| 2026 |
A Genealogy of Foundation Models in Remote Sensing |
This survey reviews the evolution of remote-sensing foundation models from single-sensor to multisensor designs, covering pretraining strategies, adaptation methods, and benchmark trends. It highlights constraints such as high computational demands and data imbalance, and outlines future directions for robust geospatial representations. |
arXiv:2504.17177 |
| 2025 |
First On-Orbit Demonstration of a Geospatial Foundation Model |
This paper reports the first on-orbit deployment of a geospatial foundation model (IMAGIN-e on the ISS) and evaluates compression and domain-adaptation strategies across five Earth-observation tasks in two flight environments. The results demonstrate reliable onboard inference under resource-constrained conditions. |
arXiv:2512.01181 |
| 2025 |
Geospatial Foundation Models to Enable Progress on Sustainable Development Goals |
This work introduces SustainFM, an SDG-grounded benchmark spanning 17 goals and 47 tasks to evaluate geospatial foundation models beyond raw accuracy. It emphasizes transferability, generalization, and energy efficiency, and motivates impact-driven and ethically informed deployment. |
arXiv:2505.24528 |
| 2025 |
REOBench: Benchmarking Robustness of Earth Observation Foundation Models |
Introduces REOBench, a robustness benchmark with six Earth-observation tasks and 12 corruption types spanning appearance and geometric shifts. Evaluations reveal substantial degradation in existing models and show comparatively stronger robustness from vision-language pretraining. |
arXiv:2505.16793 |
| 2025 |
TerraFM: A Scalable Foundation Model for Unified Multisensor Earth Observation |
Presents TerraFM, a global self-supervised multisensor model trained on Sentinel-1 and Sentinel-2 with large spatial tiles and land-cover-aware sampling. With modality-specific embeddings, cross-attention fusion, and tailored objectives, it reports strong gains on GEO-Bench and Copernicus-Bench. |
arXiv:2506.06281 |
| 2025 |
Earth AI: Unlocking Geospatial Insights with Foundation Models and Cross-Modal Reasoning |
Introduces Earth AI, a family of multimodal geospatial models integrating planet-scale imagery, population, and environmental data with a Gemini-based reasoning engine. A new benchmark based on real-world crisis scenarios shows cross-modal integration improving geospatial reasoning over single-modality baselines. |
arXiv:2510.18318 |
| 2025 |
The Transparent Earth: A Multimodal Foundation Model for the Earth's Subsurface |
Presents The Transparent Earth, a transformer foundation model for subsurface prediction across eight modalities using positional/modality encodings and text-derived embeddings. It supports inference with complete, partial, or no inputs and reports up to a threefold reduction in stress-angle prediction error versus prior methods. |
arXiv:2509.02783 |
| 2025 |
Towards a Unified Copernicus Foundation Model for Earth Vision |
Proposes a unified Copernicus foundation model trained on an 18.7M-image dataset spanning major Sentinel missions and both surface and atmospheric domains. The architecture combines dynamic hypernetworks with metadata encoding and demonstrates transfer across 15 Earth-vision tasks. |
arXiv:2503.11849 |
| 2025 |
Foundation Models for Environmental Science: A Survey of Emerging Frontiers |
Provides a survey of foundation models for environmental science, organizing applications such as forward prediction, data generation, data assimilation, downscaling, inverse modeling, ensembling, and decision-making. It also reviews data, architecture, training, and evaluation pipelines and identifies open research directions. |
arXiv:2504.04280 |
| 2024 |
PANGAEA: A Global and Inclusive Benchmark for Geospatial Foundation Models |
Presents PANGAEA, a standardized benchmark protocol for geospatial foundation models covering diverse datasets, tasks, sensors, resolutions, and temporal settings. Comparative results indicate current GFMs do not consistently outperform supervised baselines, especially under limited-label regimes. |
arXiv:2412.04204 |
| 2024 |
Foundation Models for Remote Sensing and Earth Observation: A Survey |
Surveys foundation models for remote sensing and Earth observation, including vision foundation models, vision-language models, LLM-related methods, and broader multimodal trends. It synthesizes public datasets and benchmarks, and discusses key challenges and future directions. |
arXiv:2410.16602 |
| 2024 |
Exploring Foundation Models in Remote Sensing Image Change Detection: A Comprehensive Survey |
Provides a systematic review of foundation-model approaches for remote-sensing image change detection, summarizing recent methods and framing key opportunities and challenges for this task. |
arXiv:2410.07824 |