S. Agarwal et S. Chaudhuri, DETERMINATION OF AIRCRAFT ORIENTATION FOR A VISION-BASED SYSTEM USINGARTIFICIAL NEURAL NETWORKS, Journal of mathematical imaging and vision, 8(3), 1998, pp. 255-269
An algorithm for real-time estimation of 3-D orientation of an aircraf
t, given its monocular, binary image from an arbitrary viewing directi
on is presented. This being an inverse problem, we attempt to provide
an approximate but a fast solution using the artificial neural network
technique. A set of spatial moments (scale, translation, and planar r
otation invariant) is used as features to characterize different views
of the aircraft, which corresponds to the feature space representatio
n of the aircraft. A new neural network topology is suggested in order
to solve the resulting functional approximation problem for the input
(feature vector)-output (viewing direction) relationship. The feature
space is partitioned into a number of subsets using a Kohonen cluster
ing algorithm to express the complex relationship into a number of sim
pler ones. Separate multi-layer perceptrons (MLP) are then trained to
capture the functional relations that exist between each class of feat
ure vectors and the corresponding target orientation. This approach is
shown to give better results when compared to those obtained with a s
ingle MLP trained for the entire feature space.