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Simple Spatial Gapfilling Processor. Toolbox for filling gaps in spatial datasets (e.g. remote sensing data)

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SSGP_label.png

SimpleSpatialGapfiller - python class for filling gaps in matrices based on machine learing techniques. Main purpose is to provide convenient and simple instruments for modeling geophysical parameters, derived with Earth Remote Sensing, under clouds. But it also could be used for any matrices.

Citation

Sarafanov, M.; Kazakov, E.; Nikitin, N.O.; Kalyuzhnaya, A.V. A Machine Learning Approach for Remote Sensing Data Gap-Filling with Open-Source Implementation: An Example Regarding Land Surface Temperature, Surface Albedo and NDVI. Remote Sens. 2020, 12, 3865.

Requirements

'python>=3.7',
'gdal>=2.4',
'numpy',
'scikit-learn==0.21.3',
'pandas',
'scipy',
'netCDF4',
'pyproj' 
If errors occur when installing "gdal", you should install the gdal library before running the command to install this module
conda install -c conda-forge gdal

Install module

pip install git+https://github.com/Dreamlone/SSGP-toolbox

Modules

For now SSGP-toolbox is presented with:

  • Gapfiller class
  • Discretizator class
  • Several preparators: for Sentinel 3 LST data; for MODIS LST products; for MODIS NDVI based on reflectance product.
  • Algorithm for identifying cloud-shaded pixels in temperature field

By the way, you can prepare any data by yourself, it must be in binary numpy matrices format (.npy) and organized in several directories, as shown in docs.

Documentation and examples

All documentation and examples for now are described in Markdown files and Jupyter Notebooks:

Comparison

If you want to compare the accuracy of your algorithm with ours, you can use the dataset we have prepared. You can find it in the "Comparison" folder. The dataset already contains the layers filled in by our model, as well as the "CRAN gapfill" and "gapfilling rasters" layers.

Contacts

Feel free to contact us:

Mikhail Sarafanov (maintainer) | [email protected]

Eduard Kazakov | [email protected]

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Simple Spatial Gapfilling Processor. Toolbox for filling gaps in spatial datasets (e.g. remote sensing data)

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  • Jupyter Notebook 62.8%
  • Python 37.2%