Title :
Unconstrained handwritten numeral recognition based on radial basis competitive and cooperative networks with spatio-temporal feature representation
Author :
Lee, Sukhan ; Pan, Jack Chien-Jan
Author_Institution :
Dept. of Electr. Eng. Syst., Univ. of Southern California, Los Angeles, CA, USA
fDate :
3/1/1996 12:00:00 AM
Abstract :
This paper presents a new approach to representation and recognition of handwritten numerals. The approach first transforms a two-dimensional (2-D) spatial representation of a numeral into a three-dimensional (3-D) spatio-temporal representation by identifying the tracing sequence based on a set of heuristic rules acting as transformation operators. A multiresolution critical-point segmentation method is then proposed to extract local feature points, at varying degrees of scale and coarseness. A new neural network architecture, referred to as radial-basis competitive and cooperative network (RCCN), is presented especially for handwritten numeral recognition. RCCN is a globally competitive and locally cooperative network with the capability of self-organizing hidden units to progressively achieve desired network performance, and functions as a universal approximator of arbitrary input-output mappings. Three types of RCCNs are explored: input-space RCCN (IRCCN), output-space RCCN (ORCCN), and bidirectional RCCN (BRCCN). Experiments against handwritten zip code numerals acquired by the U.S. Postal Service indicated that the proposed method is robust in terms of variations, deformations, transformations, and corruption, achieving about 97% recognition rate
Keywords :
character recognition; feature extraction; feedforward neural nets; handwriting recognition; image segmentation; learning (artificial intelligence); pattern classification; arbitrary input-output mappings; bidirectional RCCN; handwritten zip code numerals; heuristic rules; input-space RCCN; local feature points extraction; multiresolution critical-point segmentation method; output-space RCCN; radial basis competitive and cooperative network; spatio-temporal feature representation; three-dimensional spatio-temporal representation; two-dimensional spatial representation; unconstrained handwritten numeral recognition; universal approximator; Character recognition; Feature extraction; Handwriting recognition; Intelligent robots; Lifting equipment; Neural networks; Postal services; Robustness; Two dimensional displays; Writing;
Journal_Title :
Neural Networks, IEEE Transactions on