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Image Processing For Machine Learning

Project description

This is a package developed during a thesis project.

Installation

pip install ipfml

How to use ?

To use, simply do :

from PIL import Image
from ipfml import processing
img = Image.open('path/to/image.png')
s = processing.get_LAB_L_SVD_s(img)

Modules

This project contains modules.

  • processing : Image processing of images

  • metrics : Metrics computation of PIL or 2D, 3D numpy images

  • filters : Filters implemented such as noise filters

  • utils : All utils functions developed for the package

  • exceptions : All customized exceptions

All these modules will be enhanced during development of the package.

Documentation

For more information about package, documentation is available.

Contribution

Please refer to the guidelines file if you want to contribute!

Project details


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ipfml-0.3.2.tar.gz (131.8 kB view details)

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