SkySensePlusPlus

github.com/kang-wu/skysenseplusplus
Idle227updated 9 months ago
Python

Semantic-enhanced multi-modal remote sensing foundation model for Earth observation (Nature Machine Intelligence 2025), enabling universal interpretation across diverse satellite imagery modalities with open-source weights and benchmarks

Sourced from

  • GitHubgithub.com/kang-wu/skysenseplusplus
  • Awesome AI for Sciencegithub.com/kang-wu/skysenseplusplus

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