PIGEON (HyPerspectral ImaGE super-resolutiON)
Problem:
Hyperspectral satellite imagery often lacks the spatial resolution needed for detailed environmental assessments, precision agriculture, and air quality monitoring. The challenge was to improve image clarity without losing essential spectral information.
Solutions:
The PIGEON project developed advanced superresolution algorithms to enhance hyperspectral imagery.
Key features includes:
- Deep learning-based algorithms that boost spatial resolution while preserving spectral integrity.
- Improved visualization of fine details in hyperspectral images, allowing for clearer interpretation.
- Enhanced monitoring capabilities for air pollution, crop health, and natural resource management.
- Real-world validation through case studies in precision farming and environmental protection.
- Strengthened global monitoring by providing sharper insights from satellite data has context menu.
Learn more