I have an image stored in a numpy array that I want to convert to PIL.Image in order to perform an interpolation only available with PIL.

When trying to convert it through Image.fromarray() it raises the following error:

TypeError: Cannot handle this data type

I have read the answers here and here but they do not seem to help in my situation.

What I'm trying to run:

from PIL import Image

x  # a numpy array representing an image, shape: (256, 256, 3)

  • Question has nothing to do with machine-learning or deep-learning - kindly do not spam irrelevant tags (removed).
    – desertnaut
    Mar 24 '19 at 11:27
  • Please show an example of how your data looks, else it's impossible to say what the issue is. Mar 24 '19 at 11:45
  • @desertnaut I thought that since I use the images for classification with a CNN the tags might be relevant.
    – Jerome
    Mar 25 '19 at 2:18
  • No, tags should be only about the question content, not the context; no problem, just keep it in mind for the future
    – desertnaut
    Mar 25 '19 at 4:16


Does x contain uint values in [0, 255]? If not and especially if x ranges from 0 to 1, that is the reason for the error.


Most image libraries (e.g. matplotlib, opencv, scikit-image) have two ways of representing images:

  • as uint with values ranging from 0 to 255.
  • as float with values ranging from 0 to 1.

The latter is more convenient when performing operations between images and thus is more popular in the field of Computer Vision. However PIL seems to not support it for RGB images.

If you take a look here it seems that when you try to read an image from an array, if the array has a shape of (height, width, 3) it automatically assumes it's an RGB image and expects it to have a dtype of uint8! In your case, however, you have an RBG image with float values from 0 to 1.


You can fix it by converting your image to the format expected by PIL:

im = Image.fromarray((x * 255).astype(np.uint8))
  • 3
    This actually helped! It's disappointing that PIL doesn't support RBG images with values in [0, 1].
    – Jerome
    Mar 25 '19 at 2:16
  • I am getting the following warning messeage Lossy conversion from float64 to uint8. Range [0, 1]. Convert image to uint8 prior to saving to suppress this warning. What does Range [0,1] mean? My range of x was [0,2] Jul 11 '20 at 7:32
  • @BlackJack21 I think it means that you should first convert your range to [0,1] then try converting it yo uint8
    – Djib2011
    Jul 11 '20 at 16:38
  • No, I tried to do that as well but the error remained. This was on Jupyter Lab, could it be something related to ipynb? Jul 11 '20 at 19:04
  • 1
    Converting the type to np.uint8 did it! Thanks. Mar 24 '21 at 10:24

I solved it different way.

Problem Situation: When working with gray image or binary image, if the numpy array shape is (height, width, 1), this error will be raised also.
For example, a 32 by 32 pixel gray image (value 0 to 255)

np_img = np.random.randint(low=0, high=255, size=(32, 32, 1), dtype=np.uint8)
# np_img.shape == (32, 32, 1)
pil_img = Image.fromarray(np_img)

will raise TypeError: Cannot handle this data type: (1, 1, 1), |u1


If the image shape is like (32, 32, 1), reduce dimension into (32, 32)

np_img = np.squeeze(np_img, axis=2)  # axis=2 is channel dimension 
pil_img = Image.fromarray(np_img)

This time it works!!

Additionally, please make sure the dtype is uint8(for gray) or bool(for binary).


I found a different issue for the same error in my case. The image I used was in RGBA format, so before using fromarray() function just convert it to RGB using the convert() function and it will work perfectly fine.

image_file = Image.open(image_file)
image_file = image_file.convert('RGB')

P.S.: Posting this solution as an initial step, before converting the image to np.


In my case file format of the images was changed to png to jpg. It worked well when I corrected the image format of the error images.

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