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Off-line handwritten word recognition using a hidden Markov model type stochastic network

机译:使用隐马尔可夫模型类型的随机网络进行离线手写单词识别

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摘要

Because of large variations involved in handwritten words, the recognition problem is very difficult. Hidden Markov models (HMM) have been widely and successfully used in speech processing and recognition. Recently HMM has also been used with some success in recognizing handwritten words with presegmented letters. In this paper, a complete scheme for totally unconstrained handwritten word recognition based on a single contextual hidden Markov model type stochastic network is presented. Our scheme includes a morphology and heuristics based segmentation algorithm, a training algorithm that can adapt itself with the changing dictionary, and a modified Viterbi algorithm which searches for the (l+1)th globally best path based on the previous l best paths. Detailed experiments are carried out and successful recognition results are reported.
机译:由于手写单词的变化很大,因此识别问题非常困难。隐马尔可夫模型(HMM)已被广泛成功地用于语音处理和识别中。最近,HMM也已成功地用于识别带有预分段字母的手写单词。本文提出了一种基于单个上下文隐式马尔可夫模型类型的随机网络的完全不受约束的手写单词识别的完整方案。我们的方案包括基于形态学和启发式算法的分割算法,可以适应不断变化的字典的训练算法,以及经过改进的维特比算法,该算法基于前l条最佳路径搜索第(l + 1)条全局最佳路径。进行了详细的实验,并报告了成功的识别结果。

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