Based
al in the
which is
instruction
nearity of
previously
instruction
account a
ng the sun,
isors which
es results
estimation
n method,
sensor is
ance based
ship among
t, sensor
sun, and a
del. The
unction of
slationship
) DEM. Then
mizing the
e actual
d radiance
| order to
2e, Least
in general.
near nature
timation of
ce so that
o estimated
onstruction
r the case
minimal in
imation.
inear least
Levenberg
a 1996
Markard method would give us Aa
solution to avoid local minimal.
Furthermore, Simulated Annealing
also would give us another solution.
Two candidates of the methods are
proposed in this paper for
overcoming the aforementioned
situation.
The proposed method allows us to
designate the region for minimizing
the difference so that the estimated
DEM is optimum in the sense of
minimizing all the difference
between actual radiance and
estimated radiance based on the
models for the region of interest.
The existing surface reconstruction
method focuses on the pixel of
interest, not the region. When the
pixel of interest, however, is
suffered from occlusion, then the
estimation accuracy of DEM get worth.
Turns out, the proposed method takes
into account the region, not the
only one pixel of interest,
minimizing the total difference in
the region so that a good estimation
accuracy is expected in such case.
2. SURFACE RECONSTRUCTION WITH
SIMULATED ANNEALING
2.1 Surface Reconstruction Method
for DEM Estimation
Heinrich Enber and Christian
Heiphe (1988) and the others proposed
Surface Reconstruction Method for
estimation of Digital Elevation
Mode! (DEM) with stereo pair of
images. In the method, a
relationship between the surface of
interest and the intensity of the
pixel corresponding to the surface
is X assumed, namely the pixel
intensity is a function of DEM and
the other factor. Thus the
difference between real pixel
intensity and the estimated pixel
intensity is expressed by the
following equation,
^ A ^
d- g-g(z. p) (1)
^ A À
where d. g. g. z. P are the difference
between real and estimated pixel
intensities, real pixel intensity,
estimated pixel intensity, estimated
DEM and the other factor,
respectively. |f the difference can
be minimized, then the DEM of the
pixel of interest can be estimated.
This is the fundamental principle
for Surface Reconstruction method.
This equation is a non-linear
equat ion SO that non-linear
optimization methods are applicable
to solve this equation. On the other
hand, the equation can be linearized
with Gauss method or Taylor
expansion,
^ A
d-9g-(09/0z)A 2
—(09/0P)A 7-22 £») (2)
^ A
where 2% 0 Az A0 are initial
values and unknown variables for DEM
and the other factors, respectively.
If co-linear condition can be
assumed, then the initial values are
determined.
2. 2 Methodology
In this proposed method, equation
(1) will be solved as a non-linear
optimization problem There are
several well known optimization
problem solving methods. In this
study, some of the typical methods
are attempted. One of the methods is
non-linear least square method like
37
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B3. Vienna 1996