# matplotlib imshow() with irregular spaced data points

I am trying to put some data into an imshow() plot. My problem is that the data does not come as a MxN array but as a 3xN array (x- and y coordinate and value). The points are NOT arranged as a regular grid but lie within [xmin,xmax,ymin and ymax]=[-pi/2,pi/2,0,3.5].

``````In [117]: shape(data)
Out[117]: (3L, 102906L)
``````

How can I get a nice image plot from that data? Thank you very much for any help.

btw the data represents temperature values on the surface of a rod as a function of axial and azimuthal position, think of a cfd-mesh.

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hm eventually interp2d is going to do the job... lets see – user1805743 Jan 2 '13 at 12:15

I recommend using the griddata-method for interpolation. A sample would be:

``````import numpy as np
from matplotlib.mlab import griddata
import matplotlib.pyplot as plt

xs0 = np.random.random((1000)) * np.pi - np.pi/2
ys0 = np.random.random((1000)) * 3.5
zs0 = np.random.random((1000))

N = 30j
extent = (-np.pi/2,np.pi/2,0,3.5)

xs,ys = np.mgrid[extent[0]:extent[1]:N, extent[2]:extent[3]:N]

resampled = griddata(xs0, ys0, zs0, xs, ys)

plt.imshow(resampled.T, extent=extent)
plt.plot(xs0, ys0, "r.")
plt.plot(xs, ys, "b.")
plt.title("imshow for irregularly spaced data using griddata")
plt.show()
``````

I guess transition from your 3*X-array to three X-arrays is obvious.

The result is:

Red points show the "original" positions of the data, blue points for the now regularly spaced data.

griddata returns a masked array. All points for which the interpolation cannot be evaluated are masked and then plotted as white areas.

HTH, Thorsten

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i was just about to post this link as it helped me out, but you were quicker :) scipy.org/Cookbook/Matplotlib/Gridding_irregularly_spaced_data – user1805743 Jan 4 '13 at 10:31