NETWORK OPTIMIZATION IN INDUSTRIAL PHOTOGRAMMETRY
A, Chibunichev
Photogrammetry Departmant of Moscow Institute of Geodesy, Aerial Surveying and
Cartografy (MIIGAIK). Gorochovsky By-str., 4 ,103064, Moscow, Russia.
Commission V
Abstract:
The desiner formulates an initial network geometry, the precision of the image coordinate measurements and
precision of the object coordinates. A solution is obtained for the optimal geometry and the number of camera
stations. An ideal matrix of normal equations (for required precision) is used as a target function in the
optimization process. The optimization is carried aut
by a least squares method wich minimizes the
discrepancies between the real normalequations matrix of a given initial network, and the corresponding ideal
matrix. The constrains for values of the exterior orientation elements for camera stations are introduced into
the optimization process by means of substitution of variables.
KEY WORDS: analitic, industrial, photogrammetry, design, network, optimization, criterion, matrix.
INTRODUCTION
Actualy, photogrammeiry is widely applyed, for
investigation of various industrialobjects. Oneofthe
main problems in this case is photogrammetry net:
work design, which must provide required precision
ofabject point coordinates and a minimum number of
camera stations. The design is commonly solved by
means of an interactive method through the process
of netwokr simulation and bundle block adjustment
(C.S.Fraser, 1982, 1984, 1987).
This paper deals with the algorithm of the analytical
solution of the optimization problem, which permits
fo solve the network design automaticaly. The main
idea is to provide the required precision of the object
points coordinates by shifting the camera stations. A
criterion (ideal) matrix is used as a target function.
This matrix is formed the way an ideal covariance
estimated matrix of the object point coordinates is.
K.R.Koch (1982) was the first to uss a criterion
matrix as a target function for geodetic network
design. The similar approch for photogrammetric
networks was used by S. Zinndorf (1989), A.
Chibunichev (1990) and D.Pritsch, P. Grosilla (1990).
Mathematícal formulation of the
photogrammetric network optimization
Optimization process is based on solving the fol-
lowing target function:
K; - Kj - 0, (1)
where K; isa real covariance matrix of the estimated
unknown (i) object point coordinates, Ki is the
corresponding ideal (criterion) matrix. K;is obteind
from phototriangulation using the results of network
simulation.
Ni-N = 0, (2)
where N; and N; are correspondingly real and
criterion matrices of normal equations.
Eq. (2) can be solved with respect to photographs
orientation elements which will correspond to the
required precision of the object points. The diagonal
elements of ihe criterion matrix of function (2) may
be computed in the follo wing expressions:
a 2
E edi ceat ui safe
PL) M A (5
where m is standard error of unit weight, which
caracterizes the image point coordinates precision; m,
; Wy, mz is the required precision of the object point
coordinates. Nondiagonal elements of matrix N;are
egual to zero. In more detail this problem is des-
cribed in A.Chibunichev (1990).
To solve eq. (2) it is to be expressed in a Taylor
series restricted to linear terms:
Ba+Le=V (4)
with
, bin aks; ©
B-l ... ^ a = | 8%; |* L=W.--N.
bg. bmn ! ; ; t
a En
j eft .....s); ie] ,..., ky; s is the number of photographs
in a block; k is the number of object points; n is the
number of unknown parameters À . m - 6k is the
number of equations; b= ix are partial derivatives
of eq.(2) with respect to unknown elements of
photographs orientation OG Ys su
By Hy Haz;
N; = By; Hy, Hyg;
Bc Ry R2:
Since N; is a symmetrical matrix, any object point
give 6 independent equations with 6q unknown.
Here q is the number of photos on which the point i
appears.
Takign into account, that
N = A" A, (5)
the partial derivatives of N with respect to the
elements ef evterinr orientation of nhotos ran he
M PANO
ox 735 3X IX (6)
The analitical expressions of the coefficients of the
matrix A are very simple for the collinearity equ-
ations. Therefore analitical expressions of eq.(6)
are simple as well.
The optimization problem is solved by means of the
least-squares method ( V'V - min ).
The parameters of photographs to be determined may
be restricted io certain intervals (because of the
camera format, the inability to move the camera to a
certain position and so on) can be expressed by the
inequalities