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Spatial deep convolutional neural networks

Qi Wang, Paul A. Parker, Robert Lund

2025Spatial Statistics16 citationsDOIOpen Access PDF

Abstract

Spatial prediction problems often use Gaussian process models, which can be computationally burdensome in high dimensions. Specification of an appropriate covariance function for the model can be challenging when complex non-stationarities exist. Recent work has shown that pre-computed spatial basis functions and a feed-forward neural network can capture complex spatial dependence structures while remaining computationally efficient. This paper builds on this literature by tailoring spatial basis functions for use in convolutional neural networks. Through both simulated and real data, we demonstrate that this approach yields more accurate spatial predictions than existing methods. Uncertainty quantification is also considered.

Topics & Concepts

Convolutional neural networkComputer scienceArtificial intelligencePattern recognition (psychology)Remote Sensing and LiDAR ApplicationsSoil Geostatistics and MappingBayesian Methods and Mixture Models
Spatial deep convolutional neural networks | Litcius