Below-ground Fungal Biodiversity Can be Monitored Using Self-Supervised Learning Satellite Features

arXiv cs.LG / 4/14/2026

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Key Points

  • The study proposes using self-supervised learning on satellite imagery to estimate below-ground ectomycorrhizal fungal richness across large regions where direct biodiversity sampling is costly.
  • Models trained with SSL-derived satellite features explain over half the variance in species richness from about 12,000 field samples across Europe and Asia, outperforming conventional inputs like climate, soil, and land cover.
  • The approach increases spatial resolution by roughly 10,000×, improving from 1 km landscape averages to 10 m habitat-scale predictions while maintaining low systematic bias.
  • Because satellite data are dynamic, the method enables temporal monitoring of underground fungal biodiversity, and a UK National Park analysis suggests ancient forests may be losing ectomycorrhizal diversity faster than other areas.
  • Overall, the work positions SSL satellite features as a scalable way to turn sparse field observations into continuous, high-resolution biodiversity maps for the “invisible half” of terrestrial ecosystems.

Abstract

Mycorrhizal fungi are vital to terrestrial ecosystem functioning. Yet monitoring their biodiversity at landscape scales is often unfeasible due to time and cost constraints. Current predictions suggest that 90\% of mycorrhizal diversity hotspots remain unprotected, opening questions of how to broadly and effectively map underground fungal communities. Here, we show that self-supervised learning (SSL) applied to satellite imagery can predict below-ground ectomycorrhizal fungal richness across diverse environments. Our models explain over half the variance in species richness across ~12,000 field samples spanning Europe and Asia. SSL-derived features prove to be the single most informative predictor, subsuming the majority of information contained in climate, soil, and land cover datasets. Using this approach, we achieve a 10,000-fold increase in spatial resolution over existing techniques, moving from 1km landscape averages to 10m habitat-scale observations with nearly no systematic bias. As satellite observations are dynamic rather than static, this enables temporal monitoring of below-ground biodiversity at landscape scales for the first time. We analyze multi-year trends in predicted fungal richness across UK National Park woodlands, finding that ancient forests may be losing ectomycorrhizal diversity at disproportionate rates. These results establish SSL satellite features as a scalable tool for extending sparse field observations to continuous, high-resolution biodiversity maps for monitoring the invisible half of terrestrial ecosystems.