Deep Convolutional Neural Network Based Hidden Markov Model for Offline Handwritten Chinese Text Recognition

Zirui Wang, Jun Du, Jinshui Hu, Yulong Hu
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引用次数: 4

Abstract

Recently, an effective segmentation-free approach via deep neural network based hidden Markov model (DNN-HMM) was proposed and successfully applied to offline handwritten Chinese text recognition. In this study, to further improve the modeling capability, we adopt deep convolutional neural networks (DCNN) to calculate the HMM state posteriors. First, on the frame basis, the DCNN-HMM can automatically learn the features from the raw image of the handwritten text line via the convolutional architecture rather than the handcrafted gradient features using in the DNN-HMM. Second, we examine several important factors of DCNN to the recognition performance, namely the kernel size, the number of blocks and convolutional layers. We also improve the language modeling by using more text data and high-order N-gram. Tested on ICDAR 2013 competition task of CASIA-HWDB database, the proposed DCNN-HMM could achieve a character error rate (CER) of 4.07\%, yielding a relative CER reduction of 30.8\% over the DNN-HMM approach. To the best of our knowledge, this is the best published result of the segmentation-free approaches. Furthermore, we explain why DCNN-HMM is more effective than DNN-HMM via the visualization of feature learning and the error pattern analysis.
基于深度卷积神经网络的隐马尔可夫模型离线手写中文文本识别
最近,提出了一种有效的基于深度神经网络的隐马尔可夫模型(DNN-HMM)的无分割方法,并成功应用于离线手写体中文文本识别。在本研究中,为了进一步提高建模能力,我们采用深度卷积神经网络(DCNN)计算HMM状态后验。首先,在帧的基础上,DNN-HMM可以通过卷积架构自动从手写文本行的原始图像中学习特征,而不是使用DNN-HMM中手工制作的梯度特征。其次,我们研究了影响DCNN识别性能的几个重要因素,即核大小、块数和卷积层数。我们还通过使用更多的文本数据和高阶N-gram来改进语言建模。在CASIA-HWDB数据库的ICDAR 2013竞争任务上进行测试,所提出的DNN-HMM可以实现4.07%的字符错误率(CER),比DNN-HMM方法相对降低30.8%。据我们所知,这是无分割方法发表的最好结果。此外,我们通过特征学习的可视化和误差模式分析,解释了为什么DNN-HMM比DNN-HMM更有效。
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