This paper proposes a novel method for on-line recognition of line-based graphic symbol. The input strokes are usually warped into a cursive form due to the sundry drawing style, and classifying them is very difficult. To deal with this, an ART-2 neural network is used to classify the input strokes. It has the advantages of high recognition rate, less recognition time and forming classes in a self-organized manner. The symbol recognition is achieved by an Attribute Relational Graph (ARG) matching algorithm. The ARG is very efficient for representing complex objects, but computation cost is very high. To over come this, we suggest a fast graph matching algorithm using symbol structure information. The experimental results show that the proposed method is effective for recognition of symbols with hierarchical structure.
[1]
Wen-Tsuen Chen,et al.
A hierarchical deformation model for on-line cursive script recognition
,
1994,
Pattern Recognit..
[2]
Jianzhuang Liu,et al.
Online Chinese character recognition using attributed relational graph matching
,
1996
.
[3]
Katsuo Ikeda,et al.
On-line recognition of hand-written characters utilizing positional and stroke vector sequences
,
1981,
Pattern Recognit..
[4]
Hang Joon Kim,et al.
On-line Chinese character recognition using ART-based stroke classification
,
1996,
Pattern Recognit. Lett..
[5]
Isabelle Guyon,et al.
Design of a neural network character recognizer for a touch terminal
,
1991,
Pattern Recognit..