Pattern recognition constraint network

Image analysis – Learning systems – Trainable classifiers or pattern recognizers

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706 20, 382158, G06K 962

Patent

active

061223999

ABSTRACT:
The present invention provides a novel pattern recognition system that may be used to determine the likelihood that an unknown item belongs to a predefined class. The present invention provides improved functionality over prior art systems in that both feature parameters and confidence parameters are trained automatically from ground truth image data; large numbers of different attributes can be analyzed in the model, which yields more accurate modeling; relationships between different features can also be trained from ground truth data and represented in parametric form; there is insensitivity to feature noise; parameters are based exclusively on statistical information; the need for heuristic information is minimized; retraining is straightforward and fast; on-line updating of model parameters is possible; and the models created are accurate and reliable at predicting the match of an unknown item to the model.

REFERENCES:
patent: 5371809 (1994-12-01), Desieno
patent: 5638491 (1997-06-01), Moed
patent: 5812700 (1998-09-01), Fang et al.
Multiple sensor target classification using an unsupervised hybrid neural network, by Gelli et al. 0-7803-1901-X/94 IEEE, pp. 4028-4032, 1994.
Robotic Task Planning Using A Connectionist/Symbolic System, Moed et al., p. 296-316.

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