Dismiss
Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

# How to smooth matplotlib contour plot?

I have numpy array with this shape: (33,10). When I plot contour I get ugly image like this:

while `contour()` doesn't seem to have any argument about smoothing or some sort of interpolation feature.

I somehow expected that tool which offers contour plot should offer smoothing too.
Is there straight forward way to do it in MPL?

-

As others have already pointed out, you need to interpolate your data.

There are a number of different ways to do this, but for starters, consider `scipy.ndimage.zoom`.

As a quick exmaple:

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

# Resample your data grid by a factor of 3 using cubic spline interpolation.
data = scipy.ndimage.zoom(data, 3)

plt.contour(data)
plt.show()
``````

-
Wow! you always come up with something that I haven't heard before. – imsc Sep 7 '12 at 8:42
I just spend way too much time trying to make my figures as pretty as possible... Which probably explains why I never finish things on time! :) – Joe Kington Sep 7 '12 at 14:46
I would use [griddata]( docs.scipy.org/doc/scipy-0.14.0/reference/generated/…). – nicoguaro Oct 15 '14 at 2:46
@nicoguaro - The problem with using `griddata` is that it's intended for irregularly sampled inputs (i.e. scattered data). For re-interpolating regularly gridded data there are different, much more efficient algorithms. `scipy.ndimage.zoom` exploits the regularly gridded nature of the input. It may not be obvious for a small input grid, but for larger grids, `zoom` can be several orders of magnitude faster. However, if you don't have a regular grid to start with, then yes, `griddata` or something similar (e.g. `scipy.interpolate.Rbf`) is what you want. – Joe Kington Oct 17 '14 at 2:20
Thanks for the explanation @Joe Kington, I will check `scipy.ndimage.zoom` to learn a little bit. – nicoguaro Oct 17 '14 at 2:24

There is no easy way to get a smooth contour. An alternative is to try `imshow`. You can look here for other possibilities.

``````import pylab as plt
import numpy as np

plt.subplot(131)
plt.imshow(Z,interpolation='nearest')

plt.subplot(132)
plt.imshow(Z)

plt.subplot(133)
plt.imshow(Z,interpolation='gaussian')

plt.show()
``````

-

In case your data is noisy, you should consider filtering it instead:

``````from numpy import loadtxt
from scipy.ndimage.filters import gaussian_filter
from matplotlib.pyplot import contour, show

sigma = 0.7 # this depends on how noisy your data is, play with it!
data = gaussian_filter(data, sigma)
contour(data)
show()
``````

-

Sure, here it is data.txt. Just in case, plot it with `plt.contour(numpy.loadtxt('data.txt'))` – theta Sep 5 '12 at 5:35
Try to use `contourf()` instead of `contour()` – ymn Sep 5 '12 at 5:49