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Mapping biodiversity at very-high resolution in Europe

7 April 2025
César Leblanc
Lukás Picek
Benjamin Deneu
P. Bonnet
Maximilien Servajean
Rémi Palard
Alexis Joly
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Abstract

This paper describes a cascading multimodal pipeline for high-resolution biodiversity mapping across Europe, integrating species distribution modeling, biodiversity indicators, and habitat classification. The proposed pipeline first predicts species compositions using a deep-SDM, a multimodal model trained on remote sensing, climate time series, and species occurrence data at 50x50m resolution. These predictions are then used to generate biodiversity indicator maps and classify habitats with Pl@ntBERT, a transformer-based LLM designed for species-to-habitat mapping. With this approach, continental-scale species distribution maps, biodiversity indicator maps, and habitat maps are produced, providing fine-grained ecological insights. Unlike traditional methods, this framework enables joint modeling of interspecies dependencies, bias-aware training with heterogeneous presence-absence data, and large-scale inference from multi-source remote sensing inputs.

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@article{leblanc2025_2504.05231,
  title={ Mapping biodiversity at very-high resolution in Europe },
  author={ César Leblanc and Lukas Picek and Benjamin Deneu and Pierre Bonnet and Maximilien Servajean and Rémi Palard and Alexis Joly },
  journal={arXiv preprint arXiv:2504.05231},
  year={ 2025 }
}
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