This paper aims to verify offline signatures using
improved feature analysis and artificial neural
network. Feature analyzer can reduce the large
domain of feature space and extract invariable
information. We incorporated different features from
multi-dimensional feature analysis perspective. For
verification from extracted features, we used neural
network classifier. Instead of using feed forward
neural network, multiple feed forward neural networks
are used which are trained in the form of ensemble.
Using such ensemble makes the system more general
than a regular single neural network based system.
Use of resilient back propagation for each neural
network training, provides faster recognition. Using
cross validation techniques, we performed significant
amount of testing. Experimental evaluation of the
signature verifier is reported.