Multi-modal learning for geospatial vegetation forecasting
Vitus Benson, Claire Robin, Christian Requena-Mesa, Lazaro Alonso,, Nuno Carvalhais, Jos\'e Cort\'es, Zhihan Gao, Nora Linscheid, M\'elanie, Weynants, Markus Reichstein

TL;DR
This paper introduces GreenEarthNet, a new high-resolution vegetation forecasting dataset, and Contextformer, a transformer-based deep learning model that predicts vegetation dynamics from satellite imagery and meteorological data across Europe.
Contribution
The study presents the first dataset specifically for high-resolution vegetation forecasting and a novel multi-modal transformer model that effectively captures vegetation dynamics and anomalies.
Findings
Contextformer outperforms baseline models on EarthNet2021.
GreenEarthNet enables cross-dataset comparisons and improved vegetation modeling.
Models can now predict vegetation health and anomalies beyond seasonal cycles.
Abstract
The innovative application of precise geospatial vegetation forecasting holds immense potential across diverse sectors, including agriculture, forestry, humanitarian aid, and carbon accounting. To leverage the vast availability of satellite imagery for this task, various works have applied deep neural networks for predicting multispectral images in photorealistic quality. However, the important area of vegetation dynamics has not been thoroughly explored. Our study breaks new ground by introducing GreenEarthNet, the first dataset specifically designed for high-resolution vegetation forecasting, and Contextformer, a novel deep learning approach for predicting vegetation greenness from Sentinel 2 satellite images with fine resolution across Europe. Our multi-modal transformer model Contextformer leverages spatial context through a vision backbone and predicts the temporal dynamics on…
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Taxonomy
TopicsRemote Sensing in Agriculture · Species Distribution and Climate Change · Land Use and Ecosystem Services
