Bayesian deep learning for mapping via auxiliary information: a new era for geostatistics?
Charlie Kirkwood, Theo Economou, Nicolas Pugeault

TL;DR
This paper demonstrates how Bayesian deep learning can enhance geostatistical mapping by automatically learning complex relationships from auxiliary data, providing detailed maps with uncertainty estimates, surpassing traditional kriging methods.
Contribution
It introduces a novel approach combining deep neural networks with Bayesian methods for geostatistics, enabling automatic feature learning and probabilistic mapping at large scales.
Findings
Deep neural networks outperform traditional kriging in predictive accuracy.
The method provides well-calibrated uncertainty estimates.
Auxiliary data are fed raw, allowing the network to learn complex derivatives.
Abstract
For geospatial modelling and mapping tasks, variants of kriging - the spatial interpolation technique developed by South African mining engineer Danie Krige - have long been regarded as the established geostatistical methods. However, kriging and its variants (such as regression kriging, in which auxiliary variables or derivatives of these are included as covariates) are relatively restrictive models and lack capabilities that have been afforded to us in the last decade by deep neural networks. Principal among these is feature learning - the ability to learn filters to recognise task-specific patterns in gridded data such as images. Here we demonstrate the power of feature learning in a geostatistical context, by showing how deep neural networks can automatically learn the complex relationships between point-sampled target variables and gridded auxiliary variables (such as those…
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Taxonomy
TopicsSoil Geostatistics and Mapping · Geochemistry and Geologic Mapping · Mineral Processing and Grinding
