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Handwritten Chinese Text Recognition Using Separable Multi-Dimensional Recurrent Neural Network

机译:手写的中文文本识别,使用可分离多维反复性神经网络

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The Long Short-Term Memory Recurrent Neural Network (LSTM-RNN) has been demonstrated successful in handwritten text recognition of Western and Arabic scripts. It is totally segmentation free and can be trained directly from text line images. However, the application of LSTM-RNNs (including Multi-Dimensional LSTM-RNN (MDLSTM-RNN)) to Chinese text recognition has shown limited success, even when training them with large datasets and using pre-training on datasets of other languages. In this paper, we propose a handwritten Chinese text recognition method by using Separable MDLSTMRNN (SMDLSTM-RNN) modules, which extract contextual information in various directions, and consume much less computation efforts and resources compared with the traditional MDLSTMRNN. Experimental results on the ICDAR-2013 competition dataset show that the proposed method performs significantly better than the previous LSTM-based methods, and can compete with the state-of-the-art systems.
机译:长期内记忆经常性神经网络(LSTM-RNN)已被证明在西方和阿拉伯文脚本的手写文本识别中成功。它是完全分割免费的,可以直接从文本线图像训练。然而,LSTM-RNNS(包括多维LSTM-RNN(MDLSTM-RNN))对中文识别的应用已经显示出有限的成功,即使在使用大型数据集并使用其他语言的数据集上使用预培训时,也是如此。在本文中,我们通过使用可分离的MDLSTMRNN(SMDLSTM-RNN)模块提出了一种手写的中文文本识别方法,该模块在各种方向上提取上下文信息,并与传统的MDLSTMRNN相比,消耗更少的计算工作和资源。 ICDAR-2013竞争数据集上的实验结果表明,该方法比以前的基于LSTM的方法更好地表现出来,可以与最先进的系统竞争。

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