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I checked the available interpolation method in scipy, but could not get the proper solution for my case. assume i have 100 points whose coordinates are random, e.g., their x and y positions are:

x=np.random.rand(100)*100
y=np.random.rand(100)*100
z = f(x,y) #the point value calculated by certain function    

now i want to get the point value z of a new evenly sampled coordinates (xnew and y new)

xnew = range(100)
ynew = range(100)

how should i do this using bilinear sampling? i know it is possible to do it point by point, e.g., find the 4 nearest random points, and do the interpolation, but there got to be some easier existing functions to do this

thanks alot!

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1 Answer

up vote 2 down vote accepted

Use scipy.interpolate.griddata. It does the exact thing you need

# griddata expects an ndarray for the interpolant coordinates
interpolants = numpy.array([xnew, ynew])

# defaults to linear interpolation
znew = scipy.interpolate.griddata((x, y), z, interpolants) 

http://docs.scipy.org/doc/scipy/reference/generated/scipy.interpolate.griddata.html#scipy.interpolate.griddata

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My original answer was missing the interpolants argument - it is correct now. –  japreiss May 27 '13 at 18:09
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