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.
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