den ten nee
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part BS. Istanbul 2004
in elevation. These results seems somehow too good, so we
want to review the likelihood of the image point distribution in
the simulation, especially as far as the number of ray per image
is concerned. Anyway, if the trend will be roughly confirmed,
some conclusion can be drawn: using GPS code solution should
not help much, since the accuracy of this solution, under the
extreme condition (4 satellites, poor signal reception) we are
considering, cannot be expected to be better than 10 cm. On the
other hand, 50 cm is well within the tolerance of points taken
by 1:2000 maps, but too small for the average accuracy of
1:5.000 maps for the planimetry. Since 1:2.000 maps are
restricted to urban areas, also this method may not lead to
significant improvements of the length of the recoverable loss
of lock.
5. CONCLUSIONS AND FUTURE WORK
Though we cannot claim a verified accuracy level, we are
confident that the proposed methodology, as shown in the test
images, is capable to achieve reliable result, at least for short
sequences. Since to ensure a good motion estimation good
interest points well distributed in the scene are necessary, the
method may work well especially in sub-urban environments,
where buildings and man made objects make the tracking
process easier and the loss of lock should be short in time.
There are still a few steps of the process where there significant
improvements are possible and necessary. The most important
is the evaluation of the putative correspondences: based just on
a disparity threshold, is quite rudimental and spends a lot of
computation power providing results of different quality
depending on the scene characteristics. Since an important
problem is still to find correspondences in the bottom part of the
images, the use of a LSM algorithm may possibly allow to
incorporate more points at the image bottom, where scale
changes more dramatically between pair of frames. Introducing
a further guided matching, once the camera pose is correctly
estimated, in order to gain more correspondent points, it's not
unreasonable. Since finding points on the paved road surface is
not too easy due to the difficulty to adjust to changing lightning
conditions and shutter speed, another possible improvement is
to apply some sharpening filter such as the Wallis filter.
Finally, the management of the various blocks may be
optimized considering different schemes and made more
flexible.
As already mentioned, the first step will be to come up with
figures on the accuracy of the reconstruction in object space.
This may also put some light on the possibility to use the
procedure for improvement of the exterior orientation computed
by GPS only. To this aim, the GPS solution will provide initial
values to speed up the search for correspondences, while the
trifocal geometry will serve as filtering of outliers. Finally, an
integrated bundle block adjustment including the GPS solution
as pseudo-observed values may provide an improved block
geometry.
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