Add library_name
Browse filesThis PR adds the `library_name: pytorch` tag to the model card, so people can more easily use the model using PyTorch.
README.md
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---
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license: etalab-2.0
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tags:
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- semantic segmentation
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- pytorch
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- landcover
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-
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model-index:
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- name: FLAIR-HUB_LC-A_convnextv2base-upernet
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results:
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@@ -14,63 +15,59 @@ model-index:
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name: IGNF/FLAIR-HUB/
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type: earth-observation-dataset
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metrics:
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-
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type: mIoU
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value: 63.771
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-
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-
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value: 77.031
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-
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value: 83.5
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value: 76.548
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value:
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value: 74.837
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value: 56.544
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value: 63.005
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value: 89.533
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value: 67.806
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value: 53.766
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value: 57.318
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value: 34.667
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value: 78.533
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value: 70.751
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value: 61.192
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value: 29.189
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pipeline_tag: image-segmentation
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---
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-
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-
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<div style="font-family:sans-serif; color:black; background-color:#F8F5F5; padding:25px; border-radius:10px; margin:auto; border:0px; ">
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<!-- Collection Section -->
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@@ -408,5 +405,4 @@ pipeline_tag: image-segmentation
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```
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Anatol Garioud, Sébastien Giordano, Nicolas David, Nicolas Gonthier.
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FLAIR-HUB: Large-scale Multimodal Dataset for Land Cover and Crop Mapping. (2025).
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-
DOI: https://doi.org/10.48550/arXiv.2506.
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-
```
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---
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license: etalab-2.0
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+
pipeline_tag: image-segmentation
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tags:
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- semantic segmentation
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- pytorch
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- landcover
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+
library_name: pytorch
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model-index:
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- name: FLAIR-HUB_LC-A_convnextv2base-upernet
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results:
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name: IGNF/FLAIR-HUB/
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type: earth-observation-dataset
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metrics:
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- type: mIoU
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value: 63.771
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name: mIoU
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- type: OA
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value: 77.031
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name: Overall Accuracy
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- type: IoU
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value: 83.5
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name: IoU building
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- type: IoU
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value: 76.548
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name: IoU greenhouse
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- type: IoU
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value: 59.37
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name: IoU swimming pool
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- type: IoU
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value: 74.837
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name: IoU impervious surface
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- type: IoU
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value: 56.544
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name: IoU pervious surface
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- type: IoU
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value: 63.005
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name: IoU bare soil
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- type: IoU
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value: 89.533
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name: IoU water
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- type: IoU
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value: 67.806
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name: IoU snow
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- type: IoU
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value: 53.766
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name: IoU herbaceous vegetation
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- type: IoU
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value: 57.318
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name: IoU agricultural land
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- type: IoU
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value: 34.667
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name: IoU plowed land
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- type: IoU
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value: 78.533
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name: IoU vineyard
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- type: IoU
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value: 70.751
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name: IoU deciduous
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- type: IoU
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value: 61.192
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name: IoU coniferous
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- type: IoU
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value: 29.189
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name: IoU brushwood
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---
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<div style="font-family:sans-serif; color:black; background-color:#F8F5F5; padding:25px; border-radius:10px; margin:auto; border:0px; ">
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<!-- Collection Section -->
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```
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Anatol Garioud, Sébastien Giordano, Nicolas David, Nicolas Gonthier.
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FLAIR-HUB: Large-scale Multimodal Dataset for Land Cover and Crop Mapping. (2025).
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+
DOI: https://doi.org/10.48550/arXiv.2506.070
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