In numpy/scipy I have an image stored in an array. I can display it, I want to save it using savefig without any borders, axes, labels, titles,... Just pure image, nothing else.

I want to avoid packages like PyPNG or scipy.misc.imsave, they are sometimes problematic (they do not always install well, only basic savefig() for me

10 Answers 10


Assuming :

import matplotlib.pyplot as plt

To make a figure without the frame :

fig = plt.figure(frameon=False)

To make the content fill the whole figure

ax = plt.Axes(fig, [0., 0., 1., 1.])

Then draw your image on it :

ax.imshow(your_image, aspect='normal')
fig.savefig(fname, dpi)

The aspect parameter changes the pixel size to make sure they fill the figure size specified in fig.set_size_inches(…). To get a feel of how to play with this sort of things, read through matplotlib's documentation, particularly on the subject of Axes, Axis and Artist.

  • 4
    nope, I still have some small transparent border, and what I want is no border at all, pure image – Jakub M. Nov 21 '11 at 21:42
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    grrr, no, still the same. There is a small, transparent border around the image, few pixels on each side – Jakub M. Nov 21 '11 at 21:58
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    If you manually set the w and h parameters in fig.set_size_inches(w,h) and the dpi parameter in fig.savefig(fname, dpi) so that it result in 24px by 24px, it should work just fine. For example, w = h = 1 and dpi = 24 – matehat Nov 21 '11 at 22:27
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    I had to combine both this answer, and the answer below by Mostafa Pakparvar. Not only do you need to turn off the axes, but you need to set_visible to false to make sure the white space disappears. (wtf?) – Bryce Guinta Jan 17 '16 at 19:13
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    Just tried this using matplotlib v2.2.2 an it worked perfectly (except that imshow's syntax changed to aspect='auto' instead of 'normal'). – Luke19 Aug 18 '18 at 19:09

An easier solution seems to be:

fig.savefig('out.png', bbox_inches='tight', pad_inches=0)
  • 1
    This worked out great for me. Also, pad_inches can be changed to desired size easily. Thanks! – Curious2learn Dec 31 '12 at 16:46
  • +1 worked out great for me too :) And this is actually way simpler than the accepted answer – El Ninja Trepador Apr 10 '14 at 22:26
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    I still got white margins with this. – Fábio Perez Feb 13 '17 at 13:03
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    Yes, for newer versions of Matplotlib the above line seemingly results in small margins. Setting the extent manually is probably the cleanest solution: fig.set_size_inches((width, height)) extent = mpl.transforms.Bbox(((0, 0), (width, height))) fig.savefig([...], bbox_inches=extent) – weatherfrog Feb 14 '17 at 13:39
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    I was able to update this for newer versions/remaining margins issue simply by adding transparent=True fig.savefig('out.png', bbox_inches='tight',transparent=True, pad_inches=0) – mdoc-2011 Feb 14 '18 at 19:21

You can find the bbox of the image inside the axis (using get_window_extent), and use the bbox_inches parameter to save only that portion of the image:

import numpy as np
import matplotlib.pyplot as plt


extent = ax.get_window_extent().transformed(fig.dpi_scale_trans.inverted())
plt.savefig('/tmp/test.png', bbox_inches=extent)

I learned this trick from Joe Kington here.

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    just plt.axis('off') helped. Other answers don't much help. – imsrgadich Mar 2 '18 at 7:09
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    This worked pretty well. However in my case there is still a small white border. Any ideas of how to remove this border? – user3731622 Mar 16 '18 at 17:55

I've tried several options in my case, and the best solution was this:

fig.subplots_adjust(bottom = 0)
fig.subplots_adjust(top = 1)
fig.subplots_adjust(right = 1)
fig.subplots_adjust(left = 0)

then save your figure with savefig

  • Out of all of this solutions, this is the only one that worked for me. – Puff Apr 5 at 3:23

I will suggest heron13 answer with a slight addition borrowed from here to remove the padding left after setting the bbox to tight mode, therefore:

axes = fig.axes()
fig.savefig('out.png', bbox_inches='tight', pad_inches=0)
  • I am getting an error saying get_xaxis() and get_yaxis() don't exist. Any idea why that would happen? – Jacob Malachowski Jan 17 '17 at 23:58
  • Make an axes() object, then use ax.xaxis and ax.yaxis – perigon Jul 14 '17 at 10:23
  • Got an error saying 'list' object has no attribute 'get_xaxis' – Haozhe Xie Mar 18 at 9:15

This one work for me

plt.savefig('filename',bbox_inches='tight',transparent=True, pad_inches=0)

I had the same problem while doing some visualization using librosa where I wanted to extract content of the plot without any other information. So this my approach. unutbu answer also helps me to make to work.

    figure = plt.figure(figsize=(500, 600), dpi=1)
    axis = plt.subplot(1, 1, 1)
    plt.tick_params(axis='both', left='off', top='off', right='off', bottom='off', labelleft='off', labeltop='off',
                    labelright='off', labelbottom='off')

     # your code goes here. e.g: I used librosa function to draw a image
    result = np.array(clip.feature_list['fft'].get_logamplitude()[0:2])
    librosa.display.specshow(result, sr=api.Clip.RATE, x_axis='time', y_axis='mel', cmap='RdBu_r')

    extent = axis.get_window_extent().transformed(figure.dpi_scale_trans.inverted())
    plt.savefig((clip.filename + str("_.jpg")), format='jpg', bbox_inches=extent, pad_inches=0)
  • This got me on the right track, but I had two problems: 1) I had to set the dpi to a number greater than 1 to avoid a font error in my jupyter notebook; and 2) there was still a small border so I have to manually change the extent Bbox to extent.get_points()*np.array([[1.1],[.9]]). – Bob Baxley Dec 9 '17 at 15:00
  • thanks for the fulfiling the answer which may help to somebody else. – GPrathap Dec 9 '17 at 20:34

While the above answers address removing margins and padding, they did not work for me in removing labels. Here's what worked, for anyone who stumbles upon this question later:

Assuming you want a 2x2 grid of subplots from four images stored in images:

matplotlib.pyplot.figure(figsize = (16,12)) # or whatever image size you require
for i in range(4):
    ax = matplotlib.pyplot.subplot(2,2,i+1)
matplotlib.pyplot.savefig(path, bbox_inches='tight')

For anybody trying to do this in Jupyter


 spec = plt.imshow

 plt.savefig('spec',bbox_inches='tight',transparent=True, pad_inches=0)

I tried to get rid of the border too, using tips here but nothing really worked. Some fiddling about and I found that changing the faceolor gave me no border in jupyter labs (Any color resulted in getting rid of the white border). Hope this helps.

def show_num(data):
data = np.rot90(data.reshape((16,16)), k=3)
data = np.fliplr(data)
fig = plt.figure(frameon=False, facecolor='white')
ax = plt.Axes(fig, [0., 0., 1., 1.])

enter image description here

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