Skip to content

Monitor and study any place on Earth and in Near Real-Time (NRT) using the SentinelHub services developed by the EO research team at Sinergise

License

Notifications You must be signed in to change notification settings

GlacioHack/earthspy

 
 

Repository files navigation

https://www.repostatus.org/badges/latest/wip.svg https://img.shields.io/badge/License-GPLv3-blue.svg https://github.com/AdrienWehrle/earthspy/workflows/CI/badge.svg https://github.com/AdrienWehrle/earthspy/actions/workflows/codeql.yml/badge.svg https://codecov.io/gh/AdrienWehrle/earthspy/branch/main/graph/badge.svg https://img.shields.io/badge/code%20style-black-000000.svg

earthspy 🛰️ 🌍 🌎 🌏

earthspy is a wrapper around methods for the download of satellite data offered in the sentinelhub Python package. This tool makes the monitoring and study of any place on Earth simple, ready to use and easily deployable for operational purposes and automated Near-Real Time (NRT) applications.

Some useful capabilities:

  • Data download in multiprocessing
  • Data download at optimized resolutions with the Direct (D) download mode
  • Data download at native resolutions with the Split and Merge (SM) downlodad mode
  • Data storage with efficient structure and file naming

As earthspy is built on top of the Sentinel Hub services, it includes e.g. the data pre-processing through custom scripts allowing the user to process and download only the products needed (such as high-level indices) therefore optimizing download time and local storage.

Table of Contents

Installation

Currently, it is recommended to install earthspy via Github, with conda and pip:

# clone repository
git clone git@github.com:AdrienWehrle/earthspy.git

# move into earthspy directory
cd earthspy

# create conda environment
conda env create -f environment.yml

# activate conda environment
conda activate earthspy

# install earthspy
pip install -e .
  • Using pip together with conda is usually a bad idea, but here conda installs all the dependencies and pip only sets up the associated paths, that’s all! 👍
  • Installation can be sped up using the fast cross-platform package manager mamba (reimplementation of the conda package manager in C++), simply use mamba instead of conda in the instructions above!

Usage

At present earthspy can be run by users within a couple of lines of Python code that execute three main tasks:

  • set up a Sentinel Hub connection (for a given Sentinel Hub account)
  • set query parameters including Sentinel Hub API variables and earthspy additional ones (mainly for download efficiency)
  • send request

Below is presented a simple application of earthspy for the download of Sentinel-2 data download around Ilulissat, Greenland for few days in August 2019 using a True Color custom script available on Sentinel Hub’s custom script online repository. All other available data collections can be found here.

import earthspy.earthspy as es

# auth.txt should contain username and password (first and second row)
job = es.EarthSpy("/path/to/auth.txt")

# as simple as it gets
job.set_query_parameters(
    bounding_box=[-51.13, 69.204, -51.06, 69.225], # format from doc: [min_x, min_y, max_x, max_y]
    time_interval=["2019-08-03", "2019-08-10"],
    evaluation_script="https://custom-scripts.sentinel-hub.com/custom-scripts/sentinel-2/true_color/script.js",
    data_collection="SENTINEL2_L2A",
)

# and off it goes!
job.send_sentinelhub_requests()

Homemade custom evalscripts can also be passed without effort to e.g. compute high-level indices (NDVI, NDSI…). Below is presented an example with the default evaluation script used above (to keep it short):

# Sentinel-2 default True Color script
example_evalscript = """
    //VERSION=3
    function setup(){
      return{
        input: ["B02", "B03", "B04", "dataMask"],
        output: {bands: 4}
      }
    }

    function evaluatePixel(sample){
      // Set gain for visualisation
      let gain = 2.5;
      // Return RGB
      return [sample.B04 * gain, sample.B03 * gain, sample.B02 * gain, sample.dataMask];
    }

    """

# auth.txt should contain username and password (first and second row)
job = es.EarthSpy("/path/to/auth.txt")

# pass string to evaluation_script
job.set_query_parameters(
    bounding_box=[-51.13, 69.204, -51.06, 69.225],
    time_interval=["2019-08-03", "2019-08-10"],
    evaluation_script=example_evalscript,
    data_collection="SENTINEL2_L2A",
)

# and off it goes!
job.send_sentinelhub_requests()

GEOJSON files containing a polygon corresponding to a given region of interest and its associated name can also be created at geojson.io and stored in ./data. In this way, the name of the region can be directly passed to the bounding_box query parameter. See below for a simple example with the ilulissat.geojson example file.

import earthspy.earthspy as es

# auth.txt should contain username and password (first and second row)
job = es.EarthSpy("/path/to/auth.txt")

# as simple as it gets
job.set_query_parameters(
    bounding_box="Ilulissat",
    time_interval=["2019-08-03", "2019-08-10"],
    evaluation_script="https://custom-scripts.sentinel-hub.com/custom-scripts/sentinel-2/true_color/script.js",
    data_collection="SENTINEL2_L2A",
)

# and off it goes!
job.send_sentinelhub_requests()

Operational Near Real-Time (NRT) deployment

earthspy can be easily deployed for NRT monitoring. The setup is as simple as wrapping the query parameters in a short python script such as earthspy_NRT.py and including it in a cron job. See an example below where Sentinel-2 images of Ilulissat, Greenland acquired over the past three days are downloaded everyday at noon.

# m h  dom mon dow   command
00 12 * * * /bin/bash -c "/path/to/earthspy_NRT.py" > /path/to/log/log_earthspy_NRT.txt

Documentation

The preliminary documentation of earthspy is hosted on readthedocs.

About

Monitor and study any place on Earth and in Near Real-Time (NRT) using the SentinelHub services developed by the EO research team at Sinergise

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 99.9%
  • Other 0.1%