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Is there a simple way to form a new colormap by stacking together two existing ones?

What I'm trying to achieve is to make yet another color-coded scatter plot, where the color-mapped variable varies from large negative to large positive values, and I'd like to tone down the values around zero --- basically, I'd like to be able to pick colors from a stock colormap (say, cm.Blues_r) for negative values of the color-mapped variable, and from a different one (say, cm.Oranges) for positive values of that variable.

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2 Answers 2

up vote 1 down vote accepted

This isn't tested, but as a first pass I would try making a simple sub-class of colors.Colormap.

class split_cmap(colors.Colormap):
    def __init__(self, cmap_a, cmap_b, split=.5):
        '''Makes a split color map cmap_a is the low range, 
           cmap_b is the high range
           split is where to break the range
        '''
        self.cmap_a, self.cmap_b = cmap_a, cmap_b
        self.split = split

    def __call__(self, v):
        if v < self.split:
            return self.cmap_a(v) 
            # or you might want to use v / self.split
        else:
            return self.cmap_b(v) 
            # or you might want to use (v - self.split) / (1 - self.split)

    def set_bad(self,*args, **kwargs):
        self.cmap_a.set_bad(*args, **kwargs)
        self.cmap_b.set_bad(*args, **kwargs)

    def set_over(self, *args, **kwargs):
        self.cmap_a.set_over(*args, **kwargs) # not really needed
        self.cmap_b.set_over(*args, **kwargs)

    def set_under(self, *args, **kwargs):
        self.cmap_a.set_under(*args, **kwargs)
        self.cmap_b.set_under(*args, **kwargs) # not really needed

    def is_gray(self):
        return False

colors.Colormap class definition.

You are going to need to dig into the Normalize classes as well. The color maps only know about [0, 1], so you will have to make sure that your norm maps to .5 where you want the change over to happen.

You could probably generalize this to take a list of maps and split points and have as many color maps as you want. This also needs all manner of sanity checks.

If you re-normalize the input, you could also use this to make a periodic version of any existing color map by passing it the color map and it's reversed partner.

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That's been an awesome starting point, thanks whole lot! –  ev-br Mar 17 '13 at 23:46

I think it is simpler to make the colormap yourself, especially when so few colors are involved. This one is orange-white-blue.

cdict = {'red':   [ (0.0,   0.0, 0.0),
                    (0.475, 1.0, 1.0),
                    (0.525, 1.0, 1.0),
                    (1.0,   1.0, 1.0)
                  ],
         'green': [ (0.0,   0.0, 0.0),
                    (0.475, 1.0, 1.0),
                    (0.525, 1.0, 1.0),
                    (1.0,   0.65, 0.0)
                  ],
         'blue':  [ (0.0,   1.0, 1.0),
                    (0.475, 1.0, 1.0),
                    (0.525, 1.0, 1.0),
                    (1.0,   0.0, 0.0)
                  ]
}
rwb_cmap = matplotlib.colors.LinearSegmentedColormap(name = 'rwb_colormap', colors = cdict, N = 256)

A colormap is a dictionary for the RGB values. For each color, a list of tupples gives the different segments. Each segment is a point along the z-axis, ranging from 0 to 1. The colors for the levels is interpolated from these segments.

segment z-axis  end      start
i       z[i]    v0[i]    v1[i]
i+1     z[i+1]  v0[i+1]  v1[i+1]   
i+2     z[i+2]  v0[i+2]  v1[i+2]   

Levels between z[i] and z[i+1] will have colors between v1[i] and v0[i+1] etc. This makes it possible to 'jump' colors. v0[0] and v1[-1] are not used. You can use as many segments as you want. (adapted from here: http://matplotlib.org/api/colors_api.html#matplotlib.colors.LinearSegmentedColormap)

N is the number of quantization levels. So for N = 256 it will interpolate the map for 256 levels. I use 256 out of laziness. I guess you have to be careful when you set N = 6 and you make 4 contours.

The 0.475 and 0.525 are to ensure that the middle contour is truly white. For the levels [-1.5, -0.5, 0.5, 1.5] the fill is now orange-white-blue. If I had used 0.5 instead the middle level would be an interpolation of blue-ish and orange-ish.

The RGB code for orange is 255-165-0 or 1-0.65-0 if the scale is 0-1.

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Well, I wanted to have was flexibility based on the already existing work, but OK, if we're at it, would you please explain 1) why 0.475 and 0.525, 2) why 3x4 lists, 3) why 0.65 and 4) why 256. Can make it a separate question if that'd be an extra incentive. –  ev-br Mar 14 '13 at 9:32

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