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GeoSANE: Learning Geospatial Representations from Models, Not Data

About

Recent advances in remote sensing have led to an increase in the number of available foundation models; each trained on different modalities, datasets, and objectives, yet capturing only part of the vast geospatial knowledge landscape. While these models show strong results within their respective domains, their capabilities remain complementary rather than unified. Therefore, instead of choosing one model over another, we aim to combine their strengths into a single shared representation. We introduce GeoSANE, a geospatial model foundry that learns a unified neural representation from the weights of existing foundation models and task-specific models, able to generate novel neural networks weights on-demand. Given a target architecture, GeoSANE generates weights ready for finetuning for classification, segmentation, and detection tasks across multiple modalities. Models generated by GeoSANE consistently outperform their counterparts trained from scratch, match or surpass state-of-the-art remote sensing foundation models, and outperform models obtained through pruning or knowledge distillation when generating lightweight networks. Evaluations across ten diverse datasets and on GEO-Bench confirm its strong generalization capabilities. By shifting from pre-training to weight generation, GeoSANE introduces a new framework for unifying and transferring geospatial knowledge across models and tasks. Code is available at \href{https://hsg-aiml.github.io/GeoSANE/}{hsg-aiml.github.io/GeoSANE/}.

Joelle Hanna, Damian Falk, Stella X. Yu, Damian Borth• 2026

Related benchmarks

TaskDatasetResultRank
Image ClassificationRESISC45
Accuracy96.5
349
Semantic segmentationSen1Floods11
mIoU (macro)89.6
29
Image ClassificationfMoW
Accuracy58.9
21
Object DetectionDIOR--
13
ClassificationEuroSAT
Overall Accuracy (OA)99.1
12
Multi-Label ClassificationBigEarthNet
MAP88.7
11
Classificationm-bigearthnet GEO-Bench
mAP74.2
8
Classificationm-so2sat GEO-Bench
Overall Accuracy65.7
8
Classificationm-eurosat GEO-Bench
Overall Accuracy97.7
8
Classificationm-brick-kiln GEO-Bench
Overall Accuracy (OA)98.6
8
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