Segmentation and recognition of symbols within handwritten mathematical expressions

M. Koschinski, H. Winkler, M. Lang
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引用次数: 52

Abstract

An efficient on-line recognition system for symbols within handwritten mathematical expressions is proposed. The system is based on the generation of a symbol hypotheses net and the classification of the elements within the net. The final classification is done by calculating the most probable path through the net under regard of the stroke group probabilities and the probabilities obtained by the symbol recognizer based on hidden Markov models.
手写数学表达式中符号的分割与识别
提出了一种高效的手写数学表达式符号在线识别系统。该系统基于符号假设网的生成和网络中元素的分类。最后根据笔画组概率和符号识别器基于隐马尔可夫模型得到的概率计算出最可能通过网络的路径来完成分类。
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