resize using fractional step in numpy

how can I modify the size of a numpy array with a non-integer step? that is: To convert a 3D array with size (64,64,64) into a 3D array for example with size (55,100,60), interpolating the values or using something like kron function

-

How do you want to interpolate?

There's no "best", "right", or "normal" way to interpolate data... It all depends on your problem.

There are a large number of different ways to do what you want.

A starting point would be `scipy.ndimage.zoom` which can use spline, linear, or nearest-neighbor interpolation, and does exactly what you want.

Specifying `order=0` will give nearest-neighbor interpolation, `order=1` will give linear interpolation, and anything greater than 1 will give the specified order of spline interpolation. (The default is `order=3`, which is "cubic spline" interpolation.)

In your case, it would be:

``````new = zoom(data, (55/64.0, 100/64.0, 60/64.0), order=typeofinterpolationyouwant)
``````

You'll also need to consider how you'd like the boundaries handled. The default is to treat any values outside the original array as 0. With spline interpolation, this commonly leads to strong artifacts near the edges of the array.

-
Thank you so so much. It´s exactly what I was looking for and I didn´t was able to find... I need diferent interpolations or filters depending on the case, but I think this function will be perfect for me. – Fernando Mañeru Cámara Apr 4 '12 at 6:16