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NEWS
Discover the latest news on the European Space Agency's Earth Observation activities. Learn all about new data availability and how ESA's missions are performing.
News - Infographics
An overview of ESA's Third Party Missions programme
ESA’s Third Party Missions programme consists of almost 50 satellite missions, which are owned by organisations around the world. ESA has agreements with these organisations to acquire, process, and distribute data from their missions
News - Infographics
An overview of the very high-resolution Pleiades satellites
Find out about the achievements of the Pléiades programme in this infographic.
News - Thematic area articles
How to use space data to probe humankind’s ancient past
Data disseminated by ESA’s Third Party Missions (TPM) programme are enabling archaeological investigations that could help to unravel the mysteries of past societies and cultures.
News - General News
OneAtlas Living Library subscription available for SPOT and Pléiades
To complement the traditional and fully customised ordering and download of selected Pléiades and SPOT images in a variety of data formats, users can now also request a subscription for access to the OneAtlas Living Library.
News - Success Stories
Pléiades celebrates 10 years and extends satellite fleet with Pléiades Neo
ESA is proud to mark the 10-year milestone of the Pléiades programme, a forerunner in providing very high resolution (VHR) commercial satellite imagery ideal for precision mapping and in-depth intelligence.
News - Success Stories
Pléiades unlocks information about rock glaciers in central Himalaya
As climate change accelerates the melting of glacial ice, remote sensing scientists are tapping into the potential of Pléiades data to help vulnerable mountainous communities.
News - Success Stories
Space data unearths small-scale mining in Burkina Faso
Satellite data from ESA’s Pléiades Third Party Mission and Copernicus Sentinel-2 were used to demonstrate that deep learning models can accurately and inexpensively identify artisanal and small-scale mining, even in challenging semi-desertic environments.