Error | Cor. Method — — — Our Method |
30
30 F
25 |
20 L rmm
15 |
10 —_
| e^
0 eti tet ieri EUN
60 55 50 45 40 35 30 25 20(dB)
Fig.12 Relation between S/N and error ratio
Fig.12 shows relation between S/N and error ratio.
An error ratio is calculated by
|Resultantmage- Truelmagg
x100 (%)
X - Y -MaximumimageLevel
Error=
(10)
In Fig.12, the error ratio remains some value in
spite of high signal to noise ratio. This reason is
that the true image has 256 steps of image level,
however, the resultant image's steps of image
level are restricted in the max range of search.
From these results, the degrading of resultant
image is a little, and we can show that our
method is superior to the simple correlation
analysis method.
6. CONCLUSION
In this paper, we propose a new stereo matching
method using N.N. based on Hopfield model for
the accuracy improvement of the correlation
analysis method and we confirmed its advantage.
Neurons used in our N.N. have two outputs, and
this characteristic produced desirable result.
Actual images essentially include noise and non
Lanmbertian scattering components, and our
method is effective to these actual condition.
One of the most important matter for our method
is the amount of calculation. We take a simple
algorithm as we mentioned in 4-4 for this matter,
however, this is insufficient. To improve this
matter, we are considering an algorithm that a
(2)
neuron with v,,.
changing frequently will be
chosen in high probability when we select a
neuron for a transition of the network state.
Values of W, and W, are issues as well. We
determine these values by means of trial and
error now. If we can find the most suitable values,
the accuracy of our method will be improved
moreover.
An attitude fluctuation of a satellite influence on
the accuracy for extracting height data. A satellite
moves for taking two images. Therefore, a
satellite observes two images of slightly different
points if an attitude fluctuation of a satellite
occurs. Our method, at this time, searches for
matching points on the same y-coordinate. It is
effective to construct N.N. that can search for
matching points on the different y-coordinates for
this issue.
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(3) N. M. Nasrabadi, W. Li, “Object Recognition by
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30 International Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998