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In other words, I want to make a heatmap (or surface plot) where the color varies as a function of 2 variables. (Specifically, luminance = magnitude and hue = phase.) Is there any native way to do this? Some examples of similar plots:

uses two colorbars, one for magnitude and one for phase

uses a colorbar for magnitude and a circular legend for phase

uses a 2D colorbar to indicate the changes in both variables

Several good examples of exactly(?) what I want to do.

More examples from astronomy, but with non-perceptual hue

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This a bit of a non-answer, but imshow will take an NxMx3 or NxMx4 array so you can do your color mapping by hand. I agree this would be useful. You might be able to get a bit of traction by sub-classing Normalize and laying out your color map very cleverly. I think the obvious extension is to let color maps take complex arguments, but that is probably a lot of work. – tcaswell Mar 4 '13 at 18:02
I'm not sure how to do this, but are you sure it's a good idea? human eye it's not very good at estimating values from color (and the jet colormap is a notorious offender). Using two at the same time can be a real brain killer. I strongly suggest you to read http://www.research.ibm.com/people/l/lloydt/color/color.HTM. – EnricoGiampieri Mar 15 '13 at 0:15
@EnricoGiampieri: No, I'm not sure it's a good idea, but I want to try it. The intent is to show magnitude as perceptual lightness, and phase angle as perceptual hue (not just the HSV kind), with maxed out chroma to make them as distinguishable as possible. Phase angles in areas of low magnitude are generally random and should be masked anyway. In this case they'll be masked by the darkness. Yes, I complain about jet all the time. :D – endolith Mar 15 '13 at 13:59
@EnricoGiampieri This is great link, thanks! – tcaswell Mar 15 '13 at 15:00
@endolith As a bit of out of band communication, I just figured out you are the original source of of the gist that peakdetect.py is based on, I also have a gist fork of it which has a cython version (which is no faster) and a version that use multi-process gist.github.com/tacaswell/3048730 – tcaswell Mar 15 '13 at 15:15
up vote 4 down vote accepted

imshow will take an NxMx3 (rbg) or NxMx4 (grba) array so you can do your color mapping 'by hand'.

You might be able to get a bit of traction by sub-classing Normalize to map your vector to a scaler and laying out a custom color map very cleverly (but I think this will end up having to bin one of your dimensions).

I have done something like this (pdf link, see figure on page 24), but the code is in MATLAB (and buried someplace in my archives).

I agree a bi-variate color map would be useful (primarily for representing very dense vector fields where your kinda up the creek no matter what you do). I think the obvious extension is to let color maps take complex arguments. It would require specialized sub-classes of Normalize and Colormap and I am going back and forth on if I think it would be a lot of work to implement. I suspect if you get it working by hand it will just be a matter of api wrangling.

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imshow can take an array of [r, g, b] entries. So you can convert the absolute values to intensities and phases - to hues.

I will use as an example complex numbers, because for it it makes the most sense. If needed, you can always add numpy arrays Z = X + 1j * Y.

So for your data Z you can use e.g.


where (EDIT: made it quicker and nicer thanks to this suggestion)

def complex_array_to_rgb(X, theme='dark', rmax=None):
    '''Takes an array of complex number and converts it to an array of [r, g, b],
    where phase gives hue and saturaton/value are given by the absolute value.
    Especially for use with imshow for complex plots.'''
    absmax = rmax or np.abs(X).max()
    Y = np.zeros(X.shape + (3,), dtype='float')
    Y[..., 0] = np.angle(X) / (2 * pi) % 1
    if theme == 'light':
        Y[..., 1] = np.clip(np.abs(X) / absmax, 0, 1)
        Y[..., 2] = 1
    elif theme == 'dark':
        Y[..., 1] = 1
        Y[..., 2] = np.clip(np.abs(X) / absmax, 0, 1)
    Y = matplotlib.colors.hsv_to_rgb(Y)
    return Y

So, for example:

Z = np.array([[3*(x + 1j*y)**3 + 1/(x + 1j*y)**2
              for x in arange(-1,1,0.05)] for y in arange(-1,1,0.05)])
imshow(complex_array_to_rgb(Z, rmax=5), extent=(-1,1,-1,1))

enter image description here

imshow(complex_array_to_rgb(Z, rmax=5, theme='light'), extent=(-1,1,-1,1))

enter image description here

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