SpectralEarth-MM: Towards a foundation model for next-generation land cover monitoring across spectra
7 Aug 2025
Foundation models are transforming remote sensing by enabling general-purpose solutions that work across different sensor types and tasks. While RGB, multispectral, and radar domains have seen rapid advances, hyperspectral imagery—with its ability to capture hundreds of spectral bands—remains a largely untapped resource.
SpectralEarth-MM bridges this gap by bringing together:
- EnMAP (hyperspectral)
- Sentinel-2 and Landsat-8 (multispectral)
- Sentinel-1 (radar)
While still under development, the resulting model is currently trained on a comprehensive, multi-sensor dataset with a focus on land monitoring downstream applications.
Sample scenes from SpectralEarth-MM showing the same locations across different sensors: EnMAP (hyperspectral), Sentinel-2 and Landsat-8 (multispectral), and Sentinel-1 (radar).
How it works
At the heart of SpectralEarth-MM is a vision transformer architecture built for flexibility and scale. Specialized layers are used to handle the unique characteristics of each sensor type. The model is trained with self-supervised techniques to learn unified representations across data sources without requiring exhaustive labelling. This architecture enables the model to handle a wide range of land monitoring tasks with improved performance and adaptability.
The SpectralEarth-MM pipeline: a multi-sensor dataset feeds into a pre-trained encoder, enabling flexible outputs for multi-label classification, semantic segmentation, and pixel-level regression
From Forests to Fields: Key Applications
The capabilities of SpectralEarth-MM are being tested on several critical use cases:
- Forest monitoring: Classifying tree species with higher accuracy using the rich spectral information from hyperspectral data.
- Agriculture: Identifying crop types at scale, supporting precision farming and agri-environmental policies.
- General land cover: Performing both patch-level and pixel-level classification across landscapes for consistent, high-resolution mapping.
Towards a New Era of Land Monitoring
By unifying hyperspectral, multispectral, and radar data in a single benchmark and foundation model, SpectralEarth-MM opens the door to truly multi-sensor, scalable solutions for Copernicus Land Monitoring and beyond. Its ability to support diverse tasks, from forest species mapping to crop classification, makes it a key step towards more general, automated, and accurate Earth observation systems.
The SpectralEarth-MM dataset lays the groundwork for the next generation of land monitoring methods for EvoLand beyond current prototypes—flexible, cross-sensor, and ready to capture the complexity of our changing planet.
SpectralEarth-MM is an ongoing research effort, and our team is currently finalising the details for publication. Stay tuned for more updates as we move closer to sharing the full methodology and results.
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