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Meta-learning to address diverse Earth observation problems across resolutions

Earth Sciences

Meta-learning to address diverse Earth observation problems across resolutions

M. Rußwurm, S. Wang, et al.

Discover METEOR, an innovative deep meta-learning model that revolutionizes Earth observation by tackling remote sensing challenges across varied resolutions. Developed by a team of experts including Marc Rußwurm, Sherrie Wang, Benjamin Kellenberger, Ribana Roscher, and Devis Tuia, this model adapts to new geospatial problems, even with limited data, outpacing traditional methods in effectiveness.

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Playback language: English
Abstract
Earth scientists often study remote sensing problems in isolation, limiting information flow. This work presents METEOR, an adaptive deep meta-learning model addressing Earth observation problems across resolutions. METEOR handles variable spectral channels and class numbers, adapting to new problems with few training examples using global land cover knowledge. It outperforms competing self-supervised methods on five downstream tasks, demonstrating its effectiveness in solving novel geospatial problems with limited labeled data.
Publisher
Communications Earth & Environment
Published On
Jan 12, 2024
Authors
Marc Rußwurm, Sherrie Wang, Benjamin Kellenberger, Ribana Roscher, Devis Tuia
Tags
remote sensing
deep learning
Earth observation
meta-learning
geospatial problems
machine learning
land cover
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