Discovery and analysis of topographic features using learning algorithms: A seamount case study
Publication date
2013
Authors
Valentine, A.P.
Kalnins, L.M.
Trampert, J.
Editors
Advisors
Supervisors
Document Type
Article
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(c) UU Universiteit Utrecht, 2013
Abstract
Identifying and cataloging occurrences of particular topographic features are important but time-consuming tasks. Typically, automation is challenging, as simple models do not fully describe the complexities of natural features. We propose a new approach, where a particular class of neural network (the “autoencoder”) is used to assimilate the characteristics of the feature to be cataloged, and then applied to a systematic search for new examples. To demonstrate the feasibility of this method, we construct a network that may be used to find seamounts in global bathymetric data. We show results for two test regions, which compare favorably with results from traditional algorithms.