Figure 7: The image pair “House”
size of 240 x 240 pixels and the image scale is about
1 : 3000. In Figure 8, we show the computed surface
field, by means of a perspective view and a contour
map.
9 Conclusion
In this work, we concentrate our attention on in-
ference processes in computer vision and formulate
many of its goals in a general manner as a ill-posed
problem of image inversion. Based on MAP criteria,
we have introduced a theoretical framework for dea-
ling with ill-posed inverse problems. We have shown
how the surface reconstruction from images can be
solved under this theoretical basis as an application.
Of course, this is only a limited domain of its app-
lications. So, among the goals of future work will be
1) the introduction of a learning mechanism to im-
prove and adapt the a priori knowledge during the
inverse process, 2) the application of neural network
technology to developing parallel algorithms for sol-
ving optimizing problem mentioned above, and 3) the
extension of the application range of the approach.
References
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496
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Figure 8: The computed surface
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