A texturizer that I just made. Nothing special here.

Overview

texturizer

This is a little project that I did with an hour's time.

It texturizes an image given a image and a texture to texturize it with.

There is not much to it, and I don't plan to expand it.

Usage

All the code is in the texturize.py file. There is only one function that is useful.

You can call the texturize function by importing it and calling:

texturize(image_to_be_texturized, texture_to_texturize_with)

Example images can be found in the assets folder.

License

This library is licensed under the MIT license.

Owner
hi there
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