5 releases
0.1.6 | Feb 15, 2023 |
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0.1.5 | Feb 15, 2023 |
#421 in Images
28 downloads per month
24KB
334 lines
🎨 Welcome to Color Buddy 🎨
Color Buddy is a command line tool that can generate a color palette from an image.
Contents
Install
cargo install colorbuddy
Usage
colorbuddy --help
Produces the following output:
Generates a color palette based on an image.
Usage: colorbuddy [OPTIONS] <IMAGE>
Arguments:
<IMAGE>
Options:
-m, --quantisation-method <QUANTISATION_METHOD>
[default: k-means] [possible values: median-cut, k-means]
-n, --number-of-colors <NUMBER_OF_COLORS>
[default: 8]
-o, --output <OUTPUT>
-t, --output-type <OUTPUT_TYPE>
[default: original-image] [possible values: json, original-image, standalone-palette]
-p, --palette-height <PALETTE_HEIGHT>
[default: 256]
-w, --palette-width <PALETTE_WIDTH>
-h, --help
Print help information
-V, --version
Print version information
Examples
The default options will result in:
- a copy of the original image being output with a palette of
- 8 colors along the bottom
- with a height of 256px
- calculated using k-means clustering
Generate JSON containing the 8 most prevalent colors in the image:
colorbuddy --output-type json original-image.jpg
Output the original images with a palette of the 5 most prevalent colors along the bottom:
colorbuddy --number-of-colors 5 --output-type original-image.jpg another-image.jpg
Specify the height of the palette as a percentage of the original image's height:
colorbuddy --palette-height 20% original-image.jpg
Specify a width, height, and the standalone-palette output height to create a standalone palette image:
colorbuddy --palette-height 50px --palette-width 500 original-image.jpg
FAQs
Q. What is Median Cut Quantisation?
Median Cut quantization is a method used in image processing to reduce the number of colors used in an image. The goal is to represent the original image using a smaller color palette, while preserving as much of the visual information as possible.
Think of it like this: imagine you have a box of crayons, and you want to reduce the number of crayons you have while still being able to color a picture. The Median Cut quantization method would help you choose a smaller set of crayons that represent the range of colors used in your picture, so that you can still color a picture that looks similar to the original.
In Median Cut quantization, the first step is to divide the color space of the image into smaller sections. This is done by finding the median color value in each section and dividing the section in two based on this median value. This process is repeated until you have the desired number of colors in your palette.
Q. What is "k-means clustering"?
K-means clustering is a machine learning technique used for grouping data into "clusters" based on similarities between the data points.
Think of it like this: imagine you have a bunch of different colored balls, and you want to group them into a few different baskets based on their color. K Means Clustering is a way for the computer to automatically separate the balls into baskets such that each basket contains balls of similar color.
The "K" in K Means refers to the number of baskets you want to create. So, you can choose to have 2 baskets, 3 baskets, or even 10 baskets, depending on how many groups you want to create.
Q. What is the difference between the two quantisation methods?
Or: "When should I use one method over the other?"
K-means clustering results in a palette of the most common colours in the image, whereas median cut quantisation results in a palette of representative colours.
Experiment with what works best for your application!
Help
This is a personal, unpaid, open source project. If you encounter a bug or other issue, require help or the addition of some new feature, please feel free to raise an Issue on GitHub. I will endeavour to respond in a relatively timely manner but provide no guarantees.
Roadmap
- Allow users to generate a separate standalone palette image
- Allow users to generate palette information used by their graphics tools/applications
-
Allow users to specify multiple images upon which to apply the same options -
Allow users to specify an output file/directory -
Add tests
Author
👨 Adam Henley (he/him)
- Website: https://adamhenley.com
- Twitter: @adamofgreyskull
- Github: @adamazing
- LinkedIn: @adamhenley
Show your support
Give a ⭐️ if this project helped you!
Dependencies
~8MB
~97K SLoC