• Stars
    star
    160
  • Rank 234,703 (Top 5 %)
  • Language
    Python
  • License
    MIT License
  • Created over 4 years ago
  • Updated over 1 year ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Super resolution for remote sensing

SR4RS

An open source tool for super resolution. You can add your own models, cost functions, feel free to open a PR!

Cite

http://doi.org/10.5334/jors.369

@article{cresson2022sr4rs,
  title={SR4RS: A Tool for Super Resolution of Remote Sensing Images},
  author={Cresson, R{\'e}mi},
  journal={Journal of Open Research Software},
  volume={10},
  number={1},
  year={2022},
  publisher={Ubiquity Press}
}

Super Resolution for Remote Sensing

This work has been supported by the Programme National de Télédétection Spatiale (PNTS), grant n° PNTS-2020-07

Representative images

The following are Sentinel-2 images processed with a model trained from pansharpened Spot-6/7 images.

Read more

Blog post on MDL4EO

How to use?

SR4RS needs OTBTF>=2.3 to work.

Quick HR image generation using pre-trained model

  1. Get the latest OTBTF docker image and enter the docker image. Here is an example with the otbtf 3.4 gpu image, using NVIDIA runtime:
docker run -ti --runtime=nvidia mdl4eo/otbtf:3.4.0-gpu bash
  1. Download and unzip a pre-trained SavedModel (see this section to see available pre-trained models)
wget https://nextcloud.inrae.fr/s/boabW9yCjdpLPGX/download/sr4rs_sentinel2_bands4328_france2020_savedmodel.zip
unzip sr4rs_sentinel2_bands4328_france2020_savedmodel.zip
  1. Clone SR4RS
git clone https://github.com/remicres/sr4rs.git
  1. Use SR4RS to create an HR image (the considered pre-trained model runs on a Sentinel-2 image, 4-channels ordered as Red, Green, Blue, Near infrared). Just download a Sentinel-2 image from ESA hub or elsewhere, then concatenate the bands in this order (for that you can use the OTB application named otbcli_ConcatenateImages).
python sr4rs/code/sr.py \
--savedmodel sr4rs_sentinel2_bands4328_france2020_savedmodel \
--input /path/to/some/S2_image/stacked_channels_4328_10m.tif \
--output test.tif

Train a model

Here is a summary of the steps to follow.

  1. Generate patches images using the PatchesExtraction application from OTBTF, from one low-res image (LR) and one high-res image (HR)
  2. Run train.py on your patches images, and generate a SavedModel
  3. Use sr.py on LR image using the previously generated SavedModel

For more details, see the documentation and check the pre-trained models.