tailieunhanh - Bi - character model for on-line cursive handwriting recognition

This paper deals with on-line cursive handwriting recognition. Analytic approach has got more attraction during the last ten years. It relies on a preliminary segmentation stage, which remains one of the challenges and might have a strong effect to the correct recognition rate. The segmentation aims to cut the ink strokes into a set of small pieces, called graphemes. | Journal of Science and Technology Volume 48, Issue 4, 2010 pp. 1-12 BI-CHARACTER MODEL FOR ON-LINE CURSIVE HANDWRITING RECOGNITION DE CAO TRAN ABSTRACT This paper deals with on-line cursive handwriting recognition. Analytic approach has got more attraction during the last ten years. It relies on a preliminary segmentation stage, which remains one of the challenges and might have a strong effect to the correct recognition rate. The segmentation aims to cut the ink strokes into a set of small pieces, called graphemes. The recognition process tries to combine them to build different segments of cursive pattern, which correspond to individual characters in the strokes. This is not a trivial process because there is no effective algorithm to decide which grapheme belongs to which character. Traditionally, the recognition process makes different assumptions about word segments which corresponding to the characters presenting in the cursive handwriting pattern. Then, the recognition process chooses the best possibility based on the probabilities of the recognition results. However, there is very little information to validate or re-evaluate that “the best possibility” is appropriate in the real world. In order to overcome this problem, this paper introduces a bi-character model, where each character is recognized jointly with its neighbor. It offers a possibility to validate a segment of word (with its neighbor) to see if it is a correct segmentation (respecting to a character). The experimental investigation on a standard dataset illustrates that the proposed model has a significant contribution to improve the recognition rate. In fact, the recognition rate is move from 65% to 83% by using the bi-character model. Keywords. On-line cursive handwriting, Hidden Markov Model, Handwriting recognition model, Bi-character model. 1. INTRODUCTION In the last 20 years, there has been an explosion of the number of mobile devices. The technology has allowed the development of .

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