HANDWRITTEN CHARACTER RECOGNITION;
NONLINEAR SHAPE NORMALIZATION;
FEATURE PROJECTION;
FEATURE DENSITY EQUALIZATION;
PERFORMANCE EVALUATION;
D O I:
10.1016/0031-3203(94)90155-4
中图分类号:
TP18 [人工智能理论];
学科分类号:
081104 ;
0812 ;
0835 ;
1405 ;
摘要:
Recently, several nonlinear shape normalization methods have been proposed in order to compensate for shape distortions in large-set handwritten characters. In this paper, these methods are reviewed from the two points of view: feature projection and feature density equalization. The former makes feature projection histogram by projecting a certain feature at each point onto horizontal- or vertical-axis and the latter equalizes the feature densities of input image by re-sampling the feature projection histogram. Then, the results of quantitative evaluation for these methods are presented. These methods have been implemented on a PC in C language and tested with a large variety of handwritten Hangul syllables. A systematic comparison of them has been made based on the following criteria: recognition rate, processing speed, computational complexity and degree of variation.
机构:
Korea Univ, Ctr Artificial Vis Res, Seongbuk Ku, Seoul 136701, South KoreaKorea Univ, Ctr Artificial Vis Res, Seongbuk Ku, Seoul 136701, South Korea
Kim, SY
Lee, SW
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机构:
Korea Univ, Ctr Artificial Vis Res, Seongbuk Ku, Seoul 136701, South KoreaKorea Univ, Ctr Artificial Vis Res, Seongbuk Ku, Seoul 136701, South Korea