# How can I interpolate array from spherical to cartesian coordinates with Python?

I have an array of density values in spherical coordinates. More specifically I have an array called density with shape (180,200,200). I also have an array called r_coord, theta_coord and phi_coord also with shape (180,200,200) being the spherical coordinates for the density array.

I would like to map this density to cartesian coordinates using python. I will need therefore a new density2 which is interpolated over cartesian coordinates x_coord, y_coord and z_coord. I found scipy.ndimage.interpolation.map_coordinates which looks promising but I can't figure out how to get it to work.

Any help would be appreciated. Thanks.

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Please see stackoverflow.com/questions/4116658/… for possible pointers on how to do this. – hd1 Feb 12 '13 at 3:50
Interpolation here is the tricky part, not the coordinate transformation (which is what the comment above refers to). imho, OP is correct to suggest on of the nd interpolation routines. – tom10 Feb 12 '13 at 19:08

Something like this should work:

``````import scipy.interpolate
rflat=scipy.array( r_coord.flat )
tflat=scipy.array( theta_coord.flat )
pflat=scipy.array( phi_coord.flat )
coordpoints=scipy.concatenate( [ rflat[:, scipy.newaxis], tflat[:,scipy.newaxis], pflat[:,scipy.newaxis] ] , axis=1 )
rtpinterpolator=scipy.interpolate.linearNDInterpolate( coordppoints, density.flat )

def xyz2rtp( x,y,z):
r=scipy.sqrt( x**2+y**2+z**2)
t=scipy.acos( z/r )
p=scipy.atan2( y, x )
return (r,t,p)

# now you can get the interpolated value for any (x,y,z) coordinate you want.
val=rtpinterpolator( xyz2rtp( x,y,z) )
``````

Key points:

• Use the existing scipy multi-dimensional interpolation,
• convert the `xyz` coordinates to `rtp` when you pass it in to the interpolator.
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