eo-learn
Contributors
Others:
Project members:
- 1. Sinergise
- 2. Sentinel Hub
- 3. DevelopmentSeed
- 4. Magellium
- 5. Jožef Stefan Institute
- 6. Technical University of Munich
- 7. TomTom
- 8. GeoVille
- 9. meteoblue
Description
eo-learn makes extraction of valuable information from satellite imagery easy.\nThe availability of open Earth observation (EO) data through the Copernicus and Landsat programs represents an unprecedented resource for many EO applications, ranging from ocean and land use and land cover monitoring, disaster control, emergency services and humanitarian relief. Given the large amount of high spatial resolution data at high revisit frequency, techniques able to automatically extract complex patterns in such spatio-temporaldata are needed.\neo-learn is a collection of Python packages that have been developed to seamlessly access and process spatio-temporal image sequences acquired by any satellite fleet in a timely and automatic manner. eo-learn is easy to use, it's design modular, and encourages collaboration -- sharing and reusing of specific tasks in a typical EO-value-extraction workflows, such as cloud masking, image co-registration, feature extraction, classification, etc. Everyone is free to use any of the available tasks and is encouraged to improve the, develop new ones and share them with the rest of the community.
Files
sentinel-hub/eo-learn-v1.5.7.zip
Files
(41.1 MB)
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Additional details
Related works
- Is supplement to
- Software: https://github.com/sentinel-hub/eo-learn/tree/v1.5.7 (URL)
Funding
- PerceptiveSentinel – Perceptive Sentinel – BIG DATA knowledge extraction and re-creation platform 776115
- European Commission
- GEM – Global Earth Monitor 101004112
- European Commission
- OEMC – Open-Earth-Monitor Cyberinfrastructure 101059548
- European Commission
- AgriDataValue – Smart Farm and Agri-environmental Big Data Space 101086461
- European Commission