
Y. DO
Copyright © 2013 SciRes. OJAppS
constructed to express the image formation process of a
camera. The network constructed in this paper is in a
quite simple structure with four input neurons and three
output neurons of linear activation functions. Although
most existing applications of NNs to camera modeling
have focused on nonlinear lens distortion problem, the
network of this paper models the linear perspective
transfor mation. A method to learn the link weights be-
tween neurons of the proposed network is also described.
The entire image formation of a camera may be modeled
accurately if the proposed network is combined with an
existing NN-based method developed for correcting lens
distortion.
5. Acknowledgemen t
This research was supported by Basic Science Research
Program through the National Research Foundation of
Korea(NRF) funded by the Ministry of Education,
Science and Technology(2012R1A1A4A01010160).
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