Figure 4 - The statue surveyed
5. THE SURVEY OF A SCULPTURE
The above procedure has been applied to the
determination of the digital surface model of a sculpture
(see Fig. 4), as mentioned in the introduction.
For the whole survey, 108 images have been acquired
and 11 of the 150 targets used were determined by
theodolite survey with an accuracy of 1/10 mm on all
coordinates.
The functioning of the proposed method has been tested
with only 10 images, each containing on average 14
targets, covering the sculpture's head.
Control points were available only in the front part of the
body. The 10 images were successfully tied together. All
targets were automatically localized and measured on
the images, while the control points were labeled by the
operator (see Table 5).
Looking in all possible sets of three images, thanks to
the epipolar constraints, the coordinates of additional tie
points were determined (see Table 6).
image n. 10
targets 9
numbered 3
Table 6 - Results of the target location procedure for
group 1 (in dark cells)
Each of the four remaining images has been linked to
one of the three sets of group 1, by manual identification
of the minimum number of common targets.
Correspondencies between the targets on the new
images and the images of group 1, were automatically
found (see Table 7). Including these new observations, a
new bundle adjustment have been run, improving the
exterior orientation.
image n. 10
targets 9
numbered 8
image n. 1 2 3 4 5 6 7 8 9 | 10
targets 171.16 | 14 | 14 | 14-12} 15 | 16 | 16 | 9
c. points 6 T 6 6 4 4 | 6 6 4 | 3
Table 5 - Number of targets and control points
in the test images.
Three pairs of images (group 1) were selected out of the
whole group, which contained at least 3 c.p. and 3 tie
points; a bundle adjustment has been computed,
providing the approximate exterior orientation.
Table 7 -Results of target location on the whole set
6. FINAL REMARKS AND PERSPECTIVES
The results shown above confirm that the implemented
procedure is effective in speeding up the measurement
of tie points for image orientation. Many developments
can be still introduced either robustifying the algorithms
or improving the user-interface.
The search for the approximate orientation may be
simplified and made capable of dealing with strong
convergent cases.
At present the procedure runs over all possible sets of
three images to search for additional target
correspondencies. This is still acceptable with a small
number of images, but the combinations grow
exponentially: therefore we need to discard all sets
whose images cannot share, on the basis of the exterior
orientation, any common target.
Aknowledgements
The authors are grateful to Carl Zeiss GmbH and to
Dipl.-Ing. Torsten Kludas for making available the
images used in this work. Many thanks go also to Dr.
Sergio Grassi for his support in program developments
under X-Windows.
References:
Ayache, N., 1991. Artificial vision for Mobile Robots. MIT
Press, Boston, U.S.A..
Baltsavias, E.P., 1991. Geometrically Constrained
Multiphoto Matching. Mitteilungen N. 49, Institute of
Geodesy and Photogrammetry, ETH, Zurich,
Switzerland.
522
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B5. Vienna 1996
Balts:
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