DocumentCode
1641001
Title
Design Compact Recognizers of Handwritten Chinese Characters Using Precision Constrained Gaussian Models, Minimum Classification Error Training and Parameter Compression
Author
Wang, Yongqiang ; Huo, Qiang
Author_Institution
Microsoft Res. Asia, Beijing, China
fYear
2009
Firstpage
36
Lastpage
40
Abstract
In our previous work, a precision constrained Gaussian model (PCGM) was proposed for character modeling to design compact recognizers of handwritten Chinese characters. A maximum likelihood training procedure was developed to estimate model parameters from training data. In this paper, we extend the above work by using minimum classification error (MCE) training to improve recognition accuracy and split vector quantization technique to compress model parameters. Compared with the state-of-the-art MCE-trained and compressed classifiers based on modified quadratic discriminant function, PCGM-based classifiers can achieve much better memory-accuracy tradeoff, therefore offer a good solution to designing compact handwriting recognition systems for East Asian languages such as Chinese, Japanese, and Korean.
Keywords
Gaussian processes; error statistics; handwritten character recognition; natural language processing; vector quantisation; compact recognizers; handwritten Chinese characters; minimum classification error; parameter compression; precision constrained Gaussian models; split vector quantization; Asia; Character recognition; Handwriting recognition; Linear discriminant analysis; Maximum likelihood estimation; Natural languages; Parameter estimation; Text analysis; Training data; Vector quantization; handwriting recognition; minimum classification error; model compression; structured covariance model;
fLanguage
English
Publisher
ieee
Conference_Titel
Document Analysis and Recognition, 2009. ICDAR '09. 10th International Conference on
Conference_Location
Barcelona
ISSN
1520-5363
Print_ISBN
978-1-4244-4500-4
Electronic_ISBN
1520-5363
Type
conf
DOI
10.1109/ICDAR.2009.41
Filename
5277802
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