I have consistently had problems with my colour maps when using imshow, some colours seem to just become black. I have finally realised that imshow seems to, by default, normalise the matrix of floating point values I give it.

I would have expected an array such as [[0,0.25],[0.5,0.75]] to display the appropriate colours from the map, corresponding to those absolute values but the 0.75 will be interpreted as a 1. In the extreme case, an N x N array of 0.2 (for example), would just produce one big black square, rather than whatever one would expect 0.2 to correspond to in the colour map (perhaps a 20% grey).

Is there a way to prevent this behaviour? It is particularly annoying when custom colour maps have many discontinuities, a small change in scale could cause all the colours to completely change.


Just specify vmin=0, vmax=1.

By default, imshow normalizes the data to its min and max. You can control this with either the vmin and vmax arguments or with the norm argument (if you want a non-linear scaling).

As a quick example:

import matplotlib.pyplot as plt

data = [[0, 0.25], [0.5, 0.75]]

fig, ax = plt.subplots()
im = ax.imshow(data, cmap=plt.get_cmap('hot'), interpolation='nearest',
               vmin=0, vmax=1)

enter image description here

  • 4
    My life is complete! This has nagged me for too long. Hope this helps somebody else. – oLas Mar 2 '14 at 21:26
  • 1
    It did. I've been searching the hell out of the www. To figure out the behaviour of imshow. – Nimi May 4 '15 at 14:25
  • Does this also apply to matshow ? – DeeWBee Oct 21 '16 at 19:53
  • @DeeWBee Yes. From the docs: With the exception of fignum, keyword arguments are passed to imshow() – oLas Jan 15 '17 at 11:17

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