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A Discriminative Approach to On-Line Handwriting Recognition Using Bi-character Models

机译:使用双字符模型对在线手写识别的判别方法

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Unconstrained on-line handwriting recognition is typically approached within the framework of generative HMM-based classifiers. In this paper, we introduce a novel discriminative method that relies, in contrast, on explicit grapheme segmentation and SVM-based character recognition. In addition to single character recognition with rejection, bi-characters are recognized in order to refine the recognition hypotheses. In particular, bi-character recognition is able to cope with the problem of shared character parts. Whole word recognition is achieved with an efficient dynamic programming method similar to the Viterbi algorithm. In an experimental evaluation on the Unipen-ICROW-03 database, we demonstrate improvements in recognition accuracy of up to 8% for a lexicon of 20,000 words with the proposed method when compared with an HMM-based baseline system. The computational speed is on par with the baseline system.
机译:不受约束的在线手写识别通常在基于生成的HMM的分类器的框架内接近。在本文中,我们介绍了一种依赖于显式图形分割和基于SVM的字符识别的新型鉴别方法。除了用抑制的单个字符识别,识别双字符以便改进识别假设。特别是,双字符识别能够应对共享字符部件的问题。通过类似于Viterbi算法的有效动态编程方法实现整个字识别。在UniPen-ICROW-03数据库的实验评估中,我们展示了与基于HMM的基线系统相比的建议方法的20,000个单词的识别准确性的改善,高达8%。计算速度与基线系统相媲美。

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