Multi-Lingual Offline Handwriting Recognition Using Hidden Markov Models: A Script-Independent Approach

SACH'06: Proceedings of the 2006 conference on Arabic and Chinese handwriting recognition(2008)

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摘要
This paper introduces a script-independent methodology for multi-lingual offline handwriting recognition (OHR) based on the use of Hidden Markov Models (HMM). The OHR methodology extends our script-independent approach for OCR of machine-printed text images. The feature extraction, training, and recognition components of the system are all designed to be script independent. The HMM training and recognition components are based on our Byblos continuous speech recognition system. The HMM parameters are estimated automatically from the training data, without the need for laborious hand-written, rules. The system does not require pre-segmentation of the data, neither at the word level nor at the character level. Thus, the system can handle languages with cursive handwritten scripts in a straightforward manner. The script independence of the system is demonstrated with experimental results in three scripts that exhibit significant differences in glyph characteristics: English, Chinese, and Arabic. Results from an initial set of experiments are presented to demonstrate the viability of the proposed methodology.
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关键词
recognition component,Byblos continuous speech recognition,multilingual offline handwriting recognition,HMM parameter,HMM training,OHR methodology,proposed methodology,script-independent methodology,training data,character level,Multi-lingual offline handwriting recognition,hidden Markov model,script-independent approach
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