# Label Maker ## Data Preparation for Satellite Machine Learning Label Maker downloads [OpenStreetMap QA Tile]((https://osmlab.github.io/osm-qa-tiles/)) information and satellite imagery tiles and saves them as an [`.npz` file](https://docs.scipy.org/doc/numpy/reference/generated/numpy.savez.html) for use in machine learning training. ![example classification image overlaid over satellite imagery](examples/images/classification.png) _satellite imagery from [Mapbox](https://www.mapbox.com/) and [Digital Globe](https://www.digitalglobe.com/)_ ## Requirements - [Python 3.6](https://www.python.org/) - [tippecanoe](https://github.com/mapbox/tippecanoe) ## Installation ```bash pip install label-maker ``` Note that running this library this requires `tippecanoe` as a "peer-dependency" and that command should be available from your command-line before running this. ## Documentation Full documentation is available here: http://devseed.com/label-maker/ ## Acknowledgements This library builds on the concepts of [skynet-data](https://github.com/developmentseed/skynet-data). It wouldn't be possible without the excellent data from OpenStreetMap and Mapbox under the following licenses: - OSM QA tile data [copyright OpenStreetMap contributors](http://www.openstreetmap.org/copyright) and licensed under [ODbL](http://opendatacommons.org/licenses/odbl/) - Mapbox Satellite data can be [traced for noncommercial purposes](https://www.mapbox.com/tos/#[YmtMIywt]). It also relies heavily on Marc Farra's [tilepie](https://github.com/kamicut/tilepie) to asynchronously process vector tiles