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arranging the projective centers in a square (-> intersection
of epipolar lines) or on a line (-> double verification of
possible matches). Such an arrangement will lead to a
reduction factor of at least 100 and almost press the number
of remaining ambiguities against zero. An extension to an
arbitrary number of cameras is also possible but will rarely
be necessary.
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Figure 11: Intersection of epipolar lines in a four-camera
arrangement
All the above considerations are only valid for targets
randomly distributed in space without a continuous surface.
Not randomly distributed targets, e.g. regular dot patterns
projected onto a surface to generate an artificial texture
(Maas, 1991) may lead to no overlapping targets but much
larger numbers of ambiguities, if the pattern is oriented in a
way that it is parallel with the epipolar lines in one or more
images.
3. Results
To test the method it has been applied to simulated datasets
and in several real experiments under various conditions
with good success. In the particle tracking velocimetry
experiments a maximum of about 1000 instantaneous
velocity vectors could be determined with a three camera
setup. To achieve a much higher yield seems to be difficult
with current CCD-sensor resolution mainly due to image
quality and because the number of overlapping particles
becomes too large. A two camera system could only give
reliable results if the number of particles in the test section
and the depth range (i.e. the thickness of the illuminated
layer in the water) were strictly controlled. A sample result
of particle tracking velocimetry with three cameras is
shown in Figure 12
A much higher spatial resolution was achieved when prob-
lems with overlapping targets or with ambiguities in
tracking could be avoided; in an application of surface
measurement with a regular dot pattern projected on a
surface of an industrial object which did not show any
natural texture (Maas, 1991) it was possible to establish
correspondences between more than 5000 discrete points
per image of 720 x 574 pixels.
Gc MOM 4
Is E AU. C sl AR t V
~~ : &, 7 MA i] Vi
À Wed !* Mf E
bd ma rd di ap
ve Xm eit,
Figure 12: Example results (0.5 sec. flow data in a stirred aquarium)
References:
1. Adrian, R., 1991: Particle-Imaging Techniques for Ex-
perimantal Fluid Mechanics. Annual Review of Fluid
Mechanics, Vol. 23
2. Kearney, J.K., 1991: Trinocular Correspondence for
Particles and Streaks. Dept. of Computer Science, The
University of Iowa, Technical Report 91-01
3. Lotz, R., Fróschle, E., 1990: 3D-Vision mittels Stereo-
bildauswertung bei Videobildraten. 12. DAGM-Sympo-
sium Mustererkennung, Informatik Fachberichte 254,
Springer Verlag
4. Maas, H.-G., 1990: Digital Photogrammetry for Deter-
mination of Tracer Particle Coordinates in Turbulent
Flow Research. ISPRS Com. V Symposium “Close
Range Photogrammetry Meets Machine Vision", 3.-7.
September 1990, Zurich, Switzerland, published in
SPIE Proceedings Series Vol 1395, Part 1
5. Maas, H.-G., 1991: Automated Surface Reconstruction
with Structured Light. Int. Conference on Industrial Vi-
sion Metrology, Winnipeg, July 11-12, SPIE Proceed-
ings Series Vol. 1526
6. Maas, H.-G., 1992: Complexity analysis for the deter-
mination of dense spatial target fields. 2nd International
Workshop on Robust Computer Vision, March 9-12,
Bonn, Germany
7. Papantoniou, D., Maas, H.-G., 1990: Recent Advances
in 3-D Particle Tracking Velocimetry. Proceedings 5th
International Symposium on the Application of Laser
Techniques in Fluid Mechanics, Lisbon, July 9-12