30 cm WorldView-3 Imagery Products Available Now

European Space Imaging is excited to announce we are now accepting orders for 30 cm WorldView-3 satellite imagery products.

According to DigitalGlobe users can expect from smaller pixel resolution an “ability to resolve smaller features, see greater textures, extract features more accurately, have better photo interpretation, and simply enjoy a clearer picture”.

30 cm Resolution Image of Shanghai Captured by WorldView-3

Other benefits of 30 cm include:

  • Easier to see non-linear features, like circles and ground markings
  • Improved image analysis for asset tracking and financial analysis or urban planning
  • Finer detail to allow for greater feature extraction
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