# How to interpolate from nonuniform 2D locations to regular grid?

I have nonuniformly located samples of an image, and would like to interpolate to a regular grid because (among other things) most image graphics functions expect a regular grid. I notice there are some MatLab functions (see Image interpolation from random pixels for example) which apparently will do this, but couldn't find an R-package that does.
Here's a simple example.

#make up some 2D func
y<-matrix(rep(1:10,10) -.5 + runif(100),nrow=10)
x<-matrix(rep(1:10,10) -.5 + runif(100),nrow=10)
inmat<-sin(x) + cos(y)

So the values of inmat are on random locations. I want some sort of outmat<-interpolate(inmat,x,y,gridx,gridy) function where inmat , x,and y are either all matrices or all vectors (unwrapped matrices).

I see also that SciPy has http://docs.scipy.org/doc/scipy/reference/generated/scipy.interpolate.interp2d.html which does this. Is there such a function in an R package or do I need to port from SciPy or MatLab code?

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–  Andrie Sep 30 '13 at 13:03
possible duplicate of Plotting interpolated data on map –  Spacedman Sep 30 '13 at 13:17
@Andrie thanks-- I am looking at the akima::interp function and will report back. –  Carl Witthoft Sep 30 '13 at 13:27
I'm not sure the autoKrige answers at the linked questions will do what I want, as the Krige functions appear to require a linear dependence on the input coordinates, whereas here I have a completely random set of ordered pairs. I may simply be undereducated as to the use of autoKrige . –  Carl Witthoft Sep 30 '13 at 15:17