# 2D Interpolation of Large Irregular Grid to Regular Grid

I have 2048x2048 mesh of irregular data `zi = f(xi, yi)` which are essentially three independent sets of 2048 real values. I need to smoothly interpolate (perhaps bicubic spline) that into a regular mesh of `wi = f(ui, vi)` where `ui` and `vi` are integer values from 0 to 2047.

I have tried griddata which seems to work well at images less than 1000x1000, but blows up as you get to 1500x1500 (memory qhull errors for the Delauney Mesh evidently). I have looked at some of `ndimage` functions, namely `geometric_transform`, `RectBivariateSpline` and `map_coordinates`, but they all seem to take regularized data as input. I could be missing something and just implementing it wrong though too!

I am trying to use Python/SciPy to do what this Matlab script I have been doing using `tformarray` and `makeresampler`. Any suggestions as to what function I can use to process this large data set? Thanks!

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I would look at this question: stackoverflow.com/questions/1972172/… I've used Shepard interpolation before with success and it might work for you. –  Yann Aug 15 '11 at 18:22

I tried to reproduce your errors without success. Are you on a 32 bit system? I had problems with scipy/numpy and large arrays so switched to 64 bit, and have had no problems since then.

Here's the code I used to try to reproduce your error (it will generate nothing useful, but should at least experience the same errors):

``````y,x=indices([2048,2048],dtype='float64')
z = randn(2048,2048)
yr = y + randn(2048,2048)
xr = x + randn(2048,2048)
zn = griddata(xr.ravel(),yr.ravel(),z.ravel(),x,y)
zl = griddata(xr.ravel(),yr.ravel(),z.ravel(),x,y,interp='linear')
``````

This works on my machine.

If you can't run a 64 bit version of python (which can be difficult depending on what OS you're using), could you break your 2048x2048 grid into 4 1024x1024 grids?

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