color-harmony.py
A python script that extract main color groups from an image using k-means clustering and returns the color harmony based on the RGB wheel
Dependencies
- Python 3.7+
- sklearn
- Pillow
- matplotlib
Installation
Pip
The stable releases of gallery-dl are distributed on PyPI and can be easily installed or upgraded using pip:
$ python3 -m pip install color-harmony
From Source
Clone the repository or download the folder from github, then navigate to the respective directory and run:
python3 setup.py install
Usage
To use color-harmony, simply include the path to your image file:
$ color-harmony [OPTION]... [FilePATH]
See also python color-harmony --help
.
Examples
Default run on an image file will return both RGB colors and create a color palette image with the same name but with "_colors.png":
$ color-harmony sample.png
You can also set the number of clusters, tolerance, and output configurations:
$ color-harmony -k 5 -t 1.5 -o text icon.png
Color Scheme Analysis of Popular Illustrations (Python Notebook on Github)
You will need to download the dataset from: https://www.kaggle.com/profnote/pixiv-popular-illustrations or use your own images.
ColorSchemeAnalysis.ipynb
Main jupyter notebook for the analysis, can use the data files below:
harmonies.csv
File containing the harmonies of each illustration in the dataset.
Column names: "Monochromatic", "Complementary", "Split Complementary", "Triad", "Square", "Rectangular", "Analogous", "Other"
wheelColors_arr.csv
Wheel color representations of each illustration in the dataset, starting from Red -> Green -> Blue -> Red.