Deep covariate-learning: optimising information extraction from terrain texture for geostatistical modelling applications
Charlie Kirkwood

TL;DR
This paper introduces a deep learning method to automatically extract task-specific terrain covariates from elevation data, significantly improving geostatistical predictions without manual feature engineering.
Contribution
It presents a novel deep neural network approach that derives highly informative terrain covariates directly from elevation models for geostatistical modeling.
Findings
Deep covariate-learning achieves R-squared around 0.6 for geochemical predictions.
The method extracts informative covariates without using location or elevation inputs.
Results demonstrate strong explanatory power of learned terrain features.
Abstract
Where data is available, it is desirable in geostatistical modelling to make use of additional covariates, for example terrain data, in order to improve prediction accuracy in the modelling task. While elevation itself may be important, additional explanatory power for any given problem can be sought (but not necessarily found) by filtering digital elevation models to extract higher-order derivatives such as slope angles, curvatures, and roughness. In essence, it would be beneficial to extract as much task-relevant information as possible from the elevation grid. However, given the complexities of the natural world, chance dictates that the use of 'off-the-shelf' filters is unlikely to derive covariates that provide strong explanatory power to the target variable at hand, and any attempt to manually design informative covariates is likely to be a trial-and-error process -- not optimal.…
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Taxonomy
TopicsSoil Geostatistics and Mapping · Gaussian Processes and Bayesian Inference · Geochemistry and Geologic Mapping
