From a study of formula (31) it becomes evident that the feasibility of
the proposed solution depends on the possibility of inverting a more or less
large matrix of normal equations. In special applications of photogrammetry,
such as laboratory measurements, ballistic measurements, terrestrial appli-
cations and, more recently, cadastral surveying, using airborne photography,
the single model still plays & dominant role. The total number of unknowns
in such cases may very well be within the limits which today can be reduced
by inverting the corresponding normal equation matrix. However, depending on
the number of relative control points considered essential in order to satisfy
the requirement for redundant information and on the type of the electronic
computer available, there will arise in many photogrammetric applications the
problem of treating numbers of unknown parameters exceeding the computational
capacity for reduction by direct inversion. For such cases, it is desirable,
however, to maintain the advantages of the systematism and simplicity described
earlier in forming the observational equations and the corresponding normal
equations. Consequently, the solution to our problem must concern itself with
methods for determining the roots of a normal equation system of the type shown
in formula (31).
B. A Solution by Partitioning
In order to further reduce the number of unknowns in the normal equation.
system obtained in formula (31), we split the B matrix and the A vector in
Such & way that one group is associated with the model and the other group with
the camera orientations. We denote the corresponding submatrices and subvectorg
by Bx»Bo and Ay and Ay , respectively, With these notations we can
present the system of normal equations (31) as follows:
[B CaP""AT Y! Bax [B CAP" A Y' Bo]ao s BL CAP AY B G9)
C A the a EE Rr Re ABERHAN SE NIRE AA AU EY ENUAR AR Ro A SR oru RReREER ROLE £D
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