satellite-image-deep-learning - Resources for performing deep learning on satellite imagery

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This document primarily lists resources for performing deep learning (DL) on satellite imagery. To a lesser extent Machine learning (ML, e.g. random forests, stochastic gradient descent) are also discussed, as are classical image processing techniques. Kaggle hosts several large satellite image datasets (> 1 GB). A list if general image datasets is here. A list of land-use datasets is here. The kaggle blog is an interesting read.

https://github.com/robmarkcole/satellite-image-deep-learning

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