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Variable duration hidden Markov model and morphological segmentation for handwritten word recognition

机译:可变持续时间隐马尔可夫模型和形态学分割用于手写单词识别

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This paper describes a complete system for the recognition of unconstrained handwritten words using a continuous density variable duration hidden Markov model (CD-VDHMM). First, a new segmentation algorithm based on mathematical morphology is developed to translate the 2-D image into a 1-D sequence of subcharacter symbols. This sequence of symbols is modeled by the CDVDHMM. Thirty-five features are selected to represent the character symbols in the feature space. Generally, there are two information sources associated with written text; the shape information and the linguistic knowledge. While the shape information of each character symbol is modeled as a mixture Gaussian distribution, the linguistic knowledge, i.e., constraint, is modeled as a Markov chain. The variable duration state is used to take care of the segmentation ambiguity among the consecutive characters. A modified Viterbi algorithm, which provides l globally best paths, is adapted to VDHMM by incorporating the duration probabilities for the variable duration state sequence. The general string editing method is used at the postprocessing stage. The detailed experiments are carried out for two postal applications; and successful recognition results are reported.
机译:本文介绍了一种使用连续密度可变持续时间隐马尔可夫模型(CD-VDHMM)来识别无约束手写单词的完整系统。首先,开发了一种基于数学形态学的新分割算法,将二维图像转换为子字符符号的一维序列。该符号序列由CDVDHMM建模。选择了35个特征来表示特征空间中的字符符号。通常,有两个与书面文本关联的信息源;形状信息和语言知识。虽然将每个字符符号的形状信息建模为混合高斯分布,但将语言知识(即约束)建模为马尔可夫链。可变持续时间状态用于照顾连续字符之间的分段歧义。通过合并可变持续时间状态序列的持续时间概率,提供了l个全局最佳路径的改进的Viterbi算法适用于VDHMM。在后处理阶段使用通用的字符串编辑方法。针对两个邮政应用进行了详细的实验;并报告成功的识别结果。

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