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01684 am a22001453u 4500 |
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|a Zafar, Muhammad Faisal
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|a Mohamad, Dzulkifli
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|a Othman, Muhamad Razib
|e author
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|a On-line Handwritten Character Recognition: An Implementation of Counterpropagation Neural Net
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|b ENFORMATIKA,
|c 2005-12.
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|z Get fulltext
|u http://eprints.utm.my/id/eprint/8740/1/Enformatika-v10.pdf
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|a On-line handwritten scripts are usually dealt with pen tip traces from pen-down to pen-up positions. Time evaluation of the pen coordinates is also considered along with trajectory information. However, the data obtained needs a lot of preprocessing including filtering, smoothing, slant removing and size normalization before recognition process. Instead of doing such lengthy preprocessing, this paper presents a simple approach to extract the useful character information. This work evaluates the use of the counter- propagation neural network (CPN) and presents feature extraction mechanism in full detail to work with on-line handwriting recognition. The obtained recognition rates were 60% to 94% using the CPN for different sets of character samples. This paper also describes a performance study in which a recognition mechanism with multiple hresholds is evaluated for counter-propagation architecture. The results indicate that the application of multiple thresholds has significant effect on recognition mechanism. The method is applicable for off-line character recognition as well. The technique is tested for upper-case English alphabets for a number of different styles from different peoples.
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|a en
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