# Is there an image phase correlation library available for Python?

A project that involves image processing, i.e. to calculate the angular shift of the same image when shifted by a medium of certain Refractive Index. We have to build an app that correlates the 2 images (phase/2D correlation?) and then plot using Chaco and Mayavi (2 libraries in Python). Is there any other existing template software (FOSS) that we can base our app on, or use it as a reference?

-

using scipy this should be a one-liner (although you can probably avoid the ndimage package)

``````from scipy.fftpack import fftn, ifftn
corr = (ifftn(fftn(a)*ifftn(b))).real
``````

assuming you've managed to read your original images into numpy arrays a & b. If it's 2D images mayavi might be a bit overkill, and it would probably be easier to use matplotlib than chaco. If using matplotlib, you could do the whole lot with

``````from pylab import *
corr = (ifftn(fftn(a)*ifftn(b))).real
imshow(corr)
``````
-

Scipy contains many image processing routines in its scipy.ndimage package.

-

Phase correlation as described by http://en.wikipedia.org/wiki/Phase_correlation, taken from https://github.com/michaelting/Phase_Correlation/blob/master/phase_corr.py.

``````def phase_correlation(a, b):
G_a = np.fft.fft2(a)
G_b = np.fft.fft2(b)
conj_b = np.ma.conjugate(G_b)
R = G_a*conj_b
R /= np.absolute(R)
r = np.fft.ifft2(R).real
return r
``````

Here is an example: We take two similar images, but of different phases and plot the phase correlation (a black image with a single white dot at the appropriate phase difference).

``````from scipy import misc
from matplotlib import pyplot
import numpy as np
#Get two images with different phases
im1 = misc.lena()
im2 = np.zeros_like(im1)
im2[:200,:200] = im1[-200:, -200:]
pyplot.imshow(phase_correlation(im1, im2), cmap='gray')
pyplot.show()
``````
-
Just some practical advice, remember to first apply appropriate windowing on the input images. See 2D Hamming or gaussian windows stackoverflow.com/questions/7687679/…. – Simon Streicher Nov 3 '14 at 9:38