justification, and it is difficult to see why this trick should be so
effective. On the contrary, it is a simple matter to construct image
pairs, where the wrap-around effects will cause an erroneous
determination of the matching parameter. An example is when there is a
trend in the grey levels in the direction of translation of the
images. Due to wrap-around, the image borders will then generate a
persistent discontinuity at right angles to the direction of the
trend. In the presence of noise, the effect on the matching parameter
u of factual details in the images is weakend. When the noise is
strong enough, the method breaks down with the result that jy « O.
An obvious approach is to eliminate a linear function from the images
before performing the matching. However, while this elimination will
remove the discontinuity at the image boundaries, it will also
eliminate trends in the images which belong to the factual
information. This procedure therefore appears to be rather arbitrary.
Also, when the image pairs used here were rematched after eliminating
a linear trend, the results where not convincing. The preliminary
calculations using the maximum entropy spectrum are more promising.
Work will therefore be concentrated on investigating the properties of
this method.
CONCLUSIONS
All the tests in this investigation involve the phase information
contained in the Fourier spectrum in one way or the other. The idea is
of course, that there exists a unique functional dependence between
phase differences and translation. In the absence of noise, this is a
correct notion for images of infinite extent, and also for the
unrealistic case of cyclic translation of finite images. It has been
demonstrated that for image pairs consisting of aerial photographs of
finite size, the wrap-around effects and effects of noise in the phase
components are so strong that the functional dependence between phase
differences and translation is almost completely spoilt.
However, maximum entropy methods were found to be promising both from
a theoretical point of view and from investigations on synthetic
images. Work along these lines is therefore continued.
REFERENCES
1. Kuglin, C. D., Hines, D. C.(1975): The Phase Correlation Image
Alignment Method. Proc. IEEE Int. Conf. on Cybernetics and Society,
p163.
2. Pease, M. (1965): Methods of Matrix Algebra. Academic Press, New
York.
3. Ulrych,.T. J., Bishop, T. N. (1975)::;; Maximum: Entropy Spectrum
Analysis and Autoregressive Decomposition, Rev. Geophys. Space Phys.,
vol 13, p183.
4. Ulrych, T. J., Jensen, O. G. (1974): Cross Spectral Analysis by
using Maximum Entropy, Geophysics, 39, p353.
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