# Plot a black-and-white binary map in matplotlib

I'm using python to simulate some automation models, and with the help of matplotlib I'm producing plots like the one shown below.

I'm currently plotting with the following command:

``````ax.imshow(self.g, cmap=map, interpolation='nearest')
``````

where `self.g` is the binary map (`0` -> blue, `1` -> red in my current plots).

However, to include this in my report I would like the plot to be with black dots on white background instead of red on blue. How do I accomplish that?

-

You can change the color map you are using via the `cmap` keyword. The color map `'Greys'` provides the effect you want. You can find a list of available maps on the scipy website.

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

np.random.seed(101)
g = np.floor(np.random.random((100, 100)) + .5)

plt.subplot(211)
plt.imshow(g)
plt.subplot(212)
plt.imshow(g, cmap='Greys',  interpolation='nearest')
plt.savefig('blkwht.png')

plt.show()
``````

which results in:

-
You can just give the name of the colormap to `cmap`. `plt.imshow(g, cmap="Greys")` would do the same thing. –  Avaris Mar 9 '12 at 20:09
@Avaris, thanks, I've updated the answer to include this... –  Yann Mar 9 '12 at 20:21

There is an alternative method to Yann's answer that gives you finer control. Matplotlib's imshow can take a `MxNx3` matrix where each entry is the RGB color value - just set them to white `[1,1,1]` or black `[0,0,0]` accordingly. If you want three colors it's easy to expand this method.

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

# Z is your data set
N = 100
Z = np.random.random((N,N))

# G is a NxNx3 matrix
G = np.zeros((N,N,3))

# Where we set the RGB for each pixel
G[Z>0.5] = [1,1,1]
G[Z<0.5] = [0,0,0]

plt.imshow(G,interpolation='nearest')
plt.show()
``````

-