aiforearth-landcover-app
Land Cover Trainer
An application for training and testing deep neural network models on land cover classification tasks.
A web mapping app to test, tweak and train the land cover classification from a deep neural network model built by @microsoft
13 stars
2 watching
7 forks
Language: JavaScript
last commit: almost 7 years ago
Linked from 1 awesome list
ai-for-eartharcgis-js-apiimage-classificationland-covermicrosoft-azuremicrosoft-machine-learning
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