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Unsupervised Single-Scene Semantic Segmentation for Earth Observation

Instructions for Vaihingen dataset

Code can be run using following two commands:

For training the model on single scene (after running this command the model will be saved to ./trainedModels/) $ python trainVaihingen.py --manualSeed 85 --nFeaturesIntermediateLayers 64 --nFeaturesFinalLayer 8 --numTrainingEpochs 2 --modelName Model5ChannelInitialToMiddleLayersDifferent

For obtaining segmentation maps from the test scenes (after running this command the model will be saved to ./results/vaihingen/) $ python obtainSegMapVaihingen.py

Different manual seeds can be set in the above command.

Please download the Vaihingen dataset from appropriate source and save it in the directory (w.r.t the code) "../data/Vaihingen/"

Citation

If you find this code or the multi-season dataset useful, please consider citing:

@article{saha2022unsupervised,
  title={Unsupervised Single-Scene Semantic Segmentation for Earth Observation},
  author={Saha, Sudipan and Shahzad, Muhammad and Mou, Lichao and Song, Qian and Zhu, Xiao Xiang},
  journal={IEEE Transactions on Geoscience and Remote Sensing},
  year={2022},
  publisher={IEEE}
}

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