Character-position-free on-line handwritten Japanese text recognition

Jianjuan Liang, Bilan Zhu, Taro Kumagai, M. Nakagawa
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引用次数: 2

Abstract

The paper presents a recognition method of character-position-free (CPF) on-line handwritten Japanese text patterns to allow a user to overlay characters freely without confirming previously written characters. To develop this method, we prepared large sets of CPF handwritten Japanese text patterns artificially from normally handwritten text patterns. The proposed method sets each off-stroke between real strokes as undecided and evaluates the segmentation probability by SVM model. Then, the optimal segmentation-recognition path can be effectively found by the Viterbi search in the candidate lattice, combining the scores of character recognition, geometric features, linguistic context, as well as the segmentation scores by SVM classification. We test this method on variously overlaid sample patterns, and verify that it produces competing recognition rates as the latest recognizer for normally handwritten horizontal Japanese text without the serious problem in speed for practical applications.
字符位置自由的在线手写日语文本识别
本文提出了一种无字符位置(CPF)在线手写日语文本模式识别方法,使用户可以在不确认已写字符的情况下自由地叠加字符。为了开发这种方法,我们从正常手写文本模式中人工制备了大量的CPF手写日语文本模式集。该方法将真实笔画之间的每个离笔画设置为未确定,并通过SVM模型评估分割概率。然后,结合字符识别得分、几何特征得分、语言上下文得分以及SVM分类的分割得分,在候选格中进行Viterbi搜索,有效地找到最优的分割识别路径。我们在各种覆盖的样本模式上测试了该方法,并验证了它作为最新的识别器在正常手写的水平日语文本中产生了竞争性的识别率,而在实际应用中没有严重的速度问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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