I found simple code in python for image registration here

in simple case of translation we have:

def translation(im0, im1):
    """Return translation vector to register images."""
    shape = im0.shape
    f0 = fft2(im0)
    f1 = fft2(im1)
    ir = abs(ifft2((f0 * f1.conjugate()) / (abs(f0) * abs(f1))))
    t0, t1 = numpy.unravel_index(numpy.argmax(ir), shape)
    if t0 > shape[0] // 2:
        t0 -= shape[0]
    if t1 > shape[1] // 2:
        t1 -= shape[1]
    return [t0, t1]

but I don't understand this part:

if t0 > shape[0] // 2:
    t0 -= shape[0]
if t1 > shape[1] // 2:
    t1 -= shape[1]

also it gives wrong shift sometimes, so it seems that output of t0,t1 depends on some cases? Maybe it because I have only overlap between images?


Also here is my tests using other tools:

For lion img from wikipedia (pure shift)

http://dl.dropbox.com/u/8841028/FFT%20template%20matching/test%20images/im1.png http://dl.dropbox.com/u/8841028/FFT%20template%20matching/test%20images/im2.png

ImageJ gives (second stack relative to first stack) x= -20 y= -23 R= 0.8126828943265368 (good)

phaseCorrelate gives x= 20.19 y= 22.56 (it gives shift first image relative to second image or something wrong?)

no hann window x= 20.23 y= 22.43

python code x= -22 y=- 14

test template matching for lion and lion head croped at (1,1)

http://dl.dropbox.com/u/8841028/FFT%20template%20matching/test%20images/im2.png http://dl.dropbox.com/u/8841028/FFT%20template%20matching/test%20images/temp_1_1.png

ImageJ gives (second stack relative to first stack) x= 0 y= 1 R= 0.7905318337522524 (failed 1 pix)

phaseCorrelate gives x= -0.4 y= -2.45 (not accurate and again opposite direction)

no hann window x= -0.88 y= -0.86

same but croped at (18,23)

http://dl.dropbox.com/u/8841028/FFT%20template%20matching/test%20images/im2.png http://dl.dropbox.com/u/8841028/FFT%20template%20matching/test%20images/temp_18_23.png

ImageJ gives (second stack relative to first stack) x= 17 y= 23 R= 0.8119669906973865 (failed 1 pix)

phaseCorrelate gives x= -18 y= -23 (good but opposite direction)

no hann window x= -18 y= -22.98

test image divided to 2 images with % overlap (no noise, no distortion)

http://dl.dropbox.com/u/8841028/FFT%20template%20matching/test%20images/1.png http://dl.dropbox.com/u/8841028/FFT%20template%20matching/test%20images/2.png

(second stack relative to first stack) x= 744 y= 0 R= 0.9999999999999999

phaseCorrelate gives x= -743.48 y= 0 (opposite direction)

no hann window x= -743.49 y= 0

test on real data

http://dl.dropbox.com/u/8841028/FFT%20template%20matching/test%20images/1_.PNG http://dl.dropbox.com/u/8841028/FFT%20template%20matching/test%20images/2_.PNG

ImageJ gives (second stack relative to first stack) x= 878 y= -3 R= 0.9667271264277764

phaseCorrelate gives x= 34.47 y= -35.5 (wrong)

no hann window x= 146.32 y= 3.06 (wrong)

opencv 2.4.3(prebuild) code that I used.

#include "stdafx.h"
#include <opencv.hpp>

using namespace cv;
using namespace std;

int _tmain(int argc, _TCHAR* argv[])
    Mat im1= imread("1.PNG",0);
    Mat im2= imread("2.PNG",0);

    Mat r1;
    Mat r2;

    Point2d phaseShift;

        int n_cols= max(r1.cols,r2.cols);
        int n_rows= max(r1.rows,r2.rows);

        Mat r1_pad;
        copyMakeBorder(r1,r1_pad,0,n_rows-r1.rows,0,n_cols-r1.cols, BORDER_CONSTANT, Scalar::all(0));
        Mat r2_pad;
        copyMakeBorder(r2,r2_pad,0,n_rows-r2.rows,0,n_cols-r2.cols, BORDER_CONSTANT, Scalar::all(0));

        Mat hann;
        createHanningWindow(hann, r1_pad.size(), CV_64F);
        phaseShift = phaseCorrelate(r1_pad, r2_pad, hann);
        Mat hann;
        createHanningWindow(hann, r1.size(), CV_64F);
        phaseShift = phaseCorrelate(r1, r2, hann);

    return 0;
  • what do you do in ir = abs(ifft2()f0 * f1.conjugate() /...) ? I think if you do f1.conjugate() that's because there is a link between f0 and f1, so it means there is a link between im0 and im1. – Stephane Rolland Apr 30 '13 at 8:30
  • See reference #2 for the relationship of shift values and image shift directions. – cgohlke Apr 30 '13 at 8:34
  • Just tried: except for the last test case imreg.translation correctly registers all images. In the last test case the overlap is too small and if t1 > shape[1] // 2: t1 -= shape[1] apparently should not be applied. The reference #2 mentions a minimum required overlap of 30%. – cgohlke Apr 30 '13 at 16:52
  • 2
    For anyone interested, the code by @cgohlke has became the foundation of the imreg_dft Python module, which is supposed to expose the functionality in a more rounded form. – bubla Feb 27 '15 at 20:50

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