121

I have a simple problem, but I cannot find a good solution to it.

I want to take a NumPy 2D array which represents a grayscale image, and convert it to an RGB PIL image while applying some of the matplotlib colormaps.

I can get a reasonable PNG output by using the pyplot.figure.figimage command:

dpi = 100.0
w, h = myarray.shape[1]/dpi, myarray.shape[0]/dpi
fig = plt.figure(figsize=(w,h), dpi=dpi)
fig.figimage(sub, cmap=cm.gist_earth)
plt.savefig('out.png')

Although I could adapt this to get what I want (probably using StringIO do get the PIL image), I wonder if there is not a simpler way to do that, since it seems to be a very natural problem of image visualization. Let's say, something like this:

colored_PIL_image = magic_function(array, cmap)
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207

Quite a busy one-liner, but here it is:

  1. First ensure your NumPy array, myarray, is normalised with the max value at 1.0.
  2. Apply the colormap directly to myarray.
  3. Rescale to the 0-255 range.
  4. Convert to integers, using np.uint8().
  5. Use Image.fromarray().

And you're done:

from PIL import Image
from matplotlib import cm
im = Image.fromarray(np.uint8(cm.gist_earth(myarray)*255))

with plt.savefig():

Enter image description here

with im.save():

Enter image description here

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  • 7
    The "Apply the colormap directly to myarray" part cut straight to the heart! I didn't knew it was possible, thank you! – heltonbiker Jun 11 '12 at 2:26
  • 33
    Studying the docs about LinearSegmentedColormap (from which cm.gist_earth is an instance), I discovered that it's possible to call it with a "bytes" argument which already converts it to uint8. Then, the one-liner gets a lot quieter: im = Image.fromarray(cm.gist_earth(myarray, bytes=True)) – heltonbiker Jun 13 '12 at 4:20
  • 1
    @CiprianTomoiaga, the shape of the array should be the image dimensions you want. For example, a VGA image would be generated from an array with shape (1024,768). You should notice this applies for monochrome images. This is important because usually when you convert an RGB image to an array, its shape is, for example, (1024,768,3), since it has three channels. – heltonbiker Jan 31 '17 at 11:40
  • 5
    I am getting error NameError: name 'cm' is not defined – rnso Aug 31 '18 at 3:10
  • 10
    @mso from matplotlib import cm – Quantum7 Oct 2 '18 at 12:53
4

The method described in the accepted answer didn't work for me even after applying changes mentioned in its comments. But the below simple code worked:

import matplotlib.pyplot as plt
plt.imsave(filename, np_array, cmap='Greys')

np_array could be either a 2D array with values from 0..1 floats o2 0..255 uint8, and in that case it needs cmap. For 3D arrays, cmap will be ignored.

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