Skip to content

cloudsen12/easystac

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

56 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

easystac

A Python package for simple STAC queries

PyPI conda-forge Documentation Status Tests License GitHub Sponsors Buy me a coffee Ko-fi Twitter Twitter Black isort


GitHub: https://github.com/cloudsen12/easystac

Documentation: https://easystac.readthedocs.io/

PyPI: https://pypi.org/project/easystac/

Conda-forge: https://anaconda.org/conda-forge/easystac


Overview

SpatioTemporal Asset Catalogs (STAC) provide a standardized format that describes geospatial information. Multiple platforms are using this standard to provide clients several datasets. Platforms such as Planetary Computer, Radiant ML Hub and Google Earth Engine use this standard, however, only Google Earth Engine provides a fully easy API that is transparent for clients.

easystac is a Python package that provides users of STAC objects as well as clients from Planetary Computer and Radiant ML Hub with an easy API that is transparent for them, implementing Google Earth Engine-like methods and classes to query, explore and convert STAC assets to xarray objects.

Some of the easystac features are listed here:

  • Simple authentication for Planetary Computer and Radiant ML Hub.
  • Access to STAC collections from Planetary Computer and Radiant ML Hub.
  • Earth Engine-like classes such as ImageCollection, including filtering methods.
  • Compatibility with xarray.

Check the simple usage of easystac here:

import easystac as es
from geojson import Point

geom = Point([-76.3,3.4])

E84_S2_L2A = (es.ImageCollection('sentinel-s2-l2a-cogs')
    .fromSTAC('https://earth-search.aws.element84.com/v0')
    .filterBounds(geom)
    .filterDate("2021-01-01","2022-01-01")
    .getInfo(resolution = 10,assets = ["B02","B03","B04"]))

In the case of specialized STAC objects, we have created special modules for Planetary Computer:

import easystac.planetary as pc
from geojson import Point

pc.Authenticate()
pc.Initialize()

geom = Point([-76.1,4.3])

S2 = (pc.ImageCollection("sentinel-2-l2a")
    .filterBounds(geom)
    .filterDate("2020-01-01","2021-01-01")
    .getInfo(resolution = 10))

This principle applies also for Radiant ML Hub.

import easystac.radiant as rd

rd.Authenticate()
rd.Initialize()

S1floods = (rd.ImageCollection("sen12floods_s1_source")
    .filterDate("2019-01-01","2019-01-05")
    .getInfo(epsg = 4326,resolution = 0.0001))

Installation

Install the latest version from PyPI:

pip install easystac

Upgrade easystac by running:

pip install -U easystac

Install the latest version from conda-forge:

conda install -c conda-forge easystac

Install the latest dev version from GitHub by running:

pip install git+https://github.com/cloudsen12/easystac

License

The project is licensed under the MIT license.