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Publication
PASC 2024
Invited talk
Foundation Models in Earth Science and Remote Sensing
Abstract
Significant progress in the development of highly adaptable and reusable Artificial Intelligence (AI) models is expected to have a significant impact on Earth science and remote sensing. Foundation Models (FMs), AI models designed to replace task-specific models, are increasingly being recognized for their versatility across numerous downstream applications. These models, trained using self-supervised techniques on any type of sequence data, circumvent the need for large annotated datasets, a major bottleneck in traditional AI model development. FMs can be applied to downstream tasks using few-shot learning and fine-tuning, significantly reducing the need for large labeled training datasets and computational resources. In contrast to task-specific models, large-scale FMs facilitate the processing of multi-modal data from different satellites and additional data modalities in order to obtain improved model skills in the Earth observation domain.