SeeFar: Satellite Agnostic Multi-Resolution Dataset for Geospatial Foundation Models
James Lowman, Kelly Liu Zheng, Roydon Fraser, Jesse Van Griensven The,, and Mojtaba Valipour

TL;DR
SeeFar is a comprehensive, multi-resolution satellite image dataset designed to train satellite-agnostic geospatial foundation models, combining public and commercial satellite data for enhanced flexibility and interoperability.
Contribution
It introduces a standardized, multi-resolution satellite dataset that unifies diverse sources to facilitate training of satellite-agnostic geospatial models.
Findings
Enables training of models with both historical and high-resolution imagery
Provides standardized multi-resolution satellite data in cloud-optimized GeoTIFF format
Fosters innovation by making diverse satellite data more accessible
Abstract
SeeFar is an evolving collection of multi-resolution satellite images from public and commercial satellites. We specifically curated this dataset for training geospatial foundation models, unconstrained by satellite type. In recent years, advances in technology have made satellite imagery more accessible than ever. More earth-observing satellites have been launched in the last five years than in the previous fifty. Modern commercial satellites now offer up to 100 times the spatial resolution of public access satellites. However, the high cost and limited historical availability of commercial satellite imagery is a barrier to the training of foundational models, impacting what images can be used during inference. The SeeFar dataset represents a step towards training models that are satellite-agnostic by combining multi-resolution commercial and public access pre-processed images. This…
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Taxonomy
TopicsGeological Modeling and Analysis · Advanced Computational Techniques and Applications · Geographic Information Systems Studies
