A hybrid large vocabulary handwritten word recognition system using neural networks with hidden Markov models

Alessandro Lameiras Koerich, Yann Leydier, R. Sabourin, C. Suen
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引用次数: 45

Abstract

We present a hybrid recognition system that integrates hidden Markov models (HMM) with neural networks (NN) in a probabilistic framework. The input data is processed first by a lexicon-driven word recognizer based on HMMs to generate a list of the candidate N-best-scoring word hypotheses as well as the segmentation of such word hypotheses into characters. An NN classifier is used to generate a score for each segmented character and in the end, the scores from the HMM and the NN classifiers are combined to optimize performance. Experimental results show that for an 80,000-word vocabulary, the hybrid HMM/NN system improves by about 10% the word recognition rate over the HMM system alone.
基于隐马尔可夫模型的神经网络混合大词汇手写词识别系统
提出了一种在概率框架下将隐马尔可夫模型(HMM)与神经网络(NN)相结合的混合识别系统。输入数据首先由基于hmm的词典驱动的词识别器处理,生成候选n个得分最高的词假设列表,并将这些词假设分割成字符。使用神经网络分类器为每个被分割的字符生成分数,最后,将HMM和神经网络分类器的分数相结合以优化性能。实验结果表明,对于8万单词的词汇表,混合HMM/NN系统比单独的HMM系统提高了约10%的单词识别率。
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