# Scipy interpolation how to resize/resample 3x3 matrix to 5x5?

EDIT: Paul has solved this one below. Thanks!

I'm trying to resample (upscale) a 3x3 matrix to 5x5, filling in the intermediate points with either interpolate.interp2d or interpolate.RectBivariateSpline (or whatever works).

If there's a simple, existing function to do this, I'd like to use it, but I haven't found it yet. For example, a function that would work like:

``````# upscale 2x2 to 4x4
matrixSmall = ([[-1,8],[3,5]])
matrixBig = matrixSmall.resample(4,4,cubic)
``````

``````0,-2,0
-2,11,-2
0,-2,0
``````

I want to compute a new 5x5 matrix ("I" meaning interpolated value):

``````0, I[1,0], -2, I[3,0], 0
I[0,1], I[1,1], I[2,1], I[3,1], I[4,1]
-2, I[1,2], 11, I[3,2], -2
I[0,3], I[1,3], I[2,3], I[3,3], I[4,3]
0, I[1,4], -2, I[3,4], 0
``````

I've been searching and reading up and trying various different test code, but I haven't quite figured out the correct syntax for what I'm trying to do. I'm also not sure if I need to be using meshgrid, mgrid or linspace in certain lines.

EDIT: Fixed and working Thanks to Paul

``````import numpy, scipy
from scipy import interpolate

kernelIn = numpy.array([[0,-2,0],
[-2,11,-2],
[0,-2,0]])

inKSize = len(kernelIn)
outKSize = 5

kernelOut = numpy.zeros((outKSize,outKSize),numpy.uint8)

x = numpy.array([0,1,2])
y = numpy.array([0,1,2])

z = kernelIn

xx = numpy.linspace(x.min(),x.max(),outKSize)
yy = numpy.linspace(y.min(),y.max(),outKSize)

newKernel = interpolate.RectBivariateSpline(x,y,z, kx=2,ky=2)

kernelOut = newKernel(xx,yy)

print kernelOut
``````
-

Only two small problems:

1) Your xx,yy is outside the bounds of x,y (you can extrapolate, but I'm guessing you don't want to.)

2) Your sample size is too small for a kx and ky of 3 (default). Lower it to 2 and get a quadratic fit instead of cubic.

``````import numpy, scipy
from scipy import interpolate

kernelIn = numpy.array([
[0,-2,0],
[-2,11,-2],
[0,-2,0]])

inKSize = len(kernelIn)
outKSize = 5

kernelOut = numpy.zeros((outKSize),numpy.uint8)

x = numpy.array([0,1,2])
y = numpy.array([0,1,2])

z = kernelIn

xx = numpy.linspace(x.min(),x.max(),outKSize)
yy = numpy.linspace(y.min(),y.max(),outKSize)

newKernel = interpolate.RectBivariateSpline(x,y,z, kx=2,ky=2)

kernelOut = newKernel(xx,yy)

print kernelOut
##[[  0.      -1.5     -2.      -1.5      0.    ]
## [ -1.5      5.4375   7.75     5.4375  -1.5   ]
## [ -2.       7.75    11.       7.75    -2.    ]
## [ -1.5      5.4375   7.75     5.4375  -1.5   ]
## [  0.      -1.5     -2.      -1.5      0.    ]]
``````
-
Thanks very much for the speedy solution! That's exactly what I was looking for. I had tried linspace before, but with the wrong formatting and I completely missed kx,ky. –  moski Apr 7 '11 at 20:08

If you are using scipy already, I think `scipy.ndimage.interpolate.zoom` can do what you need:

``````import numpy
import scipy.ndimage

a = numpy.array([[0.,-2.,0.], [-2.,11.,-2.], [0.,-2.,0.]])
out = numpy.round(scipy.ndimage.interpolation.zoom(a, 5./3), 1, order = 2)

print out
#[[  0.   -1.   -2.   -1.    0. ]
# [ -1.    1.8   4.5   1.8  -1. ]
# [ -2.    4.5  11.    4.5  -2. ]
# [ -1.    1.8   4.5   1.8  -1. ]
# [  0.   -1.   -2.   -1.    0. ]]
``````

Here the "zoom factor" is `5./3` because we are going from a 3x3 array to a 5x5 array. If you read the docs, it says that you can also specify the zoom factor independently for the two axes, which means you can upscale non-square matrices as well. By default, it uses third order spline interpolation, which I am not sure is best.

I tried it on some images and it works nicely.

-
Thanks for pointing that out. I hadn't found that function. I'll give that a try too. I wonder what's causing the significant difference in interpolated output values between this nd.image.interpolate.zoom and interpolate.RectBivariateSpline. –  moski Apr 7 '11 at 20:55