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📖 SS-MAE: Spatial-Spectral Masked Auto-Encoder for Mulit-Source Remote Sensing Image Classification (IEEE TGRS 2023)

ARXIV IEEE

This code is for our paper "SS-MAE: Spatial-Spectral Masked Auto-Encoder for Mulit-Source Remote Sensing Image Classification (IEEE TGRS 2023)".

🔥 We hope SS-MAE is helpful for your work. Thanks a lot for your attention.🔥

If you have any questions, please contact us. Email: linjyan00@163.com, gaofeng@ouc.edu.cn

Dataset

https://drive.google.com/file/d/1iZEIAVhlt2QJb_RECp0bHFVN7C8po8ag/view?usp=sharing

Usage

Pretraining (Berlin)

python main.py --is_pretrain 1 --is_train 0 --dataset Berlin --num_classes 8 --pca_num 30 --mask_ratio 0.3 --pretrain_num 200000 --channel_num 248 --batch_size 128 --device cuda:0 --lr 0.0001 --is_load_pretrain 0 --depth 2 --head 8 --dim 256 --epoch 300

Training (Berlin)

python main.py --is_pretrain 0 --is_train 1 --dataset Berlin --num_classes 8 --pca_num 30 --mask_ratio 0.3 --pretrain_num 200000 --channel_num 248 --batch_size 128 --device cuda:0 --lr 0.0001 --is_load_pretrain 1 --depth 2 --head 8 --dim 256 --epoch 300

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SS-MAE: Spatial-Spectral Masked Auto-Encoder for Mulit-Source Remote Sensing Image Classification (IEEE TGRS 2023)

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