DeepMoon: Convolutional neural network trainer to identify moon craters
Abstract
DeepMoon trains a convolutional neural net using data derived from a global digital elevation map (DEM) and catalog of craters to recognize craters on the Moon. The TensorFlow-based pipeline code is divided into three parts. The first generates a set images of the Moon randomly cropped from the DEM, with corresponding crater positions and radii. The second trains a convnet using this data, and the third validates the convnet's predictions.
- Publication:
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Astrophysics Source Code Library
- Pub Date:
- May 2018
- Bibcode:
- 2018ascl.soft05029S
- Keywords:
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- Software