English

Kriging and Gaussian Process Interpolation for Georeferenced Data Augmentation

Artificial Intelligence 2025-01-14 v1

Abstract

Data augmentation is a crucial step in the development of robust supervised learning models, especially when dealing with limited datasets. This study explores interpolation techniques for the augmentation of geo-referenced data, with the aim of predicting the presence of Commelina benghalensis L. in sugarcane plots in La R{\'e}union. Given the spatial nature of the data and the high cost of data collection, we evaluated two interpolation approaches: Gaussian processes (GPs) with different kernels and kriging with various variograms. The objectives of this work are threefold: (i) to identify which interpolation methods offer the best predictive performance for various regression algorithms, (ii) to analyze the evolution of performance as a function of the number of observations added, and (iii) to assess the spatial consistency of augmented datasets. The results show that GP-based methods, in particular with combined kernels (GP-COMB), significantly improve the performance of regression algorithms while requiring less additional data. Although kriging shows slightly lower performance, it is distinguished by a more homogeneous spatial coverage, a potential advantage in certain contexts.

Keywords

Cite

@article{arxiv.2501.07183,
  title  = {Kriging and Gaussian Process Interpolation for Georeferenced Data Augmentation},
  author = {Frédérick Fabre Ferber and Dominique Gay and Jean-Christophe Soulié and Jean Diatta and Odalric-Ambrym Maillard},
  journal= {arXiv preprint arXiv:2501.07183},
  year   = {2025}
}
R2 v1 2026-06-28T21:04:25.917Z