# Converting 2D Numpy array of grayscale values to a PIL image

Say I have a 2D Numpy array of values on the range 0 to 1, which represents a grayscale image. How do I then convert this into a PIL Image object? All attempts so far have yielded extremely strange scattered pixels or black images.

``````for x in range(image.shape):
for y in range(image.shape):
image[y][x] = numpy.uint8(255 * (image[x][y] - min) / (max - min))

#Create a PIL image.
img = Image.fromarray(image, 'L')
``````

In the code above, the numpy array image is normalized by (image[x][y] - min) / (max - min) so every value is on the range 0 to 1. Then it is multiplied by 255 and cast to an 8 bit integer. This should, in theory, process through Image.fromarray with mode L into a grayscale image - but the result is a set of scattered white pixels.

• Are you using a recent version of `Pillow`, a maintained fork of PIL, or are you using the original PIL? Jun 1, 2016 at 2:44
• +MattDMo I'm using the most recent version of Pillow, and I'm using in particular Python 3.4 Jun 1, 2016 at 2:45
• Please edit your question and post what you have tried so far, including example input, expected output, the actual output (if any), and the full text of any errors or tracebacks. Jun 1, 2016 at 2:46
• +MattDMo I edited, but there's not very much information I can add. This is less of a specific issue and more of a general problem. Jun 1, 2016 at 2:52

I think the answer is wrong. The Image.fromarray( ____ , 'L') function seems to only work properly with an array of integers between 0 and 255. I use the np.uint8 function for this.

You can see this demonstrated if you try to make a gradient.

``````import numpy as np
from PIL import Image

# gradient between 0 and 1 for 256*256
array = np.linspace(0,1,256*256)

# reshape to 2d
mat = np.reshape(array,(256,256))

# Creates PIL image
img = Image.fromarray(np.uint8(mat * 255) , 'L')
img.show()
``````

Makes a clean gradient

vs

``````import numpy as np
from PIL import Image

# gradient between 0 and 1 for 256*256
array = np.linspace(0,1,256*256)

# reshape to 2d
mat = np.reshape(array,(256,256))

# Creates PIL image
img = Image.fromarray( mat , 'L')
img.show()
``````

Has the same kind of artifacting.

• np.uint8 is important. I used .astype(int) before, also scaling 0...1 values by multiplying by 255, but got completely black images only. uint8 was the fix. Jul 25, 2018 at 21:32

If I understood you question, you want to get a grayscale image using PIL.

If this is the case, you do not need to multiply each pixels by 255.

The following worked for me

``````import numpy as np
from PIL import Image

# Creates a random image 100*100 pixels
mat = np.random.random((100,100))

# Creates PIL image
img = Image.fromarray(mat, 'L')
img.show()
``````
• I tried this and got very obvious image artifacting - There were visible vertical bars every 7 or so pixels. Is it possible the latest version of Pillow is just straight up broken? Jun 1, 2016 at 20:54
• I also got artifacts. If I use img = Image.fromarray(np.uint8(mat), 'L'), then everything works fine. Oct 7, 2020 at 17:26

`im = Image.fromarray(np.uint8(mat), 'L')`

or

`im = Image.fromarray(np.uint8(mat))`

Apparently it accepts type np.uint8(insert array here), also may be able to remove 'L' for conciseness.