# set bin colors in 2d histogram (polyochromatic plots)

I'm trying to create a 2d histogram that overlays three separate datasets. My idea is to color the datasets red, green, and blue, so that the density of the red data in a bin corresponds to the red value of that bin's color, and likewise for blue and green.

There are examples of this, but so far as I can tell there's no implementation of polychromatic plotting in matplotlib.

Getting to a grid of the form

``````[[ (r,g,b) , (r,g,b) ... (r,g,b) ] ,
[ (r,g,b) , (r,g,b) ...         ] ,
.......
[ (r,g,b) , (r,g,b) ... (r,g,b) ]]
``````

is no problem at all. The problem is that all the plotting functions I've found want to map single bin values onto a color scale, they don't allow me to set the full color value of the bins.

Is there some primitive I should be looking for? Is there already a histogram to do this?

-
So for each (r, g, b) do you want a single pixel that has that RGB value, ie. an image? Or something else? –  fraxel Jun 3 '12 at 13:02
@fraxel, yeah, basically an image, although it would be nice to not have to add all the axes / legend stuff myself. –  Shep Jun 3 '12 at 19:29

If your data is already in an RGB format (weighted between 0 and 1), then `imshow` will interpret a `(M,N,3)`-shaped array as an RGB array. Use `interpolation='nearest'` to pixelise the output:

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

# Example pixel array
pixels = np.random.rand(100,100,3)
reds = pixels[:,:,1:] = 0.          # Remove B and G

plt.imshow(reds, interpolation='nearest')
``````

If it is stored as a list of tuples, then a `np.array(...)` will do the conversion.

-