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I'm looking to plot a matplotlib colormesh on top of another colormesh. The bottom plot is simply grayscale.

The one which sits on top should however draw a transparent square when the value of the passed array is 0, and a different color for each other number in the passed array. These are 2d numpy arrays.

Currently I have:

plt.pcolormesh(array1, vmin = -32, vmax = 32, cmap =
plt.pcolormesh(array2, cmap =

Obviously this doesn't produce what I'm looking for, and I assume the way to do this is to generate my own colormap, I've read this guide: but this doesn't seem to address transparency, nor how to make specific values map to specific colors.

As a short example of what I'd like, an array:

[[0, 1]
 [2, 3]]

Should produce a grid looking like:

[[transparent, red
 [green, yellow]]

How do I go about doing this? Merging the arrays together isn't an option, as the bottom dataset is a height map, and the values of this will likely always span the values of the second array (these are agent IDs).

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1 Answer 1

up vote 1 down vote accepted

This code should do something akin to what you require:

Edit using masked_array:

import numpy as np
import matplotlib.pyplot as plt
import as cm
import matplotlib.colors as colors
import as ma

def truncate_colormap(cmap, minval=0.0, maxval=1.0, n=100):
    new_cmap = colors.LinearSegmentedColormap.from_list(
        'trunc({n},{a:.2f},{b:.2f})'.format(, a=minval, b=maxval),
        cmap(np.linspace(minval, maxval, n)))
    return new_cmap

#truncate the colourmap
n_colours = 4
new_cmap = truncate_colormap(cm.get_cmap('spectral_r'), 0, 0.4, n=n_colours)

#discretise the colourmap
bounds = np.linspace(0,n_colors,n_colours+1)
norm = colors.BoundaryNorm(bounds, new_cmap.N)

#build array one
array1 = np.random.rand(10,10)

#build array two
array2 = np.random.randint(0,5,100).reshape(10,10)

#mask the array
array2 = ma.masked_array(array2, array2==0)

#plot it
plt.pcolormesh(array1,cmap =
plt.pcolormesh(array2,cmap = new_cmap, norm=norm)
cbar = plt.colorbar()

Here is the new output using a masked array:

enter image description here

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This is good, and close to the sort of thing I had in mind, but not quite there. Is it possible to apply the alpha channel ONLY to those values of 0? If not, I guess I may need to look into a different way to plot this data. –  CloudUK Nov 10 '13 at 14:58
Yes, using masked arrays will do that. Edited my post to demonstrate. –  dabillox Nov 10 '13 at 15:29
Have added a n_colours variable so you can change it. Also to increase differentiability between the colours increase the maxval argument to truncate_colormap –  dabillox Nov 10 '13 at 15:46
This is way over complicated, just use set_under() See… and add the kwarg alpha=0 to the set_under call –  tcaswell Nov 10 '13 at 21:44
or… which has a more complete set of examples –  tcaswell Nov 10 '13 at 21:46

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