which separates the unknown parameter corrections associated with the model
A, from those associated with the camera orientations Ao . Assuming,
as a first step, Ag a null vector, one obtains a Ay vector by a series
of inversions of 3x3 matrices, each of which contains the coordinate cor-
rections of a single control point. Multiplying this Ay vector with the
submatrix; By(AP A) 'B, ; and adding this result to the absolute column,
BL(AP™'A M , à Ag vector can be computed by inversions of & series of
maximum (9x9) matrices, each of which contains the corrections to the orien-
| | tation elements of a single camera. This new Aq vector is multiplied with
| the submatrix, BI (AP"'A'Y'B,, and added to the absolute column, BI(AP MW)"
and a new Ay vector is computed using the aforementioned computational steps,
which in turn lead to the computation of a new ^g vector. This method will
converge although very reluctantly. A geometrical analogue of such a solution,
although not entirely descriptive, leads to the following approach. Starting
with certain approximations for the orientation parameters, sets of coordinates
i of all points of the model are computed with formulas (56) and (57), which may
be subjected to an after-treatment according to formula (39) with Ag as null
vector. In any case, the maximum size of the matrix which must be inverted is
(3x3). With the thus obtained spatial coordinates of all points of the model,
a series of resections in space 1s computed, thus obtaining the orientations
of all cameras. In these computations, matrices of (9x9) maximum size must be
inverted. With the thus computed orientation parameters, & new set of coordi-
nates of the model are computed, on which a new set of camera orientations can
be hased. By repeating these two phases, alternately, the final orientations
and correspondingly, the final coordinates of all measured points of the model
can be computed. Agaln,' the convergence is extremely slow. An increase in
the slope of convergence would remedy this situation. The associated numerical
effort may be considerable. Such methods are described in [17]. On the other
hand the development of electronic computers progresses at an impressive rate,
with respect to both storage facilities and computing speeds. In the near
future, it should be possible to handle, economically, numerical solutions
requiring & very large number of iteration cycles. It is believed that this
situation will make possible a solution based on relaxation techniques for the
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