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The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B5. Beijing 2008
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Figure 9. Iterative solutions for the transformation parameters
in (a). ” David_2 vs. David 1” and (b).” Ivanl vs. David 1”.
For verification and identification purposes, acquired facial
models were compared to available models. The comparison
procedure required the co-registration of the facial models to a
common reference frame and the matching of the registered
models. The registration algorithm which combines the MIHT
and ICPatch, was used to register and match the two facial
models. Figure 7 and Figure 8 show the co-registration of the
two facial models for a reference facial model Davidl.
The scale factor of the transformation function was fixed in the
experiments because the scale should not substantially differ
between data acquisition epochs. In the experiment ” David_2
vs. David 1”, the iterative solution (Figure 9(a)) for the
transformation parameters revealed smooth and quick
convergence. The estimated RMS of the normal distance
between matching surface elements following the registration
procedure was 0.629 mm. A large percentage of the points (Fig.
7) were classified as matches (93.902%) with the non-matches
mainly occurring around the edges of the facial models. The
results showed a high quality of fit between two surfaces. In the
experiment ” Ivan l vs. David l”, the iterative solution
(Figure 9(b)) for the transformation parameters did not exhibit
a smooth and rapid convergence. The RMS of the normal
distances between the matched elements was 1.715 mm. The
procedure achieved 79.458% of matched points (Fig. 8).
Compared with ” David_2 vs. David l”, the results here
showed a lower quality of fit between two surfaces.
4. CONCLUSION
This research presented a system for automated matching of
facial models using a low-cost photogrammetric stereo system
with pattern projection. The experimental results showed that,
after calibration, low-cost digital cameras can reconstruct 3D
facial models, and then facial model registration can be
performed effectively. The proposed system has great potential
for various applications such as surveillance, plastic surgery
and personal verification. Because seven locations were
sequentially imaged, movement of the subject may have
produced errors. In the future, development of a system with
multiple cameras, which can be controlled to capture images
simultaneously, would improve both accuracy and matching
without motion effect. Some limitations of the system are
acknowledged. Certain surface details such as the hair and
beard cannot be properly acquired by this system.
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