# Converting RGB to grayscale/intensity

When converting from RGB to grayscale, it is said that specific weights to channels R, G, and B ought to be applied. These weights are: 0.2989, 0.5870, 0.1140.

It is said that the reason for this is different human perception/sensibility towards these three colors. Sometimes it is also said these are the values used to compute NTSC signal.

However, I didn't find a good reference for this on the web. What is the source of these values?

• Yes it does. I do programming on RGB values all the time. Applying "real world" values to these calculations is very important if you want your app to be worth its salt. Mar 26 '09 at 19:44
• Many programmers may not care and compute "wrong" grayscale pictures, but I do. Mar 26 '09 at 19:46
• I'd agree it is coding related - defiantly an interesting and relevant problem if you're coding graphics. +1 as I'd like to know the answer myself Mar 26 '09 at 19:47
• RGB is programming related. It's as programming related as parsing date strings. As converting the text "true" to a boolean value. Mar 26 '09 at 22:00
• Mar 6 '14 at 9:52

The specific numbers in the question are from CCIR 601 (see the Wikipedia link below).

If you convert RGB -> grayscale with slightly different numbers / different methods, you won't see much difference at all on a normal computer screen under normal lighting conditions -- try it.

Here are some more links on color in general:

Wikipedia Luma

Bruce Lindbloom 's outstanding web site

chapter 4 on Color in the book by Colin Ware, "Information Visualization", isbn 1-55860-819-2; this long link to Ware in books.google.com may or may not work

cambridgeincolor : excellent, well-written "tutorials on how to acquire, interpret and process digital photographs using a visually-oriented approach that emphasizes concept over procedure"

Should you run into "linear" vs "nonlinear" RGB, here's part of an old note to myself on this. Repeat, in practice you won't see much difference.

### RGB -> ^gamma -> Y -> L*

In color science, the common RGB values, as in html rgb( 10%, 20%, 30% ), are called "nonlinear" or Gamma corrected. "Linear" values are defined as

``````Rlin = R^gamma,  Glin = G^gamma,  Blin = B^gamma
``````

where gamma is 2.2 for many PCs. The usual R G B are sometimes written as R' G' B' (R' = Rlin ^ (1/gamma)) (purists tongue-click) but here I'll drop the '.

Brightness on a CRT display is proportional to RGBlin = RGB ^ gamma, so 50% gray on a CRT is quite dark: .5 ^ 2.2 = 22% of maximum brightness. (LCD displays are more complex; furthermore, some graphics cards compensate for gamma.)

To get the measure of lightness called `L*` from RGB, first divide R G B by 255, and compute

``````Y = .2126 * R^gamma + .7152 * G^gamma + .0722 * B^gamma
``````

This is `Y` in XYZ color space; it is a measure of color "luminance". (The real formulas are not exactly x^gamma, but close; stick with x^gamma for a first pass.)

Finally,

``````L* = 116 * Y ^ 1/3 - 16
``````

"... aspires to perceptual uniformity [and] closely matches human perception of lightness." -- Wikipedia Lab color space

• Y = 0.2126 * R + 0.7152 * G + 0.0722 * B - Wikipedia (en.wikipedia.org/wiki/Grayscale) Feb 3 '13 at 8:04
• Hi, can I get a equivalent panchromatic image by displaying the RGB color image as a grayscale image? Or whether can the intensity componnet of HIS format image converted from RGB represent a panchromatic image? Apr 17 at 23:59
• @emberbillow, there are many ways of mapping color to grayscale, some of which will work maybe well enough, some of the time. What program are you using, have you read its doc ? You could just try-it-and-see on several of your test images. Apr 18 at 9:35
• Thnak you, Denis. I am not using a software. I just come upon this question when I read the definition of a panchromatic image. It is known that the lightness of a pixel on a panchromatic image represents approximately the reflectance ability of the land surface. Therefore, since a RGB color image covers approximately the band interval of visible light, I guess its grayscale format can represent a panchromatic image. I am not sure whether my understanding is right or not. Apr 18 at 13:14
• @enberbillow, stackoverflow is for software and programming questions, preferably with an example. Try google RGB IHS panchromatic grayscale ? Apr 18 at 17:06

I found that this publication referenced in an answer to a previous similar question. It is very helpful:

It shows 'tons' of different methods to generate grayscale images with different outcomes!

Heres some code in c to convert rgb to grayscale. The real weighting used for rgb to grayscale conversion is 0.3R+0.6G+0.11B. these weights arent absolutely critical so you can play with them. I have made them 0.25R+ 0.5G+0.25B. It produces a slightly darker image.

NOTE: The following code assumes xRGB 32bit pixel format

``````unsigned int *pntrBWImage=(unsigned int*)..data pointer..;  //assumes 4*width*height bytes with 32 bits i.e. 4 bytes per pixel
unsigned int fourBytes;
unsigned char r,g,b;
for (int index=0;index<width*height;index++)
{
fourBytes=pntrBWImage[index];//caches 4 bytes at a time
r=(fourBytes>>16);
g=(fourBytes>>8);
b=fourBytes;

I_Out[index] = (r >>2)+ (g>>1) + (b>>2); //This runs in 0.00065s on my pc and produces slightly darker results
//I_Out[index]=((unsigned int)(r+g+b))/3;     //This runs in 0.0011s on my pc and produces a pure average
}
``````
• 0.3 0.6 0.11 don't add to 1. Wikipedia seems to suggest 0.30 0.59 0.11. Jan 13 '13 at 7:30
• True, but the only result of them not adding to 1 will be a very slight change in intensity. The proposed method of 0.25,0.5,0.25 does add to 1 but it wouldnt matter if it didnt. It is an optimization so giving up a tiny bit of accuracy is a reasonable tradeoff. Oct 13 '16 at 11:06
• @twerdster Neither set of coefficients are correct. .3,.6,.11 is the old NTSC standard, not sRGB/Rec709 (which is what the web and most computers use). And your 0.25,0.5,0.25 is not a reasonable tradeoff — B is only 7% of luminance, you're wrong by 347%. The coefficients for sRGB/r709 (after linearization): Rlin * 0.2126 + Glin * 0.7152 + Blin * 0.0722 = Y These spectral weightings are derived from human spectral perception. You can't just jam in whatever numbers you want for convenience and hope to be accurate. You need to linearize sRGB and then apply the correct coefficients. May 20 '19 at 2:09
• If you are in a situation where divide is too expensive, an approximation that uses a single multiply with shifts and adds is: `0.11111111 * ((G + (G<<1) + R) <<1) + B)`. This is equivalent to `(2*R+6*G+B) / 9)` or `0.222 R + 0.666 G + 0.111 B`. Before going to production, compare to an accurate formula for various test cases. Nov 27 '19 at 10:02

Here's a paper on how these numbers (or similar ones) were derived:

Check out the Color FAQ for information on this. These values come from the standardization of RGB values that we use in our displays. Actually, according to the Color FAQ, the values you are using are outdated, as they are the values used for the original NTSC standard and not modern monitors.

What is the source of these values?

The "source" of the coefficients posted are the NTSC specifications which can be seen in Rec601 and Characteristics of Television.

The "ultimate source" are the CIE circa 1931 experiments on human color perception. The spectral response of human vision is not uniform. Experiments led to weighting of tristimulus values based on perception. Our L, M, and S cones1 are sensitive to the light wavelengths we identify as "Red", "Green", and "Blue" (respectively), which is where the tristimulus primary colors are derived.2

The linear light3 spectral weightings for sRGB (and Rec709) are:

### Rlin * 0.2126 + Glin * 0.7152 + Blin * 0.0722 = Y

These are specific to the sRGB and Rec709 colorspaces, which are intended to represent computer monitors (sRGB) or HDTV monitors (Rec709), and are detailed in the ITU documents for Rec709 and also BT.2380-2 (10/2018)

FOOTNOTES (1) Cones are the color detecting cells of the eye's retina.
(2) However, the chosen tristimulus wavelengths are NOT at the "peak" of each cone type - instead tristimulus values are chosen such that they stimulate on particular cone type substantially more than another, i.e. separation of stimulus.
(3) You need to linearize your sRGB values before applying the coefficients. I discuss this in another answer here.

Starting a list to enumerate how different software packages do it. Here is a good CVPR paper to read as well.

FreeImage

``````#define LUMA_REC709(r, g, b)    (0.2126F * r + 0.7152F * g + 0.0722F * b)
#define GREY(r, g, b) (BYTE)(LUMA_REC709(r, g, b) + 0.5F)
``````

OpenCV

nVidia Performance Primitives

Intel Performance Primitives

Matlab

``````nGray =  0.299F * R + 0.587F * G + 0.114F * B;
``````

These values vary from person to person, especially for people who are colorblind.

is all this really necessary, human perception and CRT vs LCD will vary, but the R G B intensity does not, Why not `L = (R + G + B)/3` and set the new RGB to L, L, L?

• Simply averaging all three R,G,B primaries treats them as perceptually equal, which is not the case for the human vision system. Jun 10 '18 at 22:48