underwater-image-color-correction
v1.0.3
Published
Underwater image color correction algorithm
Downloads
194
Maintainers
Readme
underwater-image-color-correction
Installation
npm i underwater-image-color-correction
Usage
const getColorFilterMatrix = require('underwater-image-color-correction')
getColorFilterMatrix(pixels, width, height)
The arguments in the function is the following:
- pixels. 4 channel pixel array [R0, G0, B0, A0, R1, G1, B1, A1, ...]
- width. The width of the image.
- heigth. The height of the image.
The output of the function is a color filter matrix:
[
RedRed, RedGreen, RedBblue, RedAlpha, RedOffset,
GreenRed, GreenGreen, GreenBlue, GreenAlpha, GOffset,
BlueRed, BlueGreen, BlueBlue, BlueAlpha, BOffset,
AlphaRed, AlphaGreen, AlphaBlue, AlphaAlpha, AOffset,
]
The color filter matrix can be applied by an external color filter library library or the following calculation:
for (var i = 0; i < data.length; i += 4) {
data[i] = data[i] * filter[0] + data[i + 1] * filter[1] + data[i + 2] * filter[2] + filter[4] * 255 // Red
data[i + 1] = data[i + 1] * filter[6] + filter[9] * 255; // Green
data[i + 2] = data[i + 2] * filter[12] + filter[14] * 255; // Blue
}
Test in browser: https://colorcorrection.firebaseapp.com/
Motivation
As you descent underwater some colors are absorbed more than others. The red color will disappear as the first thing which will make the image appear more blue and green.
By adjusting each color channel, the colors can be restored and make the image appear more natural with higher contrast. This algorithm aims at doing this automatically.
Examples
The algorithm
- Calculate the average color for image.
- Hueshift the colors into the red channel until a minimum red average value of 60.
- Create RGB histogram with new red color.
- Find low threshold level and high threshold level.
- Normalize array so threshold level is equal to 0 and threshold high is equal to 255.
- Create color filter matrix based on the new values.