rshf Remote sensing pretrained models easy loading using huggingface -- PyTorch (for fast benchmarking) Installation: pip install rshf Example: from rshf.satmae import SatMAE model = SatMAE.from_pretrained("MVRL/satmae-vitlarge-fmow-pretrain-800") input = model.transform(torch.randint(0, 256, (224, 224, 3)).float().numpy(), 224).unsqueeze(0) print(model.forward_encoder(input, mask_ratio=0.0)[0].shape) TODO: Add transforms for each model Add Documentation (https://rshf-docs.readthedocs.io/en/latest/) Add initial set of models Citations Model Type Venue Citation BioCLIP CVPR'24 link Climplicit ICLRW'25 link CLIP ICML'21 link CROMA NeurIPS'23 link GeoCLAP BMVC'23 link GeoCLIP NeurIPS'23 link Presto link Prithvi link RCME ICCV'25 link RemoteCLIP TGRS'23 link RVSA TGRS'22 link Sat2Cap EarthVision'24 link SatClip AAAI'25 link SatMAE NeurIPS'22 link SatMAE++ CVPR'24 link ScaleMAE ICCV'23 link SenCLIP WACV'25 link SINR ICML'23 link StreetCLIP link TaxaBind WACV'25 link List of models available here: Link