luminoth - Deep Learning toolkit for Computer Vision

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Luminoth is an open source toolkit for computer vision. Currently, we support object detection, but we are aiming for much more. It is built in Python, using TensorFlow and Sonnet. Read the full documentation here.

https://luminoth.ai
https://github.com/tryolabs/luminoth

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