# How to calculate the contrast of an image?

Let's say I have an `opencv` `BGR` image `img`, how to calculate the contrast of that image?

• For anyone in the future, I suggest starting with the following paper (No Reference Color Image Contrast and Quality Measures), which lists both grayscale-based and color-based contrast measures: ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=6626251 Commented Dec 21, 2023 at 17:10

One definition of contrast is RMS Contrast, it can be calculated as follows:

First, transform the `BGR` image `img` to greyscale:

``````img_grey = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)
``````

Lastly, calculate the standard deviation of the greyed image pixel intensities:

``````contrast = img_grey.std()
``````
• RMS contrast is not the only contrast definition. I find Weber and Michelson far more common. Commented Nov 12, 2019 at 15:32
• @Piglet feel free to post the answer you consider more relevant, just updated my answer clarifying I'm providing a solution for RMS Contrast calculation. Commented Nov 12, 2019 at 17:35
• Any documentation for this std() function? Commented Aug 6, 2020 at 12:51
• @NadavB std() is the standard deviation of the values in the array Commented Nov 7, 2020 at 5:43
• I'd like to add that there are quite many contrast measures. The choice will probably depend on the use case and the image content. Commented Dec 21, 2023 at 17:11

Here is one measure of contrast: Michelson contrast and how to compute it in Python/OpenCV/Numpy. Low contrast is near zero and high contrast is near one. Use the Y (intensity) channel from YUV or YCbCr or alternately the L channel from LAB or even just convert the image to grayscale and use that.

Input:

``````import cv2
import numpy as np

# load image as YUV (or YCbCR) and select Y (intensity)
# or convert to grayscale, which should be the same.
# Alternately, use L (luminance) from LAB.
Y = cv2.cvtColor(img, cv2.COLOR_BGR2YUV)[:,:,0]

# compute min and max of Y
min = np.min(Y)
max = np.max(Y)

# compute contrast
contrast = (max-min)/(max+min)
print(min,max,contrast)
``````

Returns:

0 255 1.0

The contrast will be between 0 and 1.

• Mark, I do not see `sat`. Where have I mistyped that. Commented Nov 12, 2019 at 22:31
• Mark, thanks. Fixed! I looked at that 10 times and missed it. Copy and edit from another post I made and overlooked that. Sorry, all. Commented Nov 13, 2019 at 0:01
• I wonder how is this usually applied in reality? Always after de-noise? Segmenting then averaging the entire picture's contrasts?
– Ben
Commented Feb 27, 2023 at 1:19