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I have a plot of spatial data that I display with imshow().

I need to be able to overlay the crystal lattice that produced the data. I have a png file of the lattice that loads as a black and white image.The parts of this image I want to overlay are the black lines that are the lattice and not see the white background between the lines.

I'm thinking that I need to set the alphas for each background ( white ) pixel to transparent (0 ? ).

I'm so new to this that I don't really know how to ask this question.


import matplotlib.pyplot as plt
import numpy as np

lattice = plt.imread('path')
im = plt.imshow(data[0,:,:],vmin=v_min,vmax=v_max,extent=(0,32,0,32),interpolation='nearest',cmap='jet')

im2 = plt.imshow(lattice,extent=(0,32,0,32),cmap='gray')

#thinking of making a mask for the white background
mask = np.ma.masked_where( lattice < 1,lattice ) #confusion here b/c even tho theimage is gray scale in8, 0-255, the numpy array lattice 0-1.0 floats...?

enter image description here

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Can you show us an example (code)? Also, see set_under and set_bad functions of colormap –  tcaswell Aug 10 '13 at 11:31
Added some code ideas...and the lattice png. Perhaps I can use the np mask methods to identify the while bg pixels and set them to transparent. –  wbg Aug 10 '13 at 20:32

2 Answers 2

up vote 2 down vote accepted

With out your data, I can't test this, but something like

import matplotlib.pyplot as plt
import numpy as np
import copy

my_cmap = copy.copy(plt.cm.get_cmap('gray')) # get a copy of the gray color map
my_cmap.set_bad(alpha=0) # set how the colormap handles 'bad' values
lattice = plt.imread('path')
im = plt.imshow(data[0,:,:],vmin=v_min,vmax=v_max,extent=(0,32,0,32),interpolation='nearest',cmap='jet')

lattice[lattice< thresh] = np.nan # insert 'bad' values into your lattice (the white)

im2 = plt.imshow(lattice,extent=(0,32,0,32),cmap=my_cmap)

Alternately, you can hand imshow a NxMx4 np.array of RBGA values, that way you don't have to muck with the color map

im2 = np.zeros(lattice.shape + (4,))
im2[:, :, 3] = lattice # assuming lattice is already a bool array

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wow that works...thank you so much...I need to study this solution. Use of Nan's is clever...in my previous image processing experience Nan's would be cast into zeros...so I didn't consider them as a way to make pixels not drawn. The copy of the cm is interesting...I don't understand yet how matplotlib works...:( Cheers. –  wbg Aug 11 '13 at 4:51
@wbg The copy is there so that you don't change the 'standard' gray color map, as get_cmap returns an object in a pre-populated array, rather than re-creating the colormap on the fly. –  tcaswell Aug 11 '13 at 14:09
The doc for set_bad() was not very clear...now I see that by 'bad' they mean Nan, inf's and the like. I LOVE python and how elegant it is vs. MATLAB. I'm still a bit bothered by the renormalized range 0-1 that imread() appears to invoke. I guess that allows for more generic use of color maps..? That's another thread I guess. Cheers to all. –  wbg Aug 11 '13 at 17:21
@wbg, yes, the 0-1 range is an easy way to write code that can deal with all manner of images. Most image types and be mapped to a float in that range with out losing any information, and now you have many less cases to deal with in the low-level code. –  tcaswell Aug 11 '13 at 17:26

The easy way is to simply use your image as a background rather than an overlay. Other than that you will need to use PIL or Python Image Magic bindings to convert the selected colour to transparent.

Don't forget you will probably also need to resize either your plot or your image so that they match in size.


If you follow the tutorial here with your image and then plot your data over it you should get what you need, note that the tutorial uses PIL so you will need that installed as well.

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