Title :
Generalization of hierarchical retinotopic networks using stochastic distortion models
Author :
Weng, John Juyang
Author_Institution :
Dept. of Comput. Sci., Michigan State Univ., East Lansing, MI, USA
Abstract :
The generalization of hierarchical retinotopic networks is modeled as a type of probability measure called “tail probability” with a stochastic distortion field. Learning in the network memorizes the exemplars in terms of the distribution. Generalization in a hierarchical retinotopic network is characterized by the probability measure of multilevel events and decision making at each abstraction level. The concept is applied to automatically generating a hierarchical retinotopic network during the leaning of exemplars. This approach is called Cresceptron and it has been tested on learning, recognizing and segmenting a variety of real-world objects based on their 2-D images
Keywords :
learning by example; neural nets; probability; stochastic processes; 2D images; Cresceptron; example-based learning; hierarchical retinotopic networks; multilevel events; object recognition; probability measure; segmentation; stochastic distortion models; tail probability; Automatic testing; Computer science; Decision making; Distortion measurement; Humans; Image recognition; Probability distribution; Random processes; Stochastic processes; Tail;
Conference_Titel :
Speech, Image Processing and Neural Networks, 1994. Proceedings, ISSIPNN '94., 1994 International Symposium on
Print_ISBN :
0-7803-1865-X
DOI :
10.1109/SIPNN.1994.344790