This paper presents a hierarchical neural network architecture for rec
ognition of handwritten numeral characters. In this new architecture,
two separately trained neural networks connected in series, use the pi
xels of the numeral image as input and yield ten outputs, the largest
of which identifies the class to which the numeral image belongs. The
first neural network generates the principal components of the numeral
image using Oja's rule, while the second neural network uses an unsup
ervised learning strategy to group the principal components into disti
nct character clusters. In this scheme, there is more than one cluster
for each numeral class. The decomposition of the global network into
two independent neural networks facilitates rapid and efficient traini
ng of the individual neural networks. Results obtained with a large in
dependently generated data set indicate the effectiveness of the propo
sed architecture. Copyright (C) 1997 Pattern Recognition Society.