# How to fit result of matplotlib.pyplot.contourf into circle?

Here is my code to plot some data:

``````from scipy.interpolate import griddata
from numpy import linspace
import matplotlib.pyplot as plt
meanR = [9.95184937,   9.87947708,   9.87628496,   9.78414422,
9.79365258,   9.96168969,   9.87537519,   9.74536093,
10.16686878,  10.04425475,  10.10444126,  10.2917172 ,
10.16745917,  10.0235203 ,   9.89914   ,  10.11263505,
9.99756449,  10.17861254,  10.04704248]
koord = [[1,4],[3,4],[1,3],[3,3],[2,3],[1,2],[3,2],[2,2],[1,1],[3,1],[2,1],[1,0],[3,0],[0,3],[4,3],[0,2],[4,2],[0,1],[4,1]]
x,y=[],[]
for i in koord:
x.append(i)
y.append(i)
z = meanR
xi = linspace(-2,6,300);
yi = linspace(-2,6,300);
zi = griddata((x, y), z, (xi[None,:], yi[:,None]), method='cubic')
CS = plt.contourf(xi,yi,zi,15,cmap=plt.cm.jet)
plt.scatter(x,y,marker='o',c='b',s=15)
plt.xlim(min(x),max(x))
plt.ylim(min(y),max(y))
plt.show()
``````

In result we have: How can I inscribe it in a circle? something like this • you can try using polar coordinates. This can give you some hint – Francesco Montesano Mar 12 '13 at 12:42
• Would be very grateful for the detailed answer – sviter Mar 12 '13 at 12:57
• can you give some context for your problem? what do you mean to inscribe it in a circle? you have polar data or you need to cut the plot image outside the cirle area? – EnricoGiampieri Mar 14 '13 at 20:04
• I need to plot topography of EEG. So it is projection of sphere on plane. But plot it inside the circle without lost any information will be great – sviter Mar 15 '13 at 5:58

Because you don't seem to need any axes you can also use a normal projection, remove the axes and draw a circle. I had some fun and added some bonus ears, a nose and a color bar. I annotated the code, I hope it is clear. ``````from __future__ import print_function
from __future__ import division
from __future__ import absolute_import

import scipy.interpolate
import numpy
import matplotlib
import matplotlib.pyplot as plt

# close old plots
plt.close("all")

# some parameters
N = 300             # number of points for interpolation
xy_center = [2,2]   # center of the plot

# mostly original code
meanR = [9.95184937,   9.87947708,   9.87628496,   9.78414422,
9.79365258,   9.96168969,   9.87537519,   9.74536093,
10.16686878,  10.04425475,  10.10444126,  10.2917172 ,
10.16745917,  10.0235203 ,   9.89914   ,  10.11263505,
9.99756449,  10.17861254,  10.04704248]

koord = [[1,4],[3,4],[1,3],[3,3],[2,3],[1,2],[3,2],[2,2],[1,1],[3,1],[2,1],[1,0],[3,0],[0,3],[4,3],[0,2],[4,2],[0,1],[4,1]]

x,y = [],[]
for i in koord:
x.append(i)
y.append(i)

z = meanR

xi = numpy.linspace(-2, 6, N)
yi = numpy.linspace(-2, 6, N)
zi = scipy.interpolate.griddata((x, y), z, (xi[None,:], yi[:,None]), method='cubic')

# set points > radius to not-a-number. They will not be plotted.
# the dr/2 makes the edges a bit smoother
dr = xi - xi
for i in range(N):
for j in range(N):
r = numpy.sqrt((xi[i] - xy_center)**2 + (yi[j] - xy_center)**2)
if (r - dr/2) > radius:
zi[j,i] = "nan"

# make figure
fig = plt.figure()

# set aspect = 1 to make it a circle
ax = fig.add_subplot(111, aspect = 1)

# use different number of levels for the fill and the lines
CS = ax.contourf(xi, yi, zi, 60, cmap = plt.cm.jet, zorder = 1)
ax.contour(xi, yi, zi, 15, colors = "grey", zorder = 2)

# make a color bar
cbar = fig.colorbar(CS, ax=ax)

# I guess there are no data points outside the head...
ax.scatter(x, y, marker = 'o', c = 'b', s = 15, zorder = 3)

# draw a circle
# change the linewidth to hide the
circle = matplotlib.patches.Circle(xy = xy_center, radius = radius, edgecolor = "k", facecolor = "none")

# make the axis invisible
for loc, spine in ax.spines.iteritems():
# use ax.spines.items() in Python 3
spine.set_linewidth(0)

# remove the ticks
ax.set_xticks([])
ax.set_yticks([])

# Add some body parts. Hide unwanted parts by setting the zorder low
circle = matplotlib.patches.Ellipse(xy = [0,2], width = 0.5, height = 1.0, angle = 0, edgecolor = "k", facecolor = "w", zorder = 0)
circle = matplotlib.patches.Ellipse(xy = [4,2], width = 0.5, height = 1.0, angle = 0, edgecolor = "k", facecolor = "w", zorder = 0)
xy = [[1.5,3], [2,4.5],[2.5,3]]
polygon = matplotlib.patches.Polygon(xy = xy, facecolor = "w", zorder = 0)

# set axes limits
ax.set_xlim(-0.5, 4.5)
ax.set_ylim(-0.5, 4.5)

plt.show()
``````
• very nice @Robbert. Why don't you use a simple `Circle` instead of the `Wedge`? – Francesco Montesano Mar 15 '13 at 13:06
• Because I overlooked it. I edited the code, it now uses a `Circle`. – Robbert Mar 15 '13 at 13:16

If you replace the part where you do the plotting with:

``````fig = plt.figure()
you get this To get what you want, you have to rescale the `x`, `y`, `xi`, `yi` such that the image is centered in zero. You might also need to convert to polar coordinates. Now I don't have time to provide more info, but I hope that this helps you in getting started