학술논문

A system for on-line handwritten character recognition using natural spline function
Document Type
Conference
Source
(ICEEE). 1st International Conference on Electrical and Electronics Engineering, 2004. 'Photonics and Microsystems' Electrical and Electronics Engineering, 2004. (ICEEE). 1st International Conference on. :172-176 2004
Subject
Aerospace
Bioengineering
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Engineered Materials, Dielectrics and Plasmas
Power, Energy and Industry Applications
Robotics and Control Systems
Character recognition
Spline
Handwriting recognition
Feature extraction
Humans
Shape
Image reconstruction
Biological neural networks
Face recognition
Speech recognition
Language
Abstract
During the last several years there have been developed many systems which are able to simulate the human brain behavior. To achieve this goal, two of the most important paradigms used, are the Neural Networks and the Artificial Intelligence. Both of them are primary tools for development of systems to capable of performing tasks such as: handwritten characters, voice, faces, signatures recognition and so many other biometric applications that have attracted considerable attention during the last few years. In this paper a new algorithm for cursive handwritten characters recognition based on the Spline function is proposed, in which the inverse order of the handwritten character construction task will be used to recognize the character. From the sampled data obtained by using a digitizer board, the sequence of the most significant points (optimal knots) of the handwriting character will be obtain, and then the natural Spline function and the steepest descent method will be used to interpolate and approximate character shape, Using a training set consisting of the sequence of optimal knots, each character model will be constructed. Finally the unknown input character will be compared by all characters models to get the similitude scores. The character model with higher similitude score will be considered as the recognized character of the input data. The proposed system is evaluated by computer simulation and simulation results show the global recognition rate with 93.5%.