# How do I convert a numpy array to (and display) an image?

I have created an array thusly:

``````import numpy as np
data = np.zeros( (512,512,3), dtype=np.uint8)
data[256,256] = [255,0,0]
``````

What I want this to do is display a single red dot in the center of a 512x512 image. (At least to begin with... I think I can figure out the rest from there)

• See also stackoverflow.com/questions/902761/… although that one imposed the constraint that PIL could not be used. Apr 17, 2010 at 18:01
• Could you consider changing the accepted answer to Peter's? It both avoids the need to wrap an object around the numpy array and avoids writing a temp file to display the image. Aug 28, 2019 at 17:17

The following should work:

``````from matplotlib import pyplot as plt
plt.imshow(data, interpolation='nearest')
plt.show()
``````

If you are using Jupyter notebook/lab, use this inline command before importing matplotlib:

``````%matplotlib inline
``````

A more featureful way is to install ipyml `pip install ipympl` and use

``````%matplotlib widget
``````

see an example.

• This is more accurate than PIL. PIL rescales/normalizes the array values, whereas pyplot uses the actual RGB values as they are. Jan 27, 2013 at 14:08
• Maybe good to know: If you want to display grayscale images, it is advisable to call `plt.gray()` once in your code to switch all following graphs to grayscale. Not what the OP wants but good to know nevertheless. Feb 28, 2017 at 12:21
• How to save it? Jul 22, 2018 at 13:07
• File "<ipython-input-29-29c784f62838>", line 39 plt.show() ^ SyntaxError: invalid syntax Nov 6, 2018 at 16:34
• @Cerno Also, grayscale images should have shape(h, w) rather than (h, w, 1). You can use `squeeze()` to eliminate the third dimension: `plt.imshow(data.squeeze())` Aug 28, 2019 at 17:15

You could use PIL to create (and display) an image:

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

w, h = 512, 512
data = np.zeros((h, w, 3), dtype=np.uint8)
data[0:256, 0:256] = [255, 0, 0] # red patch in upper left
img = Image.fromarray(data, 'RGB')
img.save('my.png')
img.show()
``````
• It seems that there is a bug. You create array with size `(w,h,3)`, but it should be `(h,w,3)`, because indexing in PIL differs from indexing in numpy. There is related question: stackoverflow.com/questions/33725237/… Dec 6, 2015 at 18:57
• @user502144: Thanks for pointing out my error. I should have created an array of shape `(h,w,3)`. (It's now fixed, above.) The length of the first axis can be thought of as the number of rows in the array, and the length of the second axis, the number of columns. So `(h, w)` corresponds to an array of "height" `h` and "width" `w`. `Image.fromarray` converts this array into an image of height `h` and width `w`. Dec 6, 2015 at 20:47
• `img.show()` don't work in ipython notebook.`img_pil = Image.fromarray(img, 'RGB') display(img_pil.resize((256,256), PIL.Image.LANCZOS))` Jun 11, 2019 at 10:15
• @unutbu this method seems to distort images ... stackoverflow.com/questions/62293077/… Jun 9, 2020 at 22:58
• Having `Image.fromarray(...)` as the last expression of a cell sufficed to display the image for me in Google Colab. No need to write to a file or call `.show()`. Oct 27, 2020 at 12:33

Note: both these APIs have been first deprecated, then removed.

Shortest path is to use `scipy`, like this:

``````# Note: deprecated in v0.19.0 and removed in v1.3.0
from scipy.misc import toimage
toimage(data).show()
``````

This requires PIL or Pillow to be installed as well.

A similar approach also requiring PIL or Pillow but which may invoke a different viewer is:

``````# Note: deprecated in v1.0.0 and removed in v1.8.0
from scipy.misc import imshow
imshow(data)
``````
• So this method is incompatible with python 3.5...? Feb 5, 2016 at 23:48
• @bordeo, why would it be incompatible with 3.5? It just an import and a couple of function calls. Feb 6, 2016 at 15:32
• Ftr: you can shorten this further by directly using `scipy.misc.imshow(data)`.
– dtk
Aug 21, 2016 at 13:56
• `toimage` was deprecated in scipy-1.0.0 and removed in 1.2.0, in favor of Pillow’s `Image.fromarray`.
– Sid
Aug 13, 2019 at 15:48
• `scipy.misc.imshow()` is deprecated. Use `matplotlib.pyplot.imshow(data)` instead. Also, in IPython, you need to run `matplotlib.pyplot.show()` to show the image display window. Apr 9 at 21:26

## How to show images stored in numpy array with example (works in Jupyter notebook)

I know there are simpler answers but this one will give you understanding of how images are actually drawn from a numpy array.

``````from sklearn.datasets import load_digits
digits.images.shape   #this will give you (1797, 8, 8). 1797 images, each 8 x 8 in size
``````

Display array of one image

``````digits.images[0]
array([[ 0.,  0.,  5., 13.,  9.,  1.,  0.,  0.],
[ 0.,  0., 13., 15., 10., 15.,  5.,  0.],
[ 0.,  3., 15.,  2.,  0., 11.,  8.,  0.],
[ 0.,  4., 12.,  0.,  0.,  8.,  8.,  0.],
[ 0.,  5.,  8.,  0.,  0.,  9.,  8.,  0.],
[ 0.,  4., 11.,  0.,  1., 12.,  7.,  0.],
[ 0.,  2., 14.,  5., 10., 12.,  0.,  0.],
[ 0.,  0.,  6., 13., 10.,  0.,  0.,  0.]])
``````

Create empty 10 x 10 subplots for visualizing 100 images

``````import matplotlib.pyplot as plt
fig, axes = plt.subplots(10,10, figsize=(8,8))
``````

Plotting 100 images

``````for i,ax in enumerate(axes.flat):
ax.imshow(digits.images[i])
``````

Result:

What does `axes.flat` do? It creates a numpy enumerator so you can iterate over axis in order to draw objects on them. Example:

``````import numpy as np
x = np.arange(6).reshape(2,3)
x.flat
for item in (x.flat):
print (item, end=' ')
``````
``````import numpy as np
from keras.preprocessing.image import array_to_img
img = np.zeros([525,525,3], np.uint8)
b=array_to_img(img)
b
``````

Using pygame, you can open a window, get the surface as an array of pixels, and manipulate as you want from there. You'll need to copy your numpy array into the surface array, however, which will be much slower than doing actual graphics operations on the pygame surfaces themselves.

Using pillow's fromarray, for example:

``````from PIL import Image
from numpy import *

im = array(Image.open('image.jpg'))
Image.fromarray(im).show()
``````

For example your image is in an array names 'image'

All you do is

``````plt.imshow(image)
plt.show
``````

This will display an array in the form of an image Also, dont forget to import PLT

The Python Imaging Library can display images using Numpy arrays. Take a look at this page for sample code:

EDIT: As the note on the bottom of that page says, you should check the latest release notes which make this much simpler:

http://effbot.org/zone/pil-changes-116.htm

• this doesn't answer the question Jan 18, 2018 at 2:00

Supplement for doing so with matplotlib. I found it handy doing computer vision tasks. Let's say you got data with dtype = int32

``````from matplotlib import pyplot as plot
import numpy as np

fig = plot.figure()
# make sure your data is in H W C, otherwise you can change it by
# data = data.transpose((_, _, _))
data = np.zeros((512,512,3), dtype=np.int32)
data[256,256] = [255,0,0]
ax.imshow(data.astype(np.uint8))
``````

this could be a possible code solution:

``````from skimage import io
import numpy as np
data=np.random.randn(5,2)
io.imshow(data)
``````