SuperResolution of Sentinel2 imagery.
Project description
Super-resolution for Sentinel 2 files.
Provides a function to Super-sample the 20m bands of the Sentinel 2 imagery to 10m.
It works by using an inception res-net style Deep Learning model trained on 1000 sites randomly selected around the globe. The sites represent at least 25 samples within each Köppen-Geiger climate zones, all cities in the with at least 1 million inhabitatants. For each location, three training mosaics were collected spread out across different seasons resulting in 3000 mosaics.
The model itself is trained by using the RGB bands to sharpen the NIR band. First the resampled NIR band is transposed to the mean values of the RGB bands, secondly the network supersamples the NIR band, and thirdly the network mean-matches the low resolution image to the generated high-resolution image. To super-sample the other bands, they are substituted with the NIR band. The model has been purposely made small to ensure easy deployment.
Dependencies
buteo
(https://casperfibaek.github.io/buteo/)
tensorflow
(https://www.tensorflow.org/)
Installation
pip install s2super
Quickstart
# Setup
pip install s2super
from s2super import super_sample
# Constants
YEAR = 2021
MONTHS = 1
AOI = [55.67576, 12.56902] # Copenhagen
# Example get Sentinel 2 data function.
data = get_data_from_latlng(AOI, year=YEAR, months=MONTHS)[0]
# Fast is about 2.5 times faster and almost as good.
super_sampled = super_sample(data, method="fast", fit_data=False)
super_sample
Super-sample a Sentinel 2 image. The source can either be a NumPy array of the bands, or a .safe file.
Args:
data
(str/np.ndarray): The image to supersample. Either .safe file or NumPy array.
Kwargs:
indices
(dict): If the input is not a .safe file, a dictionary with the band names and the indices in the NumPy array must be proved. It comes in the form of { "B02": 0, "B03": 1, ... } (Default: 10m first, then 20m)
method
(str): Either fast or accurate. If fast, uses less overlaps and weighted average merging. If accurate, uses more overlaps and the mad_merge algorithm (Default: "fast")
fit_data
(bool): Should the deep learning model be fitted with the data? Improves accuracy, but takes around 1m to fit on colab. (Default: True)
fit_epochs
(int): If the model is refitted, for how many epochs should it run? (Default: 5)
verbose
(bool): If True, print statements will update on the progress (Default: True)
normalise
(bool): If the input data should be normalised. Leave this True, unless it has already been done. The model expects sentinel 2 l2a data normalised by dividing by 10000.0 (Default: True)
preloaded_model
(None/tf.model): Allows preloading the model, useful if applying the super_sampling function within a loop. (Default: None)
Returns:
(np.ndarray): A NumPy array with the supersampled data.
Cite
Fibaek, C.S, Super-sample Sentinel 2, (2022), GitHub repository, https://github.com/casperfibaek/super_res_s2
Developed at the European Space Agency's Φ-lab.
Build
python -m build; python -m twine upload dist/*
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