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semi-supervised semantic change detection

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Bi-SRNet

Pytorch codes of 'Bi-Temporal Semantic Reasoning for the Semantic Change Detection in HR Remote Sensing Images' [paper]

Data preparation:

  1. Split the SCD data into training, validation and testing (if available) set and organize them as follows:

YOUR_DATA_DIR

  • Train
    • im1
    • im2
    • label1
    • label2
  • Val
    • im1
    • im2
    • label1
    • label2
  • Test
    • im1
    • im2
    • label1
    • label2
  1. Find -datasets -RS_ST.py, set the data root in Line 22 as YOUR_DATA_DIR

Reference

If you find our work useful or interesting, please consider to cite:

Ding L, Guo H, Liu S, et al. Bi-temporal semantic reasoning for the semantic change detection in hr remote sensing images[J]. IEEE Transactions on Geoscience and Remote Sensing, 2022.

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semi-supervised semantic change detection

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