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hl = [(1,109),(12,212),(21,23)]
highlightc = np.zeros([N, N])
c = len(highlightc)
colour = [0.21]*c
test = len(number_list) -c

this = [0.21]*test
colour.extend(this)
colour = np.array(colour)
colour = np.array(colour)
print len(number_list)
print colour

for x, y in hl:
    highlightc[x, y] = 1##set so binary matrix knows where to plot
h=ax.imshow(highlightc*colour), interpolation='nearest',cmap=plt.cm.spectral_r)
fig.canvas.draw()

I am trying to create a binary matrix, where the plots are different colours. However at the moment I have a problem as they arrays are not the same shape, so the colour does not get plotted. I get the error operands could not be broadcast together with shapes (160,160) (241) I'm guessing that the (160*160) is the size of the matrix and the 241 is the size of the colour array. I have an array of coordinates that I turned into a binary array highlightc. This plots successfully. However with the colour I got the size of the coordinate array, and used that to populate an array to make the colours. Which is obviously wrong. Basically what I want is a certain amount be 0.21 and the rest be 1.0. So how can I turn the array I have got so it has the shape (160,160) so it colours the correct plots in the correct color

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marked as duplicate by tcaswell, Andy, PearsonArtPhoto, Jeen Broekstra, Blastfurnace Mar 3 at 0:39

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

    
You'll have more chance of getting a good answer if your code is complete. i.e. if I can copy-paste and run it without trying to guess what your data and import statements are. If you have to put in fake or random data that's fine... –  Mr E Apr 9 '13 at 10:28

1 Answer 1

up vote 1 down vote accepted
highlightc = np.ones([N, N])
for x, y in hl:
    highlightc[x, y] = .21 ##set so binary matrix knows where to plot
h=ax.imshow(highlightc*colour), interpolation='nearest',cmap=plt.cm.spectral_r, vmin=0, mvax=1)
fig.canvas.draw()

is all you need.

highlgihtc will contain 1 everywhere but a few places where it will be 0.21.

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