基于CDHMM的手写体汉字大词汇离线识别研究

Yong Ge, Qinah Huo
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引用次数: 12

摘要

我们(2002)研究了如何使用高斯混合连续密度隐马尔可夫模型(cdhmm)进行手写体汉字建模和识别。我们已经确定并开发了一套技术,可用于构建一个实用的基于cdhmm的大型手写体汉字离线识别系统。我们已经在其他地方报道了有助于提高识别精度的关键技术。在本文中,我们描述了如何在不牺牲太多识别精度的情况下使我们的识别器更紧凑。我们还报告了一系列实验的结果,这些实验是为了帮助我们在面对几个设计选择时做出正确的决定。
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A study on the use of CDHMM for large vocabulary off-line recognition of handwritten Chinese characters
We (2002) have investigate how to use Gaussian mixture continuous-density hidden Markov models (CDHMMs) for handwritten Chinese character modeling and recognition. We have identified and developed a set of techniques that can be used to construct a practical CDHMM-based off-line recognition system for a large vocabulary of handwritten Chinese characters. We have reported elsewhere the key techniques that contribute to the high recognition accuracy. In this paper we describe how to make our recognizer compact without sacrificing too much of the recognition accuracy. We also report the results of a series of experiments that were performed to help us make a good decision when we face several design choices.
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