I am downloading satellite pictures like this satellite_image
(source: u0553130 at home.chpc.utah.edu)

Since some images are mostly black, like this one, I don't want to save it.

How can I use python to check if the image is more than 50% black?

  • 2
    load the image, iterate over the pixels, and increment a counter every time you find a (0,0,0) color.
    – Kevin
    Jan 9, 2015 at 20:00
  • Looks like that black is (1, 1, 1) so you might want to just check if the pixel value is less than 10 or something.
    – Mdev
    Jan 9, 2015 at 20:05
  • You should use PIL (Python Imaging Library). Here's how to use it: stackoverflow.com/a/11064935/1612701 Jan 9, 2015 at 20:10

4 Answers 4


You're dealing with gifs which are mostly grayscale by the look of your example image, so you might expect most of the RGB components to be equal.

Using PIL:

from PIL import Image
im = Image.open('im.gif')
pixels = im.getdata()          # get the pixels as a flattened sequence
black_thresh = 50
nblack = 0
for pixel in pixels:
    if pixel < black_thresh:
        nblack += 1
n = len(pixels)

if (nblack / float(n)) > 0.5:
    print("mostly black")

Adjust your threshold for "black" between 0 (pitch black) and 255 (bright white) as appropriate).

  • 2
    In case of problems, change to Image.open('im.gif').convert('L')
    – Asakura
    Jun 4, 2016 at 21:30
  • 1
    Should pixel < black_thresh be sum(pixel) < black_thresh? The value stored in pixel is a tuple, so this code currently throws an exception. Feb 26, 2018 at 18:25

The thorough way is to count the pixels using something like PIL, as given in the other answers.

However, if they're all compressed images, you may be able to check the file size, as images with lots of plain-colour areas should compress a lot more than ones with variation like the cloud cover.

With some tests, you could at least find a heuristic of which images with lots of cloud you know you can instantly discard without expensive looping over their pixels. Others closer to 50% can be checked pixel by pixel.

Additionally, when iterating over the pixels, you don't need to count all the black pixels, and then check if at least 50% are black. Instead, stop counting and discard as soon as you know at least 50% are black.

A second optimisation: if you know the images are generally mostly cloudy rather than mostly black, go the other way. Count the number of non-black pixels, and stop and keep the images as soon as that crosses 50%.

  • Load image
  • Read each pixel and increment result if pixel = (0,0,0)
  • If result =< (image.width * image.height)/2
  • Save image

Or check if it's almost black by returning true if your pixel R (or G or B) component is less that 15 for example.


Utilizing your test image, the most common color has an RGB value of (1, 1, 1). This is very black, but not exactly black. My answer utilizes the PIL library, webcolors and a generous helping of code from this answer.

from PIL import Image
import webcolors

def closest_color(requested_color):
    min_colors = {}
    for key, name in webcolors.css3_hex_to_names.items():
        r_c, g_c, b_c = webcolors.hex_to_rgb(key)
        rd = (r_c - requested_color[0]) ** 2
        gd = (g_c - requested_color[1]) ** 2
        bd = (b_c - requested_color[2]) ** 2
        min_colors[(rd + gd + bd)] = name
    return min_colors[min(min_colors.keys())]

def get_color_name(requested_color):
        closest_name = actual_name = webcolors.rgb_to_name(requested_color)
    except ValueError:
        closest_name = closest_color(requested_color)
        actual_name = None
    return actual_name, closest_name

if __name__ == '__main__':
    lt = Image.open('test.gif').convert('RGB').getcolors()
    lt.sort(key=lambda tup:tup[0], reverse=True)
    actual_name, closest_name = get_color_name(lt[0][4])
    print lt[0], actual_name, closest_name


(531162, (1, 1, 1)) None black

In this case, you'd be interested in the closest_name variable. The first (lt[0]) is showing you the most common RGB value. This doesn't have a defined web color name, hence the None for actual_name


This is opening the file you've provided, converting it to RGB and then running PIL's getcolors method on the image. The result of this is a list of tuples in the format (count, RGB_color_value). I then sort the list (in reverse order). Utilizing the functions from the other answer, I pass the most common RGB color value (now the first tuple in the list and the RBG is the second element in the tuple).

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