interactive-deep-colorization - Deep learning software for colorizing black and white images with a few clicks

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We first describe the system (0) Prerequisities and steps for (1) Getting started. We then describe the interactive colorization demo (2) Interactive Colorization (Local Hints Network). There are two demos: (a) a "barebones" version in iPython notebook and (b) the full GUI we used in our paper. We then provide an example of the (3) Global Hints Network. We provide a "barebones" demo in iPython notebook, which does not require QT. We also provide our full GUI demo.

https://richzhang.github.io/ideepcolor/
https://github.com/junyanz/interactive-deep-colorization

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