MS EE RE
rte EEE ro
which convert to
1/9 = 02 ( h1’2 + h2’2 + h1"2 + h2"2 ), (2.3.1)
if the a priori variances ox? - oy? = 02 of the
measured coordinates are equivalent. Adjustment and
error computation correspond therefore to the rules
of customary adjustment of weighted observation
equations. In this way, also more than eight points
can easily be used for image correlation without
adjustment of the calculation of Z where the con-
dition det(Z)=0 must be obeyed (Haggren and Niini
1990). Thus Z can only deliver approximate values
of relative orientation.
The results of the adjustment will be the solutions
da'Tz(dé'dX?), da''z(dQ"de"dK")
and the matrix of dispersion
Qui Qı2
Sa = 02Q = ©? ; (2.3.2)
Qu27 Q22
containing instead of the estimate s? the known a
priori variance c? and the submatrices Q11 be-
longing to P' and Q22 belonging to P". Q2 in-
dicates the stochastic correlation between the
images, which influences the reconstruction of the
model but not the transformations into the normal
case. Hence the dispersion of the rotation P'--»Py'
will be
0 0 0 0 0 0
Sa’= 02 = 02Qa’ = 0 Oeo Ook
0 Qi 0 Gek OkkK
and of the rotation P"-->Py"
One Ope Ook
Sa’ = 0?Q22 = 02Qa" = | Ope 000 Ook
OQK OK OKK
3. NORMAL CASE
3.1 Transformation
By means of the calculated elements of relative
orientation, the transformation (1.1.4) will yield
image coordinates xw of the normal case. Using now
eight points xu for a correlation of the trans-
formed images, the result must be, because of
R’=R"=E, the easily predictable matrix
0
ZN-CN-EBEZ-E 0. —
1
ooo
Oo =O
m
u
ooo
O + O
0
Ü -
1
as a global check of the whole procedure. The
detailed test may be performed by the inverse
transformation x = tR'xu from the normal case to
the real situation or analogous to (1.1.5)
1. XN J.xn
and y s -C
K. XN K. XN
(3.1.1)
x = -C
These formulas will be needed also for the inevi-
table transformation of pixels from the normal to
the original images in connexion with the inter-
polations of grey levels by resampling.
The search for homologous points (pixels) is to be
executed now in P’ along the epipolar line h’.x’= 0
with
704
o 0.0 X 0
h’= Cux” = | O0 0-1 yd zc is
0 1:0 {{-c y"
i.e. cy? - cy" z D (3.1.2)
or y'zy"'zy and in P" along the epipolar line
h".x"z 0 with
0 00 lix' 0
h"z OTx' = 0 O0 1 y*I z-lc |,
0 +40 |=c y?
1l.o. "— cy" 4 cy' =z 0, (3.1:3)
hence y'zy"zy too. This implies that, of course,
all homologous points are situated at identical
parallel epipolar lines in the very same plane
(Haggren and Niini 1990).
3.2 Propagation of errors concerning transformation
The influence of small variations onto (1.1.4) is
implicitely given by
dtXN + TdXN = TdAXN + Rdx
or in scalar notation after regrouping
e1.dx - xudt
e2.dX - yudt
es.dx * cdr.
T( dxN + yNdK + cdé )
T( dyn —- xndK - cd)
T( xnd® - ynd2 )
dt can be eliminated by the third equation and,
considering Tt=-e3.x/c from the third component of
(1.1.4), the differential relation
dxn = Bada + Bxdx, (3.2.1)
with
1 XN YN -C2+xn2 -ynC de
Bada-—— dé
c | c?*yu? —XN YN XNC dK
and
1 XNis+ci1 XNj3+Cj1 dx
Bxdx= dy
es.x| ynis+ci2 YNj3+Cj2
results, where Ba contains the well-known co-
efficients of small rotations and Bx indicates the
influence of small coordinate shifts in the origi-
nal image. If these differential movements are
stochastic quantities, the uncertainty of xw re-
sults from the expectation Sn=E{dxndxnT} (Pelzer
et al. 1985) because of E(dadx')zO (da and dx are
independent!) as
E((Bada)(Bada)') + E{(Bxdx)Bx dx)T } =
BaE(dada' )Ba? + BxE{dxdxT}BxT =
BaSaBaT + BxO2EBxT =
02 (BaQaBaT + BxBxT). (3.2.2)
SN
Assuming that the original images are very close to
the normal case, i.e. R * E , the second part of
Ig)
M
nn -—
(3.2.2) converts ause of e3.X--c and
cC
1 Cau 0
Bxdx = —
C 0 c
LD,
to BxBxT=E. In this case, the uncertainties of the
coordinate measurement add directly to the un-