CVFeb 11

Ecological mapping with geospatial foundation models

arXiv:2602.10720v1h-index: 6
Originality Synthesis-oriented
AI Analysis

This work addresses the utility of GFMs for ecological mapping, which is incremental as it applies existing models to specific high-value use cases.

This study explored the application of geospatial foundation models (GFMs) for ecological mapping tasks, such as land use/land cover generation, forest functional trait mapping, and peatlands detection, and found that GFMs outperformed baseline ResNet models, with TerraMind showing marginal or significant improvements depending on modalities.

Geospatial foundation models (GFMs) are a fast-emerging paradigm for various geospatial tasks, such as ecological mapping. However, the utility of GFMs has not been fully explored for high-value use cases. This study aims to explore the utility, challenges and opportunities associated with the application of GFMs for ecological uses. In this regard, we fine-tune several pretrained AI models, namely, Prithvi-E0-2.0 and TerraMind, across three use cases, and compare this with a baseline ResNet-101 model. Firstly, we demonstrate TerraMind's LULC generation capabilities. Lastly, we explore the utility of the GFMs in forest functional trait mapping and peatlands detection. In all experiments, the GFMs outperform the baseline ResNet models. In general TerraMind marginally outperforms Prithvi. However, with additional modalities TerraMind significantly outperforms the baseline ResNet and Prithvi models. Nonetheless, consideration should be given to the divergence of input data from pretrained modalities. We note that these models would benefit from higher resolution and more accurate labels, especially for use cases where pixel-level dynamics need to be mapped.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes