven the depth of 14 arbitrary points in a rectangular region of the ocean. our team create...