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Parsimonious HMMs for Offline Handwritten Chinese Text Recognition

机译:离线手写中文文本识别的解析核磁体

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Recently, hidden Markov models (HMMs) have achieved promising results for offline handwritten Chinese text recognition. However, due to the large vocabulary of Chinese characters with each modeled by a uniform and fixed number of hidden states, a high demand of memory and computation is required. In this study, to address this issue, we present parsimonious HMMs via the state tying which can fully utilize the similarities among different Chinese characters. Two-step algorithm with the data-driven question-set is adopted to generate the tied-state pool using the likelihood measure. The proposed parsimonious HMMs with both Gaussian mixture models (GMMs) and deep neural networks (DNNs) as the emission distributions not only lead to a compact model but also improve the recognition accuracy via the data sharing for the tied states and the confusion decreasing among state classes. Tested on ICDAR-2013 competition database, in the best configured case, the new parsimonious DNN-HMM can yield a relative character error rate (CER) reduction of 6.2%, 25% reduction of model size and 60% reduction of decoding time over the conventional DNN-HMM. In the compact setting case of average 1-state HMM, our parsimonious DNN-HMM significantly outperforms the conventional DNN-HMM with a relative CER reduction of 35.5%.
机译:最近,隐藏的马尔可夫模型(HMMS)对离线手写的中国文本认可取得了有希望的结果。但是,由于汉字的大词汇表,每个由均匀和固定数量的隐藏状态建模,所需的内存和计算需求很高。在这项研究中,为了解决这个问题,我们通过国家捆绑呈现了解析的HMM,这可以充分利用不同汉字之间的相似之处。采用具有数据驱动的问题集的两步算法来使用似然测量生成Tied-State池。具有高斯混合模型(GMMS)和深神经网络(DNN)的提议的解析HMMS作为排放分布不仅导致紧凑的模型,而且还通过绑定状态的数据共享提高识别准确性以及状态之间的混淆下降课程。在ICDAR-2013竞争数据库上进行测试,在最佳配置的情况下,新的PARSIMONIOM DNN-HMM可以产生6.2%的相对字符错误率(CER),模型尺寸减少25%,减少60%,减少解码时间常规DNN-HMM。在平均1态HMM的紧凑型设定案例中,我们的PARSIMONIOM DNN-HMM显着优于常规DNN-HMM,相对CER减小为35.5%。

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