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I using matplotlib to plot some data in python and the plots require a standard colour bar. The data consists of a series of NxM matrices containing frequency information so that a simple imshow() plot gives a 2D histogram with colour describing frequency. Each matrix contains data in different, but overlapping ranges. Imshow normalizes the data in each matrix to the range 0-1 which means that, for example, the plot of matrix A, will appear identical to the plot of the matrix 2*A (though the colour bar will show double the values). What I would like is for the colour red, for example, to correspond to the same frequency in all of the plots. In other words, a single colour bar would suffice for all the plots. Any suggestions would be greatly appreciated.

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I prefer using matshow() or pcolor() because imshow() smoothens the matrix when displayed making interpretation harder. So unless the matrix is indeed an image, I suggest that you try the other two. –  ianalis Oct 24 '11 at 21:53
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@inalis - You can specify interpolation='nearest' when using imshow if you don't want interpolation. pcolor is much slower than imshow for large arrays, so it's often better to use imshow for large-ish arrays. On the other hand, pcolor gives vector output, which can be very handy at times. –  Joe Kington Oct 24 '11 at 23:34
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2 Answers

Not to steal @ianilis's answer, but I wanted to add an example...

There are multiple ways, but the simplest is just to specify the vmin and vmax kwargs to imshow. Alternately, you can make a matplotlib.cm.Colormap instance and specify it, but that's more complicated than necessary for simple cases.

Here's a quick example with a single colorbar for all images:

import numpy as np
import matplotlib.pyplot as plt

# Generate some data that where each slice has a different range
# (The overall range is from 0 to 2)
data = np.random.random((4,10,10))
data *= np.array([0.5, 1.0, 1.5, 2.0])[:,None,None]

# Plot each slice as an independent subplot
fig, axes = plt.subplots(nrows=2, ncols=2)
for dat, ax in zip(data, axes.flat):
    # The vmin and vmax arguments specify the color limits
    im = ax.imshow(dat, vmin=0, vmax=2)

# Make an axis for the colorbar on the right side
cax = fig.add_axes([0.9, 0.1, 0.03, 0.8])
fig.colorbar(im, cax=cax)

plt.show()

enter image description here

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Easiest solution is to call clim(lower_limit, upper_limit) with the same arguments for each plot.

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Or just pass the vmin and vmax kwargs to imshow. –  Joe Kington Oct 24 '11 at 16:52
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