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Dimitris Skarlatos
Figure 4. The application of the double image checking algorithm, with 7x7 fixed template size.
Since this is a first report, other types of photography are to be used, with different scales and resolutions. Close range
images will be used when the initial approximation problem would have been addressed. Combinations over the
proposed methods in order to find the best way to match images without any a priori knowledge (relative orientation),
with the highest reliability factor are the next step. Theoretically the re weighting in conjunction with adaptive template
to be a good solution and therefore research will be focused towards that direction. Computational effort is no object
since computer power raises geometrically.
Check could also facilitate the affine parameters (Baltsavias, 1991) in terms of rotation, scale and xy distortions. In
such case application of thresholds on these parameters should be avoided and an adaptive algorithm should be used.
Other LS parameters which should be adapted automatically are:
- the window search area,
- the use of less than 8 parameters in each point,
- dynamically reducing the parameters by fixing those which do not change a lot (research is already being done on
this subject, but results haven't been analyzed yet),
- the maximum number of iterations,
- the minimum corrections in affine parameters to end the iterations
It is expected that the use of the epipolar geometry would strengthen the matching.
In author's opinion the LS method is still alive; all it needs is a little refinement (Skarlatos, 1999).
ACKNOWLEDGEMENTS
The author would like to acknowledge the financial support from State Scholarship Fundation.
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