georeader-spaceml

🛰️ Process raster data in python


Keywords
geopandas, rasterio, satellite-data
License
LGPL-3.0
Install
pip install georeader-spaceml==1.3.8

Documentation

Article DOI:10.1038/s41598-023-47595-7 GitHub release (latest SemVer including pre-releases) PyPI PyPI - Python Version PyPI - License docs

Logo georeader

georeader is a package to process raster data from different satellite missions. georeader makes easy to read specific areas of your image, to reproject images from different satellites to a common grid (georeader.read), to go from vector to raster formats (georeader.vectorize and georeader.rasterize) or to do radiance to reflectance conversions (georeader.reflectance).

georeader is mainly used to process satellite data for scientific usage, to create ML-ready datasets and to implement end-to-end operational inference pipelines (e.g. the Kherson Dam Break floodmap).

Install

The core package dependencies are numpy, rasterio, shapely and geopandas.

pip install georeader-spaceml

Getting started

Read from a Sentinel-2 image a fixed size subimage on an specific lon,lat location (directly from the S2 public Google Cloud bucket):

# This snippet requires:
# pip install fsspec gcsfs google-cloud-storage
import os
os.environ["GS_NO_SIGN_REQUEST"] = "YES"

from georeader.readers import S2_SAFE_reader
from georeader import read

cords_read = (-104.394, 32.026) # long, lat
crs_cords = "EPSG:4326"
s2_safe_path = S2_SAFE_reader.s2_public_bucket_path("S2B_MSIL1C_20191008T173219_N0208_R055_T13SER_20191008T204555.SAFE")
s2obj = S2_SAFE_reader.s2loader(s2_safe_path, 
                                out_res=10, bands=["B04","B03","B02"])

# copy to local avoids http errors specially when not using a Google Cloud project.
# This will only copy the bands set up above B04, B03 and B02
s2obj = s2obj.cache_product_to_local_dir(".")

# See also read.read_from_bounds, read.read_from_polygon for different ways of croping an image
data = read.read_from_center_coords(s2obj,cords_read, shape=(2040, 4040),
                                    crs_center_coords=crs_cords)

data_memory = data.load() # this loads the data to memory

data_memory # GeoTensor object
>>  Transform: | 10.00, 0.00, 537020.00|
| 0.00,-10.00, 3553680.00|
| 0.00, 0.00, 1.00|
         Shape: (3, 2040, 4040)
         Resolution: (10.0, 10.0)
         Bounds: (537020.0, 3533280.0, 577420.0, 3553680.0)
         CRS: EPSG:32613
         fill_value_default: 0

In the .values attribute we have the plain numpy array that we can plot with show:

from rasterio.plot import show
show(data_memory.values/3500, transform=data_memory.transform)

awesome georeader

Saving the GeoTensor as a COG GeoTIFF:

from georeader.save import save_cog

# Supports writing in bucket location (e.g. gs://bucket-name/s2_crop.tif)
save_cog(data_memory, "s2_crop.tif", descriptions=s2obj.bands)

Tutorials

Sentinel-2

Read rasters from different satellites

Used in other projects

Citation

If you find this code useful please cite:

@article{portales-julia_global_2023,
	title = {Global flood extent segmentation in optical satellite images},
	volume = {13},
	issn = {2045-2322},
	doi = {10.1038/s41598-023-47595-7},
	number = {1},
	urldate = {2023-11-30},
	journal = {Scientific Reports},
	author = {Portalés-Julià, Enrique and Mateo-García, Gonzalo and Purcell, Cormac and Gómez-Chova, Luis},
	month = nov,
	year = {2023},
	pages = {20316},
}
@article{ruzicka_starcop_2023,
	title = {Semantic segmentation of methane plumes with hyperspectral machine learning models},
	volume = {13},
	issn = {2045-2322},
	url = {https://www.nature.com/articles/s41598-023-44918-6},
	doi = {10.1038/s41598-023-44918-6},
	number = {1},
	journal = {Scientific Reports},
	author = {Růžička, Vít and Mateo-Garcia, Gonzalo and Gómez-Chova, Luis and Vaughan, Anna, and Guanter, Luis and Markham, Andrew},
	month = nov,
	year = {2023},
	pages = {19999},
}

Acknowledgments

This research has been supported by the DEEPCLOUD project (PID2019-109026RB-I00) funded by the Spanish Ministry of Science and Innovation (MCIN/AEI/10.13039/501100011033) and the European Union (NextGenerationEU).

DEEPCLOUD project (PID2019-109026RB-I00, University of Valencia) funded by MCIN/AEI/10.13039/501100011033.