I'm trying to use matplotlib to read in an RGB image and convert it to grayscale.

In matlab I use this:

img = rgb2gray(imread('image.png'));

In the matplotlib tutorial they don't cover it. They just read in the image

import matplotlib.image as mpimg
img = mpimg.imread('image.png')

and then they slice the array, but that's not the same thing as converting RGB to grayscale from what I understand.

lum_img = img[:,:,0]

I find it hard to believe that numpy or matplotlib doesn't have a built-in function to convert from rgb to gray. Isn't this a common operation in image processing?

I wrote a very simple function that works with the image imported using imread in 5 minutes. It's horribly inefficient, but that's why I was hoping for a professional implementation built-in.

Sebastian has improved my function, but I'm still hoping to find the built-in one.

matlab's (NTSC/PAL) implementation:

import numpy as np

def rgb2gray(rgb):

    r, g, b = rgb[:,:,0], rgb[:,:,1], rgb[:,:,2]
    gray = 0.2989 * r + 0.5870 * g + 0.1140 * b

    return gray
  • 2
    Note that you can write the same thing as your rgb2gray function simply as: gray = np.mean(rgb, -1). Maybe rgb[...,:3] there if it is actually rgba. – seberg Aug 31 '12 at 1:00
  • hmm, gray = np.mean(rgb, -1) works fine. thanks. Is there any reason not to use this? Why would I use the solutions in the answers below instead? – waspinator Aug 31 '12 at 1:22
  • 6
    The grayscale wikipedia page says the method of converting RGB to grayscale is not unique, but gives a commonly used formulas based on luminance. It is quite different than np.mean(rgb, -1). – unutbu Aug 31 '12 at 1:32
  • 2
    so I guess I want Matlab's version? 0.2989 * R + 0.5870 * G + 0.1140 * B I'm assuming that it's the standard way of doing it. – waspinator Aug 31 '12 at 1:37

12 Answers 12


How about doing it with Pillow:

from PIL import Image
img = Image.open('image.png').convert('LA')

Using matplotlib and the formula

Y' = 0.2989 R + 0.5870 G + 0.1140 B 

you could do:

import numpy as np
import matplotlib.pyplot as plt
import matplotlib.image as mpimg

def rgb2gray(rgb):
    return np.dot(rgb[...,:3], [0.2989, 0.5870, 0.1140])

img = mpimg.imread('image.png')     
gray = rgb2gray(img)    
plt.imshow(gray, cmap=plt.get_cmap('gray'), vmin=0, vmax=1)
  • 3
    If he has to use matplotlib for some other reason, he should be able to use the builtin colorsys.rgb_to_yiq() to transform plus a slice to get just the luma channel. – Silas Ray Aug 30 '12 at 16:53
  • 31
    why .convert('LA')? why not .convert('gray')? Seems needlessly cryptic. The PIL documentation doesn't mention anything about 'LA' for the convert function. – waspinator Aug 31 '12 at 1:32
  • 20
    using PIL: cannot write mode LA as JPEG, I needed to use L mode not LA – jsky May 26 '15 at 6:50
  • 3
    To get the exact same results as with Matlab's version (which differs marginally from the ITU-R 601-2 luma transform, I specified an adjusted matix: img.convert('L', (0.2989, 0.5870, 0.1140, 0)). – dtk Aug 4 '16 at 14:12
  • 11
    @BluePython: LA mode has luminosity (brightness) and alpha. If you use LA mode, then greyscale.png will be an RGBA image with the alpha channel of image.png preserved. If you use L mode, then greyscale.png will be an RGB image (with no alpha). – unutbu Nov 8 '17 at 12:31

You can also use scikit-image, which provides some functions to convert an image in ndarray, like rgb2gray.

from skimage import color
from skimage import io

img = color.rgb2gray(io.imread('image.png'))

Notes: The weights used in this conversion are calibrated for contemporary CRT phosphors: Y = 0.2125 R + 0.7154 G + 0.0721 B

Alternatively, you can read image in grayscale by:

from skimage import io
img = io.imread('image.png', as_gray=True)
  • is it normal that I'm getting 0<values<1 ? Am I supposed to multiply them by 255 to get the real gray scale? – Sam Dec 1 '15 at 20:24
  • knowing that my aim is to use GLCM features (greycoprops) – Sam Dec 1 '15 at 20:56
  • Note for io.imread: "as_grey" has been deprecated in favor of "as_gray". Same usage, just Americanized spelling. :) – Halogen Mar 30 '19 at 20:06
  • 1
    I believe this is the most useful answer to question at hand, output of this is also compatible with matplotlib and numpy. – Mert Beşiktepe Nov 14 '19 at 21:31
  • I am using the color object but my image is sort of reddish now and not gray (black and white). I need to use cmap as gray' then only the image is shown as gray in pyplot.imshow()` ? Any thoughts ? Where am I wrong? – GadaaDhaariGeek Jan 17 at 14:55

Three of the suggested methods were tested for speed with 1000 RGBA PNG images (224 x 256 pixels) running with Python 3.5 on Ubuntu 16.04 LTS (Xeon E5 2670 with SSD).

Average run times

pil : 1.037 seconds

scipy: 1.040 seconds

sk : 2.120 seconds

PIL and SciPy gave identical numpy arrays (ranging from 0 to 255). SkImage gives arrays from 0 to 1. In addition the colors are converted slightly different, see the example from the CUB-200 dataset.

SkImage: SkImage


SciPy : SciPy

Original: Original

Diff : enter image description here


  1. Performance

    run_times = dict(sk=list(), pil=list(), scipy=list())
    for t in range(100):
        start_time = time.time()
        for i in range(1000):
            z = random.choice(filenames_png)
            img = skimage.color.rgb2gray(skimage.io.imread(z))
        run_times['sk'].append(time.time() - start_time)

    start_time = time.time()
    for i in range(1000):
        z = random.choice(filenames_png)
        img = np.array(Image.open(z).convert('L'))
    run_times['pil'].append(time.time() - start_time)
    start_time = time.time()
    for i in range(1000):
        z = random.choice(filenames_png)
        img = scipy.ndimage.imread(z, mode='L')
    run_times['scipy'].append(time.time() - start_time)

    for k, v in run_times.items(): print('{:5}: {:0.3f} seconds'.format(k, sum(v) / len(v)))

  2. Output
    z = 'Cardinal_0007_3025810472.jpg'
    img1 = skimage.color.rgb2gray(skimage.io.imread(z)) * 255
    img2 = np.array(Image.open(z).convert('L'))
    img3 = scipy.ndimage.imread(z, mode='L')
  3. Comparison
    img_diff = np.ndarray(shape=img1.shape, dtype='float32')
    img_diff += (img1 - img3)
    img_diff -= img_diff.min()
    img_diff *= (255/img_diff.max())
  4. Imports
    import skimage.color
    import skimage.io
    import random
    import time
    from PIL import Image
    import numpy as np
    import scipy.ndimage
    import IPython.display
  5. Versions
  • 6
    SciPy's image I/O is literally PIL/Pillow. Hence, testing SciPy is effectively retesting PIL/Pillow with negligible overhead introduced by SciPy's wrapper functions. It would have been much more useful to substitute OpenCV (which does not leverage PIL/Pillow) for SciPy (which does). Nonetheless, thanks for the dedicated benchmarking! The discernable slowdown imposed by SciKit is fascinating... and horrifying. – Cecil Curry Nov 16 '17 at 7:47
  • @CecilCurry Thanks for the idea with OpenCV! I'll add it when I find some free time. – Maximilian Peters Nov 16 '17 at 7:53
  • Upvoted! Not an answer I was looking for, but very very interesting nonetheless :) – Cyril N. Sep 7 '18 at 9:46

You can always read the image file as grayscale right from the beginning using imread from OpenCV:

img = cv2.imread('messi5.jpg', 0)

Furthermore, in case you want to read the image as RGB, do some processing and then convert to Gray Scale you could use cvtcolor from OpenCV:

gray_image = cv2.cvtColor(image, cv2.COLOR_BGR2GRAY)

The fastest and current way is to use Pillow, installed via pip install Pillow.

The code is then:

from PIL import Image
img = Image.open('input_file.jpg').convert('L')
  • 3
    note that, if you're not chaining your methods like in the example above, convert returns a converted copy of the image – Matt Mar 12 '16 at 3:24

The tutorial is cheating because it is starting with a greyscale image encoded in RGB, so they are just slicing a single color channel and treating it as greyscale. The basic steps you need to do are to transform from the RGB colorspace to a colorspace that encodes with something approximating the luma/chroma model, such as YUV/YIQ or HSL/HSV, then slice off the luma-like channel and use that as your greyscale image. matplotlib does not appear to provide a mechanism to convert to YUV/YIQ, but it does let you convert to HSV.

Try using matplotlib.colors.rgb_to_hsv(img) then slicing the last value (V) from the array for your grayscale. It's not quite the same as a luma value, but it means you can do it all in matplotlib.


Alternatively, you could use PIL or the builtin colorsys.rgb_to_yiq() to convert to a colorspace with a true luma value. You could also go all in and roll your own luma-only converter, though that's probably overkill.


If you're using NumPy/SciPy already you may as well use:

scipy.ndimage.imread(file_name, mode='L')

  • 5
    Both scipy.ndimage.imread() and scipy.misc.imread() are formally deprecated in SciPy 1.0.0 and will be permanently removed in SciPy 1.2.0. While SciPy's documentation recommends imageio.imread() as a suitable replacement, this function's API is bare bones to the point of absurdity. It provides no support for grayscale conversion and thus remains unsuitable for many applications – including ours. </sigh> – Cecil Curry Nov 16 '17 at 7:39
  • 5
    @CecilCurry, how do you convert a colored image in gray scale using imageio? – 0x90 Aug 7 '18 at 1:30

Using this formula

Y' = 0.299 R + 0.587 G + 0.114 B 

We can do

import imageio
import numpy as np
import matplotlib.pyplot as plt

pic = imageio.imread('(image)')
gray = lambda rgb : np.dot(rgb[... , :3] , [0.299 , 0.587, 0.114]) 
gray = gray(pic)  
plt.imshow(gray, cmap = plt.get_cmap(name = 'gray'))

However, the GIMP converting color to grayscale image software has three algorithms to do the task.


you could do:

import numpy as np
import matplotlib.pyplot as plt
import matplotlib.image as mpimg

def rgb_to_gray(img):
        grayImage = np.zeros(img.shape)
        R = np.array(img[:, :, 0])
        G = np.array(img[:, :, 1])
        B = np.array(img[:, :, 2])

        R = (R *.299)
        G = (G *.587)
        B = (B *.114)

        Avg = (R+G+B)
        grayImage = img

        for i in range(3):
           grayImage[:,:,i] = Avg

        return grayImage       

image = mpimg.imread("your_image.png")   
grayImage = rgb_to_gray(image)  

Use img.Convert(), supports “L”, “RGB” and “CMYK.” mode

import numpy as np
from PIL import Image

img = Image.open("IMG/center_2018_02_03_00_34_32_784.jpg")

print np.array(img)


[[135 123 134 ...,  30   3  14]
 [137 130 137 ...,   9  20  13]
 [170 177 183 ...,  14  10 250]
 [112  99  91 ...,  90  88  80]
 [ 95 103 111 ..., 102  85 103]
 [112  96  86 ..., 182 148 114]]
  • 1
    should the 5th line be img = img.convert('L') ? – Allan Ruin Mar 4 '19 at 5:28

I came to this question via Google, searching for a way to convert an already loaded image to grayscale.

Here is a way to do it with SciPy:

import scipy.misc
import scipy.ndimage

# Load an example image
# Use scipy.ndimage.imread(file_name, mode='L') if you have your own
img = scipy.misc.face()

# Convert the image
R = img[:, :, 0]
G = img[:, :, 1]
B = img[:, :, 2]
img_gray = R * 299. / 1000 + G * 587. / 1000 + B * 114. / 1000

# Show the image
  • 1
    Nice. I just want to note the a shorter solution would be img_gray = numpy.average(img, weights=[0.299, 0.587, 0.114], axis=2) – Akavall Aug 4 '17 at 15:25
  • @Akavall Nice to know, thank you! Do you know if your shortcut is faster? If not, I would keep mine because it is easier to understand. – Martin Thoma Aug 4 '17 at 15:31
  • I did not time it, my gut feeling is numpy.average is a bit faster but not practically different. Your solution is clear and has relevant information about R,G,B, so I would keep it. My comment was more of an additional option, not a replacement. – Akavall Aug 4 '17 at 16:35
  • Both scipy.ndimage.imread() and scipy.misc.imread() are formally deprecated in SciPy 1.0.0 and will be permanently removed in SciPy 1.2.0. You probably just want to use Pillow's builtin grayscale conversion support (ala unutbu's answer), instead. – Cecil Curry Nov 16 '17 at 7:51

You can use greyscale() directly for the transformation.

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