e to
ıt of
the
the
vj. k
(7)
s, (x,
f E.
| the
its of
| and
The
'"uron
tput,
lefine
?uron
i)Threshold: The threshold is of determining the
output of neuron. Therefore, the first term of the
right side of Eq.(7) can be represented by the
threshold. That is, the threshold is given by the
correlation coefficient with inverted sign:
0, = -W,Cor(x, y, z) (8)
xX, V,Z
ii) Connection Weight: The connection
weight is of preventing a neuron against a
restriction from having large output. Therefore,
the second term of the right side of Eq.(7) can be
represented by connection weight. In Fig.4, the
z-coordinate of a neuron represent the parallax.
Therefore, we define connection weights to
prevent neurons of which z-coordinates are
irregular different from having large output.
Concretely, the connection weight between a
neuron at coordinate(x,,},,z,;) and a neuron at
coordinate( X, , Y, , Z, ) is defined as
= -Wja -zj if -xj «I and »" -y|sJ
me 0 otherwise
(9)
4-4. Transition rule of Network State
In our N.N., almost neuron-states are unchanged
during iterations of the transition because our
N.N. consists of a lot of neurons, For example, if
we set X-256, Y=256, and z=15, we need 256 x
256 X15 of neurons. Therefore, if we select a
neuron at random, amount of calculation will be
too much.
To prevent this, we watch v . and if the
x,y,z >
number of change of v? reaches the set
x3,»,2
number, we do not calculate output of each
neuron on the coordinate(x, y). However, this
method cause ve , to be fixed error. Therefore, if
(2)
x»: the number of change
there is a change of v
of neighboring v sets 0.
3,9,2
5. EXPERIMENTS AND RESULTS
In Fig.6 and Fig.9, we show input images used in
our experiment. Fig.6(a), (b) show the numerical
patterns for non Lambertian model. Fig.9(a), (b)
show actual images of earth's surface from a
satellite. Non Lambertian : model partially
includes specular scattering components. This is
the phenomenon observed at a building and a
lake and so on. For non Lambertian models, the
correlation analysis method searches miss
matching points because the brightness levels are
not equal although matching points.
Fig.7, Fig.8, Fig.10 and Fig.ll show resultant
images from experiments of the simple
correlation analysis method and our method. The
simple correlation method that are used in here is
the simplest method, however, if we use other
superior method, we can obtain images that are
better than Fig.7(a), Fig.8(a), Fig10(a), Fig.11(a).
However, the amount of calculation increase in
that case. Fig.7(a), (b) show resultant images
using numerical patterns without any noise for
Lambertian model(Fig.2(1). Fig.8(a) (b) show
resultant images using numerical patterns
without any noise for non Lambertian model.
Fig.10(a), (b) show resultant images using actual
images of earth's surface from a satellite.
Fig.11(a), (b) show resultant images using images
that adds noise corresponding 30dB(S/N) to Fig.9
(Fig.9 includes noise corresponding
approximately 40dB(S/N)). In these images, the
bright point shows the high point and the dark
point shows the low point. We set the correlation
window size 5, and set the comparison range of
height 5X5 and set initial values of each neuron
the values that are calculated by only the
thresholds if the x- and y-coordinates of neurons
are even, otherwise set others 0.
International Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998 27
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