Title :
Implementation of a Bayesian self-organizing neural network
Author_Institution :
Dept. of Comput. Sci., Minnesota Univ., MN, USA
fDate :
27 Jun-2 Jul 1994
Abstract :
Presents the implementation of a self-organizing neural network, that extracts invariant features in the input images. The prior probability distribution of the invariant feature is assumed to be known, and is modeled using a Markov random field. The network learns to extract the desired invariant feature by producing output patterns whose probability distribution is as close to the prior probability distribution as possible. In the author´s simulations, an input image is an object surface corrupted by (1) noise, and (2) a distracting feature. As a result, the shapes of the objects can not be accurately represented by the input intensities. The network learns to recover the surface shape, which is the invariant feature that the author wishes to extract. Experimental results of the network learning are presented and analyzed
Keywords :
Markov processes; feature extraction; learning (artificial intelligence); probability; self-organising feature maps; Bayesian self-organizing neural network; Markov random field; distracting feature; input images; invariant features; network learning; noise; object surface; output patterns; prior probability distribution; surface shape recovery; Bayesian methods; Biological neural networks; Computer science; Data mining; Feature extraction; Layout; Neural networks; Neurons; Shape; Visual system;
Conference_Titel :
Neural Networks, 1994. IEEE World Congress on Computational Intelligence., 1994 IEEE International Conference on
Conference_Location :
Orlando, FL
Print_ISBN :
0-7803-1901-X
DOI :
10.1109/ICNN.1994.374271