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I have a 2D array from which I want to produce a contour plot using matplotlib. Everything works fine saving as PNG (or other raster formats), however for including the figure in a paper I need to save to postscript format.
The problem is, the file I get is quite big (some MB) when I save to postscript. It looks like Matplotlib saves everything in vector format. While this makes sense for the axes and the labels, that would be degraded if rasterized, I would like to have the contour plot itself in raster format (which I know can be embedded inside a postscript). Does anybody know how to do it? I'm using the Agg backend.

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can you give us a hint or look of your code? – khan Sep 26 '12 at 18:45

You can set:

plt.gcf().set_rasterized(True)

before plt.savefig

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1  
I didn't know this command... However, this has the effect of rasterizing all the figure (which is already something). What I would really like would be to rasterize only the contour plot itself, while leaving the text (e.g. labels) in vector format. – Spock Sep 28 '12 at 17:13
    
@Spock: if this answer was helpful to you, you should 'upvote' it... – Kurt Pfeifle Oct 9 '12 at 19:13
    
@Kurt: thanks, done! – Spock Oct 15 '12 at 15:47

Here is a minimal working example. I used the code from sega_sai for some time now without any problems.

from matplotlib.collections import Collection
from matplotlib.artist import allow_rasterization
import matplotlib.pyplot as plt

class ListCollection(Collection):
     def __init__(self, collections, **kwargs):
         Collection.__init__(self, **kwargs)
         self.set_collections(collections)
     def set_collections(self, collections):
         self._collections = collections
     def get_collections(self):
         return self._collections
     @allow_rasterization
     def draw(self, renderer):
         for _c in self._collections:
             _c.draw(renderer)

def insert_rasterized_contour_plot(c):
    collections = c.collections
    for _c in collections:
        _c.remove()
    cc = ListCollection(collections, rasterized=True)
    ax = plt.gca()
    ax.add_artist(cc)
    return cc

if __name__ == '__main__':
    import numpy as np
    x, y = np.meshgrid(*(np.linspace(-1,1,500),)*2)
    z = np.sin(20*x**2)*np.cos(30*y)
    c = plt.contourf(x,y,z,30)

    plt.savefig('fig_normal.pdf')

    insert_rasterized_contour_plot(c)
    plt.savefig('fig_rasterized.pdf')

On my PC this results in:

fig_normal.pdf: filesize is 5810 KByte & needs ~5 sec to render in Adobe Reader

fig_rasterized.pdf: filesize is 60 KByte & renders directly in Adobe Reader

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up vote 1 down vote accepted

OK, in the end I found the answer to my own question. It required a difficult digging in the matplotlib mailing list, so I am linking here the relevant thread in the hope it will be helpful also for someone else, and possibly easier to find (by the way, no-one replied to the poor guy who sent the message).

I willl summarize here the idea in words. One has to use the set_rasterized method, as sega_sai suggested. However, rather than applying the method to the whole figure, as I explained in my comment, the method has to be applied to the lines that comprise the contour plot. The trick is to first create a "container" for them all and to rasterize that, instead of rasterizing each individual line (which was something I already tried and gives bad results). This works fine. In the discussion I linked you can find the code for doing it.

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3  
If you could provide a MWE (minimal working example), this answer would be 10x better for anyone else looking to solve your problem in the future! – Hooked Oct 9 '12 at 16:33

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