point. This procedure will therefore rut out the
variance due to common parameters, mainly the
uncnspensated systematic errors in the two processes,
leaving only the component due to the error of the
approximation in the variante. fbvigusly, this
should be of a lower order of magnitude, In
photograæmetry, es control point information is
usually available and as its accuracy i5 generally
higher, it can be used as a control variate, This
sage idea can be further extended to other known
control points also, thus giving rise to the concept
of a sulti-control variable (MOV) technique, An
attempt is made to present this extended application
into the popular area of rlose-range photogramsetry
in this paper,
2. THE MULTI-CONTROL VARIATE (NCV) METHOD
The idea of a single-conirol variable Monte Carlo
technique for reduction of variation of observations,
which thereby increases the precision of the
estimate, can be readily extended to a sultiple
control variates technique. The basic conputationsl
concept to be used in this aultiple case is explained
in a nutshell in /Kobayashi, 1981), Following this
concept, we proceed to define a new random variable
I
748) = VIR) - bi d OG CEDE D, del2546,
R: randos nuaber (ros the sireas used. —..,12.1)
14 © denotes the covariance matrix of
lor Inbal. 00% & MH © denotes the cross
covariance vector between Y and 1;
ist DR tit, 0 hitdfseueg el
soi LE Dov 8 po 3 wh. i28
thes the optimal value Bo for H - [b1,b2,,..,bh3 is
ke = & -1 re 0,4
which leads to
Var{l} = Vari) -C G -1 CT 5 VarlY3U -R2YX)
©
„en.
Where RY) ic the multiple correlation coefficient
between Y and X, The square of the correlation
coefficient is often called the coefficient of
determination, sz it represents the fraction of the
total variation of Y explained by variation nf À,
Here, as ELIJ-EIY), computed value of I is used for
y, The idea behind the aultiple-control variate
variance reduction is similar o regression analysis
(special case nf analysis of covariance}, — However,
in the regression analysis we usually wish to
investigate the power of à set of predictive
variables Y in explaining the variation of a responce
variable Y, whereas in variante reduction by the
sulli-tontrol —variste —sethod, we evaluate the
additional reduction in the variante against the
additional computation involved. We should bear in
mind that it is possible to achieve any desired
reduction of variante hy using the mean of a
sufficiently long sisulation run, i.s,, we could use
the arithaelic aean in place of each observation,
The HCY method has been successfully applied in
studying the queueing systes in industrial oper ations
research. — Referring to Graver, Kobayashi, 1980)
reports that gulti-control variste method (three
control variates only] cuts the variance to about 87
{that is by a factor of 12,5! e£. the initial value,
It ic interesting to note that the Expected value of
7 and Y would still be ihe same when the negative
value before the suamation in eq.2,1 is changed io a
positive sign. This fact has been used to di by
e9,2.1 a& follows;
Zi = VIR) - — bid IR)-EINI3 for hi0 11.12.62]
TIR) = VIR} ¢ hi{¥i GO-EDYME for bio ..,12.6b)
i. A SIMULATION EXPERIMENT RASED ON THE NORMAL CASE
In order to evaluate the polentislities of the MOY
technique, il is necessary ta set up a framework for
the simulation study, This aspect is covered in this
section. In preparing a data set, the true object
space Coordinates were assused and the torresponding
photo coordinates in the left and right photographs
were calculated. The calculated photo coordinates
conform to the ‘normal case ‘ in terrestrial and
close-range photogrammetry, Accordingly, the pf fect
of the tilis and rotations is not included in the
study and hente it results in à certain
approximation, Obviously, the advantage gained 35
the simplicity of the model. Using three different
representative object to caaera distantes, three dats
sete were set up,
400
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B5. Vienna 1996
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