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This is a code of the paper "Hyperspectral anomaly change detection based on autoencoder" implemented on PyTorch. | ||
Pytorch is needed for running this code. | ||
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[Dataset]: "Viareggio 2013" with de-striping, noise-whitening and spectrally binning | ||
1. img_data.mat: | ||
img_1(D1F12H1); img_2(D1F12H2); img_3(D2F22H2) | ||
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链接:https://pan.baidu.com/s/1sRmdjsT-xl6DQJeoPIBNYA | ||
提取码:qdqf | ||
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2. pretrain_samples: | ||
un_idx_train1,un_idx_valid1,un_idx_train2,un_idx_valid2; [acquired from the pre-detection result of USFA, Wu C, Zhang L, Du B. Hyperspectral anomaly change detection with slow feature analysis[J]. Neurocomputing, 2015, 151: 175-187.] | ||
3. groundtruth_samples: | ||
un_idx_train1,un_idx_valid1,un_idx_train2,un_idx_valid2; | ||
4. random_samples: un_idx_train1,un_idx_valid1,un_idx_train2,un_idx_valid2; | ||
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[Usage]: maincode.py | ||
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If you use this code for your research, please cite our papers: | ||
Hu M, Wu C, Zhang L, et al. Hyperspectral anomaly change detection based on autoencoder[J]. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 2021, 14: 3750-3762. |