首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >USING A STATISTICAL LANGUAGE MODEL TO IMPROVE THE PERFORMANCE OF AN HMM-BASED CURSIVE HANDWRITING RECOGNITION SYSTEM
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USING A STATISTICAL LANGUAGE MODEL TO IMPROVE THE PERFORMANCE OF AN HMM-BASED CURSIVE HANDWRITING RECOGNITION SYSTEM

机译:使用统计语言模型提高基于HMM的手写输入识别系统的性能

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摘要

In this paper, a system for the reading of totally unconstrained handwritten text is presented. The kernel of the system is a hidden Markov model (HMM) for handwriting recognition. This HMM is enhanced by a statistical language model. Thus linguistic knowledge beyond the lexicon level is incorporated in the recognition process. Another novel feature of the system is that the HMM is applied in such a way that the difficult problem of segmenting a line of text into individual words is avoided. A number of experiments with various language models and large vocabularies have been conducted. The language models used in the system were also analytically compared based on their Perplexity.
机译:本文提出了一种完全不受约束的手写文本阅读系统。该系统的内核是用于手写识别的隐藏马尔可夫模型(HMM)。通过统计语言模型增强了此HMM。因此,超出词典级别的语言知识将被并入识别过程。该系统的另一个新颖特征是,HMM的应用方式避免了将文本行分割成单个单词的难题。已经使用各种语言模型和大量词汇进行了许多实验。还根据系统的困惑性对系统中使用的语言模型进行了分析比较。

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