![#26 SpaceNet 6 Challenge Results: Multi-Sensor All-Weather Mapping - podcast episode cover](https://media.rss.com/trainingdata/20200204_185135_5f4872f694222ff5fa3404a74a8700f4.jpeg)
Episode description
SpaceNet is a non-profit dedicated to accelerating open source, applied research in geospatial machine learning. In this episode, CosmiQ’s Ryan Lewis, Jake Shermeyer, and Daniel Hogan discuss the SpaceNet 6 Challenge where participants were asked to automatically extract building footprints with computer vision and AI algorithms using a combination of synthetic aperture radar (SAR) and electro-optical imagery. Hear about the challenge’s winning artificial intelligence models and the tradeoff between inference speed and model performance.
SpaceNet is made possible by co-founder and managing partner, CosmiQ Works; co-founder and co-chair, Maxar Technologies; and all the other Partners: Amazon Web Services (AWS), Capella Space, Topcoder, IEEE Geoscience and Remote Sensing (GRSS), the National Geospatial-Intelligence Agency, and Planet.
Learn more at www.spacenet.ai, and at the DownLinQ (https://medium.com/the-downlinq)