Title :
Signature verification with a syntactic neural net
Author :
Lucas, S.M. ; Damper, R.I.
Abstract :
A syntactic neural network is equivalent to a parser for a certain type of grammar-in this case, strictly hierarchical context-free. This allows an efficient method for pattern description and has the added advantage of being a generative model. The authors show how the network itself can infer the grammar. Syntactic neural nets can model stochastic or nonstochastic grammars. The stochastic nets are properly probabilistic and are powerful discriminators; the nonstochastic nets are less powerful, but have straightforward silicon implementations with existing technology. Learning in syntactic nets may proceed supervised or unsupervised. In each case, the algorithm is the same; the difference lies in the data presented to the net. In prior publications, the authors applied syntactic neural nets to character recognition and cursive script recognition. The authors presently show that nonstochastic nets can perform signature verification with high reliability. This raises the possibility of signature verification on a robust smart card
Keywords :
character recognition; context-free grammars; inference mechanisms; neural nets; character recognition; cursive script recognition; generative model; hierarchical context-free; inference; nonstochastic grammars; parser; pattern description; probabilistic; robust smart card; signature verification; stochastic grammars; supervised learning; syntactic neural net; syntactic neural network; unsupervised learning;
Conference_Titel :
Neural Networks, 1990., 1990 IJCNN International Joint Conference on
Conference_Location :
San Diego, CA, USA
DOI :
10.1109/IJCNN.1990.137596