# mathplotlib imshow complex 2D array

Is there any good way how to plot 2D array of complex numbers as image in mathplotlib ?

It makes very much sense to map magnitude of complex number as "brightness" or "saturation" and phase as "Hue" ( anyway Hue is nothing else than phase in RBG color space). http://en.wikipedia.org/wiki/HSL_and_HSV

But as far as I know imshow does accept only scalar values which are then mapped using some colorscale. There is nothing like ploting real RGB pictures?

I thing it would be easy just implement a version which accepts 2D array of tuples (vectors) of 3 floating point numbers or ndarray of floats of shape [:,:,3]. I guess this would be generally usefful feature. It would be also usefull for plotting real RGB colord images, such as textures outputted from OpenCL

this does almost the same of @Hooked code but very much faster.

``````import numpy as np
from numpy import pi
import pylab as plt
from colorsys import hls_to_rgb

def colorize(z):
r = np.abs(z)
arg = np.angle(z)

h = (arg + pi)  / (2 * pi) + 0.5
l = 1.0 - 1.0/(1.0 + r**0.3)
s = 0.8

c = np.vectorize(hls_to_rgb) (h,l,s) # --> tuple
c = np.array(c)  # -->  array of (3,n,m) shape, but need (n,m,3)
c = c.swapaxes(0,2)
return c

N=1000
x,y = np.ogrid[-5:5:N*1j, -5:5:N*1j]
z = x + 1j*y

w = 1/(z+1j)**2 + 1/(z-2)**2
img = colorize(w)
plt.imshow(img)
plt.show()
``````
• When you do c.swapaxes(0,2) you’re altering the orientation of the original image. I needed an additional swapaxes(0,1) afterwards for my image to render correctly. However, I used meshgrid instead of ogrid, as I don’t know exactly how the latter works; perhaps this made a difference? – Adarain May 9 '18 at 14:38

The library `mpmath` uses `matplotlib` to produce beautiful images of the complex plane. On the complex plane you usually care about the poles, so the argument of the function gives the color (hence poles will make a spiral). Regions of extremely large or small values are controlled by the saturation. From the docs:

By default, the complex argument (phase) is shown as color (hue) and the magnitude is show as brightness. You can also supply a custom color function (color). This function should take a complex number as input and return an RGB 3-tuple containing floats in the range 0.0-1.0.

Example:

``````import mpmath
mpmath.cplot(mpmath.gamma, points=100000)
`````` Another example showing the zeta function, the trivial zeros and the critical strip:

``````import mpmath
mpmath.cplot(mpmath.zeta, [-45,5],[-25,25], points=100000)
`````` • This looks nice, however it's just for plotting functions where I know analytinc prescription. It is not my case. I need something to plot complex data with dicrete sampling which I read from text file and store in 2D narray. I don't have explicit functionoal prescription for this data which could be sampled in any point. – Prokop Hapala Jun 12 '13 at 13:10

Adapting the plotting code from `mpmath` you can plot a numpy array even if you don't known the original function with numpy and matplotlib. If you do know the function, see my original answer using `mpmath.cplot`.

``````from colorsys import hls_to_rgb

def colorize(z):
n,m = z.shape
c = np.zeros((n,m,3))
c[np.isinf(z)] = (1.0, 1.0, 1.0)
c[np.isnan(z)] = (0.5, 0.5, 0.5)

idx = ~(np.isinf(z) + np.isnan(z))
A = (np.angle(z[idx]) + np.pi) / (2*np.pi)
A = (A + 0.5) % 1.0
B = 1.0 - 1.0/(1.0+abs(z[idx])**0.3)
c[idx] = [hls_to_rgb(a, b, 0.8) for a,b in zip(A,B)]
return c
``````

From here, you can plot an arbitrary complex numpy array:

``````N = 1000
A = np.zeros((N,N),dtype='complex')
axis_x = np.linspace(-5,5,N)
axis_y = np.linspace(-5,5,N)
X,Y = np.meshgrid(axis_x,axis_y)
Z = X + Y*1j

A = 1/(Z+1j)**2 + 1/(Z-2)**2

# Plot the array "A" using colorize
import pylab as plt
plt.imshow(colorize(A), interpolation='none',extent=(-5,5,-5,5))
plt.show()
`````` • thank you a lot! It is quite slow, so it would be better if there would be such function directly hardcoded numpy (I mean something accelerated in the same way as other array operations in numpy - without iterating over array by python loop ). But the important is that it works. – Prokop Hapala Jun 13 '13 at 17:58
• @ProkopHapala Actually most of the work is done with numpy, except for the call to `hls_to_rgb` which you could probably vectorize. You can make it much much faster by changing the number of points `N`, the speed should be proportional to N^2. – Hooked Jun 13 '13 at 19:09

You can use `matplotlib.colors.hsv_to_rgb` instead of `colorsys.hls_to_rgb`. The `matplotlib` function is about 10 times faster! See the results below:

``````import numpy as np
import matplotlib.pyplot as plt
from matplotlib.colors import hsv_to_rgb
import time

def Complex2HSV(z, rmin, rmax, hue_start=90):
# get amplidude of z and limit to [rmin, rmax]
amp = np.abs(z)
amp = np.where(amp < rmin, rmin, amp)
amp = np.where(amp > rmax, rmax, amp)
ph = np.angle(z, deg=1) + hue_start
# HSV are values in range [0,1]
h = (ph % 360) / 360
s = 0.85 * np.ones_like(h)
v = (amp -rmin) / (rmax - rmin)
return hsv_to_rgb(np.dstack((h,s,v)))
``````

``````from colorsys import hls_to_rgb
def colorize(z):
r = np.abs(z)
arg = np.angle(z)

h = (arg + np.pi)  / (2 * np.pi) + 0.5
l = 1.0 - 1.0/(1.0 + r**0.3)
s = 0.8

c = np.vectorize(hls_to_rgb) (h,l,s) # --> tuple
c = np.array(c)  # -->  array of (3,n,m) shape, but need (n,m,3)
c = c.swapaxes(0,2)
return c
``````

Testing the results from the two method with 1024*1024 2darray:

``````N=1024
x, y = np.ogrid[-4:4:N*1j, -4:4:N*1j]
z = x + 1j*y

t0 = time.time()
img = Complex2HSV(z, 0, 4)
t1 = time.time()
print "Complex2HSV method: "+ str (t1 - t0) +" s"

t0 = time.time()
img = colorize(z)
t1 = time.time()
print "colorize method: "+ str (t1 - t0) +" s"
``````

This result on my old laptop:

``````Complex2HSV method: 0.250999927521 s
colorize method: 2.03200006485 s
``````