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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol XXXV, Part B7. Istanbul 2004
Actually these numeric derivative values {g, , gy, 8, are x-y-z
components of the local surface normal vector at that point.
|2e" Og" ag"
Ta | ax y. Oz je li n c]
n [Ve | r | Vg | co rash (23)
In the case of representation of search surface elements as
parametric bi-linear surface patches, which are constituted by
fitting the bi-linear surface to 4 neighboring knot points P;;:
G(u, w) : Po (L- u)(1— w)-* Pj, (1 -u)w P, ou(1 7 w) * P,,uw
(24)
2 ~ 3 . .
where u,w € [0,1] and G, Pi € JV. Again the numeric
derivative terms {g, , g, , g,} are calculated from components of
the local surface normal vector on the parametric bi-linear
surface patch:
__ AG(u.w) 3G(u,w)
PT LEO D (25)
; [va Iva]
With this approach a better a posteriori sigma value could be
obtained due to a smoothing effect. In the case of insufficient
initial approximations, the numeric derivatives 1g: gy. 2, can
be calculated on the template surface patch f(x,y,z) instead of on
the search surface g(x,y,z) in order to speed-up the
convergence.
2.2 Precision and Reliability Issues
The standard deviations of the estimated transformation
parameters and the correlations between themselves may give
useful information concerning the stability of the system and
quality of the data content (Gruen, 19852).
^
0, 2 0,4 doo: vi EAL ty fm eq Ki, de Q6)
As pointed out in (Maas, 2000), the estimated standard
deviations of the translation parameters are too optimistic due to
stochastic properties of the search surface.
Because of the high level redundancy of a typical data
arrangement, a certain amount of occlusions and/or outliers do
not have significant effect on the estimated parameters.
Baarda’s data-snooping method can be favourably used to
localize the occluded or gross erroneous measurements.
2.3 Computational Aspects
The computational complexity is of order O(N?), where N is the
number of employed points in the matching process. The actual
problem is to search the correspondent element of the template
surface on the search surface patch, whereas the adjustment part
is a small system, and can quickly be solved using back-
substitution followed by Cholesky decomposition. Searching
the correspondence is an algorithmic problem, and needs
professional software optimization techniques and programming
skills, which are not within the scope of this paper.
Since the method needs initial approximations of the unknowns
due to the non-linear functional model, one of the methods for
pre-alignment in the literature (Habib and Schenk, 1999,
Murino et al., 2001, Lucchese et al., 2002, Vanden Wyngaerd
and Van Gool, 2002) should be utilized.
963
Two 1* degree C" continuous surface representations are
implemented, and explained in detail. In the case of multi-
resolution data sets, in which point densities are significantly
different on the template and search surface patches, higher
degree C' continuous composite surface representations, e.g. bi-
cubic Hermit surface (Peters, 1974), should give better results,
of course increasing the computational expenses.
2.4 Convergence of Solution Vector
In a standard LS adjustment calculus in geodesy and
photogrammetry, the function of the unknowns is unique,
exactly known, and analytically continuous everywhere, e.g. the
collinearity equations in the bundle adjustment. Here the
function g(x,y,z) is discretized by using a definite sampling rate,
which leads to slow convergence, oscillations, even divergence
in some cases with respect to the standard adjustment. The
convergence behaviour of the proposed method basically
depends on the quality of the initial approximations and quality
of the data content, and it usually achieves the solution after 4^
or 5" iterations (Figure 1), as typically in LSM.
dp;/c;
omg S omg
Z0
100 S
kap~ à kap
X Z0 -.
0 ent mE an: a
X0
-100+
| phi/ phi
| YO xo/ lvo iterations
L- ii M
HR A a 4 13 2559 do 5i, quiis
(a) (b)
Figure 1: Typical examples for fast convergence (a) and slow
convergence (b). Note that scale factor is fixed to unity.
3. THE EXPERIMENTAL RESULTS
Two practical examples are given to show the capabilities of the
method. All experiments were carried out using own self-
developed C/C++ software that runs on Microsoft Windows®
OS. Processing times given in Table 1 were counted on such a
PC, whose configuration is Intel® P4 2.53 GHz CPU, 1 GB
RAM. The first example is the registration of three surface
patches, which were photogrammetrically measured 3D point
clouds of a human face from multi-images (Figure 2). For the
mathematical and implementation details of this surface
measurement method the author refers to (D'Apuzzo, 2002).
Left and right search surface patches (Figure 2-a and 2-c) were
matched to the centre template surface patch (Figure 2-b) by use
of LS3D. Since the data set already came in a common
coordinate system, the rotation angles (w,p,k) of the search
surfaces were deteriorated by ~10% in the first iteration.
Numerical results of the matching of the left surface and the
right surface patches are given at parts I-L and I-R of Table |
respectively. Relatively high standard deviations for the
estimated t, and ¢ (note that high physical correlation between x
and © due to a conventional axes configuration) exhibit the
narrow overlapping areca along the x-axis, nevertheless the
matching result is successful. The estimated o, values prove the
accuracy potential of the surface measurement method, given as
0.2 mm by D'Apuzzo (2002).