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Papers/Visual Spatial Learning: Single-Field Spatial Interpolation Using Convolutional Neural Networks
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Visual Spatial Learning: Single-Field Spatial Interpolation Using Convolutional Neural Networks

May 28, 2026

arXiv
Abstract

Predicting a complete spatially correlated field from sparse observations is a fundamental challenge in spatial statistics and environmental modelling. Classical interpolation methods such as Kriging rely on Gaussian process assumptions and variography, which can limit their effectiveness in non-stationary settings and require substantial domain expertise. In this work, we leverage an architecture based on convolutional neural networks (CNNs) for spatial interpolation that is trained and applied on a single partially observed field, without access to external data or prior fields. The model is supervised directly on the observed locations and learns to predict values at unobserved points on the user defined grid. Unlike Kriging, our method does not require explicit covariance modelling or variogram estimation, and it can flexibly capture local spatial patterns in a data-driven manner. This work demonstrates the potential of CNNs for single-instance spatial interpolation under sparse supervision, offering a practical alternative to classical geostatistical methods, and extending the use of CNNs to a new problem domain.

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Authors
Daniel Tinoco, Raquel Menezes, Carlos Baquero, Alexandra Silva
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arXiv:2605.30167